Leiden Institute of Physics, Leiden University, Leiden, Zuid-Holland, The Netherlands.
Mass Spectrometry and Proteomics Resource Laboratory, Harvard University, Cambridge, Massachusetts, United States of America.
PLoS Genet. 2023 May 11;19(5):e1010744. doi: 10.1371/journal.pgen.1010744. eCollection 2023 May.
Stem cell differentiation is a highly dynamic process involving pervasive changes in gene expression. The large majority of existing studies has characterized differentiation at the level of individual molecular profiles, such as the transcriptome or the proteome. To obtain a more comprehensive view, we measured protein, mRNA and microRNA abundance during retinoic acid-driven differentiation of mouse embryonic stem cells. We found that mRNA and protein abundance are typically only weakly correlated across time. To understand this finding, we developed a hierarchical dynamical model that allowed us to integrate all data sets. This model was able to explain mRNA-protein discordance for most genes and identified instances of potential microRNA-mediated regulation. Overexpression or depletion of microRNAs identified by the model, followed by RNA sequencing and protein quantification, were used to follow up on the predictions of the model. Overall, our study shows how multi-omics integration by a dynamical model could be used to nominate candidate regulators.
干细胞分化是一个高度动态的过程,涉及基因表达的广泛变化。绝大多数现有研究已经在单个分子谱水平上对分化进行了特征描述,例如转录组或蛋白质组。为了获得更全面的视角,我们在视黄酸诱导的小鼠胚胎干细胞分化过程中测量了蛋白质、mRNA 和 microRNA 的丰度。我们发现,mRNA 和蛋白质丰度在时间上通常只有微弱的相关性。为了理解这一发现,我们开发了一个层次动态模型,使我们能够整合所有数据集。该模型能够解释大多数基因的 mRNA-蛋白不一致,并确定了潜在 microRNA 介导的调控实例。通过模型鉴定的 microRNA 的过表达或耗尽,随后进行 RNA 测序和蛋白质定量,用于对模型的预测进行跟踪。总的来说,我们的研究表明,通过动态模型进行多组学整合如何能够用于提名候选调节剂。