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A Deep Neural Network for Predicting and Engineering Alternative Polyadenylation

机译:一种深度神经网络,用于预测和工程替代多腺苷酸化

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摘要

Alternative polyadenylation (APA) is a major driver of transcriptome diversity in human cells. Here, we use deep learning to predict APA from DNA sequence alone. We trained our model (APARENT, APA REgression NeT) on isoform expression data from over 3 million APA reporters. APARENT's predictions are highly accurate when tasked with inferring APA in synthetic and human 3'UTRs. Visualizing features learned across all network layers reveals that APARENT recognizes sequence motifs known to recruit APA regulators, discovers previously unknown sequence determinants of 3' end processing, and integrates these features into a comprehensive, interpretable, cis-regulatory code. We apply APARENT to forward engineer functional polyadenylation signals with precisely defined cleavage position and isoform usage and validate predictions experimentally. Finally, we use APARENT to quantify the impact of genetic variants on APA. Our approach detects pathogenic variants in a wide range of disease contexts, expanding our understanding of the genetic origins of disease.
机译:替代的多腺苷酸(APA)是人细胞转录组多样性的主要驱动器。在这里,我们使用深度学习来单独从DNA序列预测APA。我们培训了来自超过300万APA记者的同种型表达数据的模型(APAENT,APA回归网)。在合成和人3'URR中的推断APA任务时,Aparent的预测是高度准确的。可视化所有网络层中学到的特征显示,Aparent识别已知招聘APA调节器的序列图案,发现先前未知的序列决定因素3'结束处理,并将这些功能集成到全面,可解释的CIS-监管代码中。我们申请Aparent以前进的工程师功能多腺苷酸化信号,并在实验上进行精确定义的裂缝位置和同种型使用和验证预测。最后,我们使用Aparent来量化遗传变异对APA的影响。我们的方法在广泛的疾病环境中检测到致病变异,扩大了我们对疾病遗传起源的理解。

著录项

  • 来源
    《Cell》 |2019年第1期|共39页
  • 作者单位

    Univ Washington Dept Elect &

    Comp Engn Seattle WA 98195 USA;

    Univ Washington Paul G Allen Sch Comp Sci &

    Engn Seattle WA 98195 USA;

    Univ Washington Dept Elect &

    Comp Engn Seattle WA 98195 USA;

    Univ Washington Dept Elect &

    Comp Engn Seattle WA 98195 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 细胞生物学;
  • 关键词

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