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Data Collection Technique
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Emotion in Sport: An Individualized Approach
Yuri L. Hanin , in Encyclopedia of Applied Psychology , 2004
6.1 Interviews
The first and most popular data collection technique for eliciting idiosyncratic emotion content is structured and semistructured in-depth interviews with open-ended and probing questions activating an athlete’s recall of thoughts and feelings prior to and during best and worst performances. It is usually recommended in pilot and exploratory studies to generate idiosyncratic labels and then to aggregate most selected items into a stimulus list or standardized emotion scale. Identifying idiosyncratic content and personally meaningful labels to describe athletes’ subjective experiences is a clear advantage of these interviews over questionnaires with researcher-generated items and “fixed” emotion content. Experienced and verbally skillful athletes can provide detailed and meaningful accounts of their experiences (how they felt) and meta-experiences (how they interpreted and coped with these feelings) prior to and/or during the competition. Athletes who are less aware of their performance-related experiences might require some assistance initially in structuring and focusing their recall.
Case study research in information systems
Graeme Shanks , Nargiza Bekmamedova , in Research Methods (Second Edition) , 2018
Data collection and analysis
Case study research typically includes multiple data collection techniques and data are collected from multiple sources. Data collection techniques include interviews, observations (direct and participant), questionnaires, and relevant documents ( Yin, 2014 ). For detailed discussions of questionnaires, interviews and observation, see Chapter 16 : Questionnaires, individual interviews, and focus group interviews and Chapter 17 : Observation . The use of multiple data collection techniques and sources strengthens the credibility of outcomes and enables different interpretations and meanings to be included in data analysis. This is known as triangulation ( Flick, 2014 ).
In case study research, the data collected are usually qualitative (words, meanings, views) but can also be quantitative (descriptive numbers, tables). Qualitative data analysis may be used in theory building and theory testing. Theory building may use the grounded theory approach. Theory testing typically involves pattern matching ( Yin, 2014 ). This is based on the comparison of predicted outcomes with observed data. Qualitative data analysis is usually highly iterative. Visual displays of qualitative data using matrices (classifications of data using two or more dimensions) may be used to discover connections between the coded segments ( Crabtree & Miller, 1999; Miles et al ., 2014 ). Data analysis may be undertaken within a case and also between cases in multiple case study research ( Eisenhardt, 1989 ). Quantitative data is typically presented in descriptive, tabular form and used to highlight characteristics of case study organisations and interviewees. See also Chapter 18 : Quantitative data analysis .
Data Collection, Primary vs. Secondary
Joop J. Hox , Hennie R. Boeije , in Encyclopedia of Social Measurement , 2005
Solicited and Spontaneous Data
A distinction that involves all primary data collection techniques is that between data that are solicited and data that are spontaneous. In experiments, surveys, and much qualitative research, the researcher uses a stimulus (experimental variable, survey question, or open question) to elicit information from the research subjects. Explicitly soliciting information has the advantage that the researcher can design the data collection to optimally provide data given the research question. However, the disadvantage is that the research subjects are aware that they are taking part in a scientific study. As a consequence, they may react to the announcement of the study topic, the institution that sponsors the study or carries it out, the individual experimenter or interviewer, and so on. It is not clear whether the recorded behavior or response is the “true” behavior, that is, whether it is the same behavior that would have occurred naturally, if it had not been elicited.
The possible reactivity of research subjects can be circumvented by observing natural activities or the traces they leave behind, without disturbing the research subjects in any way. Nonreactive or nonintrusive primary data collection methods include (covert) observation and monitoring. Observation, which can be done in the actual location or remotely using video technology, can lead to both quantitative and qualitative data. Increasingly, technological advances make it possible to monitor activities without disturbing the subjects. For instance, media research in general no longer relies on a panel of respondents who report on their television viewing; instead, in selected households a monitoring device is installed in the television that monitors the television use and transmits the information to the researchers without disturbing the respondents. Scanning devices are used to monitor consumer behavior. Internet behavior can also be monitored. For instance, when people visit a specific Web site, it is simple to monitor which banners and buttons they click on, how long they stay on the page, where they come from, and where they go to when they leave the site. All this provides information without directly involving the subjects in any way.
Social Psychology: Research Methods
Lia Figgou , Vassilis Pavlopoulos , in International Encyclopedia of the Social & Behavioral Sciences (Second Edition) , 2015
Interviewing constitutes probably the most common and popular qualitative data collection technique . It normally involves a ‘dialogue’ with the researcher setting the agenda and asking questions and the interviewee being cast in the role of respondent. Nevertheless, interviews as a specific type of dialogue can be more or less structured. In structured interviews – rarely used in qualitative research – both the wording and the order of the questions are the same from one interview to another. In unstructured interviews, on the other hand, a free-flowing conversational style is adopted and respondents are encouraged to raise issues not originally included in the interview schedule. Biographical interviews which aim at the elicitation of research participants' personal stories with minimum researcher prompting constitute a paradigmatic example of unstructured interviews. Finally, in semistructured interviews, which are most commonly used in qualitative research, the researcher sets the agenda on the basis of their own interests and topics, but allows room for the participants' more spontaneous descriptions and narratives. Other distinctions are between one-to-one versus group interviewing, face-to-face versus telephone interviewing or interviewing through the Internet ( Madill and Gough, 2008 ).
Interviews and Interviewing*
A. Marvasti , in International Encyclopedia of Education (Third Edition) , 2010
This article begins with a broad discussion of interviewing as a data-collection technique. It then offers a more theoretically nuanced understanding of how interviews and interviewing are conceptualized and used by quantitative and qualitative researchers. The remainder of the article focuses on three qualitative interview techniques: in-depth, ethnographic, and focus group interviews. It is suggested that these three styles are similar in that they all involve asking questions and receiving responses from research participants; however, they vary in terms of their emphasis on the inner self, social context, and group dynamics.
“Pediatric Neuropsychological Assessment” Examined
Jane Holmes Bernstein , Michael D. Weiler , in Handbook of Psychological Assessment (Third Edition) , 2000
2 Data Collection Technique
The clinician him- or herself is, however, also a data collection “technique”. She or he is a critical element in the clinician-patient system ( Henderson, 1935 ) and thus is an integral part of the data to be derived from the transaction between adult and child in the assessment setting. She or he is also critical to the collection of ecologically-important data from the nonclinical environment via the clinical interview.
Adult-Child System/Transaction . The behaviors of adult and child in the clinical setting are reciprocal. The adult naturally supports the transaction by supplying what is needed to facilitate optimal communication in the dyad. This requires the clinician to be aware of his or her own behavioral baseline, to monitor any change from baseline that this particular child under this particular demand elicits, and to actively test the hypotheses that such behavioral change sets up. Thus, observing that one is slowing, simplifying, repeating, and/or rephrasing one’s utterances in the course of ongoing conversation sets up a hypothesis of potential language impairment and requires that the examiner examine in detail the child’s language processing skills, both in linguistic interactions and on specific tests of language capacities—as well as other, not overtly related, skills that may also depend on the integrity of left hemisphere brain mechanisms. (These must be derived from both language and nonlanguage behavioral domains. Deficits in language alone would not be a sufficient test of the neuro psychological hypothesis, that is, one specified in terms of a neural substrate: such would only provide information at the psychological level of analysis.) Such a hypothesis also, however, requires that the examiner actively look for, and evaluate the impact of, other reasons for slowed output or need for repetition, such as a general rate of processing deficit, attentional instability, or hearing impairment. These would then be seen in the context of a different diagnostic behavioral cluster. Note that the change in the examiner’s behavior elicited during the interaction with the child will be a member of the diagnostic behavioral cluster, equivalent in this respect to test scores, quality of performance, historic variables, and so on.
The analytic interview . Interviewing technique, the ability to elicit information from caretakers, teachers, and so on that is as free from bias as possible, is crucial to any psychological assessment approach. Good interviewing technique is thus a sine qua non of the clinician’s armamentarium and should be undertaken in systematic fashion ( Maloney & Ward, 1976 ). The interview is an intrinsic part of the neuropsychological assessment (as opposed to testing), and not separate from it. It is thus governed by the research design and theoretical principles of the assessment. Given this, interviewing strategies need to be extended and tailored to the neuropsychological context specifically. Interviewing is an active process in which no observation is taken “cold,” all observations are analyzed in light of their potential neuropsychological source or implications. Interviewees are thus queried to elucidate the actual behavior (rather than an interpreted version thereof) that they are describing. Strategies include: query providing a targeted contrast of a descriptive label (e.g., a child’s response of “This is boring” elicits “Is it boring-easy or boring-hard?”); clinical analysis of a descriptive label (a parent or teacher description of anxiety cues the skilled examiner to consider the actual behaviors that would lead the layperson to use the label “anxiety”—such as press of speech or motor activity—and to actively query the quality of speech and/or motor patterns with a view to evaluating the possibility of neuropsychological, rather than emotional, factors contributing to the observed behavior); and elicitation of relevant anecdotes (a complaint of memory problems in a child leads the clinician to ask for a specific example of the kind of situation in which the problem occurs—so that he or she can consider it from a broader neuropsychological perspective that may well include language processing or attentional issues, for example). The data from this analytic interview technique is crosschecked (where possible) against reports from other individuals/sources, and/or the neuropsychological hypotheses to which they give rise are tested against other types of assessment information (i.e., multimethod, multi-trait analysis).
Oral History, Ecological
A. Nightingale , in International Encyclopedia of Human Geography , 2009
Methods of Ecological Oral History
Ecological oral histories thus can be used for a wide variety of research projects. Data collection techniques often follow those used for other kinds of oral histories, although some novel methods are used as well. Many ecological oral histories follow techniques used in oral history and therefore use in-depth, semistructured interviews. In this type of interview, the researcher develops a set of questions to be asked, but does not specify the order in which they will be asked. Rather, the researcher strives to create a conversation with the participant(s) and asks questions where relevant or as a prompt to begin or redirect the interview. Unlike oral histories, however, ecological oral histories often utilize more interactive methods. Interactive methods include ambulatory interviews, mapping, and discussion of photographs. In ambulatory interviews, the researcher and informant or a small group of informants walk through a piece of land and identify plants or discuss changes and other features of the landscape. These kinds of interviews are often very effective and yield information not only on the landscape, but also on the relationship between the participants and the environment (i.e., nature–society interactions). They are used extensively in studies seeking to document TEK and also in research seeking to understand the social–political dynamics of land use. Other forms of interactive interviews use mapping or photographs of places. Participatory mapping is often considered a separate research technique in its own right and is used in nature–society studies or land-use planning research projects in addition to ecological oral histories. In these interviews, researchers ask people to draw a map of a place and then discuss what is included. Mapping provides a unique picture of landscape as seen from the perspective of the research participants. It can also illuminate important information on landscape features that may not be obvious to the researchers or the relative importance of particular resources. Photos of places are similarly used to invite discussion. Researchers either use photographs they have obtained or give participants cameras to take photographs of places or objects of importance to them. The researcher then discusses the photographs with the participants in order to lend a focus to the discussion. All these types of interviews can be done with groups as well as individuals. Group interviews are useful for obtaining accurate information on plant names and other aspects of shared knowledge of ecosystems, but they are equally useful for gathering information on the social politics of environments. A group context can help to illuminate which inconsistencies in oral histories are based on a lack of knowledge and which are based on competing claims. Members of the group correct each other or arrive at a consensus through discussion, helping to ensure accuracy as well as illuminating other dynamics that may be useful to the research.
Workshop summary and research themes
Adam W. Davis , ... Yoram Shiftan , in Mapping the Travel Behavior Genome , 2020
8.2.1 Motivation
Different sources of data can be complementary. In this research we need to capture the complementarity of conventional data collection techniques with emerging data collection streams. What is the relation between these two paradigms? Do Big Data collection techniques obviate or underline the need for traditional data collection? One proposition is to consider Big data as a continuous update using inexpensive Big Data of large cross sectional survey data but methods to do this are not available widely. The opposite is also possible. Trends can be observed with Big Data and then an in-depth cross sectional survey is needed for behavioral analysis that explains the trends.
Time–Space Diaries
Kajsa Ellegård , in International Encyclopedia of Human Geography (Second Edition) , 2020
Willingness to Participate in Surveys and Response Rate
European national time-use surveys in the late 20th Century received relatively high response rates, irrespective of data collection technique . In the 21st Century response rates have decreased dramatically and even 40% is now regarded as rather high. There are many possible explanations to this development; people get more and more aware of integrity issues, they are too stressed and occupied to fill in the diary forms, or they do not find any meaning in doing so. Whatever reason, national statistical bureaus make efforts to overcome the problem. Creating new ways to collect diaries by using smartphone applications (apps) is one opportunity, another is to create simplified diary sheets, with a total of no more than 30 activity categories. In such a diary form, people are asked to choose between activity categories and draw a line in a time slot for the activities relevant for her/him. Still there is no consensus on what is the “new way” to collect time-space diaries from a sample, which is representative for a population.
There are research studies where apps with GPS functionality are utilized to perform studies on daily mobility. GPS provides precise data about places and movements, but information about activities will be less known if the app is not combined with a diary asking for activities. In some countries, data from telephone operators is used by researchers to map peoples' movements between and visits to places. This kind of data will not give information about the activities performed, apart from what can be derived from what is possible to do at the placed visited. However, there are many different kinds of activities that can be performed at many places, for example, both at home and in a shopping center, so the activity information derived from place location will be relatively unsatisfactory. In addition, in studies based on data from telephone operators it is not always the case that the individuals have given their consent to be part of the study.
As mentioned above, there are also smartphone apps developed for collecting more or less the same data as in the traditional pen and paper diaries. Vrotsou et al. suggest the use of an app developed where the mobile sets the time and the diarist fills in activity, place, togetherness, and other information depending on the purpose of the study in the course of the day. This app calls for the diarist's constant awareness and there is a risk that the diarist sometimes will forget to fill in the diary. Therefore, the app is complemented with a function where the diarist can edit the diary afterward.
In small-scale studies, where a personal relation develops between the diarist and the responsible researcher or professional therapist, the diarist is often more motivated to participate in the study. The diary process will provide the diarist with new knowledge on a personal level that makes it rewarding to write diaries. This is shown, for example, by the use of time-geographic time-space diaries in occupational therapy.
Initial Selection
Susan M. Wilczynski , in A Practical Guide to Finding Treatments That Work for People with Autism , 2017
Step 5: Review New Evidence
Evidence-based practitioners collect data that allow the team to make decisions about whether or not the intervention is working. The data collection technique should match the practical question that is being asked. Procedures for determining the best type of data to collect are comprehensively outlined in books dedicated to this topic (e.g., Kazdin, 2011 ). However the appropriateness of a given data collection is also based on who is collecting the data and their experience with data collection. Issues relevant to data collection are briefly discussed further in Chapter 11 , Progress Monitoring.
Evidence-based practitioners collect data on treatment fidelity, quality of adherence, and the extent to which the treatment has been implemented as planned. Treatment fidelity data are essential both for determining if the treatment is feasible and if the target client is actually accessing the treatment. A treatment that is not being accurately implemented should not be rejected unless the team determines it is not feasible. First, the evidence-based practitioner must facilitate a problem-solving discussion to overcome obstacles. Even highly qualified professionals can follow the steps of a protocol but miss an important component, so the quality of implementation should be evaluated. The steps of a treatment can be technically implemented, but an essential aspect of one or more of the steps may not be sufficient. This is addressed in more detail in Chapter 11 , Progress Monitoring. Evidence-based practitioners compare when the intervention was implemented in relation to the proposed schedule in the implementation plan. It is also important to identify barriers that prevent scheduled implementation and determine if these barriers have been adequately addressed.
Several forms of evidence will need to be collected on an ongoing basis once the treatment is implemented. For example, client preference should be assessed again after the treatment has been initiated. In addition, evidence-based practitioners assess the tolerability of the treatment. That is, can the target client tolerate the treatment as indicated by positive or negative enthusiasm or affect. Consumer satisfaction data are collected from the target, stakeholder, and leader clients. Through intervention implementation, these consumers may determine that they find a treatment unacceptable or that unanticipated barriers to treatment fidelity make the intervention unfeasible. Evidence-based practitioners continue supporting the team based on ongoing data collection as further determinations about the treatment are made.
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Statistics - Data collection - Case Study Method
Case study research is a qualitative research method that is used to examine contemporary real-life situations and apply the findings of the case to the problem under study. Case studies involve a detailed contextual analysis of a limited number of events or conditions and their relationships. It provides the basis for the application of ideas and extension of methods. It helps a researcher to understand a complex issue or object and add strength to what is already known through previous research.
STEPS OF CASE STUDY METHOD
In order to ensure objectivity and clarity, a researcher should adopt a methodical approach to case studies research. The following steps can be followed:
Identify and define the research questions - The researcher starts with establishing the focus of the study by identifying the research object and the problem surrounding it. The research object would be a person, a program, an event or an entity.
Select the cases - In this step the researcher decides on the number of cases to choose (single or multiple), the type of cases to choose (unique or typical) and the approach to collect, store and analyze the data. This is the design phase of the case study method.
Collect the data - The researcher now collects the data with the objective of gathering multiple sources of evidence with reference to the problem under study. This evidence is stored comprehensively and systematically in a format that can be referenced and sorted easily so that converging lines of inquiry and patterns can be uncovered.
Evaluate and analyze the data - In this step the researcher makes use of varied methods to analyze qualitative as well as quantitative data. The data is categorized, tabulated and cross checked to address the initial propositions or purpose of the study. Graphic techniques like placing information into arrays, creating matrices of categories, creating flow charts etc. are used to help the investigators to approach the data from different ways and thus avoid making premature conclusions. Multiple investigators may also be used to examine the data so that a wide variety of insights to the available data can be developed.
Presentation of Results - The results are presented in a manner that allows the reader to evaluate the findings in the light of the evidence presented in the report. The results are corroborated with sufficient evidence showing that all aspects of the problem have been adequately explored. The newer insights gained and the conflicting propositions that have emerged are suitably highlighted in the report.
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- What Is a Case Study? | Definition, Examples & Methods
What Is a Case Study? | Definition, Examples & Methods
Published on May 8, 2019 by Shona McCombes . Revised on January 30, 2023.
A case study is a detailed study of a specific subject, such as a person, group, place, event, organization, or phenomenon. Case studies are commonly used in social, educational, clinical, and business research.
A case study research design usually involves qualitative methods , but quantitative methods are sometimes also used. Case studies are good for describing , comparing, evaluating and understanding different aspects of a research problem .
Table of contents
When to do a case study, step 1: select a case, step 2: build a theoretical framework, step 3: collect your data, step 4: describe and analyze the case.
A case study is an appropriate research design when you want to gain concrete, contextual, in-depth knowledge about a specific real-world subject. It allows you to explore the key characteristics, meanings, and implications of the case.
Case studies are often a good choice in a thesis or dissertation . They keep your project focused and manageable when you don’t have the time or resources to do large-scale research.
You might use just one complex case study where you explore a single subject in depth, or conduct multiple case studies to compare and illuminate different aspects of your research problem.
Once you have developed your problem statement and research questions , you should be ready to choose the specific case that you want to focus on. A good case study should have the potential to:
- Provide new or unexpected insights into the subject
- Challenge or complicate existing assumptions and theories
- Propose practical courses of action to resolve a problem
- Open up new directions for future research
Unlike quantitative or experimental research , a strong case study does not require a random or representative sample. In fact, case studies often deliberately focus on unusual, neglected, or outlying cases which may shed new light on the research problem.
However, you can also choose a more common or representative case to exemplify a particular category, experience or phenomenon.
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While case studies focus more on concrete details than general theories, they should usually have some connection with theory in the field. This way the case study is not just an isolated description, but is integrated into existing knowledge about the topic. It might aim to:
- Exemplify a theory by showing how it explains the case under investigation
- Expand on a theory by uncovering new concepts and ideas that need to be incorporated
- Challenge a theory by exploring an outlier case that doesn’t fit with established assumptions
To ensure that your analysis of the case has a solid academic grounding, you should conduct a literature review of sources related to the topic and develop a theoretical framework . This means identifying key concepts and theories to guide your analysis and interpretation.
There are many different research methods you can use to collect data on your subject. Case studies tend to focus on qualitative data using methods such as interviews , observations , and analysis of primary and secondary sources (e.g., newspaper articles, photographs, official records). Sometimes a case study will also collect quantitative data.
The aim is to gain as thorough an understanding as possible of the case and its context.
In writing up the case study, you need to bring together all the relevant aspects to give as complete a picture as possible of the subject.
How you report your findings depends on the type of research you are doing. Some case studies are structured like a standard scientific paper or thesis , with separate sections or chapters for the methods , results and discussion .
Others are written in a more narrative style, aiming to explore the case from various angles and analyze its meanings and implications (for example, by using textual analysis or discourse analysis ).
In all cases, though, make sure to give contextual details about the case, connect it back to the literature and theory, and discuss how it fits into wider patterns or debates.
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Qualitative Research in Organizations and Management
ISSN : 1746-5648
Article publication date: 20 August 2020
Issue publication date: 23 February 2021
The study aims to explore the case study method with the formation of questions, data collection procedures and analysis, followed by how and on which position the saturation is achieved in developing a centralized Shariah governance framework for Islamic banks in Bangladesh.
Design/methodology/approach
Using purposive and snowball sampling procedures, data have been collected from 17 respondents who are working in the central bank and Islamic banks of Bangladesh through face-to-face and semi-structured interviews.
The study claims that researchers can form the research questions by using “what” question mark in qualitative research. Besides, the qualitative research and case study could explore the answers of “what” questions along with the “why” and “how” more broadly, descriptively and extensively about a phenomenon. Similarly, saturation can be considered attaining the ultimate point of data collection by the researchers without adding anything in the databank. Overall, this study proposes three stages of saturation: First, information redundancy. Second, referring the respondents (already considered in the study) without knowing anything about the data collection and their responses. Third, through the NVivo open coding process due to the decrease of reference or quotes in a certain position or in the saturation position as a result of fewer outcomes or insufficient information. The saturation is thus achieved in the diversified positions, i.e. three respondents for regulatory, nine for Shariah scholars and officers and five for the experts concerning the responses and respondents.
Research limitations/implications
The study has potential implications on the qualitative research method, including the case study, saturation process and points, NVivo analysis and qualitative questions formation.
Originality/value
This research defines a case study with the inclusion of “what” and illustrates the saturation process in diverse positions. The qualitative research questions can also be formed with “what” in addition “why” and “how”.
- Qualitative research
Acknowledgements
The author would like to thank both Editors, Associate Editor Dr. Amon Barros and anonymous reviewers for their valuable time, constructive comments and suggestions for the improvement of the manuscript. A special thanks to Dr. Mohd Mursyid Arshad, Senior Lecturer at Faculty of Educational Studies, Universiti Putra Malaysia, Malaysia for his suggestions and unconditional help in the NVivo data analysis process of this research project. The study does not receive any specific fund or research grant.
Alam, M.K. (2021), "A systematic qualitative case study: questions, data collection, NVivo analysis and saturation", Qualitative Research in Organizations and Management , Vol. 16 No. 1, pp. 1-31. https://doi.org/10.1108/QROM-09-2019-1825
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- Published: 27 June 2011
The case study approach
- Sarah Crowe 1 ,
- Kathrin Cresswell 2 ,
- Ann Robertson 2 ,
- Guro Huby 3 ,
- Anthony Avery 1 &
- Aziz Sheikh 2
BMC Medical Research Methodology volume 11 , Article number: 100 ( 2011 ) Cite this article
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The case study approach allows in-depth, multi-faceted explorations of complex issues in their real-life settings. The value of the case study approach is well recognised in the fields of business, law and policy, but somewhat less so in health services research. Based on our experiences of conducting several health-related case studies, we reflect on the different types of case study design, the specific research questions this approach can help answer, the data sources that tend to be used, and the particular advantages and disadvantages of employing this methodological approach. The paper concludes with key pointers to aid those designing and appraising proposals for conducting case study research, and a checklist to help readers assess the quality of case study reports.
Peer Review reports

Introduction
The case study approach is particularly useful to employ when there is a need to obtain an in-depth appreciation of an issue, event or phenomenon of interest, in its natural real-life context. Our aim in writing this piece is to provide insights into when to consider employing this approach and an overview of key methodological considerations in relation to the design, planning, analysis, interpretation and reporting of case studies.
The illustrative 'grand round', 'case report' and 'case series' have a long tradition in clinical practice and research. Presenting detailed critiques, typically of one or more patients, aims to provide insights into aspects of the clinical case and, in doing so, illustrate broader lessons that may be learnt. In research, the conceptually-related case study approach can be used, for example, to describe in detail a patient's episode of care, explore professional attitudes to and experiences of a new policy initiative or service development or more generally to 'investigate contemporary phenomena within its real-life context' [ 1 ]. Based on our experiences of conducting a range of case studies, we reflect on when to consider using this approach, discuss the key steps involved and illustrate, with examples, some of the practical challenges of attaining an in-depth understanding of a 'case' as an integrated whole. In keeping with previously published work, we acknowledge the importance of theory to underpin the design, selection, conduct and interpretation of case studies[ 2 ]. In so doing, we make passing reference to the different epistemological approaches used in case study research by key theoreticians and methodologists in this field of enquiry.
This paper is structured around the following main questions: What is a case study? What are case studies used for? How are case studies conducted? What are the potential pitfalls and how can these be avoided? We draw in particular on four of our own recently published examples of case studies (see Tables 1 , 2 , 3 and 4 ) and those of others to illustrate our discussion[ 3 – 7 ].
What is a case study?
A case study is a research approach that is used to generate an in-depth, multi-faceted understanding of a complex issue in its real-life context. It is an established research design that is used extensively in a wide variety of disciplines, particularly in the social sciences. A case study can be defined in a variety of ways (Table 5 ), the central tenet being the need to explore an event or phenomenon in depth and in its natural context. It is for this reason sometimes referred to as a "naturalistic" design; this is in contrast to an "experimental" design (such as a randomised controlled trial) in which the investigator seeks to exert control over and manipulate the variable(s) of interest.
Stake's work has been particularly influential in defining the case study approach to scientific enquiry. He has helpfully characterised three main types of case study: intrinsic , instrumental and collective [ 8 ]. An intrinsic case study is typically undertaken to learn about a unique phenomenon. The researcher should define the uniqueness of the phenomenon, which distinguishes it from all others. In contrast, the instrumental case study uses a particular case (some of which may be better than others) to gain a broader appreciation of an issue or phenomenon. The collective case study involves studying multiple cases simultaneously or sequentially in an attempt to generate a still broader appreciation of a particular issue.
These are however not necessarily mutually exclusive categories. In the first of our examples (Table 1 ), we undertook an intrinsic case study to investigate the issue of recruitment of minority ethnic people into the specific context of asthma research studies, but it developed into a instrumental case study through seeking to understand the issue of recruitment of these marginalised populations more generally, generating a number of the findings that are potentially transferable to other disease contexts[ 3 ]. In contrast, the other three examples (see Tables 2 , 3 and 4 ) employed collective case study designs to study the introduction of workforce reconfiguration in primary care, the implementation of electronic health records into hospitals, and to understand the ways in which healthcare students learn about patient safety considerations[ 4 – 6 ]. Although our study focusing on the introduction of General Practitioners with Specialist Interests (Table 2 ) was explicitly collective in design (four contrasting primary care organisations were studied), is was also instrumental in that this particular professional group was studied as an exemplar of the more general phenomenon of workforce redesign[ 4 ].
What are case studies used for?
According to Yin, case studies can be used to explain, describe or explore events or phenomena in the everyday contexts in which they occur[ 1 ]. These can, for example, help to understand and explain causal links and pathways resulting from a new policy initiative or service development (see Tables 2 and 3 , for example)[ 1 ]. In contrast to experimental designs, which seek to test a specific hypothesis through deliberately manipulating the environment (like, for example, in a randomised controlled trial giving a new drug to randomly selected individuals and then comparing outcomes with controls),[ 9 ] the case study approach lends itself well to capturing information on more explanatory ' how ', 'what' and ' why ' questions, such as ' how is the intervention being implemented and received on the ground?'. The case study approach can offer additional insights into what gaps exist in its delivery or why one implementation strategy might be chosen over another. This in turn can help develop or refine theory, as shown in our study of the teaching of patient safety in undergraduate curricula (Table 4 )[ 6 , 10 ]. Key questions to consider when selecting the most appropriate study design are whether it is desirable or indeed possible to undertake a formal experimental investigation in which individuals and/or organisations are allocated to an intervention or control arm? Or whether the wish is to obtain a more naturalistic understanding of an issue? The former is ideally studied using a controlled experimental design, whereas the latter is more appropriately studied using a case study design.
Case studies may be approached in different ways depending on the epistemological standpoint of the researcher, that is, whether they take a critical (questioning one's own and others' assumptions), interpretivist (trying to understand individual and shared social meanings) or positivist approach (orientating towards the criteria of natural sciences, such as focusing on generalisability considerations) (Table 6 ). Whilst such a schema can be conceptually helpful, it may be appropriate to draw on more than one approach in any case study, particularly in the context of conducting health services research. Doolin has, for example, noted that in the context of undertaking interpretative case studies, researchers can usefully draw on a critical, reflective perspective which seeks to take into account the wider social and political environment that has shaped the case[ 11 ].
How are case studies conducted?
Here, we focus on the main stages of research activity when planning and undertaking a case study; the crucial stages are: defining the case; selecting the case(s); collecting and analysing the data; interpreting data; and reporting the findings.
Defining the case
Carefully formulated research question(s), informed by the existing literature and a prior appreciation of the theoretical issues and setting(s), are all important in appropriately and succinctly defining the case[ 8 , 12 ]. Crucially, each case should have a pre-defined boundary which clarifies the nature and time period covered by the case study (i.e. its scope, beginning and end), the relevant social group, organisation or geographical area of interest to the investigator, the types of evidence to be collected, and the priorities for data collection and analysis (see Table 7 )[ 1 ]. A theory driven approach to defining the case may help generate knowledge that is potentially transferable to a range of clinical contexts and behaviours; using theory is also likely to result in a more informed appreciation of, for example, how and why interventions have succeeded or failed[ 13 ].
For example, in our evaluation of the introduction of electronic health records in English hospitals (Table 3 ), we defined our cases as the NHS Trusts that were receiving the new technology[ 5 ]. Our focus was on how the technology was being implemented. However, if the primary research interest had been on the social and organisational dimensions of implementation, we might have defined our case differently as a grouping of healthcare professionals (e.g. doctors and/or nurses). The precise beginning and end of the case may however prove difficult to define. Pursuing this same example, when does the process of implementation and adoption of an electronic health record system really begin or end? Such judgements will inevitably be influenced by a range of factors, including the research question, theory of interest, the scope and richness of the gathered data and the resources available to the research team.
Selecting the case(s)
The decision on how to select the case(s) to study is a very important one that merits some reflection. In an intrinsic case study, the case is selected on its own merits[ 8 ]. The case is selected not because it is representative of other cases, but because of its uniqueness, which is of genuine interest to the researchers. This was, for example, the case in our study of the recruitment of minority ethnic participants into asthma research (Table 1 ) as our earlier work had demonstrated the marginalisation of minority ethnic people with asthma, despite evidence of disproportionate asthma morbidity[ 14 , 15 ]. In another example of an intrinsic case study, Hellstrom et al.[ 16 ] studied an elderly married couple living with dementia to explore how dementia had impacted on their understanding of home, their everyday life and their relationships.
For an instrumental case study, selecting a "typical" case can work well[ 8 ]. In contrast to the intrinsic case study, the particular case which is chosen is of less importance than selecting a case that allows the researcher to investigate an issue or phenomenon. For example, in order to gain an understanding of doctors' responses to health policy initiatives, Som undertook an instrumental case study interviewing clinicians who had a range of responsibilities for clinical governance in one NHS acute hospital trust[ 17 ]. Sampling a "deviant" or "atypical" case may however prove even more informative, potentially enabling the researcher to identify causal processes, generate hypotheses and develop theory.
In collective or multiple case studies, a number of cases are carefully selected. This offers the advantage of allowing comparisons to be made across several cases and/or replication. Choosing a "typical" case may enable the findings to be generalised to theory (i.e. analytical generalisation) or to test theory by replicating the findings in a second or even a third case (i.e. replication logic)[ 1 ]. Yin suggests two or three literal replications (i.e. predicting similar results) if the theory is straightforward and five or more if the theory is more subtle. However, critics might argue that selecting 'cases' in this way is insufficiently reflexive and ill-suited to the complexities of contemporary healthcare organisations.
The selected case study site(s) should allow the research team access to the group of individuals, the organisation, the processes or whatever else constitutes the chosen unit of analysis for the study. Access is therefore a central consideration; the researcher needs to come to know the case study site(s) well and to work cooperatively with them. Selected cases need to be not only interesting but also hospitable to the inquiry [ 8 ] if they are to be informative and answer the research question(s). Case study sites may also be pre-selected for the researcher, with decisions being influenced by key stakeholders. For example, our selection of case study sites in the evaluation of the implementation and adoption of electronic health record systems (see Table 3 ) was heavily influenced by NHS Connecting for Health, the government agency that was responsible for overseeing the National Programme for Information Technology (NPfIT)[ 5 ]. This prominent stakeholder had already selected the NHS sites (through a competitive bidding process) to be early adopters of the electronic health record systems and had negotiated contracts that detailed the deployment timelines.
It is also important to consider in advance the likely burden and risks associated with participation for those who (or the site(s) which) comprise the case study. Of particular importance is the obligation for the researcher to think through the ethical implications of the study (e.g. the risk of inadvertently breaching anonymity or confidentiality) and to ensure that potential participants/participating sites are provided with sufficient information to make an informed choice about joining the study. The outcome of providing this information might be that the emotive burden associated with participation, or the organisational disruption associated with supporting the fieldwork, is considered so high that the individuals or sites decide against participation.
In our example of evaluating implementations of electronic health record systems, given the restricted number of early adopter sites available to us, we sought purposively to select a diverse range of implementation cases among those that were available[ 5 ]. We chose a mixture of teaching, non-teaching and Foundation Trust hospitals, and examples of each of the three electronic health record systems procured centrally by the NPfIT. At one recruited site, it quickly became apparent that access was problematic because of competing demands on that organisation. Recognising the importance of full access and co-operative working for generating rich data, the research team decided not to pursue work at that site and instead to focus on other recruited sites.
Collecting the data
In order to develop a thorough understanding of the case, the case study approach usually involves the collection of multiple sources of evidence, using a range of quantitative (e.g. questionnaires, audits and analysis of routinely collected healthcare data) and more commonly qualitative techniques (e.g. interviews, focus groups and observations). The use of multiple sources of data (data triangulation) has been advocated as a way of increasing the internal validity of a study (i.e. the extent to which the method is appropriate to answer the research question)[ 8 , 18 – 21 ]. An underlying assumption is that data collected in different ways should lead to similar conclusions, and approaching the same issue from different angles can help develop a holistic picture of the phenomenon (Table 2 )[ 4 ].
Brazier and colleagues used a mixed-methods case study approach to investigate the impact of a cancer care programme[ 22 ]. Here, quantitative measures were collected with questionnaires before, and five months after, the start of the intervention which did not yield any statistically significant results. Qualitative interviews with patients however helped provide an insight into potentially beneficial process-related aspects of the programme, such as greater, perceived patient involvement in care. The authors reported how this case study approach provided a number of contextual factors likely to influence the effectiveness of the intervention and which were not likely to have been obtained from quantitative methods alone.
In collective or multiple case studies, data collection needs to be flexible enough to allow a detailed description of each individual case to be developed (e.g. the nature of different cancer care programmes), before considering the emerging similarities and differences in cross-case comparisons (e.g. to explore why one programme is more effective than another). It is important that data sources from different cases are, where possible, broadly comparable for this purpose even though they may vary in nature and depth.
Analysing, interpreting and reporting case studies
Making sense and offering a coherent interpretation of the typically disparate sources of data (whether qualitative alone or together with quantitative) is far from straightforward. Repeated reviewing and sorting of the voluminous and detail-rich data are integral to the process of analysis. In collective case studies, it is helpful to analyse data relating to the individual component cases first, before making comparisons across cases. Attention needs to be paid to variations within each case and, where relevant, the relationship between different causes, effects and outcomes[ 23 ]. Data will need to be organised and coded to allow the key issues, both derived from the literature and emerging from the dataset, to be easily retrieved at a later stage. An initial coding frame can help capture these issues and can be applied systematically to the whole dataset with the aid of a qualitative data analysis software package.
The Framework approach is a practical approach, comprising of five stages (familiarisation; identifying a thematic framework; indexing; charting; mapping and interpretation) , to managing and analysing large datasets particularly if time is limited, as was the case in our study of recruitment of South Asians into asthma research (Table 1 )[ 3 , 24 ]. Theoretical frameworks may also play an important role in integrating different sources of data and examining emerging themes. For example, we drew on a socio-technical framework to help explain the connections between different elements - technology; people; and the organisational settings within which they worked - in our study of the introduction of electronic health record systems (Table 3 )[ 5 ]. Our study of patient safety in undergraduate curricula drew on an evaluation-based approach to design and analysis, which emphasised the importance of the academic, organisational and practice contexts through which students learn (Table 4 )[ 6 ].
Case study findings can have implications both for theory development and theory testing. They may establish, strengthen or weaken historical explanations of a case and, in certain circumstances, allow theoretical (as opposed to statistical) generalisation beyond the particular cases studied[ 12 ]. These theoretical lenses should not, however, constitute a strait-jacket and the cases should not be "forced to fit" the particular theoretical framework that is being employed.
When reporting findings, it is important to provide the reader with enough contextual information to understand the processes that were followed and how the conclusions were reached. In a collective case study, researchers may choose to present the findings from individual cases separately before amalgamating across cases. Care must be taken to ensure the anonymity of both case sites and individual participants (if agreed in advance) by allocating appropriate codes or withholding descriptors. In the example given in Table 3 , we decided against providing detailed information on the NHS sites and individual participants in order to avoid the risk of inadvertent disclosure of identities[ 5 , 25 ].
What are the potential pitfalls and how can these be avoided?
The case study approach is, as with all research, not without its limitations. When investigating the formal and informal ways undergraduate students learn about patient safety (Table 4 ), for example, we rapidly accumulated a large quantity of data. The volume of data, together with the time restrictions in place, impacted on the depth of analysis that was possible within the available resources. This highlights a more general point of the importance of avoiding the temptation to collect as much data as possible; adequate time also needs to be set aside for data analysis and interpretation of what are often highly complex datasets.
Case study research has sometimes been criticised for lacking scientific rigour and providing little basis for generalisation (i.e. producing findings that may be transferable to other settings)[ 1 ]. There are several ways to address these concerns, including: the use of theoretical sampling (i.e. drawing on a particular conceptual framework); respondent validation (i.e. participants checking emerging findings and the researcher's interpretation, and providing an opinion as to whether they feel these are accurate); and transparency throughout the research process (see Table 8 )[ 8 , 18 – 21 , 23 , 26 ]. Transparency can be achieved by describing in detail the steps involved in case selection, data collection, the reasons for the particular methods chosen, and the researcher's background and level of involvement (i.e. being explicit about how the researcher has influenced data collection and interpretation). Seeking potential, alternative explanations, and being explicit about how interpretations and conclusions were reached, help readers to judge the trustworthiness of the case study report. Stake provides a critique checklist for a case study report (Table 9 )[ 8 ].
Conclusions
The case study approach allows, amongst other things, critical events, interventions, policy developments and programme-based service reforms to be studied in detail in a real-life context. It should therefore be considered when an experimental design is either inappropriate to answer the research questions posed or impossible to undertake. Considering the frequency with which implementations of innovations are now taking place in healthcare settings and how well the case study approach lends itself to in-depth, complex health service research, we believe this approach should be more widely considered by researchers. Though inherently challenging, the research case study can, if carefully conceptualised and thoughtfully undertaken and reported, yield powerful insights into many important aspects of health and healthcare delivery.
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Acknowledgements
We are grateful to the participants and colleagues who contributed to the individual case studies that we have drawn on. This work received no direct funding, but it has been informed by projects funded by Asthma UK, the NHS Service Delivery Organisation, NHS Connecting for Health Evaluation Programme, and Patient Safety Research Portfolio. We would also like to thank the expert reviewers for their insightful and constructive feedback. Our thanks are also due to Dr. Allison Worth who commented on an earlier draft of this manuscript.
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The case study approach
Sarah crowe.
1 Division of Primary Care, The University of Nottingham, Nottingham, UK
Kathrin Cresswell
2 Centre for Population Health Sciences, The University of Edinburgh, Edinburgh, UK
Ann Robertson
3 School of Health in Social Science, The University of Edinburgh, Edinburgh, UK
Anthony Avery
Aziz sheikh.
The case study approach allows in-depth, multi-faceted explorations of complex issues in their real-life settings. The value of the case study approach is well recognised in the fields of business, law and policy, but somewhat less so in health services research. Based on our experiences of conducting several health-related case studies, we reflect on the different types of case study design, the specific research questions this approach can help answer, the data sources that tend to be used, and the particular advantages and disadvantages of employing this methodological approach. The paper concludes with key pointers to aid those designing and appraising proposals for conducting case study research, and a checklist to help readers assess the quality of case study reports.
Introduction
The case study approach is particularly useful to employ when there is a need to obtain an in-depth appreciation of an issue, event or phenomenon of interest, in its natural real-life context. Our aim in writing this piece is to provide insights into when to consider employing this approach and an overview of key methodological considerations in relation to the design, planning, analysis, interpretation and reporting of case studies.
The illustrative 'grand round', 'case report' and 'case series' have a long tradition in clinical practice and research. Presenting detailed critiques, typically of one or more patients, aims to provide insights into aspects of the clinical case and, in doing so, illustrate broader lessons that may be learnt. In research, the conceptually-related case study approach can be used, for example, to describe in detail a patient's episode of care, explore professional attitudes to and experiences of a new policy initiative or service development or more generally to 'investigate contemporary phenomena within its real-life context' [ 1 ]. Based on our experiences of conducting a range of case studies, we reflect on when to consider using this approach, discuss the key steps involved and illustrate, with examples, some of the practical challenges of attaining an in-depth understanding of a 'case' as an integrated whole. In keeping with previously published work, we acknowledge the importance of theory to underpin the design, selection, conduct and interpretation of case studies[ 2 ]. In so doing, we make passing reference to the different epistemological approaches used in case study research by key theoreticians and methodologists in this field of enquiry.
This paper is structured around the following main questions: What is a case study? What are case studies used for? How are case studies conducted? What are the potential pitfalls and how can these be avoided? We draw in particular on four of our own recently published examples of case studies (see Tables Tables1, 1 , ,2, 2 , ,3 3 and and4) 4 ) and those of others to illustrate our discussion[ 3 - 7 ].
Example of a case study investigating the reasons for differences in recruitment rates of minority ethnic people in asthma research[ 3 ]
Example of a case study investigating the process of planning and implementing a service in Primary Care Organisations[ 4 ]
Example of a case study investigating the introduction of the electronic health records[ 5 ]
Example of a case study investigating the formal and informal ways students learn about patient safety[ 6 ]
What is a case study?
A case study is a research approach that is used to generate an in-depth, multi-faceted understanding of a complex issue in its real-life context. It is an established research design that is used extensively in a wide variety of disciplines, particularly in the social sciences. A case study can be defined in a variety of ways (Table (Table5), 5 ), the central tenet being the need to explore an event or phenomenon in depth and in its natural context. It is for this reason sometimes referred to as a "naturalistic" design; this is in contrast to an "experimental" design (such as a randomised controlled trial) in which the investigator seeks to exert control over and manipulate the variable(s) of interest.
Definitions of a case study
Stake's work has been particularly influential in defining the case study approach to scientific enquiry. He has helpfully characterised three main types of case study: intrinsic , instrumental and collective [ 8 ]. An intrinsic case study is typically undertaken to learn about a unique phenomenon. The researcher should define the uniqueness of the phenomenon, which distinguishes it from all others. In contrast, the instrumental case study uses a particular case (some of which may be better than others) to gain a broader appreciation of an issue or phenomenon. The collective case study involves studying multiple cases simultaneously or sequentially in an attempt to generate a still broader appreciation of a particular issue.
These are however not necessarily mutually exclusive categories. In the first of our examples (Table (Table1), 1 ), we undertook an intrinsic case study to investigate the issue of recruitment of minority ethnic people into the specific context of asthma research studies, but it developed into a instrumental case study through seeking to understand the issue of recruitment of these marginalised populations more generally, generating a number of the findings that are potentially transferable to other disease contexts[ 3 ]. In contrast, the other three examples (see Tables Tables2, 2 , ,3 3 and and4) 4 ) employed collective case study designs to study the introduction of workforce reconfiguration in primary care, the implementation of electronic health records into hospitals, and to understand the ways in which healthcare students learn about patient safety considerations[ 4 - 6 ]. Although our study focusing on the introduction of General Practitioners with Specialist Interests (Table (Table2) 2 ) was explicitly collective in design (four contrasting primary care organisations were studied), is was also instrumental in that this particular professional group was studied as an exemplar of the more general phenomenon of workforce redesign[ 4 ].
What are case studies used for?
According to Yin, case studies can be used to explain, describe or explore events or phenomena in the everyday contexts in which they occur[ 1 ]. These can, for example, help to understand and explain causal links and pathways resulting from a new policy initiative or service development (see Tables Tables2 2 and and3, 3 , for example)[ 1 ]. In contrast to experimental designs, which seek to test a specific hypothesis through deliberately manipulating the environment (like, for example, in a randomised controlled trial giving a new drug to randomly selected individuals and then comparing outcomes with controls),[ 9 ] the case study approach lends itself well to capturing information on more explanatory ' how ', 'what' and ' why ' questions, such as ' how is the intervention being implemented and received on the ground?'. The case study approach can offer additional insights into what gaps exist in its delivery or why one implementation strategy might be chosen over another. This in turn can help develop or refine theory, as shown in our study of the teaching of patient safety in undergraduate curricula (Table (Table4 4 )[ 6 , 10 ]. Key questions to consider when selecting the most appropriate study design are whether it is desirable or indeed possible to undertake a formal experimental investigation in which individuals and/or organisations are allocated to an intervention or control arm? Or whether the wish is to obtain a more naturalistic understanding of an issue? The former is ideally studied using a controlled experimental design, whereas the latter is more appropriately studied using a case study design.
Case studies may be approached in different ways depending on the epistemological standpoint of the researcher, that is, whether they take a critical (questioning one's own and others' assumptions), interpretivist (trying to understand individual and shared social meanings) or positivist approach (orientating towards the criteria of natural sciences, such as focusing on generalisability considerations) (Table (Table6). 6 ). Whilst such a schema can be conceptually helpful, it may be appropriate to draw on more than one approach in any case study, particularly in the context of conducting health services research. Doolin has, for example, noted that in the context of undertaking interpretative case studies, researchers can usefully draw on a critical, reflective perspective which seeks to take into account the wider social and political environment that has shaped the case[ 11 ].
Example of epistemological approaches that may be used in case study research
How are case studies conducted?
Here, we focus on the main stages of research activity when planning and undertaking a case study; the crucial stages are: defining the case; selecting the case(s); collecting and analysing the data; interpreting data; and reporting the findings.
Defining the case
Carefully formulated research question(s), informed by the existing literature and a prior appreciation of the theoretical issues and setting(s), are all important in appropriately and succinctly defining the case[ 8 , 12 ]. Crucially, each case should have a pre-defined boundary which clarifies the nature and time period covered by the case study (i.e. its scope, beginning and end), the relevant social group, organisation or geographical area of interest to the investigator, the types of evidence to be collected, and the priorities for data collection and analysis (see Table Table7 7 )[ 1 ]. A theory driven approach to defining the case may help generate knowledge that is potentially transferable to a range of clinical contexts and behaviours; using theory is also likely to result in a more informed appreciation of, for example, how and why interventions have succeeded or failed[ 13 ].
Example of a checklist for rating a case study proposal[ 8 ]
For example, in our evaluation of the introduction of electronic health records in English hospitals (Table (Table3), 3 ), we defined our cases as the NHS Trusts that were receiving the new technology[ 5 ]. Our focus was on how the technology was being implemented. However, if the primary research interest had been on the social and organisational dimensions of implementation, we might have defined our case differently as a grouping of healthcare professionals (e.g. doctors and/or nurses). The precise beginning and end of the case may however prove difficult to define. Pursuing this same example, when does the process of implementation and adoption of an electronic health record system really begin or end? Such judgements will inevitably be influenced by a range of factors, including the research question, theory of interest, the scope and richness of the gathered data and the resources available to the research team.
Selecting the case(s)
The decision on how to select the case(s) to study is a very important one that merits some reflection. In an intrinsic case study, the case is selected on its own merits[ 8 ]. The case is selected not because it is representative of other cases, but because of its uniqueness, which is of genuine interest to the researchers. This was, for example, the case in our study of the recruitment of minority ethnic participants into asthma research (Table (Table1) 1 ) as our earlier work had demonstrated the marginalisation of minority ethnic people with asthma, despite evidence of disproportionate asthma morbidity[ 14 , 15 ]. In another example of an intrinsic case study, Hellstrom et al.[ 16 ] studied an elderly married couple living with dementia to explore how dementia had impacted on their understanding of home, their everyday life and their relationships.
For an instrumental case study, selecting a "typical" case can work well[ 8 ]. In contrast to the intrinsic case study, the particular case which is chosen is of less importance than selecting a case that allows the researcher to investigate an issue or phenomenon. For example, in order to gain an understanding of doctors' responses to health policy initiatives, Som undertook an instrumental case study interviewing clinicians who had a range of responsibilities for clinical governance in one NHS acute hospital trust[ 17 ]. Sampling a "deviant" or "atypical" case may however prove even more informative, potentially enabling the researcher to identify causal processes, generate hypotheses and develop theory.
In collective or multiple case studies, a number of cases are carefully selected. This offers the advantage of allowing comparisons to be made across several cases and/or replication. Choosing a "typical" case may enable the findings to be generalised to theory (i.e. analytical generalisation) or to test theory by replicating the findings in a second or even a third case (i.e. replication logic)[ 1 ]. Yin suggests two or three literal replications (i.e. predicting similar results) if the theory is straightforward and five or more if the theory is more subtle. However, critics might argue that selecting 'cases' in this way is insufficiently reflexive and ill-suited to the complexities of contemporary healthcare organisations.
The selected case study site(s) should allow the research team access to the group of individuals, the organisation, the processes or whatever else constitutes the chosen unit of analysis for the study. Access is therefore a central consideration; the researcher needs to come to know the case study site(s) well and to work cooperatively with them. Selected cases need to be not only interesting but also hospitable to the inquiry [ 8 ] if they are to be informative and answer the research question(s). Case study sites may also be pre-selected for the researcher, with decisions being influenced by key stakeholders. For example, our selection of case study sites in the evaluation of the implementation and adoption of electronic health record systems (see Table Table3) 3 ) was heavily influenced by NHS Connecting for Health, the government agency that was responsible for overseeing the National Programme for Information Technology (NPfIT)[ 5 ]. This prominent stakeholder had already selected the NHS sites (through a competitive bidding process) to be early adopters of the electronic health record systems and had negotiated contracts that detailed the deployment timelines.
It is also important to consider in advance the likely burden and risks associated with participation for those who (or the site(s) which) comprise the case study. Of particular importance is the obligation for the researcher to think through the ethical implications of the study (e.g. the risk of inadvertently breaching anonymity or confidentiality) and to ensure that potential participants/participating sites are provided with sufficient information to make an informed choice about joining the study. The outcome of providing this information might be that the emotive burden associated with participation, or the organisational disruption associated with supporting the fieldwork, is considered so high that the individuals or sites decide against participation.
In our example of evaluating implementations of electronic health record systems, given the restricted number of early adopter sites available to us, we sought purposively to select a diverse range of implementation cases among those that were available[ 5 ]. We chose a mixture of teaching, non-teaching and Foundation Trust hospitals, and examples of each of the three electronic health record systems procured centrally by the NPfIT. At one recruited site, it quickly became apparent that access was problematic because of competing demands on that organisation. Recognising the importance of full access and co-operative working for generating rich data, the research team decided not to pursue work at that site and instead to focus on other recruited sites.
Collecting the data
In order to develop a thorough understanding of the case, the case study approach usually involves the collection of multiple sources of evidence, using a range of quantitative (e.g. questionnaires, audits and analysis of routinely collected healthcare data) and more commonly qualitative techniques (e.g. interviews, focus groups and observations). The use of multiple sources of data (data triangulation) has been advocated as a way of increasing the internal validity of a study (i.e. the extent to which the method is appropriate to answer the research question)[ 8 , 18 - 21 ]. An underlying assumption is that data collected in different ways should lead to similar conclusions, and approaching the same issue from different angles can help develop a holistic picture of the phenomenon (Table (Table2 2 )[ 4 ].
Brazier and colleagues used a mixed-methods case study approach to investigate the impact of a cancer care programme[ 22 ]. Here, quantitative measures were collected with questionnaires before, and five months after, the start of the intervention which did not yield any statistically significant results. Qualitative interviews with patients however helped provide an insight into potentially beneficial process-related aspects of the programme, such as greater, perceived patient involvement in care. The authors reported how this case study approach provided a number of contextual factors likely to influence the effectiveness of the intervention and which were not likely to have been obtained from quantitative methods alone.
In collective or multiple case studies, data collection needs to be flexible enough to allow a detailed description of each individual case to be developed (e.g. the nature of different cancer care programmes), before considering the emerging similarities and differences in cross-case comparisons (e.g. to explore why one programme is more effective than another). It is important that data sources from different cases are, where possible, broadly comparable for this purpose even though they may vary in nature and depth.
Analysing, interpreting and reporting case studies
Making sense and offering a coherent interpretation of the typically disparate sources of data (whether qualitative alone or together with quantitative) is far from straightforward. Repeated reviewing and sorting of the voluminous and detail-rich data are integral to the process of analysis. In collective case studies, it is helpful to analyse data relating to the individual component cases first, before making comparisons across cases. Attention needs to be paid to variations within each case and, where relevant, the relationship between different causes, effects and outcomes[ 23 ]. Data will need to be organised and coded to allow the key issues, both derived from the literature and emerging from the dataset, to be easily retrieved at a later stage. An initial coding frame can help capture these issues and can be applied systematically to the whole dataset with the aid of a qualitative data analysis software package.
The Framework approach is a practical approach, comprising of five stages (familiarisation; identifying a thematic framework; indexing; charting; mapping and interpretation) , to managing and analysing large datasets particularly if time is limited, as was the case in our study of recruitment of South Asians into asthma research (Table (Table1 1 )[ 3 , 24 ]. Theoretical frameworks may also play an important role in integrating different sources of data and examining emerging themes. For example, we drew on a socio-technical framework to help explain the connections between different elements - technology; people; and the organisational settings within which they worked - in our study of the introduction of electronic health record systems (Table (Table3 3 )[ 5 ]. Our study of patient safety in undergraduate curricula drew on an evaluation-based approach to design and analysis, which emphasised the importance of the academic, organisational and practice contexts through which students learn (Table (Table4 4 )[ 6 ].
Case study findings can have implications both for theory development and theory testing. They may establish, strengthen or weaken historical explanations of a case and, in certain circumstances, allow theoretical (as opposed to statistical) generalisation beyond the particular cases studied[ 12 ]. These theoretical lenses should not, however, constitute a strait-jacket and the cases should not be "forced to fit" the particular theoretical framework that is being employed.
When reporting findings, it is important to provide the reader with enough contextual information to understand the processes that were followed and how the conclusions were reached. In a collective case study, researchers may choose to present the findings from individual cases separately before amalgamating across cases. Care must be taken to ensure the anonymity of both case sites and individual participants (if agreed in advance) by allocating appropriate codes or withholding descriptors. In the example given in Table Table3, 3 , we decided against providing detailed information on the NHS sites and individual participants in order to avoid the risk of inadvertent disclosure of identities[ 5 , 25 ].
What are the potential pitfalls and how can these be avoided?
The case study approach is, as with all research, not without its limitations. When investigating the formal and informal ways undergraduate students learn about patient safety (Table (Table4), 4 ), for example, we rapidly accumulated a large quantity of data. The volume of data, together with the time restrictions in place, impacted on the depth of analysis that was possible within the available resources. This highlights a more general point of the importance of avoiding the temptation to collect as much data as possible; adequate time also needs to be set aside for data analysis and interpretation of what are often highly complex datasets.
Case study research has sometimes been criticised for lacking scientific rigour and providing little basis for generalisation (i.e. producing findings that may be transferable to other settings)[ 1 ]. There are several ways to address these concerns, including: the use of theoretical sampling (i.e. drawing on a particular conceptual framework); respondent validation (i.e. participants checking emerging findings and the researcher's interpretation, and providing an opinion as to whether they feel these are accurate); and transparency throughout the research process (see Table Table8 8 )[ 8 , 18 - 21 , 23 , 26 ]. Transparency can be achieved by describing in detail the steps involved in case selection, data collection, the reasons for the particular methods chosen, and the researcher's background and level of involvement (i.e. being explicit about how the researcher has influenced data collection and interpretation). Seeking potential, alternative explanations, and being explicit about how interpretations and conclusions were reached, help readers to judge the trustworthiness of the case study report. Stake provides a critique checklist for a case study report (Table (Table9 9 )[ 8 ].
Potential pitfalls and mitigating actions when undertaking case study research
Stake's checklist for assessing the quality of a case study report[ 8 ]
Conclusions
The case study approach allows, amongst other things, critical events, interventions, policy developments and programme-based service reforms to be studied in detail in a real-life context. It should therefore be considered when an experimental design is either inappropriate to answer the research questions posed or impossible to undertake. Considering the frequency with which implementations of innovations are now taking place in healthcare settings and how well the case study approach lends itself to in-depth, complex health service research, we believe this approach should be more widely considered by researchers. Though inherently challenging, the research case study can, if carefully conceptualised and thoughtfully undertaken and reported, yield powerful insights into many important aspects of health and healthcare delivery.
Competing interests
The authors declare that they have no competing interests.
Authors' contributions
AS conceived this article. SC, KC and AR wrote this paper with GH, AA and AS all commenting on various drafts. SC and AS are guarantors.
Pre-publication history
The pre-publication history for this paper can be accessed here:
http://www.biomedcentral.com/1471-2288/11/100/prepub
Acknowledgements
We are grateful to the participants and colleagues who contributed to the individual case studies that we have drawn on. This work received no direct funding, but it has been informed by projects funded by Asthma UK, the NHS Service Delivery Organisation, NHS Connecting for Health Evaluation Programme, and Patient Safety Research Portfolio. We would also like to thank the expert reviewers for their insightful and constructive feedback. Our thanks are also due to Dr. Allison Worth who commented on an earlier draft of this manuscript.
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IMAGES
VIDEO
COMMENTS
Case study research typically includes multiple data collection techniques and data are collected from multiple sources. Data collection techniques include
Besides discussing case study design, data collection, and analysis, the refresher addresses several key features of case study research.
THE CASE STUDY IS a data collection method in which in-depth descriptive information about specific entities, or cases, is collected, organized, interpreted
The case study is a data collection method that gathers, organizes, interprets, and presents comprehensive descriptive information about specific individuals or
STEPS OF CASE STUDY METHOD · Identify and define the research questions - The researcher starts with establishing the focus of the study by identifying the
Several points need to be kept in mind when collecting data: • Evidence must be collected systematically. While the case study methodology is very flexible, it
Case studies tend to focus on qualitative data using methods such as interviews, observations, and analysis of primary and secondary sources (
The case study method can explore and illustrate the research topic in various ways by collecting the data within the context of the subject
How are case studies conducted? · Defining the case · Selecting the case(s) · Collecting the data · Analysing, interpreting and reporting case
Study design: Multiple-case design of respiratory services in health regions in England and Wales. The cases: Four PCOs. Data collection: Face-to-face and