TY - JOUR
T1 - OCRFinder
T2 - a noise-tolerance machine learning method for accurately estimating open chromatin regions
AU - Ren, Jiayi
AU - Liu, Yuqian
AU - Zhu, Xiaoyan
AU - Wang, Xuwen
AU - Li, Yifei
AU - Liu, Yuxin
AU - Hu, Wenqing
AU - Zhang, Xuanping
AU - Wang, Jiayin
N1 - Publisher Copyright:
Copyright © 2023 Ren, Liu, Zhu, Wang, Li, Liu, Hu, Zhang and Wang.
PY - 2023
Y1 - 2023
N2 - Open chromatin regions are the genomic regions associated with basic cellular physiological activities, while chromatin accessibility is reported to affect gene expressions and functions. A basic computational problem is to efficiently estimate open chromatin regions, which could facilitate both genomic and epigenetic studies. Currently, ATAC-seq and cfDNA-seq (plasma cell-free DNA sequencing) are two popular strategies to detect OCRs. As cfDNA-seq can obtain more biomarkers in one round of sequencing, it is considered more effective and convenient. However, in processing cfDNA-seq data, due to the dynamically variable chromatin accessibility, it is quite difficult to obtain the training data with pure OCRs or non-OCRs, and leads to a noise problem for either feature-based approaches or learning-based approaches. In this paper, we propose a learning-based OCR estimation approach with a noise-tolerance design. The proposed approach, named OCRFinder, incorporates the ideas of ensemble learning framework and semi-supervised strategy to avoid potential overfitting of noisy labels, which are the false positives on OCRs and non-OCRs. Compared to different noise control strategies and state-of-the-art approaches, OCRFinder achieved higher accuracies and sensitivities in the experiments. In addition, OCRFinder also has an excellent performance in ATAC-seq or DNase-seq comparison experiments.
AB - Open chromatin regions are the genomic regions associated with basic cellular physiological activities, while chromatin accessibility is reported to affect gene expressions and functions. A basic computational problem is to efficiently estimate open chromatin regions, which could facilitate both genomic and epigenetic studies. Currently, ATAC-seq and cfDNA-seq (plasma cell-free DNA sequencing) are two popular strategies to detect OCRs. As cfDNA-seq can obtain more biomarkers in one round of sequencing, it is considered more effective and convenient. However, in processing cfDNA-seq data, due to the dynamically variable chromatin accessibility, it is quite difficult to obtain the training data with pure OCRs or non-OCRs, and leads to a noise problem for either feature-based approaches or learning-based approaches. In this paper, we propose a learning-based OCR estimation approach with a noise-tolerance design. The proposed approach, named OCRFinder, incorporates the ideas of ensemble learning framework and semi-supervised strategy to avoid potential overfitting of noisy labels, which are the false positives on OCRs and non-OCRs. Compared to different noise control strategies and state-of-the-art approaches, OCRFinder achieved higher accuracies and sensitivities in the experiments. In addition, OCRFinder also has an excellent performance in ATAC-seq or DNase-seq comparison experiments.
KW - cell-free DNA - cfDNA
KW - chromatin accessibility
KW - noisy label learning
KW - open chromatin region
KW - sequencing data analyses
UR - https://www.scopus.com/pages/publications/85162019870
U2 - 10.3389/fgene.2023.1184744
DO - 10.3389/fgene.2023.1184744
M3 - 文章
AN - SCOPUS:85162019870
SN - 1664-8021
VL - 14
JO - Frontiers in Genetics
JF - Frontiers in Genetics
M1 - 1184744
ER -