COVID-19 Prognosis via Self-Supervised Representation Learning and Multi-Image Prediction
Anuroop Sriram, Matthew Muckley, Koustuv Sinha, Farah Shamout, Joelle, Pineau, Krzysztof J. Geras, Lea Azour, Yindalon Aphinyanaphongs, Nafissa, Yakubova, William Moore

TL;DR
This study introduces a self-supervised learning approach using MoCo for COVID-19 prognosis from chest X-rays, demonstrating improved prediction accuracy over supervised methods and a new multi-image transformer model.
Contribution
The paper presents a self-supervised pretraining method for COVID-19 prognosis and a novel transformer architecture for multi-image analysis, enhancing prediction performance.
Findings
Self-supervised MoCo pretraining outperforms supervised pretraining in prediction accuracy.
Multi-image transformer achieves higher AUC scores for adverse event and mortality prediction.
Model predictions are comparable to experienced radiologists in a pilot study.
Abstract
The rapid spread of COVID-19 cases in recent months has strained hospital resources, making rapid and accurate triage of patients presenting to emergency departments a necessity. Machine learning techniques using clinical data such as chest X-rays have been used to predict which patients are most at risk of deterioration. We consider the task of predicting two types of patient deterioration based on chest X-rays: adverse event deterioration (i.e., transfer to the intensive care unit, intubation, or mortality) and increased oxygen requirements beyond 6 L per day. Due to the relative scarcity of COVID-19 patient data, existing solutions leverage supervised pretraining on related non-COVID images, but this is limited by the differences between the pretraining data and the target COVID-19 patient data. In this paper, we use self-supervised learning based on the momentum contrast (MoCo)…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Machine Learning in Healthcare · Radiomics and Machine Learning in Medical Imaging
