Accurate allocation of multimapped reads enables regulatory element analysis at repeats

Transposable elements (TEs) and other repetitive regions have been shown to contain gene regulatory elements, including transcription factor binding sites. However, regulatory elements harbored by repeats have proven difficult to characterize using short-read sequencing assays such as ChIP-seq or ATAC-seq. Most regulatory genomics analysis pipelines discard “multimapped” reads that align equally well to multiple genomic locations. Because multimapped reads arise predominantly from repeats, current analysis pipelines fail to detect a substantial portion of regulatory events that occur in repetitive regions. To address this shortcoming, we developed Allo, a new approach to allocate multimapped reads in an efficient, accurate, and user-friendly manner. Allo combines probabilistic mapping of multimapped reads with a convolutional neural network that recognizes the read distribution features of potential peaks, offering enhanced accuracy in multimapping read assignment. Allo also provides read-level output in the form of a corrected alignment file, making it compatible with existing regulatory genomics analysis pipelines and downstream peak-finders. In a demonstration application on CTCF ChIP-seq data, we show that Allo results in the discovery of thousands of new CTCF peaks. Many of these peaks contain the expected cognate motif and/or serve as TAD boundaries. We additionally apply Allo to a diverse collection of ENCODE ChIP-seq data sets, resulting in multiple previously unidentified interactions between transcription factors and repetitive element families. Finally, we show that Allo may be particularly beneficial in identifying ChIP-seq peaks at centromeres, near segmentally duplicated genes, and in younger TEs, enabling new regulatory analyses in these regions.

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Work Title Accurate allocation of multimapped reads enables regulatory element analysis at repeats
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Open Access
Creators
  1. Alexis Morrissey
  2. Jeffrey Shi
  3. Daniela Q. James
  4. Shaun Mahony
License In Copyright (Rights Reserved)
Work Type Article
Publisher
  1. Genome Research
Publication Date July 10, 2024
Publisher Identifier (DOI)
  1. https://doi.org/10.1101/gr.278638.123
Deposited March 31, 2025

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  • Added Morrissey_Allo_Manuscript_Ver3_with_Supp.pdf
  • Added Creator Alexis Morrissey
  • Added Creator Jeffrey Shi
  • Added Creator Daniela Q. James
  • Added Creator Shaun Mahony
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    Publication Date
    • 2024-06-01
    • 2024-07-10