Advanced Statistical Analysis Techniques
Full course description
The major objective of this course is to prepare students optimally for the use of statistics in their practical work and the period after. Students are taught to apply the most commonly used statistical analysis techniques in a responsible way. Also, they should be better able to judge the statistical facets of research as carried out by others.
The training aims at applying advanced statistical techniques in a responsible way. The emphasis will be on concepts underlying the statistical techniques and on interpreting the results, with mathematics being kept to a minimum. The course material is primarily based on SPSS software. The use of R will only be briefly approached.
- The following techniques will be treated
- Analysis of variance and covariance
- Linear regression
- Logistic regression
- Survival analysis
- Analysis of repeated measures (linear multilevel models)
For each topic, there are two lectures and two tutorials. During the first tutorial, theoretical issues are discussed, while the emphasis on the interpretation of results obtained with SPSS on real data sets is given in the second tutorial. Concerning the lectures, the first one is more theoretical and involves the presentation of the method and the underlying assumptions. In particular, the consequences of violating the assumptions are investigated. The practical interpretation of software outputs is also of great interest. In the second part, we analyze a real dataset together and debate over the best choices to make to analyze the data. Then, we discuss how the results can be summarized to be presented to an audience with minimal statistical knowledge.
Course objectives
After completing this unit, the participants should have acquired the knowledge and skills required for the independent use and critical assessment of various (multivariable) statistical analysis concepts, procedures and techniques which are prominent in epidemiological research:
- Analysis of variance and covariance
- Linear regression
- Logistic regression
- Survival analysis
- Analysis of repeated measures (linear multilevel models)
For each of these statistical techniques, the participant should be able to deal with confounding, interaction and outliers, be aware of the assumptions underlying the use of the technique, know some advantages and disadvantages of the technique, interpret results and use dummy coding. The participant should also be able to choose an appropriate statistical analysis strategy, given a specific epidemiological research question and study design.