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Forecasting COVID-19 Severity by Intelligent Optical Fingerprinting of Blood Samples
oleh: Simão P. Faria, Cristiana Carpinteiro, Vanessa Pinto, Sandra M. Rodrigues, José Alves, Filipe Marques, Marta Lourenço, Paulo H. Santos, Angélica Ramos, Maria J. Cardoso, João T. Guimarães, Sara Rocha, Paula Sampaio, David A. Clifton, Mehak Mumtaz, Joana S. Paiva
Format: | Article |
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Diterbitkan: | MDPI AG 2021-07-01 |
Deskripsi
Forecasting COVID-19 disease severity is key to supporting clinical decision making and assisting resource allocation, particularly in intensive care units (ICUs). Here, we investigated the utility of time- and frequency-related features of the backscattered signal of serum patient samples to predict COVID-19 disease severity immediately after diagnosis. ICU admission was the primary outcome used to define disease severity. We developed a stacking ensemble machine learning model including the backscattered signal features (optical fingerprint), patient comorbidities, and age (AUROC = 0.80), which significantly outperformed the predictive value of clinical and laboratory variables available at hospital admission (AUROC = 0.71). The information derived from patient optical fingerprints was not strongly correlated with any clinical/laboratory variable, suggesting that optical fingerprinting brings unique information for COVID-19 severity risk assessment. Optical fingerprinting is a label-free, real-time, and low-cost technology that can be easily integrated as a front-line tool to facilitate the triage and clinical management of COVID-19 patients.