Deep reinforcement learning of cell movement in the early stage of C. elegans embryogenesis
Authored by Zi Wang, Dali Wang, Chengcheng Li, Yichi Xu, Husheng Li, Zhirong Bao
Date Published: 2018
DOI: 10.1093/bioinformatics/bty323
Sponsors:
United States National Institutes of Health (NIH)
Platforms:
Mesa
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Motivation: Cell movement in the early phase of Caenorhabditis elegans
development is regulated by a highly complex process in which a set of
rules and connections are formulated at distinct scales. Previous
efforts have demonstrated that agent-based, multi-scale modeling systems
can integrate physical and biological rules and provide new avenues to
study developmental systems. However, the application of these systems
to model cell movement is still challenging and requires a comprehensive
understanding of regulatory networks at the right scales. Recent
developments in deep learning and reinforcement learning provide an
unprecedented opportunity to explore cell movement using 3D time-lapse
microscopy images.
Results: We present a deep reinforcement learning approach within an
agent-based modeling system to characterize cell movement in the
embryonic development of C. elegans. Our modeling system captures the
complexity of cell movement patterns in the embryo and overcomes the
local optimization problem encountered by traditional rule-based,
agent-based modeling that uses greedy algorithms. We tested our model
with two real developmental processes: the anterior movement of the
Cpaaa cell via intercalation and the rearrangement of the superficial
left-right asymmetry. In the first case, the model results suggested
that Cpaaa's intercalation is an active directional cell movement caused
by the continuous effects from a longer distance (farther than the
length of two adjacent cells), as opposed to a passive movement caused
by neighbor cell movements. In the second case, a leader-follower
mechanism well explained the collective cell movement pattern in the
asymmetry rearrangement. These results showed that our approach to
introduce deep reinforcement learning into agent-based modeling can test
regulatory mechanisms by exploring cell migration paths in a reverse
engineering perspective. This model opens new doors to explore the large
datasets generated by live imaging.
Availability and implementation: Source code is available at
https://github.com/zwang84/drl4cellmovement.
Contact:
[email protected] or
[email protected]
Supplementary information: Supplementary data are available at
Bioinformatics online.
Tags
Mechanisms
morphogenesis
Resolution
Lineage
Forces