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Series GSE131144 Query DataSets for GSE131144
Status Public on Jun 29, 2020
Title A comprehensive comparison of differential accessibility analysis methods for ATAC-seq data
Organism Rattus norvegicus
Experiment type Genome binding/occupancy profiling by high throughput sequencing
Summary Background: ATAC-seq is widely used to measure the chromatin accessibility and identify the open chromatin regions (OCRs). OCRs usually indicate the active regulatory elements in the genome and are directly associated with gene regulatory networks. Identification of differential accessibility regions (DARs) between different biological conditions is critical to measure the differential activity of regulatory elements. Differential analysis of ATAC-seq shares many similarities to differential expression analysis of RNA-seq data. However, the distribution of ATAC-seq signal is different from RNA-seq data, and higher sensitivity is desired for DARs identification. Many different tools can be used to perform differential analysis of ATAC-seq data, but a comprehensive comparison and benchmarking of these methods is still missing.
Methods: Here, we used simulated datasets to systematically measure the sensitivity and specificity of 6 different methods. We further discussed the statistical and signal density cutoff in the differential analysis of ATAC-seq by applying to real data. Batch-effect is very common in high-throughput sequencing experiments.
Results: We illustrated that batch-effect correction can dramatically improve the sensitivity in differential analysis of ATAC-seq data. Finally, we developed an easily usable package, BeCorrect, to perform batch-effort correction for visualizing corrected ATAC-seq signals on a genome browser.
Conclusions: It is important to use PCA to check the samples distribution, and the Remove Unwanted Variation strategy can be used to correct the data to improve the sensitivity when strong batch effects are found in the data. Finally, BeCorrect can be used to correct the batch-effect of ATAC-seq data signal based on DARs analysis, and generate a proper visualization on a genome browser.
 
Overall design This represents the dentate gyrus and Ammon’s horn samples only
 
Contributor(s) Zhang B, Gontarz P, Moszczynska A
Citation(s) 32576878
Submission date May 13, 2019
Last update date Jun 29, 2020
Contact name Bo Zhang
E-mail(s) bzhang29@wustl.edu
Phone 3143624757
Organization name Washington University School of Medicine
Department Developmental Biology
Lab Zhang
Street address 4515 McKinley Research Bldg 03212
City Saint Louis
State/province Missouri
ZIP/Postal code 63110
Country USA
 
Platforms (1)
GPL20084 Illumina NextSeq 500 (Rattus norvegicus)
Samples (8)
GSM3764652 14_AH
GSM3764653 15_AH
GSM3764654 21_AH
Relations
BioProject PRJNA542717
SRA SRP198306

Download family Format
SOFT formatted family file(s) SOFTHelp
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Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE131144_RAW.tar 6.3 Gb (http)(custom) TAR (of BEDGRAPH)
SRA Run SelectorHelp
Raw data are available in SRA
Processed data provided as supplementary file

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