Forecasting COVID-19 Severity by Intelligent Optical Fingerprinting of Blood Samples.
Simão P FariaCristiana CarpinteiroVanessa PintoSandra M RodriguesJosé AlvesFilipe MarquesMarta LourençoPaulo H SantosAngélica RamosMaria J CardosoJoão Tiago GuimarãesSara RochaPaula SampaioDavid A CliftonMehak MumtazJoana S PaivaPublished in: Diagnostics (Basel, Switzerland) (2021)
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.
Keyphrases
- sars cov
- coronavirus disease
- high resolution
- high speed
- emergency department
- intensive care unit
- risk assessment
- machine learning
- case report
- low cost
- label free
- decision making
- respiratory syndrome coronavirus
- healthcare
- health information
- mechanical ventilation
- artificial intelligence
- big data
- social media
- deep learning
- acute care
- adverse drug
- extracorporeal membrane oxygenation