从先验知识和基因表达数据中识别上下文特异性转录因子目标

E. Fertig, Alexander V. Favorov, M. Ochs
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引用次数: 8

摘要

目前,许多方法、分析和数据库提供了转录因子(tf)的候选靶标。然而,tf很少对其靶标进行普遍调控。TF的激活环境可以改变靶标的转录反应。哺乳动物基因的直接多重调控使从基因表达数据中直接推断TF靶点变得复杂。我们提出了一个基于CoGAPS算法推断上下文特异性TF调控的新统计数据,该算法推断由协同调控引起的重叠基因表达模式。用模拟数据进行的数值实验表明,除了来自一个TF的信号相对于噪声水平和来自其他TF的信号可以忽略不计的情况外,该统计量可以正确地推断出多个TF共有的目标。在模拟的基因集中,统计数据对中等水平的误差是稳健的,识别出的假阳性比假阴性少。值得注意的是,调控统计数据将胃肠道间质瘤(GIST)中与细胞信号传导相关的转录因子靶点的数量细化为与先前研究中发现的tf磷酸化模式一致的基因。所提出的调节统计量在推断集成数据集的集合隶属度方面具有广泛的适用性。这种统计可以自然地扩展到考虑集合成员的先验概率或添加候选基因目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying context-specific transcription factor targets from prior knowledge and gene expression data
Numerous methodologies, assays, and databases presently provide candidate targets of transcription factors (TFs). However, TFs rarely regulate their targets universally. The context of activation of a TF can change the transcriptional response of targets. Direct multiple regulation typical to mammalian genes complicates direct inference of TF targets from gene expression data. We present a novel statistic that infers context-specific TF regulation based upon the CoGAPS algorithm, which infers overlapping gene expression patterns resulting from coregulation. Numerical experiments with simulated data showed that this statistic correctly inferred targets that are common to multiple TFs, except in cases where the signal from a TF is negligible relative to noise level and signal from other TFs. The statistic is robust to moderate levels of error in the simulated gene sets, identifying fewer false positives than false negatives. Significantly, the regulatory statistic refines the number of transcription factor targets relevant to cell signaling in gastrointestinal stromal tumors (GIST) to genes consistent with the phosphorylation patterns of TFs identified in previous studies. As formulated, the proposed regulatory statistic has wide applicability to inferring set membership in integrated datasets. This statistic could be naturally extended to account for prior probabilities of set membership or to add candidate gene targets.
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