Affiliation:
1. State Key Laboratory of Pharmaceutical Biotechnology, School of Life Sciences Nanjing University Nanjing China
Abstract
AbstractChromatin accessibility sequencing has been widely used for uncovering genetic regulatory mechanisms and inferring gene regulatory networks. However, effectively integrating large‐scale chromatin accessibility datasets has posed a significant challenge. This is due to the lack of a comprehensive end‐to‐end solution, as many existing tools primarily emphasize data preprocessing and overlook downstream analyses. To bridge this gap, we have introduced cisDynet, a holistic solution that combines streamlined data preprocessing using Snakemake and R functions with advanced downstream analysis capabilities. cisDynet excels in conventional data analyses, encompassing peak statistics, peak annotation, differential analysis, motif enrichment analysis, and more. Additionally, it allows to perform sophisticated data exploration, such as tissue‐specific peak identification, time course data modeling, integration of RNA‐seq data to establish peak‐to‐gene associations, constructing regulatory networks, and conducting enrichment analysis of genome‐wide association study (GWAS) variants. As a proof of concept, we applied cisDynet to reanalyze comprehensive ATAC‐seq datasets across various tissues from the Encyclopedia of DNA Elements (ENCODE) project. The analysis successfully delineated tissue‐specific open chromatin regions (OCRs), established connections between OCRs and target genes, and effectively linked these discoveries with 1861 GWAS variants. Furthermore, cisDynet was instrumental in dissecting the time course open chromatin data of mouse embryonic development, revealing the dynamic behavior of OCRs over developmental stages and identifying key transcription factors governing differentiation trajectories. In summary, cisDynet offers researchers a user‐friendly solution that minimizes the need for extensive coding, ensures the reproducibility of results, and greatly simplifies the exploration of epigenomic data.
Subject
Microbiology,Biotechnology
Cited by
4 articles.
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