PropertyValue
?:abstract
  • OBJECTIVE: This work investigates how reinforcement learning and deep learning models can facilitate the near-optimal redistribution of medical equipment in order to bolster public health responses to future crises similar to the COVID-19 pandemic. MATERIALS AND METHODS: The system presented is simulated with disease impact statistics from the Institute of Health Metrics (IHME), Center for Disease Control, and Census Bureau[1, 2, 3]. We present a robust pipeline for data preprocessing, future demand inference, and a redistribution algorithm that can be adopted across broad scales and applications. RESULTS: The reinforcement learning redistribution algorithm demonstrates performance optimality ranging from 93-95%. Performance improves consistently with the number of random states participating in exchange, demonstrating average shortage reductions of 78.74% (± 30.8) in simulations with 5 states to 93.50% (± 0.003) with 50 states. CONCLUSION: These findings bolster confidence that reinforcement learning techniques can reliably guide resource allocation for future public health emergencies.
is ?:annotates of
?:creator
?:journal
  • J._am._med._inform._assoc
?:license
  • unk
?:publication_isRelatedTo_Disease
?:source
  • WHO
?:title
  • On collaborative reinforcement learning to optimize the redistribution of critical medical supplies throughout the COVID-19 pandemic
?:type
?:who_covidence_id
  • #965544
?:year
  • 2020

Metadata

Anon_0  
expand all