4.7 Article

CharPlant: A De Novo Open Chromatin Region Prediction Tool for Plant Genomes

Journal

GENOMICS PROTEOMICS & BIOINFORMATICS
Volume 19, Issue 5, Pages 860-871

Publisher

ELSEVIER
DOI: 10.1016/j.gpb.2020.06.0211672-0229

Keywords

Open chromatin region; Chromatin accessibility; Convolutional neural network; De novo prediction; Plant genome

Funding

  1. National Natural Science Foundation of China [31871269]
  2. Hubei Provincial Natural Science Foundation of China [2019CFA014]
  3. Fundamental Research Funds for the Central Universities, China [2662019PY069]

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Chromatin accessibility, a key structural feature for understanding gene transcription regulation, is dynamic during stress and developmental transitions. CharPlant, a bioinformatics tool, is developed for de novo prediction of OCRs in plant genomes, showing promise in prediction power and computational efficiency. This tool fills the gap of identifying potential OCRs in whole genomes.
Chromatin accessibility is a highly informative structural feature for understanding gene transcription regulation, because it indicates the degree to which nuclear macromolecules such as proteins and RNAs can access chromosomal DNA. Studies have shown that chromatin accessibility is highly dynamic during stress response, stimulus response, and developmental transition. Moreover, physical access to chromosomal DNA in eukaryotes is highly cell-specific. Therefore, current technologies such as DNase-seq, ATAC-seq, and FAIRE-seq reveal only a portion of the open chromatin regions (OCRs) present in a given species. Thus, the genome-wide distribution of OCRs remains unknown. In this study, we developed a bioinformatics tool called CharPlant for the de novo prediction of OCRs in plant genomes. To develop this tool, we constructed a three-layer convolutional neural network (CNN) and subsequently trained the CNN using DNase-seq and ATAC-seq datasets of four plant species. The model simultaneously learns the sequence motifs and regulatory logics, which are jointly used to determine DNA accessibility. All of these steps are integrated into CharPlant, which can be run using a simple command line. The results of data analysis using CharPlant in this study demonstrate its prediction power and computational efficiency. To our knowledge, CharPlant is the first de novo prediction tool that can identify potential OCRs in the whole genome. The source code of CharPlant and supporting files are freely available from https://github.com/Yin-Shen/CharPlant.

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