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Distribution shapes govern the discovery of predictive models for gene regulation

机译:分布形状决定了基因调控预测模型的发现

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摘要

Despite substantial experimental and computational efforts, mechanistic modeling remains more predictive in engineering than in systems biology. The reason for this discrepancy is not fully understood. One might argue that the randomness and complexity of biological systems are the main barriers to predictive understanding, but these issues are not unique to biology. Instead, we hypothesize that the specific shapes of rare single-molecule event distributions produce substantial yet overlooked challenges for biological models. We demonstrate why modern statistical tools to disentangle complexity and stochasticity, which assume normally distributed fluctuations or enormous datasets, do not apply to the discrete, positive, and nonsymmetric distributions that characterize mRNA fluctuations in single cells. As an example, we integrate single-molecule measurements and advanced computational analyses to explore mitogen-activated protein kinase induction of multiple stress response genes. Through systematic analyses of different metrics to compare the same model to the same data, we elucidate why standard modeling approaches yield nonpredictive models for single-cell gene regulation. We further explain how advanced tools recover precise, reproducible, and predictive understanding of transcription regulation mechanisms, including gene activation, polymerase initiation, elongation, mRNA accumulation, spatial transport, and decay.
机译:尽管进行了大量的实验和计算工作,但机理建模在工程学中仍然比在系统生物学中更具预测性。造成这种差异的原因尚不完全清楚。有人可能会争辩说,生物系统的随机性和复杂性是预测理解的主要障碍,但这些问题并非生物学所独有。相反,我们假设罕见的单分子事件分布的特定形状对生物模型产生了实质性但被忽视的挑战。我们证明了为什么现代统计工具来解开复杂性和随机性,假设正态分布的波动或巨大的数据集,不适用于表征单细胞中 mRNA 波动的离散、正和非对称分布。例如,我们整合了单分子测量和高级计算分析,以探索丝裂原活化蛋白激酶诱导多种应激反应基因。通过对不同指标的系统分析,将同一模型与相同数据进行比较,我们阐明了为什么标准建模方法会产生单细胞基因调控的非预测模型。我们进一步解释了先进的工具如何恢复对转录调控机制的精确、可重复和预测性理解,包括基因激活、聚合酶起始、延伸、mRNA 积累、空间传递和衰变。

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