
Sepsis is the leading cause of mortality in the ICU. It is challenging to manage because individual patients respond differently to treatment. Thus, tailoring treatment to the individual patient is essential for the best outcomes. In this paper, we take steps toward this goal by applying a mixture-of-experts framework to personalize sepsis treatment. The mixture model selectively alternates between neighbor-based (kernel) and deep reinforcement learning (DRL) experts depending on patient's current history. On a large retrospective cohort, this mixture-based approach outperforms physician, kernel only, and DRL-only experts.
AMIA 2018 Annual Symposium
FOS: Computer and information sciences, Computer Science - Machine Learning, Computer Science - Artificial Intelligence, Observation, Machine Learning (stat.ML), Machine Learning (cs.LG), Machine Learning, Intensive Care Units, Deep Learning, Artificial Intelligence (cs.AI), Statistics - Machine Learning, Sepsis, Fluid Therapy, Humans, Vasoconstrictor Agents, Infusions, Intravenous, Medical History Taking, Retrospective Studies
FOS: Computer and information sciences, Computer Science - Machine Learning, Computer Science - Artificial Intelligence, Observation, Machine Learning (stat.ML), Machine Learning (cs.LG), Machine Learning, Intensive Care Units, Deep Learning, Artificial Intelligence (cs.AI), Statistics - Machine Learning, Sepsis, Fluid Therapy, Humans, Vasoconstrictor Agents, Infusions, Intravenous, Medical History Taking, Retrospective Studies
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| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Top 10% | |
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