Institute of Pathology, Charité-Universitätsmedizin, 10117 Berlin, Germany.
IRI Life Sciences, Humboldt-Universität zu Berlin, 10117 Berlin, Germany.
Nucleic Acids Res. 2020 Dec 16;48(22):12577-12592. doi: 10.1093/nar/gkaa1089.
Thousands of transcriptome data sets are available, but approaches for their use in dynamic cell response modelling are few, especially for processes affected simultaneously by two orthogonal influencing variables. We approached this problem for neuroepithelial development of human pluripotent stem cells (differentiation variable), in the presence or absence of valproic acid (signaling variable). Using few basic assumptions (sequential differentiation states of cells; discrete on/off states for individual genes in these states), and time-resolved transcriptome data, a comprehensive model of spontaneous and perturbed gene expression dynamics was developed. The model made reliable predictions (average correlation of 0.85 between predicted and subsequently tested expression values). Even regulations predicted to be non-monotonic were successfully validated by PCR in new sets of experiments. Transient patterns of gene regulation were identified from model predictions. They pointed towards activation of Wnt signaling as a candidate pathway leading to a redirection of differentiation away from neuroepithelial cells towards neural crest. Intervention experiments, using a Wnt/beta-catenin antagonist, led to a phenotypic rescue of this disturbed differentiation. Thus, our broadly applicable model allows the analysis of transcriptome changes in complex time/perturbation matrices.
有成千上万的转录组数据集可供使用,但在动态细胞反应建模中使用这些数据集的方法很少,特别是对于同时受到两个正交影响变量影响的过程。我们针对人多能干细胞的神经上皮发育(分化变量),在存在或不存在丙戊酸(信号变量)的情况下,解决了这个问题。使用一些基本假设(细胞的顺序分化状态;这些状态中单个基因的离散开/关状态)和时间分辨的转录组数据,开发了一个全面的自发和扰动基因表达动力学模型。该模型做出了可靠的预测(预测和随后测试的表达值之间的平均相关性为 0.85)。即使是预测为非单调的调控,也通过新的实验集的 PCR 得到了成功验证。从模型预测中确定了基因调控的瞬时模式。它们指向 Wnt 信号激活作为导致分化偏离神经上皮细胞朝向神经嵴的候选途径。使用 Wnt/β-连环蛋白拮抗剂的干预实验导致了这种干扰分化的表型挽救。因此,我们广泛适用的模型允许在复杂的时间/干扰矩阵中分析转录组变化。