Achieving Optimal Tissue Repair Through MARL with Reward Shaping and Curriculum Learning
Achieving Optimal Tissue Repair Through MARL with Reward Shaping and Curriculum Learning
In this paper, we present a multi-agent reinforcement learning (MARL) framework for optimizing tissue repair processes using engineered biological agents. Our approach integrates: (1) stochastic reaction-diffusion systems modeling molecular signaling, (2) neural-like electrochemical communication with Hebbian plasticity, and (3) a biologically informed reward function combining chemical gradient tracking, neural synchronization, and robust penalties. A curriculum learning scheme guides the agent through progressively complex repair scenarios. In silico experiments demonstrate emergent repair strategies, including dynamic secretion control and spatial coordination.
Muhammad Al-Zafar Khan、Jamal Al-Karaki
生物工程学分子生物学
Muhammad Al-Zafar Khan,Jamal Al-Karaki.Achieving Optimal Tissue Repair Through MARL with Reward Shaping and Curriculum Learning[EB/OL].(2025-04-14)[2025-05-03].https://arxiv.org/abs/2504.10677.点此复制
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