EMR-based medical knowledge representation and inference via Markov random fields and distributed representation learning
Chao Zhao, Jingchi Jiang, Yi Guan

TL;DR
This paper introduces a system that extracts and represents medical knowledge from electronic medical records using Markov random fields and distributed learning, supporting clinical decision tasks with high accuracy.
Contribution
It proposes a novel EMR-based medical knowledge network combined with Markov random fields and distributed representations for effective clinical decision support.
Findings
Achieved over 80% accuracy in initial diagnosis
Test and treatment recommendation accuracies were 87.88% and 92.55%
Distributed representations reflect medical knowledge similarities
Abstract
Objective: Electronic medical records (EMRs) contain an amount of medical knowledge which can be used for clinical decision support (CDS). Our objective is a general system that can extract and represent these knowledge contained in EMRs to support three CDS tasks: test recommendation, initial diagnosis, and treatment plan recommendation, with the given condition of one patient. Methods: We extracted four kinds of medical entities from records and constructed an EMR-based medical knowledge network (EMKN), in which nodes are entities and edges reflect their co-occurrence in a single record. Three bipartite subgraphs (bi-graphs) were extracted from the EMKN to support each task. One part of the bi-graph was the given condition (e.g., symptoms), and the other was the condition to be inferred (e.g., diseases). Each bi-graph was regarded as a Markov random field to support the inference.…
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Taxonomy
TopicsMachine Learning in Healthcare · Biomedical Text Mining and Ontologies · Topic Modeling
