A Machine Learning Method for Allocating Scarce COVID-19 Monoclonal Antibodies
Mengli Xiao,
Kyle C. Molina,
Neil R. Aggarwal
et al.
Abstract:ImportanceDuring the COVID-19 pandemic, the effective distribution of limited treatments became a crucial policy goal. Yet, limited research exists using electronic health record data and machine learning techniques, such as policy learning trees (PLTs), to optimize the distribution of scarce therapeutics.ObjectiveTo evaluate whether a machine learning PLT-based method of scarce resource allocation optimizes the treatment benefit of COVID-19 neutralizing monoclonal antibodies (mAbs) during periods of resource … Show more
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