Author:
Zheng Leqiong,Liu Li,Zhu Wen,Ding Yijie,Wu Fangxiang
Abstract
Introduction: The physical interactions between enhancers and promoters are often involved in gene transcriptional regulation. High tissue-specific enhancer-promoter interactions (EPIs) are responsible for the differential expression of genes. Experimental methods are time-consuming and labor-intensive in measuring EPIs. An alternative approach, machine learning, has been widely used to predict EPIs. However, most existing machine learning methods require a large number of functional genomic and epigenomic features as input, which limits the application to different cell lines.Methods: In this paper, we developed a random forest model, HARD (H3K27ac, ATAC-seq, RAD21, and Distance), to predict EPI using only four types of features.Results: Independent tests on a benchmark dataset showed that HARD outperforms other models with the fewest features.Discussion: Our results revealed that chromatin accessibility and the binding of cohesin are important for cell-line-specific EPIs. Furthermore, we trained the HARD model in the GM12878 cell line and performed testing in the HeLa cell line. The cross-cell-lines prediction also performs well, suggesting it has the potential to be applied to other cell lines.
Funder
National Natural Science Foundation of China
National Key Research and Development Program of China
Natural Science Foundation of Hainan Province
Subject
Genetics (clinical),Genetics,Molecular Medicine
Cited by
1 articles.
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