Deep-learning optimized DEOCSU suite provides an iterable pipeline for accurate ChIP-exo peak calling

Author:

Bang Ina1,Lee Sang-Mok1,Park Seojoung1,Park Joon Young1,Nong Linh Khanh1,Gao Ye2,Palsson Bernhard O234,Kim Donghyuk1

Affiliation:

1. School of Energy and Chemical Engineering, Ulsan National Institute of Science and Technology , Ulsan 44919 , Republic of Korea

2. Department of Bioengineering, University of California San Diego , La Jolla CA 92093 , USA

3. Department of Pediatrics, University of California San Diego , La Jolla CA 92093 , USA

4. Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark , Building 220, Kemitorvet, 2800 Kgs. Lyngby , Denmark

Abstract

AbstractRecognizing binding sites of DNA-binding proteins is a key factor for elucidating transcriptional regulation in organisms. ChIP-exo enables researchers to delineate genome-wide binding landscapes of DNA-binding proteins with near single base-pair resolution. However, the peak calling step hinders ChIP-exo application since the published algorithms tend to generate false-positive and false-negative predictions. Here, we report the development of DEOCSU (DEep-learning Optimized ChIP-exo peak calling SUite), a novel machine learning-based ChIP-exo peak calling suite. DEOCSU entails the deep convolutional neural network model which was trained with curated ChIP-exo peak data to distinguish the visualized data of bona fide peaks from false ones. Performance validation of the trained deep-learning model indicated its high accuracy, high precision and high recall of over 95%. Applying the new suite to both in-house and publicly available ChIP-exo datasets obtained from bacteria, eukaryotes and archaea revealed an accurate prediction of peaks containing canonical motifs, highlighting the versatility and efficiency of DEOCSU. Furthermore, DEOCSU can be executed on a cloud computing platform or the local environment. With visualization software included in the suite, adjustable options such as the threshold of peak probability, and iterable updating of the pre-trained model, DEOCSU can be optimized for users’ specific needs.

Funder

National Research Foundation of Korea

Ministry of Science and ICT

UNIST Center for Waste Plastics Carbon Cycling

Circle Foundation, Republic of Korea

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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