Improving ECG-based COVID-19 diagnosis and mortality predictions using
pre-pandemic medical records at population-scale
- URL: http://arxiv.org/abs/2211.10431v1
- Date: Mon, 14 Nov 2022 04:48:07 GMT
- Title: Improving ECG-based COVID-19 diagnosis and mortality predictions using
pre-pandemic medical records at population-scale
- Authors: Weijie Sun, Sunil Vasu Kalmady, Nariman Sepehrvan, Luan Manh Chu,
Zihan Wang, Amir Salimi, Abram Hindle, Russell Greiner, Padma Kaul
- Abstract summary: This study shows this approach -- pre-train deep learning models with pre-pandemic data -- can work effectively.
Similar transfer learning strategies can be useful for developing timely artificial intelligence solutions in future pandemic outbreaks.
- Score: 19.23987229578229
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Pandemic outbreaks such as COVID-19 occur unexpectedly, and need immediate
action due to their potential devastating consequences on global health.
Point-of-care routine assessments such as electrocardiogram (ECG), can be used
to develop prediction models for identifying individuals at risk. However,
there is often too little clinically-annotated medical data, especially in
early phases of a pandemic, to develop accurate prediction models. In such
situations, historical pre-pandemic health records can be utilized to estimate
a preliminary model, which can then be fine-tuned based on limited available
pandemic data. This study shows this approach -- pre-train deep learning models
with pre-pandemic data -- can work effectively, by demonstrating substantial
performance improvement over three different COVID-19 related diagnostic and
prognostic prediction tasks. Similar transfer learning strategies can be useful
for developing timely artificial intelligence solutions in future pandemic
outbreaks.
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