Manuel Allhoff1, Kristin Seré2, Heike Chauvistré2, Qiong Lin2, Martin Zenke2, Ivan G Costa3. 1. IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil. 2. IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil. 3. IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute for Biomedical Engineering, RWTH Aachen University Medical School, Germany, Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Germany, Aachen Institute for Advanced Study in Computational Engineering Science (AICES), RWTH Aachen University, Germany and Center of Informatics, Federal University of Pernambuco, Brazil IZKF Computational Biology Research Group, RWTH Aachen University Medical School, Germany, Department of Cell Biology, Institute
Abstract
MOTIVATION: Detection of changes in deoxyribonucleic acid (DNA)-protein interactions from ChIP-seq data is a crucial step in unraveling the regulatory networks behind biological processes. The simplest variation of this problem is the differential peak calling (DPC) problem. Here, one has to find genomic regions with ChIP-seq signal changes between two cellular conditions in the interaction of a protein with DNA. The great majority of peak calling methods can only analyze one ChIP-seq signal at a time and are unable to perform DPC. Recently, a few approaches based on the combination of these peak callers with statistical tests for detecting differential digital expression have been proposed. However, these methods fail to detect detailed changes of protein-DNA interactions. RESULTS: We propose an One-stage DIffereNtial peak caller (ODIN); an Hidden Markov Model-based approach to detect and analyze differential peaks (DPs) in pairs of ChIP-seq data. ODIN performs genomic signal processing, peak calling and p-value calculation in an integrated framework. We also propose an evaluation methodology to compare ODIN with competing methods. The evaluation method is based on the association of DPs with expression changes in the same cellular conditions. Our empirical study based on several ChIP-seq experiments from transcription factors, histone modifications and simulated data shows that ODIN outperforms considered competing methods in most scenarios.
MOTIVATION: Detection of changes in deoxyribonucleic acid (DNA)-protein interactions from ChIP-seq data is a crucial step in unraveling the regulatory networks behind biological processes. The simplest variation of this problem is the differential peak calling (DPC) problem. Here, one has to find genomic regions with ChIP-seq signal changes between two cellular conditions in the interaction of a protein with DNA. The great majority of peak calling methods can only analyze one ChIP-seq signal at a time and are unable to perform DPC. Recently, a few approaches based on the combination of these peak callers with statistical tests for detecting differential digital expression have been proposed. However, these methods fail to detect detailed changes of protein-DNA interactions. RESULTS: We propose an One-stage DIffereNtial peak caller (ODIN); an Hidden Markov Model-based approach to detect and analyze differential peaks (DPs) in pairs of ChIP-seq data. ODIN performs genomic signal processing, peak calling and p-value calculation in an integrated framework. We also propose an evaluation methodology to compare ODIN with competing methods. The evaluation method is based on the association of DPs with expression changes in the same cellular conditions. Our empirical study based on several ChIP-seq experiments from transcription factors, histone modifications and simulated data shows that ODIN outperforms considered competing methods in most scenarios.
Authors: Diana C West; Deng Pan; Eva Y Tonsing-Carter; Kyle M Hernandez; Charles F Pierce; Sarah C Styke; Kathleen R Bowie; Tzintzuni I Garcia; Masha Kocherginsky; Suzanne D Conzen Journal: Mol Cancer Res Date: 2016-05-02 Impact factor: 5.852
Authors: Dibyendu Dana; Satishkumar V Gadhiya; Luce G St Surin; David Li; Farha Naaz; Quaisar Ali; Latha Paka; Michael A Yamin; Mahesh Narayan; Itzhak D Goldberg; Prakash Narayan Journal: Molecules Date: 2018-09-18 Impact factor: 4.411
Authors: Cortney E Heim; Megan E Bosch; Kelsey J Yamada; Amy L Aldrich; Sujata S Chaudhari; David Klinkebiel; Casey M Gries; Abdulelah A Alqarzaee; Yixuan Li; Vinai C Thomas; Edward Seto; Adam R Karpf; Tammy Kielian Journal: Nat Microbiol Date: 2020-07-13 Impact factor: 17.745