Predicting which genes will respond to transcription factor perturbations.

IF 0.9 0 ARCHAEOLOGY
Yiming Kang, Wooseok J Jung, Michael R Brent
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Abstract

The ability to predict which genes will respond to the perturbation of a transcription factor serves as a benchmark for our systems-level understanding of transcriptional regulatory networks. In previous work, machine learning models have been trained to predict static gene expression levels in a biological sample by using data from the same or similar samples, including data on their transcription factor binding locations, histone marks, or DNA sequence. We report on a different challenge-training machine learning models to predict which genes will respond to the perturbation of a transcription factor without using any data from the perturbed cells. We find that existing transcription factor location data (ChIP-seq) from human cells have very little detectable utility for predicting which genes will respond to perturbation of a transcription factor. Features of genes, including their preperturbation expression level and expression variation, are very useful for predicting responses to perturbation of any transcription factor. This shows that some genes are poised to respond to transcription factor perturbations and others are resistant, shedding light on why it has been so difficult to predict responses from binding locations. Certain histone marks, including H3K4me1 and H3K4me3, have some predictive power when located downstream of the transcription start site. However, the predictive power of histone marks is much less than that of gene expression level and expression variation. Sequence-based or epigenetic properties of genes strongly influence their tendency to respond to direct transcription factor perturbations, partially explaining the oft-noted difficulty of predicting responsiveness from transcription factor binding location data. These molecular features are largely reflected in and summarized by the gene's expression level and expression variation. Code is available at https://github.com/BrentLab/TFPertRespExplainer.

预测哪些基因会对转录因子扰动做出反应
预测哪些基因会对转录因子的扰动做出反应的能力,是我们在系统层面了解转录调控网络的基准。在以前的工作中,我们利用相同或相似样本的数据(包括转录因子结合位置、组蛋白标记或 DNA 序列数据)训练机器学习模型,以预测生物样本中的静态基因表达水平。我们报告了一个不同的挑战--训练机器学习模型来预测哪些基因会对转录因子的扰动做出反应,而不使用来自受扰动细胞的任何数据。我们发现,人类细胞中现有的转录因子位置数据(ChIP-seq)对于预测哪些基因会对转录因子的扰动做出反应几乎没有可检测到的作用。基因的特征,包括它们在扰动前的表达水平和表达变化,对于预测对任何转录因子扰动的反应都非常有用。这表明,有些基因已准备好对转录因子的扰动做出反应,而有些基因则具有抵抗力,从而揭示了为什么从结合位置预测反应如此困难。某些组蛋白标记,包括 H3K4me1 和 H3K4me3,当位于转录起始位点下游时,具有一定的预测能力。然而,组蛋白标记的预测能力远远低于基因表达水平和表达变化的预测能力。基因基于序列或表观遗传学的特性会强烈影响它们对转录因子直接扰动的反应倾向,这也部分解释了人们经常提到的从转录因子结合位置数据预测反应性的困难。这些分子特征在很大程度上反映在基因的表达水平和表达变化中,并通过基因的表达水平和表达变化进行总结。代码见 https://github.com/BrentLab/TFPertRespExplainer。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Archaeological Journal
Archaeological Journal ARCHAEOLOGY-
CiteScore
1.50
自引率
0.00%
发文量
15
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