OntoMedRec: Logically-pretrained model-agnostic ontology encoders for medication recommendation
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Published:2024-04-23
Issue:3
Volume:27
Page:
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ISSN:1386-145X
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Container-title:World Wide Web
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language:en
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Short-container-title:World Wide Web
Author:
Tan Weicong,Wang Weiqing,Zhou Xin,Buntine Wray,Bingham Gordon,Yin Hongzhi
Abstract
AbstractRecommending medications with electronic health records (EHRs) is a challenging task for data-driven clinical decision support systems. Most existing models learnt representations for medical concepts based on EHRs and make recommendations with the learnt representations. However, most medications appear in EHR datasets for limited times (the frequency distribution of medications follows power law distribution), resulting in insufficient learning of their representations of the medications. Medical ontologies are the hierarchical classification systems for medical terms where similar terms will be in the same class on a certain level. In this paper, we propose OntoMedRec, the logically-pretrained and model-agnostic medical Ontology Encoders for Medication Recommendation that addresses data sparsity problem with medical ontologies. We conduct comprehensive experiments on real-world EHR datasets to evaluate the effectiveness of OntoMedRec by integrating it into various existing downstream medication recommendation models. The result shows the integration of OntoMedRec improves the performance of various models in both the entire EHR datasets and the admissions with few-shot medications. We provide the GitHub repository for the source code. (https://github.com/WaicongTam/OntoMedRec)
Funder
Monash University’s graduate research industry partnership program
Publisher
Springer Science and Business Media LLC
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