Module MA4550-KP05

Statistical Methods (StaMet)


Duration

1 Semester

Turnus of offer

each summer semester

Credit points

5

Course of studies, specific fields and terms:

  • Master in Health and Healthcare Science 2019, compulsory, Research in the health and care sciences
  • Master in Health and Healthcare Science 2025, compulsory, Research in the health and care sciences

Classes and lectures:

  • Statistical Methods (lecture, 2 SWS)
  • Statistical Methods (exercise, 2 SWS)

Workload:

  • 90 hours private studies and exercises
  • 60 hours in-classroom work

Contents of teaching:

  • Basics of descriptive and inferential statistics
  • Bivariate analyses (for difference and correlation hypotheses)
  • Regression analyses (linear and logistic regression)
  • Survival time analyses (Kaplan-Meier and Cox regression)
  • Dealing with missing values
  • Data analysis by means of an established statistics program

Qualification-goals/Competencies:

  • Knowledge and Understanding: Students know the difference between descriptive and inferential statistics.
  • Knowledge and Understanding: Be able to name the major areas of univariate data descriptors (scale level, location measures, scatter measures, modality, skewness) and assign the various measures to scale levels according to their applicability.
  • Knowledge and Understanding: Know the two main areas of inferential statistics (estimation and testing) and be able to name associated methods (point estimation and confidence interval or significance testing).
  • Knowledge and Understanding: Know commonalities and similarities among measures of association, risk, and correlation.
  • Knowledge and Understanding: Know the basic idea of regression as well as commonalities and similarities of linear and logistic regression.
  • Knowledge and Understanding: Know the basic idea of survival time analysis.
  • Knowledge and Understanding: Know about the problem of missing values.
  • Use, application, and generation of knowledge: Students will be able to perform univariate and bivariate descriptive analysis of a given data set.
  • Use, application, and generation of knowledge: to be able to pose research questions and hypotheses, operationalize them in such a way that they can be evaluated statistically, and choose an appropriate statistical method (as far as part of the course content).
  • Use, application and generation of knowledge: to be able to check whether the assumptions of a chosen method of analysis are sufficiently fulfilled and can propose alternative methods of analysis.
  • Use, application, and generation of knowledge: to be able to correctly report and interpret statistical results as well as critically examine analyses performed by others for potential problems in methodology, presentation of results, or interpretation.
  • Communication and Cooperation: Students will be able to select and meaningfully communicate a scientific question and the results of a statistical analysis appropriate to answer the question.
  • Communication and cooperation: to be able to point out possible weaknesses and possible misinterpretations of statistical results that might escape a non-scientifically literate addressee.
  • Scientific self-concept/professionalism: students will be able to explain why it is appropriate to consider statistical aspects in all stages of quantitative health science research.
  • Scientific self-concept/professionalism: to be committed to a careful statistical approach.
  • Scientific self-concept/professionalism: students realistically assess their own statistical methodological competencies and independently expand and deepen their basic methodological knowledge.

Grading through:

  • written exam

Responsible for this module:

Literature:

  • Schäfer A, Schöttker-Königer T (2015) : Statistik und quantitative Methoden für Gesundheitsfachberufe Heidelberg/Berlin: Springer
  • Weiß C (2013) : Basiswissen Medizinische Statistik 6. Auflage. Heidelberg/Berlin: Springer

Language:

  • German and English skills required

Notes:

Admission requirements for taking the module:
- None

Admission requirements for participation in module examination(s):
- None

Module Exam(s):
- MA4550-L1: Statistical Methods, written exam, 90min, 100% of the module grade

Last Updated:

16.09.2025