基因调控网络
生物信息学
计算生物学
杠杆(统计)
生物
染色质
推论
计算机科学
转录因子
基因表达调控
基因
人工智能
遗传学
基因表达
作者
Weixu Wang,Zhiyuan Hu,Philipp Weiler,Sarah Mayes,Marius Lange,Jingye Wang,Zhengyuan Xue,Tatjana Sauka‐Spengler,Fabian J. Theis
出处
期刊:Cell
[Cell Press]
日期:2024-12-11
卷期号:189 (12): 3773-3800.e44
被引量:11
标识
DOI:10.1016/j.cell.2026.04.022
摘要
Abstract RNA velocity has emerged as a popular approach for modeling cellular change along the phenotypic landscape but routinely omits regulatory interactions between genes. Conversely, methods that infer gene regulatory networks (GRNs) do not consider the dynamically changing nature of biological systems. To integrate these two currently disconnected fields, we present RegVelo, an end-to-end dynamic, interpretable, and actionable deep learning model that learns a joint model of splicing kinetics and gene regulatory relationships and allows us to perform in silico perturbation predictions. When applied to datasets of the cell cycle, human hematopoiesis, and murine pancreatic endocrinogenesis, RegVelo demonstrates superior predictive power for interactions and perturbation simulations, for example, compared to methods that focus solely on dynamics or GRN inference. To leverage RegVelo’s full potential, we studied the dynamics of zebrafish neural crest development and underlying regulatory mechanisms using our Smart-seq3 dataset and shared gene expression and chromatin accessibility measurements. Using RegVelo’s in silico perturbation predictions, validated by CRISPR/Cas9-mediated knockout and single-cell Perturb-seq, we establish transcription factor tfec as an early driver and elf1 as a novel regulator of pigment cell fate and propose a gene-regulatory circuit involving tfec and elf1 interactions via the toggle-switch model.
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