Seminar: Bayesian Networks for Health Economics and Public Policy Research
Context
This seminar illustrates how Bayesian networks can serve as a powerful modeling and reasoning framework for health economics research and public policy development.
Examples
For five different case studies, we present a complete analysis workflow using the BayesiaLab 8 software platform:
Diagnostic decision support: using a machine-learned Bayesian network for cost-effective evidence-seeking in diagnosing coronary heart disease. This example introduces information-theoretic measures, such as Entropy and Mutual Information.
Quantifying the value of information in field triage for optimizing trauma activation thresholds with regard to hospital resource utilization.
Developing universal health policies under extreme uncertainty, i.e., without any data: "test & treat" or presumptive malaria treatment in sub-Saharan Africa.
Childhood Literacy Campaign: Simpson's Paradox rears its ugly head and leads to misguided policies.
Causal inference from observational healthcare data: using machine learning and the Disjunctive Cause Criterion to reduceโbut not eliminateโthe need for causal assumptions.
We present the motivation, proposed methodology, and practical implementation for each example.
Presentation Video
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