Affiliation:
1. Department of Applied Mathematics, University of Waterloo , Waterloo , ON N2L 3G1, Canada
2. Department of Physiology, McGill University , Montreal, QC H3G 1Y6, Canada
Abstract
Abstract
Motivation
Understanding cellular decision-making, particularly its timing and impact on the biological system such as tissue health and function, is a fundamental challenge in biology and medicine. Existing methods for inferring fate decisions and cellular state dynamics from single-cell RNA sequencing data lack precision regarding decision points and broader tissue implications. Addressing this gap, we present FateNet, a computational approach integrating dynamical systems theory and deep learning to probe the cell decision-making process using scRNA-seq data.
Results
By leveraging information about normal forms and scaling behavior near bifurcations common to many dynamical systems, FateNet predicts cell decision occurrence with higher accuracy than conventional methods and offers qualitative insights into the new state of the biological system. Also, through in-silico perturbation experiments, FateNet identifies key genes and pathways governing the differentiation process in hematopoiesis. Validated using different scRNA-seq data, FateNet emerges as a user-friendly and valuable tool for predicting critical points in biological processes, providing insights into complex trajectories.
Availability and implementation
github.com/ThomasMBury/fatenet.
Funder
Fonds de Recherche du Québec—Nature et technologies
Publisher
Oxford University Press (OUP)