A deep reinforcement learning model based on deterministic policy gradient for collective neural crest cell migration
Yihao Zhang, Zhaojie Chai, Yubing Sun, George Lykotrafitis

TL;DR
This paper introduces a deep reinforcement learning model using deterministic policy gradients to simulate collective neural crest cell migration, capturing leader-follower dynamics and effects of cell interactions.
Contribution
It presents a novel RL-based approach for modeling collective cell migration, incorporating leader and follower behaviors with biologically relevant interactions.
Findings
Leader agents learn to follow the shortest path to the target.
Migration times between the RL model and agent-based model are statistically similar.
Co-attraction slows down overall leader cell migration.
Abstract
Modeling cell interactions such as co-attraction and contact-inhibition of locomotion is essential for understanding collective cell migration. Here, we propose a novel deep reinforcement learning model for collective neural crest cell migration. We apply the deep deterministic policy gradient algorithm in association with a particle dynamics simulation environment to train agents to determine the migration path. Because of the different migration mechanisms of leader and follower neural crest cells, we train two types of agents (leaders and followers) to learn the collective cell migration behavior. For a leader agent, we consider a linear combination of a global task, resulting in the shortest path to the target source, and a local task, resulting in a coordinated motion along the local chemoattractant gradient. For a follower agent, we consider only the local task. First, we show…
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Taxonomy
TopicsCell Image Analysis Techniques · Neural dynamics and brain function · Mathematical Biology Tumor Growth
