What are case reports and series studies?
A case report is the most basic type of descriptive study and documents an individual’s medical experience. A clinician may see an interesting case and describe what he or she has seen.
A case series is an extension of a case report and is based on a small group of individuals. Case reports and case series are useful for hypothesis generating, but because the is no comparison if group, their use is limited and statistical relationships between exposure and outcome cannot be assessed.
What are the advantages of case reports and series?
Advantages:
What are the disadvantages of case reports and series?
Disadvantages:
The rest of the study designs can all look at associations between exposure (or treatment) and outcome/disease by comparing outcome between different levels of exposure.
What are ecological studies?
Ecological studies look at the association between exposure an disease on a population or area level rather than on an individual level. They look at questions like ‘do populations or areas with high levels of exposure have high rates of disease?’, rather than ‘do individuals with higher exposure have a higher risk of disease?’
For example to look at the association between smoking and cardiovascular disease, data were collected for every state in the US on ‘average number of cigarettes sold per person’ and ‘rate of cardiovascular mortality’. It was found that death rates from cardiovascular disease are highest in the states where the greatest amount of cigarettes are sold.
The benefit of ecological studies is that data on a population level are often readily available and published routinely (eg death rates, national food consumption data, cancer statistics, hospital admission data, census data etc), and such studies can therefore be done quickly and inexpensively.
A drawback is confounding which can be a major problem and data on potential confounders are often not available. For example, those states with high rates of cardiovascular mortality may share many other characteristics than just high levels of smoking, eg high social deprivation, poor diet, high proportion of elderly etc, any one of which could be the true explanation for the high rates of cardiovascular mortality.
What is meant by ecological fallacy?
With ecological studies any associations seen are on a population level, and we cannot assume that this transfers to an individual level. To assume that associations seen one population level apply to the individual level is called the ecological fallacy. The unit of analysis is a population and it is at this level that the interpretation should be conducted. In the smoking and CHD example, we cannot assume the individuals who smoke are the ones who are more likely to die from cardiovascular disease.
How should you go about analysing data from ecological studies?
Data from ecological studies are analysed on a group level and generally presented in a scatter diagram with exposure on the x-axis (horizontal axis) and outcome on the y-axis (vertical axis). Each point on the scatter diagram represents an area/population. A correlation coefficient (r), which can vary between +1 (perfect positive correlation) and -1 (perfect negative correlation), is then computed.
Ecological studies are a good first step in investigating possible exposure-disease relationships, especially when there are restraints on time or money, and generating hypotheses. They are also good when investigating an exposure which has little variation between individuals within a population/area, but large variation between populations/areas (eg some dietary factors). However any relations seen need to be investigated further in an individual-based study where data on confounders are collected.
What are the advantages of ecological studies?
Advantages:
What are the disadvantages of ecological studies?
Disadvantages:
What is a cross-sectional study?
A cross-sectional study collects observations on individuals at one point in time, thereby providing a ‘snap shot’ of the health of the population. These may be observations on disease status to measure prevalence of disease, or some continuous measure such as blood pressure, level of protein in serum etc. As people are surveyed at one time point only, cross-sectional studies are relatively cheap but only provide information on disease prevalence and not incidence. Study subjects should be selected so they are representative of the target population, eg if target population is adults in Nottingham, the study population may be defined as all adults registered with a GP in Nottingham, and a 1 in 4 random sample may be taken from the GP registers to provide the sampling population. Data on exposure variables are usually collected as well so that associations between exposures and disease can be explored. Confounding can occur in this study design, but as long as data on potential confounders are collected, they can be dealt with at the analysis stage (stratification or multiple regression).
Cross-sectional studies only consider prevalent case of disease (ie current cases) so any risk factors identified will be determinants of ‘having the disease’, of which survival as well as incidence are components. For example a cross-sectional study showing deprived people have a lower prevalence of heart disease than more affluent people, does not necessarily imply they get less disease. It may be that they develop heart disease at the same rate but the deprived people don’t survive as long.
How should you go about analysis of cross-sectional studies?
The outcome variables should be summarised, using statistics appropriate to the type of variable. Associations can be initially assessed by computing an appropriate measure of effect (odds ratio, mean difference etc) and 95% confidence interval, and statistical significance determined from the appropriate test (eg chi-squared test, t-test, non-parametric test etc).
What kinds of things are cross-sectional studies appropriate for?
This method is appropriate for investigating some health outcome of interest eg prevalence of a disease, and as a first step in identifying risk factors for a disease.
It is not suitable when the outcome or exposure of interest is rare as you may end up with very few (or even no) people in your sample with the outcome/exposure and therefore cannot determine associations. More than one disease or exposure can be assessed in the same study, although as with any study, an a priori primary hypothesis should be stated. Changes in prevalence can be assessed by carrying out a series of cross-sectional studies. This study design is not suitable for looking at incidence or natural history of a disease.
What are the advantages of cross sectional studies?
Advantages:
What are the disadvantages of cross-sectional studies?
Disadvantages:
Describe what case-control studies are.
The case-control study is a useful study design as is it suitable for looking at risk factors for rare diseases. However, it cannot look at how much disease there is (prevalence/incidence), only at whether associations with exposures exist.
In a case-control study subjects are selected on the basis of the presence or absence of disease. A group of individuals with the disease (cases) are selected, along with a comparison group of individuals without the disease (controls). This method of sampling reduces the number of disease-free people needed to be studied (hence good for rare diseases). The exposure of interest is then measured in the two groups (this may be past or current exposure) and compared. The effect of exposure on the risk of disease is estimated using the odds ratio.
Disease frequency cannot be measured because subjects are chosen or samples according to their disease status. To obtain a prevalence estimate, a cross-sectional study is needed, and to obtain an incidence estimate a cohort study should be conducted.
When is a case-control study appropriate?
A case-control study is appropriate when you have a single disease of interest that may be rare, and you want to look at associations with one or more exposure(s) that are relatively common.
Describe what things need to be considered when choosing your cases for a case-control study.
When choosing your cases the following needs to be considered:
Describe what needs to be considered when choosing your controls for a case control study.
When choosing your controls, the following need to be considered:
What are the possible problems that may be associated with case-control studies?
Because in case control studies the disease status is already known at the time exposure data is collected, information bias can be a problem. As described for cross sectional studies, recall or reporting bias can be introduced. Another type of information bias common in case control studies is observer or interviewer bias. This arises when the investigator knows who cases are, which influences the way in which data is collected. For example, the interviewer may probe more deeply for information or prompt the respondent if the subject is a case. To overcome this, the investigator should be blind to the hypothesis under study and the case/control status of each subject, and the same forms/questions should be used for cases and controls.
As with cross-sectional studies, reverse causation is a possibility. Often data on past exposure are collected which helps eliminate the possibility, but without data on the timing of exposure and disease onset, it is difficult to eliminate completely.
Describe how you should go about analysing case-control data.
Data from case control studies are initially analysed by cross-tabulating the outcomes (case-control status) against the exposure.
When computing percentages previously we have computed the percentage diseased on each exposure group. Whilst this makes sense for data sets in which the subjects have been randomly selected (eg cross sectional survey or trials), case control studies are different because of the way in which the diseased and disease-free are selected. Therefore in case-control studies, we actually want to know about the percentage exposed amongst controls, not the percentage diseased amongst exposed and unexposed. To test statistical significance the chi-squared test is used since the variables are categorical.
The only measure of effect suitable for case-control data is the odds ratio. This is because the design of case-control studies means that the risk of disease, and hence the risk ratio, cannot be estimated. The odds ratio and 95% confidence interval around this should also be computed to tell us how precise this estimate is likely to be. This can be done in SPSS, but remember to always compute the odds ratio first by hand and check they match with that displayed in SPSS (and if necessary recode to get the cross-tab table on the right format, or take reciprocals if the values displayed). Odds ratios can be interpreted in the same way as risk ratios.
I’m most studies there are potential confounders that no to be considered since they may be distorting the relationship between the exposure and disease. So what we would actually like is an estimate of the odds ratio which has had the effect of the confounder(s) removed. In other words, we want an adjusted odds ratio. There are sophisticated statistical ways of getting an adjusted odds ratio called multivariate models. When the outcome is binary, such as in case-control studies, multiple logistic regression is the appropriate multivariate method.
What are matched case-control studies?
Often in case-control studies all identified cases are selected for inclusion and a random or systematic sample of potential controls. However, sometimes controls are selected so they are matched to a case. This involves the pairing of one (or more) control to a case based on specific variables (other than those under investigation) such as age, sex, or place of residence. The specific variables are factors thought to be confounders in the relationship between exposure and disease.
There are two types of matching, individual matching where each case is individually matched to one or more controls based on matching variables, and frequency matching where controls are chosen to ensure roughly the same number of controls fall in each category of the matching variable as there are cases.
Matching is carried out to help control for confounding, but this can only be achieved if matching is accompanied by a matched analysis. The analysis needs to take account of the matching.
The result of matching and carrying out a matched analysis is that the precision of the estimated odds ratio can be increased. There is no simple answer as to whether to match or not. However matching without properly thinking it through can lead to complications, and if we match in a variable, we cannot then look at the association between that variable and the disease.
What are the advantages of case-control studies?
Advantages:
What are the disadvantages of case-control studies?
Disadvantages:
What are the 6 main types of study design?
The main types of study design are:
1) . Descriptive: case reports and case series
2) . Ecological
3) . Cross-sectional
4) . Case-control
5) . Cohort (longitudinal)
6) . Intervention or clinical trials
These designs are ranked by power according to the level of evidence that they provide, from case reports/series which are simply a description of cases, to the gold standard design, the randomised controlled trial, which provides the strongest evidence of an association. The first 5 designs are called observational studies and the last is an experimental design. Within this section we will cover case-control studies, cohort studies and clinical trials in the most detail.
Describe cohort studies.
Cohort studies measure incidence of disease. Since incidence measurements are considered as the gold standard in epidemiology, these studies are held in high esteem. In the traditional prospective cohort study, the study population is ‘free of disease’ at the beginning and the exposure variables are measured and then the population is followed through time to determine their disease outcome, and to compare the risk of disease in those who are exposed and unexposed.