Department of Pathology and Cell Biology, Columbia University Vagelos College of Physicians and Surgeons, New York, NY, USA.
Aaron Diamond AIDS Research Center, Columbia University Vagelos College of Physicians and Surgeons, New York, NY, USA.
Genome Biol. 2024 Aug 12;25(1):217. doi: 10.1186/s13059-024-03351-2.
Cells and tissues have a remarkable ability to adapt to genetic perturbations via a variety of molecular mechanisms. Nonsense-induced transcriptional compensation, a form of transcriptional adaptation, has recently emerged as one such mechanism, in which nonsense mutations in a gene trigger upregulation of related genes, possibly conferring robustness at cellular and organismal levels. However, beyond a handful of developmental contexts and curated sets of genes, no comprehensive genome-wide investigation of this behavior has been undertaken for mammalian cell types and conditions. How the regulatory-level effects of inherently stochastic compensatory gene networks contribute to phenotypic penetrance in single cells remains unclear.
We analyze existing bulk and single-cell transcriptomic datasets to uncover the prevalence of transcriptional adaptation in mammalian systems across diverse contexts and cell types. We perform regulon gene expression analyses of transcription factor target sets in both bulk and pooled single-cell genetic perturbation datasets. Our results reveal greater robustness in expression of regulons of transcription factors exhibiting transcriptional adaptation compared to those of transcription factors that do not. Stochastic mathematical modeling of minimal compensatory gene networks qualitatively recapitulates several aspects of transcriptional adaptation, including paralog upregulation and robustness to mutation. Combined with machine learning analysis of network features of interest, our framework offers potential explanations for which regulatory steps are most important for transcriptional adaptation.
Our integrative approach identifies several putative hits-genes demonstrating possible transcriptional adaptation-to follow-up on experimentally and provides a formal quantitative framework to test and refine models of transcriptional adaptation.
细胞和组织具有通过多种分子机制适应遗传扰动的非凡能力。无义诱导的转录补偿是一种转录适应形式,最近出现了这种机制,其中基因中的无义突变会引发相关基因的上调,可能在细胞和机体水平赋予稳健性。然而,除了少数发育背景和精心挑选的基因集之外,对于哺乳动物细胞类型和条件,尚未对这种行为进行全面的全基因组研究。固有随机补偿基因网络的调控水平效应如何在单细胞中导致表型表现度尚不清楚。
我们分析现有的批量和单细胞转录组数据集,以揭示哺乳动物系统在不同背景和细胞类型中转录适应的普遍性。我们对批量和 pooled 单细胞遗传扰动数据集中转录因子靶标集的调控基因表达进行分析。我们的结果表明,与不进行转录适应的转录因子相比,表现出转录适应的转录因子的调控基因表达更稳健。最小补偿基因网络的随机数学建模定性地再现了转录适应的几个方面,包括同源基因上调和对突变的稳健性。结合对感兴趣的网络特征的机器学习分析,我们的框架为哪些调控步骤对转录适应最重要提供了潜在的解释。
我们的综合方法确定了几个可能的候选基因-表现出可能的转录适应的基因-进行后续实验,并提供了一个正式的定量框架来测试和完善转录适应模型。