PhysiGym is a tool for applying reinforcement learning to PhysiCell
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Updated
Apr 21, 2026 - Python
PhysiGym is a tool for applying reinforcement learning to PhysiCell
Companion code for the following paper: https://doi.org/10.1093/biostatistics/kxad035
Learning Dynamic Treatment Regime (DTR) via meta-learners
We have presented CIL method to learn the optimal dynamic treatment regime by exploiting information from both trajectories (positive and negative).
Code and Datasets for the paper "Deconfounding actor-critic network with policy adaptation for dynamic treatment regimes", published on KDD 2022.
This repository contains code to estimate sample size needed to compare dynamic treatment regimens using longitudinal count outcomes from a Sequential Multiple Assignment Randomized Trial (SMART).
Experiments in dynamic treatment regimes using reinforcement learning.
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