APLGMLMar 9, 2020

Towards Patient Record Summarization Through Joint Phenotype Learning in HIV Patients

arXiv:2003.11474v13 citations
AI Analysis

This work addresses the need for automated problem-oriented summaries in healthcare, specifically for HIV patients with voluminous records, though it appears incremental as it builds on existing phenotyping methods.

The authors tackled the problem of summarizing patient records by developing an unsupervised phenotyping approach that jointly learns phenotypes from structured and unstructured data in HIV patients, finding that the learned phenotypes and their relatedness are clinically valid and surpass baseline methods in inferring phenotype-relatedness.

Identifying a patient's key problems over time is a common task for providers at the point care, yet a complex and time-consuming activity given current electric health records. To enable a problem-oriented summarizer to identify a patient's comprehensive list of problems and their salience, we propose an unsupervised phenotyping approach that jointly learns a large number of phenotypes/problems across structured and unstructured data. To identify the appropriate granularity of the learned phenotypes, the model is trained on a target patient population of the same clinic. To enable the content organization of a problem-oriented summarizer, the model identifies phenotype relatedness as well. The model leverages a correlated-mixed membership approach with variational inference applied to heterogenous clinical data. In this paper, we focus our experiments on assessing the learned phenotypes and their relatedness as learned from a specific patient population. We ground our experiments in phenotyping patients from an HIV clinic in a large urban care institution (n=7,523), where patients have voluminous, longitudinal documentation, and where providers would benefit from summaries of these patient's medical histories, whether about their HIV or any comorbidities. We find that the learned phenotypes and their relatedness are clinically valid when assessed qualitatively by clinical experts, and that the model surpasses baseline in inferring phenotype-relatedness when comparing to existing expert-curated condition groupings.

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