Diagnostics (Jul 2021)

Forecasting COVID-19 Severity by Intelligent Optical Fingerprinting of Blood Samples

  • 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

DOI
https://doi.org/10.3390/diagnostics11081309
Journal volume & issue
Vol. 11, no. 8
p. 1309

Abstract

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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.

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