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Experimental noise cutoff boosts inferability of transcriptional networks in large-scale gene-deletion studies

机译:实验性噪声截止可提高大规模基因缺失研究中转录网络的可推断性

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摘要

Generating a comprehensive map of molecular interactions in living cells is difficult and great efforts are undertaken to infer molecular interactions from large-scale perturbation experiments. Here, we develop the analytical and numerical tools to quantify the fundamental limits for inferring transcriptional networks from gene knockout screens and introduce a network inference method that is unbiased with respect to measurement noise and scalable to large network sizes. We show that network asymmetry, knockout coverage and measurement noise are central determinants that limit prediction accuracy, whereas the knowledge about gene-specific variability among biological replicates can be used to eliminate noise-sensitive nodes and thereby boost the performance of network inference algorithms.
机译:很难在活细胞中生成分子相互作用的全面图,并且需要进行大量努力来从大规模扰动实验中推断出分子相互作用。在这里,我们开发了分析和数值工具来量化从基因敲除屏幕中推断转录网络的基本限制,并介绍一种相对于测量噪声无偏见且可扩展至大型网络规模的网络推断方法。我们表明,网络不对称性,敲除覆盖率和测量噪声是限制预测准确性的主要决定因素,而有关生物学重复中基因特异性变异性的知识可用于消除噪声敏感节点,从而提高网络推理算法的性能。

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