Characterizing arrhythmia using machine learning analysis of Ca2+ cycling in human cardiomyocytes

Stem Cell Reports. 2022 Aug 9;17(8):1810-1823. doi: 10.1016/j.stemcr.2022.06.005. Epub 2022 Jul 14.

Abstract

Accurate modeling of the heart electrophysiology to predict arrhythmia susceptibility remains a challenge. Current electrophysiological analyses are hypothesis-driven models drawing conclusions from changes in a small subset of electrophysiological parameters because of the difficulty of handling and understanding large datasets. Thus, we develop a framework to train machine learning classifiers to distinguish between healthy and arrhythmic cardiomyocytes using their calcium cycling properties. By training machine learning classifiers on a generated dataset containing a total of 3,003 healthy derived cardiomyocytes and their various arrhythmic states, the multi-class models achieved >90% accuracy in predicting arrhythmia presence and type. We also demonstrate that a binary classifier trained to distinguish cardiotoxic arrhythmia from healthy electrophysiology could determine the key biological changes associated with that specific arrhythmia. Therefore, machine learning algorithms can be used to characterize underlying arrhythmic patterns in samples to improve in vitro preclinical models and complement current in vivo systems.

Keywords: arrhythmias; disease modeling; machine learning; pluripotent stem cell-derived cardiomyocytes.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Arrhythmias, Cardiac
  • Calcium
  • Humans
  • Induced Pluripotent Stem Cells*
  • Machine Learning
  • Myocytes, Cardiac*

Substances

  • Calcium