STUDY DESIGNS: case control, cohort and qualitative

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STUDY DESIGNS: case control, cohort and qualitative. Dr TAMSIN Newlove-delgado Academic registrar in public health. Aims and objectives. To outline and revise: Aetiology and causation Case control study design, advantages and disadvantages The odds ratio - PowerPoint PPT Presentation

Transcript of STUDY DESIGNS: case control, cohort and qualitative

DR TAMSIN NEWLOVE-DELGADOACADEMIC REGISTRAR IN PUBLIC HEALTH

STUDY DESIGNS:case control, cohort and

qualitative

Aims and objectives

To outline and revise: Aetiology and causation Case control study design, advantages and disadvantages The odds ratio Cohort study design, advantages and disadvantages Relative risk

To summarize some key points about qualitative study design: Use Methods Quality in qualitative studies

Relevant Paper 3 Syllabus

3.1.10. Knows the benefits and weaknesses of different quantitative study designs to address different clinical questions: Case-control Cohort

3.6 Critically appraises cohort and case control studies

Relevant Paper 3 Syllabus

3.4. Qualitative Methods Knows when to apply qualitative research methodologies Additional approaches to sampling in qualitative studies Different approaches to data gathering in qualitative

studies The role of qualitative methodologies in instrument (i.e.

screening, diagnostic, outcome measure) development Methods for validating qualitative data Methods for minimising bias Methods of analyzing data Data saturation

3.6 – Critically appraises qualitative research

Plan of afternoon

1pm-2.30pm – Case control and cohort studies: including coffee break and exam questions

2.30pm – 3.30pm approx – Qualitative studies

The Hierarchy of evidence

RCT: not always the answer1

UnnecessaryImpractical/UnethicalInappropriate

Prognosis Diagnosis Quality issues And more

Study designs2

Objective Common design

Prevalence Cross-sectional

Incidence Cohort

Cause Cohort, case-control, cross-sectional (in order of reliability)

Prognosis Cohort

Treatment effect Controlled trial

Issues of how, why etc as opposed to what or how much

Qualitative design

Investigating aetiology

Epidemiological studies of aetiology are usually observational not experimental

An observed association may be due to: True cause Reverse causation Chance (random error) Bias (systematic error) Confounding

Happy with these concepts?

Investigating aetiology

Questions of causation

The Bradford-Hill criteria (J Roy Soc Med 1965:58:295-300)

1. Strength of the association.2. Consistency of findings.3. Specificity of the association.4. Temporal sequence of association.5. Biological gradient.6. Biological plausibility.7. Coherence.8. Experiment.

Can you think of examples where this doesn’t work?

The Case Control Study: Design

The case control study: design3

Advantages

Efficient for studies of rare diseases and diseases with long latent periods

Cheap, simple, quick (in comparison to cohorts)

Can examine multiple exposures – generate hypotheses

Sometimes the only practical option (e.g. where long latent period between exposure and disease)

Disadvantages

There are many!Can study only one outcomeNotorious for being prone to bias:

Sampling/selection bias – selection of cases and controls

Observation and recall bias

Not good for rare exposuresThe temporal sequence between exposure

and disease may be difficult to determine.As with all studies, confounding

Selecting cases

Need a clear case definition and sourceIncident or prevalent cases? Cases selected for a study should be

representative of all cases of the disease in the population. 

Should be a random sample of all patients with the disease

This is difficult!: many cases not diagnosed or misdiagnosed

A hospital sample in some diseases may be very different from a community sample

Selecting controls

 Controls are used to estimate the prevalence of exposure in the population which gave rise to the cases.

The ideal control group would comprise a random sample from the general population that gave rise to the cases. 

 Controls should meet all the criteria for cases, apart from having the disease itself; but they should have the potential to develop it

Recruiting more than one control per case may improve the statistical power of the study (up to 4 controls per case)

Selecting controls

Convenience sampleMatched sampleUsing two or more control groupsUsing population base sample e.g. from

registers

Selecting controls: matching

Matching – Some studies are matched to select cases/controls who are as similar as possible e.g on age, ethnicity etc Difference between cases and controls therefore cannot be a

result of differences in the matching variables – for example, to take age into account

Can be useful in small samples – as we might not have sufficient subjects to adjust for several variables at once.

Difficult/complicated to match on too many factors.... In a large study with many variables it is easier to take an unmatched control group and adjust in the analysis for the variables on which we would have matched, using ordinary regression methods.

Important not to match on basis of risk factor of interest / too many factors – ‘overmatching’ may make the controls unrepresentative and underestimate the true difference

Matching means effect on disease of matched variables cannot be studied

Example of selection bias

• Bias introduced through poor selection of controls

• Case control studies of NSAIDS (exposure) in colorectal cancer3

Case control studies in psychiatry

Suicide a popular subject……. Barraclough, B., Bunch, J., Nelson, B., et al

(1974) A hundred cases of suicide: clinical aspects. British Journal of Psychiatry, 125, 355-373.

More modern examples: Fuller Torrey E, Rawlings R, Yolken RH. The

antecedents ofpsychoses: a case-control study of selected risk factors.

Schizophr Res2000; 46: 17–23.

Case control studies and the odds ratio

Estimates the strength of association between an exposure and an outcome

Does not calculate relative risk as retrospective

Does not give incidence/prevalence – unless all cases in a population are included

The odds ratio is a measure of the odds of exposure in the cases, compared to the odds of exposure in the control group. 

OR: 2 by 2 table

Cases Controls Total

Exposed a b A + b

Unexposed c d C + d

Total A + c B +d

OR = (a/c)/(b/d)

Imaginary worked example – Cats and schizophrenia

Schizophrenia Controls

Owned cat as child 80 100

Did not own cat as child

20 300

Total 100 400

Imaginary example– are cats associated with schizophrenia?

Odds of exposure in the cases: 80/20 = 4Odds of exposure in the controls: 100/300 = 0.33Odds ratio: 4/0.33 = 12.12So……the odds of having had a cat as a child in the

group with schizophrenia were over 12 times the odds of having had a cat as a child in the control group –

Or those with schizophrenia were over 12 times more likely to have had a cat as a child….

Why might we get this result?

Feline bias

Selection bias Cases recruited through a charity that runs ‘pet

experiences’ for people with mental illness Controls were a hospital sample recruited from an

allergy clinic Both of these would spuriously increase estimate of

effect

Recall bias Are those with schizophrenia more likely to

remember/report having had a cat – particularly if aware of hypothesis in question

Cohort studies

Cohort study design

Usually prospective; but can be retrospective

A prospective cohort

Prospective and retrospective cohort

Cohort studies may be prospective or retrospective, but both types define the cohort on the basis of exposure, not outcome.

Prospective cohort studies – participants are identified and followed up over time until the outcome of interest has occurred, or the time limit for the study has been reached. A temporal relationship between exposure and outcome can be established.

Retrospective cohort studies – exposure and outcome have already occurred at the start of the study. Pre-existing data, such as medical notes, can be used to assess any causal links, so lengthy follow-up is not required.

Advantages

Can investigate risk factors impossible to study in controlled trials - e.g. smoking or asbestos

Describe incidence and natural historyMultiple outcomes can be measured for any one

exposure.Exposure is measured before the onset of disease

(in prospective cohort studies).Good for measuring rare exposures, for example

among different occupations.Demonstrate direction of causality.Can calculate relative risk

Disadvantages

Expensive, time consumingLoss to follow up can introduce biasNeed a large sample size – especially for less

common outcomesNot good for rare outcomes or long latency

periodsNeed to maintain consistency of follow up

over timeSystematic misclassification of exposure or

outcome status – information bias

Sources of bias in cohort studies

Differential misclassification: can lead to an over- or underestimate of the effect between exposure and outcome.

 Losses to follow up : degree to which losses to follow up are related to either exposure or outcome can lead to serious bias in the measurement of effect of exposure and outcome.2

Cohort studies in psychiatry: example

Andreasson et al:  cannabis consumption and development of schizophrenia in a cohort of 45,570 Swedish conscripts4.

Relative risk in cohort studies

Analysis Riskexp = a / (a+c) (divide by total exposed)

Riskunexp = b / (b+d) (divide by total unexposed)

Estimate relative risk = Riskexp / Riskunexp

Indicates increased/decreased risk of disease assoc with exp: RR = 1 – risk is same in exposed and unexposed groups RR > 1 – risk is greater in exposed group RR < 1 – reduction in risk in exposed group Exposed to factor:

Yes No Total

Disease of interest:

Yes a b a+b

No c d c+d

Total a+c b+d N = a+b+c+d

Example: relative risk from Swedish conscript cohort study4

Cannabis exposure

None Low Medium High

Schizophrenia

197 18 10 21

No schizophrenia

41083 2818 692 731

Total 41280 2836 702 752

Coffee and exam questions

Qualitative studies

Answers questions such as: What is X & how does X vary in diff circumstances & why? Not ‘how big is X or how many X’s are there?

Concerned with meanings people attach to their experience of social world & how make sense of world

Uses of qualitative research

Preliminary to quantitative research Helps ensure validity of data obtained E.g. interviews to inform a survey

To validate quantitative research or provide a diff perspective on same social phenomena

Used independently to uncover social processes or access areas of social life not amenable to quantitative research

Address the 'gap' between evidence-based approaches based on the findings of randomised control trials and the practice of clinical decision-making in individual cases

Qualitative vs. quantitative

Quantitative Qualitative

Type of reasoning Deduction Induction

Objectivity Subjectivity

Causation Meaning

Type of question Pre-specified Open-ended

Outcome orientated Process orientated

Type of analysis Numerical estimation Narrative description

Qualitative research methods: data gathering

InterviewsFocus groupsObservational/ethnographic

Interviews

StructuredSemi-structuredDepth interviews

Consider: recordingReflexivity

Note on Reflexivity5

The researcher is not a neutral/mechanical tool The researcher is not doing an experiment in which she/he

sets the agenda The person/people the researcher talks to are not inanimate

objects, they also have agency and may try to set the agenda themselves

All social research, especially qualitative social research, hinges on social relationships:

They are affected by interpersonal dynamics and The researcher AND researched 'co-produce' social

encounters. Reflexivity is reflecting, or thinking critically, carefully,

honestly and openly, about the research experience and process.

Focus groups

Strengths Help to identify group norms/cultural values Group processes can help people to explore and clarify

their views in ways that may be less easily accessible in interview

Can encourage participation from those reluctant to be interviewed

Can encourage contributions from people who feel have nothing to say

Weaknesses Not easy option - data generated can be complex Potential issues with confidentiality, or with ‘sensitive’

topics

Observational/ethnographic

Instead of asking questions about behaviour – the researcher systematically watches people and events to observe everyday behaviours and relationships

Aspires to be ‘naturalistic’ in that people are studied in situ with as little interference by the researcher as is feasible and ethical

Covert or overtParticipant or non-participant

Observational/ethnographic

Choice of setting is purposive Consider characteristics of researcher, group and setting

Male, female Young, old Naïve or experienced Accepted by group but don’t ‘go native’!

Ethical issues Covert research roles must be justified

Recording observational data Relies on researcher acting as research instrument and documenting

the world they observe Good memory Clear and detailed recording Jotted notes Sift, decode and make sense of data to make meaningful

Sampling in qualitative research

Often a smaller sample size Rich in detail Phenomenon only needs to appear once Not describing incidence/prevalence or statistical

significance

Quantitative research uses probability samplingQualitative research uses non-probability sampling

  not representative samples  findings cannot be generalised to the whole study

population from which the sample was taken.   the people in the study population do not each have an

equal chance of being selected.

Sampling in qualitative research

Purposive sampling individual participants are selected deliberately for their specific

characteristics that are of importance to the study Quota based sampling

A quota is a defined number that must be included in a sample :ensures that a certain number of subjects from different subgroups with specific characteristics appear in the sample, so that all these characteristics are represented.

Snowball sampling Useful for hard-to-reach groups/populations Start with one or two contacts, ask for

referrals/recommendations etc

Theoretical sampling : sampling related to previously developed hypotheses or theories

Analysing qualitative data (1)

Data preparation Nature and scale of qualitative data Transcription Notes made during observation have to be turned into

detailed descriptive accounts Relationship between data and analysis

Transcripts provide descriptive record – not explanations Analytical process begins during data collection as data

already gathered are analysed and feed into/shape ongoing data collection

QUANT QUAL

CollectAnalyse

CollectAnalyse

Analysing qualitative data (2)

Goal To develop analytic categories to describe & explain social

phenomena May be derived inductively (from the data) or deductively

(predefined themes drawn from schedule & research Qs) 3 broad approaches

Thematic analysis Grounded theory Framework approach

Initial steps Manage & make sense of data Reading & re-reading to identify initial set of themes Coding, label themes, use their language Organising, grouping & refining of themes/categories

Software packages CAQDAS

Thematic analysis

Simplest formMost commonly used Groups data into themesCan simply describe &/or identify

relationships between themes Often includes themes that are anticipated

(literature review) or those that emerge from the data

Grounded theory

Glaser & Strauss coined term Process of coding & identifying categories as they ‘emerge’

from data Iterative process

Modified grounded theory (see Charmaz 2007)Theoretical samplingSaturation - CodingConstant comparison Use of memos

Framework approach

Developed by National Centre for Social ResearchMore deductiveSuited to applied or policy researchStarts from aims & objectives already set for study More structured topic guideAnalytical process similar to thematic but more explicit

& more strongly informed by prior knowledge5 stages:

Familiarisation Identifying a thematic framework Indexing Charting Mapping and interpretation

Ensuring quality

Improving validity (‘closeness to truth’) Triangulation: use of three or more different research

methods in combination; principally used as a check of validity

Respondent validation Checking of transcripts/tapes by independent analyst Reflexivity Attention to negative cases (‘deviant case analysis’   where

researcher's explanatory scheme appears weak or is contradicted by the evidence)

Clear exposition of methods of data collection & analysis

Critical appraisal checklists – CASP

IN SUMMARY2

Objective Common design

Prevalence Cross-sectional

Incidence Cohort

Cause Cohort, case-control, cross-sectional (in order of reliability)

Prognosis Cohort

Treatment effect Controlled trial

Issues of how, why etc as opposed to what or how much

Qualitative design

References

1. Greenhalgh T. How to Read a Paper2. Mann CJ. Observational Research methods:

Research design 2: cohort, cross-sectional and case-control studies. Emerg Med 2003 20: 54-60

3. Schulz KF and Grimes DA. Case Control Studies: research in reverse. The Lancet doi:10.1016/S0140-6736(02)07605-5

4. Andreasson S., Engstrom A., Allebeck P., Rydberg U. Cannabis and schizophrenia. A longitudinal study of Swedish conscripts (1987) Lancet, 2 (8574), pp. 1483-1485+1486.

5. Research Consortium on Educational Outcomes and Poverty. http://manual.recoup.educ.cam.ac.uk/wiki/index.php/Main_Page