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Study information

Statistics for Health and Life Sciences

Module titleStatistics for Health and Life Sciences
Module codeHPDM182
Academic year2024/5
Credits15
Module staff

Dr Eilis Hannon (Convenor)

Dr Harry Green (Convenor)

Duration: Term123
Duration: Weeks

10

0

0

Number students taking module (anticipated)

40

Module description

This module provides a broad introduction to statistical analysis for health and life science applications. The module starts by considering the different stages of a statistical investigation and emphasising the importance of problem formulation. The module highlights the benefits of exploratory data analysis based on descriptive statistics and graphs. Key concepts in probability theory and the role of statistical distributions in modelling health data will be covered. The core part of the module provides a foundation in regression modelling to include simple linear regression, logistic regression, survival analysis and models that account for complex temporal and hierarchical data structures. Embedded through the module is a strong emphasis on the critical evaluation of statistical methodology and interpretation of analysis results in the context of the specific health application. Throughout this module, you will gain practical experience of statistical computing using the R software environment and exposure to case studies based on real-world health data.

 

Module aims - intentions of the module

The aim of the module is to provide a modern statistical framework for answering health research questions through interrogation of a variety of health datasets such as electronic health records or other observational studies. The module will equip you with the theoretical underpinning and computational skills needed for advanced regression modelling of health data. Both frequentist and Bayesian approaches to modelling will be considered and contrasted. The module will cover common statistical concepts such as bias, confounding and missing data that are relevant for real world health applications. The module will emphasise the fundamental role of the statistician as a problem solver and consider the different stages of the “problem solving” cycle. Case studies will be used to help you develop an appreciation of modelling strategy and to give you practical experience of interpreting model findings in the context of real health problems.

 

Intended Learning Outcomes (ILOs)

ILO: Module-specific skills

On successfully completing the module you will be able to...

  • 1. Examine and apply fundamental concepts in hypothesis testing including sampling, probability and statistical distributions.
  • 2. Apply a range of statistical inference methods to address health data science problems including both simple and advanced regression models.
  • 3. Interpret and critically evaluate the results of statistical inference in the context of a specified quantitative health research question.

ILO: Discipline-specific skills

On successfully completing the module you will be able to...

  • 4. Formulate health research questions as statistical problems
  • 5. Draw conclusions from the results of a data analysis and justify those conclusions, appropriately acknowledging uncertainty in the results

ILO: Personal and key skills

On successfully completing the module you will be able to...

  • 6. Use the R software environment for statistical computing
  • 7. Understand and critically appraise academic research papers in research field
  • 8. Effectively communicate arguments, evidence and conclusions using a variety of formats in a manner appropriate to the intended audience

Syllabus plan

Whilst the module’s precise content may vary from year to year, an example of an overall structure is as follows:

  • Formulating statistical problems
  • Statistical computing using R
  • Exploratory data analysis
  • Probability theory and statistical distributions
  • Hypothesis testing including parametric and non-parametric methods
  • Bayesian and frequentist inference
  • Power and sample size calculations
  • Linear regression modelling
  • Generalised linear models
  • Survival analysis
  • Multilevel models for longitudinal or hierarchical data
  • Missing data mechanisms and multiple imputation
  • Causal inference for healthcare evaluations including adjustment methods for addressing measured and unmeasured confounding

Learning activities and teaching methods (given in hours of study time)

Scheduled Learning and Teaching ActivitiesGuided independent studyPlacement / study abroad
351150

Details of learning activities and teaching methods

CategoryHours of study timeDescription
Scheduled Learning and Teaching15Lectures (10 x 1.5 hours)
Scheduled Learning and Teaching20Computer based workshops (10 x 2 hours)
Guided independent study85Background reading and preparation for written assessment
Guided independent study30Preparation for group assessment

Formative assessment

Form of assessmentSize of the assessment (eg length / duration)ILOs assessedFeedback method
Multiple choice questions will be given as part of the workshops, and will be self-assessed5 questions for each workshop session 1-5Oral staff where required
Example questions with model solutions1 worksheet per workshop1-6Self-assessed
Peer review 300 word written research proposal1, 4, 7, 8Written

Summative assessment (% of credit)

CourseworkWritten examsPractical exams
000

Details of summative assessment

Form of assessment% of creditSize of the assessment (eg length / duration)ILOs assessedFeedback method
Group project (in groups of 3/4)4010 minute presentation with Q&A (90%) and portfolio of evidence of collaborative working (10%) 1-8Written
Written assignment60maximum 2000 words1-8Written

Details of re-assessment (where required by referral or deferral)

Original form of assessmentForm of re-assessmentILOs re-assessedTimescale for re-assessment
Group presentation (40%)Individual presentation 10 minutes 1-8Typically within six weeks of the result
Written assignment (60%), 15maximum 2000 wordsWritten assignment1-8Typically within six weeks of the result

Re-assessment notes

Please refer to the TQA section on Referral/Deferral: http://as.exeter.ac.uk/academic-policy-standards/tqa-manual/aph/consequenceoffailure/  

Indicative learning resources - Basic reading

Indicative learning resources - Web based and electronic resources

ELE page:  https://vle.exeter.ac.uk/course/view.php?id=8441

Key words search

probability, statistical distribution, regression, survival analysis, Cox model, mixed effects model, bias, confounding, causation, Bayesian methods

Credit value15
Module ECTS

7.5

Module pre-requisites

None

Module co-requisites

HPDM092 Fundamentals of Research Design

NQF level (module)

7

Available as distance learning?

No

Origin date

26/04/2024