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AICTE

NIeCer 201: Causal Inference from Observational Studies [CAUSIT]

AICTE via Swayam

Overview

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ABOUT THE COURSE:Causal inference is a core task of science, regardless of whether the study is randomized or nonrandomized. Causal inference is a complex scientific task that relies on triangulating evidence from multiple sources and on the application of a variety of methodological approaches. The scientific literature is plagued by studies in which the causal question is not explicitly stated and the investigators’ unverifiable assumptions are not declared. Using the term “causal” is necessary to improve the quality of observational research. Specifically, being explicit about the causal objective of a study reduces ambiguity in the scientific question, errors in the data analysis, and excesses in the interpretation of the results. Eliminating the causal–associational ambiguity has practical implications for the quality of observational research. There is a need for a course that would help researchers in health and related domains to generate and analyze data to make causal inferences that are explicit about both the causal question and the assumptions underlying the data analysis. This course will focus on the identification and estimation of causal effects in populations, that is, numerical quantities that measure changes in the distribution of an outcome under different interventions. Therefore, in order to improve the current situation, it is important that the health researchers in the country are oriented fully to the principles and practice of epidemiologic methods for making causal inferences from observational studies. The relevance of this course only increases in the current situation because of the COVID-19 pandemic where researchers are trying to identify the effects of multiple medical interventions and public health strategies towards its medical management, control and prevention.The objectives of this course will be to understand the design of observational epidemiological studies, comprehend the principles of causality, and to know the epidemiological and analytical methods to make causal inference from observational studies.PREREQUISITES :Basic understanding of epidemiological conceptsINDUSTRY SUPPORT :Indian Council of Medical Research, Department of Health Research (MOHFW), Government/ private sector, public health service institutions/ agencies, Post graduate institutions in biomedical and allied sciences, Dental colleges / Universities, NGOs engaged in health research, Clinical research organizations, Pharma companies and marketing research organizations

Syllabus

Module 1: Principles of causal inference
Logic of scientific inference
Guidelines for assesing causality
Epidemiologic approaches to causal inference

Module 2:Logic and logistics of observational study designsOverview of epidemiologic study designsLogic and logistics of cohort studiesMeasures of causal effect in cohort studiesLogic and logistics of case control studiesMeasures of causal effect in case control studiesAnalytical cross-sectional studies
Module 3:Inferential statistics for causal inferenceTesting hypothesisTypes of statistical testsP-valueConfidence intervals
Module 4:Validity in observational studiesThreats to validity - OverviewSelection biasInformation biasConfoundingEffect measure modificationMatching
Module 5: Causal diagramsDirected acyclic graphsUsing directed acyclic graphs to identify confounding
Module 6:Making causal inferenceTarget trialCausal modelling in observational studies


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