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首页> 外文期刊>Nucleic Acids Research >DeFine: deep convolutional neural networks accurately quantify intensities of transcription factor-DNA binding and facilitate evaluation of functional non-coding variants
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DeFine: deep convolutional neural networks accurately quantify intensities of transcription factor-DNA binding and facilitate evaluation of functional non-coding variants

机译:定义:深卷积神经网络精确地量化转录因子-DNA结合的强度,促进功能性非编码变体的评估

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摘要

The complex system of gene expression is regulated by the cell type-specific binding of transcription factors (TFs) to regulatory elements. Identifying variants that disrupt TF binding and lead to human diseases remains a great challenge. To address this, we implement sequence-based deep learning models that accurately predict the TF binding intensities to given DNA sequences. In addition to accurately classifying TF-DNA binding or unbinding, our models are capable of accurately predicting real-valued TF binding intensities by leveraging large-scale TF ChIP-seq data. The changes in the TF binding intensities between the altered sequence and the reference sequence reflect the degree of functional impact for the variant. This enables us to develop the tool DeFine (Deep learning based Functional impact of non-coding variants evaluator, http://define.cbi.pku.edu.cn) with improved performance for assessing the functional impact of non-coding variants including SNPs and indels. DeFine accurately identifies the causal functional non-coding variants from disease-associated variants in GWAS. DeFine is an effective and easy-to-use tool that facilities systematic prioritization of functional non-coding variants.
机译:基因表达的复杂系统由转录因子(TFS)对调节元件的细胞类型特异性结合调节。识别破坏TF结合并导致人类疾病的变体仍然是一个巨大的挑战。为了解决这个问题,我们实施基于序列的深度学习模型,可以准确地预测给定DNA序列的TF结合强度。除了准确分类TF-DNA绑定或未绑定之外,我们的模型还能够通过利用大规模TF芯片SEQ数据来准确地预测实值TF结合强度。改变序列和参考序列之间的TF结合强度的变化反映了变体的功能影响程度。这使我们能够开发工具定义(非编码变体评估器的深度学习功能影响,http://define.cbi.pku.cn),具有改进的性能,用于评估包括SNP的非编码变体的功能影响和indels。定义精确地识别来自GWAS中的疾病相关变体的因果官能非编码变体。定义是一种有效且易于使用的工具,其系统的功能性非编码变体的系统优先化。

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