A Physician Advisory System for Chronic Heart Failure Management Based on Knowledge Patterns
Zhuo Chen, Kyle Marple, Elmer Salazar, Gopal Gupta, Lakshman Tamil

TL;DR
This paper presents a physician-advisory system for chronic heart failure management that encodes complex clinical guidelines using answer set programming, enabling automated, guideline-based treatment recommendations even with incomplete data.
Contribution
It demonstrates that complex medical guidelines can be effectively encoded as ASP rules and introduces knowledge patterns to simplify this process for various domains.
Findings
Successfully coded CHF guidelines as ASP rules
System generates treatment recommendations from patient data
Handles incomplete information effectively
Abstract
Management of chronic diseases such as heart failure, diabetes, and chronic obstructive pulmonary disease (COPD) is a major problem in health care. A standard approach that the medical community has devised to manage widely prevalent chronic diseases such as chronic heart failure (CHF) is to have a committee of experts develop guidelines that all physicians should follow. These guidelines typically consist of a series of complex rules that make recommendations based on a patient's information. Due to their complexity, often the guidelines are either ignored or not complied with at all, which can result in poor medical practices. It is not even clear whether it is humanly possible to follow these guidelines due to their length and complexity. In the case of CHF management, the guidelines run nearly 80 pages. In this paper we describe a physician-advisory system for CHF management that…
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