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De Novo Inference of Systems-Level Mechanistic Models of Development from Live-Imaging-Based Phenotype Analysis

机译:从基于实时成像的表型分析的系统级发展模型的从头推断

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摘要

Elucidation of complex phenotypes for mechanistic insights presents a significant challenge in systems biology. We report a strategy to automatically infer mechanistic models of cell fate differentiation based on live-imaging data. We use cell lineage tracing and combinations of tissue-specific marker expression to assay progenitor cell fate and detect fate changes upon genetic perturbation. Based on the cellular phenotypes, we further construct a model for how fate differentiation progresses in progenitor cells and predict cell-specific gene modules and cell-to-cell signaling events that regulate the series of fate choices. We validate our approach in C. elegans embryogenesis by perturbing 20 genes in over 300 embryos. The result not only recapitulates current knowledge but also provides insights into gene function and regulated fate choice, including an unexpected self-renewal. Our study provides a powerful approach for automated and quantitative interpretation of complex in vivo information.
机译:阐明复杂表型以获得机械学见解对系统生物学提出了重大挑战。我们报告了一种策略,可以根据实时成像数据自动推断细胞命运分化的机制模型。我们使用细胞谱系追踪和组织特异性标志物表达的组合来分析祖细胞的命运并检测遗传干扰后的命运变化。基于细胞表型,我们进一步构建了关于命运分化如何在祖细胞中进行的模型,并预测了调节一系列命运选择的细胞特异性基因模块和细胞间信号事件。我们通过干扰300多个胚胎中的20个基因来验证秀丽隐杆线虫胚胎发生的方法。结果不仅概括了当前的知识,还提供了对基因功能和受管制的命运选择的见识,包括意外的自我更新。我们的研究为复杂的体内信息的自动化和定量解释提供了一种有力的方法。

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