A Graph-Based Machine-Learning Approach Combined with Optical Measurements to Understand Beating Dynamics of Cardiomyocytes.

Journal: Journal of computational biology : a journal of computational molecular cell biology
PMID:

Abstract

The development of computational models for the prediction of cardiac cellular dynamics remains a challenge due to the lack of first-principled mathematical models. We develop a novel machine-learning approach hybridizing physics simulation and graph networks to deliver robust predictions of cardiomyocyte dynamics. Embedded with inductive physical priors, the proposed constraint-based interaction neural projection (CINP) algorithm can uncover hidden physical constraints from sparse image data on a small set of beating cardiac cells and provide robust predictions for heterogenous large-scale cell sets. We also implement an in vitro culture and imaging platform for cellular motion and calcium transient analysis to validate the model. We showcase our model's efficacy by predicting complex organoid cellular behaviors in both in silico and in vitro settings.

Authors

  • Ziqian Wu
  • Jiyoon Park
    Global Patient Safety, Chief Medical Office, AstraZeneca, Gaithersburg, MD, USA.
  • Paul R Steiner
    Dartmouth-Hitchcock Medical Center, Lebanon, New Hampshire, USA.
  • Bo Zhu
    Department of Pharmacy, Suizhou Hospital, Hubei University of Medicine, Suizhou, 441300, Hubei Province, China.
  • John X J Zhang
    Thayer School of Engineering at Dartmouth College Hanover NH USA john.zhang@dartmouth.edu.