TL;DR
MLHO is an innovative machine learning framework that predicts COVID-19 adverse outcomes using pre-infection medical records, achieving high accuracy and emphasizing the importance of historical clinical data.
Contribution
This work introduces MLHO, a novel end-to-end iterative feature and algorithm selection framework for predicting COVID-19 outcomes from pre-infection data.
Findings
Mean AUC ROC of 0.91 for mortality prediction
Prediction performance between 0.80 and 0.81 for other outcomes
Past clinical records significantly improve prediction accuracy
Abstract
We developed MLHO (pronounced as melo), an end-to-end Machine Learning framework that leverages iterative feature and algorithm selection to predict Health Outcomes. MLHO implements iterative sequential representation mining, and feature and model selection, for predicting the patient-level risk of hospitalization, ICU admission, need for mechanical ventilation, and death. It bases this prediction on data from patients' past medical records (before their COVID-19 infection). MLHO's architecture enables a parallel and outcome-oriented model calibration, in which different statistical learning algorithms and vectors of features are simultaneously tested to improve the prediction of health outcomes. Using clinical and demographic data from a large cohort of over 13,000 COVID-19-positive patients, we modeled the four adverse outcomes utilizing about 600 features representing patients'…
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