Litcius/Paper detail

Deep reinforcement learning for optimal experimental design in biology

Neythen J. Treloar, Nathan Braniff, Brian Ingalls, C. Barnes

2022PLoS Computational Biology32 citationsDOIOpen Access PDF

Abstract

The field of optimal experimental design uses mathematical techniques to determine experiments that are maximally informative from a given experimental setup. Here we apply a technique from artificial intelligence-reinforcement learning-to the optimal experimental design task of maximizing confidence in estimates of model parameter values. We show that a reinforcement learning approach performs favourably in comparison with a one-step ahead optimisation algorithm and a model predictive controller for the inference of bacterial growth parameters in a simulated chemostat. Further, we demonstrate the ability of reinforcement learning to train over a distribution of parameters, indicating that this approach is robust to parametric uncertainty.

Topics & Concepts

Reinforcement learningComputer scienceArtificial intelligenceInferenceParametric statisticsDesign of experimentsMachine learningTask (project management)ReinforcementMathematicsEngineeringStatisticsStructural engineeringSystems engineeringGene Regulatory Network AnalysisViral Infectious Diseases and Gene Expression in InsectsAdvanced Multi-Objective Optimization Algorithms