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首页> 外文期刊>Nucleic Acids Research >Accurate prediction of boundaries of high resolution topologically associated domains (TADs) in fruit flies using deep learning
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Accurate prediction of boundaries of high resolution topologically associated domains (TADs) in fruit flies using deep learning

机译:使用深度学习预测果蝇中高分辨率拓扑相关域(TADS)的边界预测

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摘要

Genomes are organized into self-interacting chromatin regions called topologically associated domains (TADs). A significant number of TAD boundaries are shared across multiple cell types and conserved across species. Disruption of TAD boundaries may affect the expression of nearby genes and could lead to several diseases. Even though detection of TAD boundaries is important and useful, there are experimental challenges in obtaining high resolution TAD locations. Here, we present computational prediction of TAD boundaries from high resolution Hi-C data in fruit flies. By extensive exploration and testing of several deep learning model architectures with hyperparameter optimization, we show that a unique deep learning model consisting of three convolution layers followed by a long short-term-memory layer achieves an accuracy of 96%. This outperforms feature-based models' accuracy of 91% and an existing method's accuracy of 73-78% based on motif TRAP scores. Our method also detects previously reported motifs such as Beaf-32 that are enriched in TAD boundaries in fruit flies and also several unreported motifs.
机译:基因组组织成称为拓扑相关结构域(TADS)的自相互作用的染色质区域。大量的TAD边界在多种细胞类型中共享并跨种类保存。 TAD边界的破坏可能影响附近基因的表达,并可能导致几种疾病。尽管检测到TAD边界是重要且有用的,但在获得高分辨率TAD位置时存在实验性挑战。这里,我们在果蝇中呈现来自高分辨率Hi-C数据的TAD边界的计算预测。通过广泛的探索和测试利用HyperParameter优化的几个深度学习模型架构,我们表明,由三个卷积层组成的独特深层学习模型,后跟长短期记忆层的精度为96%。这一优于基于特征的模型'精度为91%,现有方法的准确性为基于主题陷阱分数的73-78%。我们的方法还检测先前报告的主题,例如在果蝇中富集的TAD边界中富集的BEAF-32,以及几个未报告的主题。

著录项

  • 来源
    《Nucleic Acids Research》 |2019年第13期|共9页
  • 作者单位

    Univ Houston Downtown Comp Sci &

    Engn Technol Houston TX 77002 USA;

    Univ Houston Downtown Comp Sci &

    Engn Technol Houston TX 77002 USA;

    Univ Houston Downtown Comp Sci &

    Engn Technol Houston TX 77002 USA;

    Univ Houston Downtown Comp Sci &

    Engn Technol Houston TX 77002 USA;

    Univ Houston Biol &

    Biochem Houston TX 77204 USA;

    Univ Houston Downtown Comp Sci &

    Engn Technol Houston TX 77002 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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