2024
DOI: 10.1093/bioinformatics/btae525
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FateNet: an integration of dynamical systems and deep learning for cell fate prediction

Mehrshad Sadria,
Thomas M Bury

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 l… Show more

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