基于深度神经网络的基因组序列增强子-启动子相互作用预测。

IF 0.6 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Shashank Singh, Yang Yang, Barnabás Póczos, Jian Ma
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引用次数: 107

摘要

背景:在人类基因组中,远端增强子通过近端启动子参与调控靶基因,形成增强子-启动子相互作用。尽管最近开发的高通量实验方法使我们能够识别全基因组范围内潜在的增强子-启动子相互作用,但在很大程度上仍然不清楚基因组中编码的序列水平信息在多大程度上帮助指导这种相互作用。方法:在这里,我们报告了一种新的计算方法(称为“SPEID”),当给定特定细胞类型中假定的增强子和启动子的位置时,使用深度学习模型仅基于序列特征来预测增强子-启动子相互作用。结果:我们对六种不同细胞类型的研究结果表明,与仅使用单一细胞类型信息的最先进方法相比,SPEID在预测增强子-启动子相互作用方面是有效的。作为原理验证,我们还应用SPEID来鉴定黑色素瘤样本中的体细胞非编码突变,这些突变可能减少了肿瘤基因组中增强子-启动子相互作用。结论:这项工作表明,深度学习模型可以帮助揭示基于序列的特征本身足以可靠地预测全基因组增强子-启动子相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting enhancer-promoter interaction from genomic sequence with deep neural networks.

Predicting enhancer-promoter interaction from genomic sequence with deep neural networks.

Predicting enhancer-promoter interaction from genomic sequence with deep neural networks.

Predicting enhancer-promoter interaction from genomic sequence with deep neural networks.

Background: In the human genome, distal enhancers are involved in regulating target genes through proximal promoters by forming enhancer-promoter interactions. Although recently developed high-throughput experimental approaches have allowed us to recognize potential enhancer-promoter interactions genome-wide, it is still largely unclear to what extent the sequence-level information encoded in our genome help guide such interactions.

Methods: Here we report a new computational method (named "SPEID") using deep learning models to predict enhancer-promoter interactions based on sequence-based features only, when the locations of putative enhancers and promoters in a particular cell type are given.

Results: Our results across six different cell types demonstrate that SPEID is effective in predicting enhancer-promoter interactions as compared to state-of-the-art methods that only use information from a single cell type. As a proof-of-principle, we also applied SPEID to identify somatic non-coding mutations in melanoma samples that may have reduced enhancer-promoter interactions in tumor genomes.

Conclusions: This work demonstrates that deep learning models can help reveal that sequence-based features alone are sufficient to reliably predict enhancer-promoter interactions genome-wide.

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来源期刊
Quantitative Biology
Quantitative Biology MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
5.00
自引率
3.20%
发文量
264
期刊介绍: Quantitative Biology is an interdisciplinary journal that focuses on original research that uses quantitative approaches and technologies to analyze and integrate biological systems, construct and model engineered life systems, and gain a deeper understanding of the life sciences. It aims to provide a platform for not only the analysis but also the integration and construction of biological systems. It is a quarterly journal seeking to provide an inter- and multi-disciplinary forum for a broad blend of peer-reviewed academic papers in order to promote rapid communication and exchange between scientists in the East and the West. The content of Quantitative Biology will mainly focus on the two broad and related areas: ·bioinformatics and computational biology, which focuses on dealing with information technologies and computational methodologies that can efficiently and accurately manipulate –omics data and transform molecular information into biological knowledge. ·systems and synthetic biology, which focuses on complex interactions in biological systems and the emergent functional properties, and on the design and construction of new biological functions and systems. Its goal is to reflect the significant advances made in quantitatively investigating and modeling both natural and engineered life systems at the molecular and higher levels. The journal particularly encourages original papers that link novel theory with cutting-edge experiments, especially in the newly emerging and multi-disciplinary areas of research. The journal also welcomes high-quality reviews and perspective articles.
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