Model-Informed Artificial Intelligence: Reinforcement Learning for Precision Dosing.

Clin Pharmacol Ther

F. Hoffmann La Roche Ltd., Basel, Switzerland.

Published: April 2020

The availability of multidimensional data together with the development of modern techniques for data analysis represent an exceptional opportunity for clinical pharmacology. Data science-defined in this special issue as the novel approaches to the collection, aggregation, and analysis of data-can significantly contribute to characterize drug-response variability at the individual level, thus enabling clinical pharmacology to become a critical contributor to personalized healthcare through precision dosing. We propose a minireview of methodologies for achieving precision dosing with a focus on an artificial intelligence technique called reinforcement learning, which is currently used for individualizing dosing regimen in patients with life-threatening diseases. We highlight the interplay of such techniques with conventional pharmacokinetic/pharmacodynamic approaches and discuss applicability in drug research and early development.

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Source
http://dx.doi.org/10.1002/cpt.1777DOI Listing

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