Integrative Analysis for COVID-19 Patient Outcome Prediction
Hanqing Chao, Xi Fang, Jiajin Zhang, Fatemeh Homayounieh, Chiara D., Arru, Subba R. Digumarthy, Rosa Babaei, Hadi K. Mobin, Iman Mohseni, Luca, Saba, Alessandro Carriero, Zeno Falaschi, Alessio Pasche, Ge Wang, Mannudeep, K. Kalra, Pingkun Yan

TL;DR
This study develops a holistic approach combining imaging radiomics and non-imaging clinical data to predict COVID-19 patient outcomes, specifically ICU admission, demonstrating improved accuracy across multi-national datasets.
Contribution
It introduces the first comprehensive model integrating both imaging and non-imaging data for COVID-19 outcome prediction, validated on multi-center datasets.
Findings
Adding non-imaging features improves prediction accuracy.
Achieved AUC up to 0.884 in ICU admission prediction.
Sensitivity as high as 96.1%.
Abstract
While image analysis of chest computed tomography (CT) for COVID-19 diagnosis has been intensively studied, little work has been performed for image-based patient outcome prediction. Management of high-risk patients with early intervention is a key to lower the fatality rate of COVID-19 pneumonia, as a majority of patients recover naturally. Therefore, an accurate prediction of disease progression with baseline imaging at the time of the initial presentation can help in patient management. In lieu of only size and volume information of pulmonary abnormalities and features through deep learning based image segmentation, here we combine radiomics of lung opacities and non-imaging features from demographic data, vital signs, and laboratory findings to predict need for intensive care unit (ICU) admission. To our knowledge, this is the first study that uses holistic information of a patient…
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