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An AI-powered patient triage platform for future viral outbreaks using COVID-19 as a disease model

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HUMAN GENOMICS
卷 17, 期 1, 页码 -

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BMC
DOI: 10.1186/s40246-023-00521-4

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During the COVID-19 pandemic, we developed a machine learning predictive model to forecast disease severity and hospitalization duration, which can be used for future viral outbreaks. By combining plasma data, clinical information, and predictive algorithms, we created a patient triage platform that accurately predicts disease severity, length of hospital stay, and need for intensive care unit transfer. Additionally, we identified potential biomarkers such as eosinophils that indicate poor disease prognosis.
Over the last century, outbreaks and pandemics have occurred with disturbing regularity, necessitating advance preparation and large-scale, coordinated response. Here, we developed a machine learning predictive model of disease severity and length of hospitalization for COVID-19, which can be utilized as a platform for future unknown viral outbreaks. We combined untargeted metabolomics on plasma data obtained from COVID-19 patients (n = 111) during hospitalization and healthy controls (n = 342), clinical and comorbidity data (n = 508) to build this patient triage platform, which consists of three parts: (i) the clinical decision tree, which amongst other biomarkers showed that patients with increased eosinophils have worse disease prognosis and can serve as a new potential biomarker with high accuracy (AUC = 0.974), (ii) the estimation of patient hospitalization length with +/- 5 days error (R-2 = 0.9765) and (iii) the prediction of the disease severity and the need of patient transfer to the intensive care unit. We report a significant decrease in serotonin levels in patients who needed positive airway pressure oxygen and/or were intubated. Furthermore, 5-hydroxy tryptophan, allantoin, and glucuronic acid metabolites were increased in COVID19 patients and collectively they can serve as biomarkers to predict disease progression. The ability to quickly identify which patients will develop life-threatening illness would allow the efficient allocation of medical resources and implementation of the most effective medical interventions. We would advocate that the same approach could be utilized in future viral outbreaks to help hospitals triage patients more effectively and improve patient outcomes while optimizing healthcare resources.

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