Probabilistic Temporal Reasoning with Endogenous Change
Steve Hanks, David Madigan, Jonathan Gavrin

TL;DR
This paper introduces a probabilistic model for reasoning about patient state changes over time, considering both external influences and internal disease progression, with applications in medical diagnosis and treatment planning.
Contribution
It presents a novel approach combining qualitative structural modeling with probabilistic reasoning for endogenous and exogenous changes in medical prediction problems.
Findings
Model applied to trauma treatment case
Uses sequential imputation for solving the model
Analyzes differences from related probabilistic temporal reasoning work
Abstract
This paper presents a probabilistic model for reasoning about the state of a system as it changes over time, both due to exogenous and endogenous influences. Our target domain is a class of medical prediction problems that are neither so urgent as to preclude careful diagnosis nor progress so slowly as to allow arbitrary testing and treatment options. In these domains there is typically enough time to gather information about the patient's state and consider alternative diagnoses and treatments, but the temporal interaction between the timing of tests, treatments, and the course of the disease must also be considered. Our approach is to elicit a qualitative structural model of the patient from a human expert---the model identifies important attributes, the way in which exogenous changes affect attribute values, and the way in which the patient's condition changes endogenously. We then…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · AI-based Problem Solving and Planning · Logic, Reasoning, and Knowledge
