AI-driven control of bioelectric signalling for real-time topological reorganization of cells
Journal:
arXiv
Published Date:
Mar 10, 2025
Abstract
Understanding and manipulating bioelectric signaling could present a new wave
of progress in developmental biology, regenerative medicine, and synthetic
biology. Bioelectric signals, defined as voltage gradients across cell
membranes caused by ionic movements, play a role in regulating crucial
processes including cellular differentiation, proliferation, apoptosis, and
tissue morphogenesis. Recent studies demonstrate the ability to modulate these
signals to achieve controlled tissue regeneration and morphological outcomes in
organisms such as planaria and frogs. However, significant knowledge gaps
remain, particularly in predicting and controlling the spatial and temporal
dynamics of membrane potentials (V_mem), understanding their regulatory roles
in tissue and organ development, and exploring their therapeutic potential in
diseases. In this work we propose an experiment using Deep Reinforcement
Learning (DRL) framework together with lab automation techniques for real-time
manipulation of bioelectric signals to guide tissue regeneration and
morphogenesis. The proposed framework should interact continuously with
biological systems, adapting strategies based on direct biological feedback.
Combining DRL with real-time measurement techniques -- such as optogenetics,
voltage-sensitive dyes, fluorescent reporters, and advanced microscopy -- could
provide a comprehensive platform for precise bioelectric control, leading to
improved understanding of bioelectric mechanisms in morphogenesis, quantitative
bioelectric models, identification of minimal experimental setups, and
advancements in bioelectric modulation techniques relevant to regenerative
medicine and cancer therapy. Ultimately, this research aims to utilize
bioelectric signaling to develop new biomedical and bioengineering
applications.