NCNet: Deep Learning Network Models for Predicting Function of Non-coding DNA

Zhang, Hanyu and Hung, Che-Lun and Liu, Meiyuan and Hu, Xiaoye and Lin, Yi-Yang (2019) NCNet: Deep Learning Network Models for Predicting Function of Non-coding DNA. Frontiers in Genetics, 10. ISSN 1664-8021

[thumbnail of pubmed-zip/versions/2/package-entries/fgene-10-00432-r1/fgene-10-00432.pdf] Text
pubmed-zip/versions/2/package-entries/fgene-10-00432-r1/fgene-10-00432.pdf - Published Version

Download (1MB)

Abstract

The human genome consists of 98.5% non-coding DNA sequences, and most of them have no known function. However, a majority of disease-associated variants lie in these regions. Therefore, it is critical to predict the function of non-coding DNA. Hence, we propose the NCNet, which integrates deep residual learning and sequence-to-sequence learning networks, to predict the transcription factor (TF) binding sites, which can then be used to predict non-coding functions. In NCNet, deep residual learning networks are used to enhance the identification rate of regulatory patterns of motifs, so that the sequence-to-sequence learning network may make the most out of the sequential dependency between the patterns. With the identity shortcut technique and deep architectures of the networks, NCNet achieves significant improvement compared to the original hybrid model in identifying regulatory markers.

Item Type: Article
Subjects: STM Digital > Medical Science
Depositing User: Unnamed user with email support@stmdigital.org
Date Deposited: 21 Feb 2023 10:11
Last Modified: 25 May 2024 09:35
URI: http://research.asianarticleeprint.com/id/eprint/196

Actions (login required)

View Item
View Item