Differential ATAC-seq and ChIP-seq peak detection using ROTS




Faux Thomas, Rytkönen Kalle T., Mahmoudian Mehrad, Paulin Niklas, Junttila Sini, Laiho Asta, Elo Laura L.

PublisherOxford University Press

2021

NAR Genomics and Bioinformatics: Nucleic Acids Research Genomics and Bioinformatics

NAR Genomics and Bioinformatics

3

3

2631-9268

DOIhttps://doi.org/10.1093/nargab/lqab059

https://academic.oup.com/nargab/article/3/3/lqab059/6313252

https://research.utu.fi/converis/portal/detail/Publication/69215436



Changes in cellular chromatin states fine-tune transcriptional output and ultimately lead to phenotypic changes. Here we propose a novel application of our reproducibility-optimized test statistics (ROTS) to detect differential chromatin states (ATAC-seq) or differential chromatin modification states (ChIP-seq) between conditions. We compare the performance of ROTS to existing and widely used methods for ATAC-seq and ChIP-seq data using both synthetic and real datasets. Our results show that ROTS outperformed other commonly used methods when analyzing ATAC-seq data. ROTS also displayed the most accurate detection of small differences when modeling with synthetic data. We observed that two-step methods that require the use of a separate peak caller often more accurately called enrichment borders, whereas one-step methods without a separate peak calling step were more versatile in calling sub-peaks. The top ranked differential regions detected by the methods had marked correlation with transcriptional differences of the closest genes. Overall, our study provides evidence that ROTS is a useful addition to the available differential peak detection methods to study chromatin and performs especially well when applied to study differential chromatin states in ATAC-seq data.


Last updated on 2024-26-11 at 11:51