Causal Inference
Study Course Implementer
14 Baložu street, 2nd floor, Riga, statistika@rsu.lv, +371 67060897
About Study Course
Objective
Preliminary Knowledge
Learning Outcomes
Knowledge
1.The students will: • compare the distinction between association models and causal models; the problem of confounding and the idea of adjustment and/or standardization to control for confounding. • state terminology and properties of Directed Acyclic Graphs to describe and assess causal association structures in data. • list special methods for estimation of causal effects: propensity score matching, inverse probability weighting, instrumental variables estimation. • explain the essence of the problem of causal mediation, differention between direct and indirect effects.
Skills
1.The students who have completed the course, will be able to: • decide, whether a study would lead to estimates with immediate causal interpretation. • sketch a causal graph (a DAG) to understand and discuss identifiability of causal effects of interest. • select an appropriate set of covariates for adjustment in regression analysis. • independently use specialized tools (and corresponding R packages) for causal inference: propensity score matching, inverse probability weighting, instrumental variables estimation. • communicate and present the findings in writing and oral of causal interpretation of the results of data analysis.
Competences
1.• The students will be competent in understanding and critical assessment of the published research that uses causal statements and/or causal inference methods for data analysis. • The students will be competent in causal reasoning based on a study design and available data in an interdisciplinary research team. • In particular, a student who has successfully passed the course, is able to assess (and explain), which of the following is valid in the particular study: a) the causal effect of interest is estimable by standard modelling tools (with adjustment for confounders); b) the causal effect of interest is estimable with specific methodology for causal inference; c) the causal effect of interest cannot be identified; In cases a) and b) the student will be competent to conduct the analysis, and disseminate new knowledge in health-related studies.
Assessment
Individual work
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Title
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% from total grade
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Grade
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|---|---|---|
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1.
Individual work |
-
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-
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1. Individual work with the course material and compulsory literature in preparation to 6 lectures according to plan.
2. Project work – critical assessment of a published paper on causal analysis of biomedical data (mediation analysis, analysis of nonadherence, Mendelian Randomization). Presentation of the project work’s results.
In order to evaluate the quality of the study course as a whole, the student must fill out the study course evaluation questionnaire on the Student Portal.
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Examination
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Title
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% from total grade
|
Grade
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|---|---|---|
|
1.
Examination |
-
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-
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|
Assessment on the 10-point scale according to the RSU Educational Order:
• Project work and it’s presentation – 50%.
• Final written exam – 50%.
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Study Course Theme Plan
-
Lecture
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Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
Understanding and defining causal effects. Study designs that enable causal conclusions. Biases due to confounding and selection bias in observational studies.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Data simulation in R to test, whether the true causal effects can be identified by classical modelling tools. Issues of confounding and model selection in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
Causal graphs and graphical tools to assess confounding and identifiability of causal effects.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Causal graphs in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
Propensity score matching and Inverse Probability Weighting and its use for the analysis of epidemiological data.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Propensity score matching and Inverse probability weighted estimators in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
Causal mediation analysis. The concept of direct and indirect effects.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Causal mediation analysis in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
The Instrumental Variables (IV) Estimator and its application in clinical trials (analysis of the effect of non-adherence).
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
IV analysis in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
2
|
Topics
|
Mendelian Randomization – using genes as instruments in epidemiology.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Mendelian Randomization in R, using summary statistics.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
Understanding and defining causal effects. Study designs that enable causal conclusions. Biases due to confounding and selection bias in observational studies.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Data simulation in R to test, whether the true causal effects can be identified by classical modelling tools. Issues of confounding and model selection in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
Causal graphs and graphical tools to assess confounding and identifiability of causal effects.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Causal graphs in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
Propensity score matching and Inverse Probability Weighting and its use for the analysis of epidemiological data.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Propensity score matching and Inverse probability weighted estimators in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
Causal mediation analysis. The concept of direct and indirect effects.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Causal mediation analysis in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
The Instrumental Variables (IV) Estimator and its application in clinical trials (analysis of the effect of non-adherence).
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
IV analysis in R.
|
-
Lecture
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Auditorium
|
1
|
Topics
|
Mendelian Randomization – using genes as instruments in epidemiology.
|
-
Class/Seminar
|
Modality
|
Location
|
Contact hours
|
|---|---|---|
|
On site
|
Computer room
|
2
|
Topics
|
Mendelian Randomization in R, using summary statistics.
|
Bibliography
Required Reading
Additional Reading
Pearl, J. Causality: Models, Reasoning and Inference. Cambridge university Press, 2009.