Transcriptomic forecasting with neural ordinary differential equations release_cl7cdapfe5bsdmllfzpajxfncu

by Rossin Erbe, Genevieve Stein-O'Brien, Elana J Fertig

Published in Patterns by Elsevier BV.

2023   Volume 4, Issue 8, p100793

Abstract

Single-cell transcriptomics technologies can uncover changes in the molecular states that underlie cellular phenotypes. However, understanding the dynamic cellular processes requires extending from inferring trajectories from snapshots of cellular states to estimating temporal changes in cellular gene expression. To address this challenge, we have developed a neural ordinary differential-equation-based method, RNAForecaster, for predicting gene expression states in single cells for multiple future time steps in an embedding-independent manner. We demonstrate that RNAForecaster can accurately predict future expression states in simulated single-cell transcriptomic data with cellular tracking over time. We then show that by using metabolic labeling single-cell RNA sequencing (scRNA-seq) data from constitutively dividing cells, RNAForecaster accurately recapitulates many of the expected changes in gene expression during progression through the cell cycle over a 3-day period. Thus, RNAForecaster enables short-term estimation of future expression states in biological systems from high-throughput datasets with temporal information.
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Type  article-journal
Stage   published
Date   2023-07-06
Language   en ?
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ISSN-L:  2666-3899
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