Ranking medical jargon in electronic health record notes by adapted distant supervision
Jinying Chen, Abhyuday N. Jagannatha, Samah J. Jarad, Hong Yu

TL;DR
This paper presents a novel data-driven method using adapted distant supervision to identify and rank important medical jargon in EHR notes, aiming to improve patient understanding by enriching lay language resources.
Contribution
It introduces an ADS model that outperforms existing methods in ranking medical jargon importance, leveraging large corpora and knowledge-based features.
Findings
ADS model achieved ROC-AUC of 0.810, outperforming baselines.
Identified 10,000 important medical terms from 100,000 candidates.
Model supports development of EHR-centric lay language resources.
Abstract
Objective: Allowing patients to access their own electronic health record (EHR) notes through online patient portals has the potential to improve patient-centered care. However, medical jargon, which abounds in EHR notes, has been shown to be a barrier for patient EHR comprehension. Existing knowledge bases that link medical jargon to lay terms or definitions play an important role in alleviating this problem but have low coverage of medical jargon in EHRs. We developed a data-driven approach that mines EHRs to identify and rank medical jargon based on its importance to patients, to support the building of EHR-centric lay language resources. Methods: We developed an innovative adapted distant supervision (ADS) model based on support vector machines to rank medical jargon from EHRs. For distant supervision, we utilized the open-access, collaborative consumer health vocabulary, a large,…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies · Topic Modeling · Health Literacy and Information Accessibility
