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Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach

Overview
Journal Viruses
Publisher MDPI
Specialty Microbiology
Date 2022 Dec 23
PMID 36560764
Authors
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Abstract

The clinical application of detecting COVID-19 factors is a challenging task. The existing named entity recognition models are usually trained on a limited set of named entities. Besides clinical, the non-clinical factors, such as social determinant of health (SDoH), are also important to study the infectious disease. In this paper, we propose a generalizable machine learning approach that improves on previous efforts by recognizing a large number of clinical risk factors and SDoH. The novelty of the proposed method lies in the subtle combination of a number of deep neural networks, including the BiLSTM-CNN-CRF method and a transformer-based embedding layer. Experimental results on a cohort of COVID-19 data prepared from PubMed articles show the superiority of the proposed approach. When compared to other methods, the proposed approach achieves a performance gain of about 1-5% in terms of macro- and micro-average F1 scores. Clinical practitioners and researchers can use this approach to obtain accurate information regarding clinical risks and SDoH factors, and use this pipeline as a tool to end the pandemic or to prepare for future pandemics.

Citing Articles

Realizing the potential of social determinants data in EHR systems: A scoping review of approaches for screening, linkage, extraction, analysis, and interventions.

Li C, Mowery D, Ma X, Yang R, Vurgun U, Hwang S J Clin Transl Sci. 2024; 8(1):e147.

PMID: 39478779 PMC: 11523026. DOI: 10.1017/cts.2024.571.

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