Prediction of COVID-19 Patients' Emergency Room Revisit using Multi-Source Transfer Learning
Yuelyu Ji, Yuhe Gao, Runxue Bao, Qi Li, Disheng Liu, Yiming Sun, Ye Ye

TL;DR
This study develops a transfer learning-based model using electronic health records and NLP to predict COVID-19 patients' ER revisits within 7 days, addressing data heterogeneity across multiple hospitals.
Contribution
Introduces a Multi-DANN transfer learning approach that effectively handles domain differences in multi-source EHR data for COVID-19 ER revisit prediction.
Findings
Multi-DANN outperforms baseline models and Single-DANN in predictive accuracy.
The approach effectively manages heterogeneity across different hospital data sources.
EHR data is shown to be highly informative for early revisit prediction.
Abstract
The coronavirus disease 2019 (COVID-19) has led to a global pandemic of significant severity. In addition to its high level of contagiousness, COVID-19 can have a heterogeneous clinical course, ranging from asymptomatic carriers to severe and potentially life-threatening health complications. Many patients have to revisit the emergency room (ER) within a short time after discharge, which significantly increases the workload for medical staff. Early identification of such patients is crucial for helping physicians focus on treating life-threatening cases. In this study, we obtained Electronic Health Records (EHRs) of 3,210 encounters from 13 affiliated ERs within the University of Pittsburgh Medical Center between March 2020 and January 2021. We leveraged a Natural Language Processing technique, ScispaCy, to extract clinical concepts and used the 1001 most frequent concepts to develop…
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Taxonomy
TopicsMachine Learning in Healthcare · Emergency and Acute Care Studies · COVID-19 diagnosis using AI
MethodsFocus
