In this four-weeks course, emphasis will be on research methods for biomedical (pre-clinical and clinical) studies. This course aims at providing basic knowledge of frequently used methods for biomedical studies. It is essential that the student works with these designs, and is able to discuss strengths and weaknesses. Three themes will be central in this course.
Choices between different study designs in animals or in humans, such as case-control, follow-up, randomized controlled trials will be discussed, as well as aspects specific to each of the study designs, for instance choice of controls, cross-over or parallel, randomisation, blinding.
Statistical methods to analyse data from these studies will be presented. The methods discussed include univariate and multivariate linear regression, logistic regression, survival analysis (Kaplan Meier survival curves and Cox regression), and linear mixed models.
Interpretation and validation.
Interpretation of the results involves the interpretation of relative risks, odds ratios and hazard ratios in univariate and multivariate analyses. Validation of the methods involves model checks, the reliability of measurements (inter- and intraobserver variation, kappa), the evaluation of diagnostic systems (ROC curves), and recognition of the principles of bias and confounding.
Other aspects discussed are literature search, database use (Access) and ethical aspects.
Students will be evaluated by preparing protocol for an animal experiment, handing in a written report on a clinical trial, the preparations and active participation of workgroups and computer practicals, and an examination (tentamen).
The student will be able to:
perform a comprehensive literature search for the design of a biomedical study.
translate a clinical problem into a research question.
explain methods of study design used in a clinical or population setting, such as a clinical trial, an observational follow-up study, and a case-control study, and knows how these studies are performed.
design a biomedical study in an efficient way.
choose, apply and interpret statistical analyses, such as linear or logistic regression analysis with and without repeated measurements and survival analysis (Kaplan Meier survival curves) in a clinical trial and an observational follow-up study.
evaluate the reliability and reproducibility of measurement systems.
recognise the possibility of bias and confounding in a study.
discuss ethical and legal aspects of clinical studies with human subjects.
J.P. Vandenbroucke, A. Hofman. Grondslagen der Epidemiologie.
A. Petrie, C. Sabin. Medical Statistics at a Glance.