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A synergistic DNA logic predicts genome-wide chromatin accessibility

机译:协同DNA逻辑预测基因组染色质染色质等渗

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摘要

Enhancers and promoters commonly occur in accessible chromatin characterized by depleted nucleosome contact; however, it is unclear how chromatin accessibility is governed. We show that log-additive cis-acting DNA sequence features can predict chromatin accessibility at high spatial resolution. We develop a new type of high-dimensional machine learning model, the Synergistic Chromatin Model (SCM), which when trained with DNase-seq data for a cell type is capable of predicting expected read counts of genome-wide chromatin accessibility at every base from DNA sequence alone, with the highest accuracy at hypersensitive sites shared across cell types. We confirm that a SCM accurately predicts chromatin accessibility for thousands of synthetic DNA sequences using a novel CRISPR-based method of highly efficient site-specific DNA library integration. SCMs are directly interpretable and reveal that a logic based on local, nonspecific synergistic effects, largely among pioneer TFs, is sufficient to predict a large fraction of cellular chromatin accessibility in a wide variety of cell types.
机译:增强剂和促进剂通常发生在可偏转的染色质中,其特征在于耗尽的核心联系;但是,目前还不清楚染色质可访问性如何控制。我们表明,Log-Constive CIS作用DNA序列特征可以在高空间分辨率下预测染色质可接近性。我们开发了一种新型的高维机床学习模型,协同染色质模型(SCM),当培训时,用DNA酶-SEQ数据培训,用于细胞类型能够在每个基地预测每个碱基的基因组染色质取代性的预期读数计数单独的DNA序列,具有在跨细胞类型共享的过敏部位的最高精度。我们确认SCM准确地预测了使用基于新的基于CRISPR的高效性位点的DNA文库集成的基于CRISPR的染色质DNA序列。 SCMS是直接解释的,并揭示了基于局部的逻辑,主要是先驱TFS的逻辑足以预测各种细胞类型中的大部分细胞染色质可接受性。

著录项

  • 来源
    《Genome research》 |2016年第10期|共11页
  • 作者单位

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    Brigham &

    Womens Hosp Dept Med Div Genet 75 Francis St Boston MA 02115 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    Brigham &

    Womens Hosp Dept Med Div Genet 75 Francis St Boston MA 02115 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

    MIT Comp Sci &

    Artificial Intelligence Lab Cambridge MA 02142 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医学遗传学;
  • 关键词

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