Integration of multiple epigenomic marks improves prediction of variant impact in saturation mutagenesis reporter assay

Dustin Shigaki(Johns Hopkins University), Orit Adato(Bar-Ilan University), Aashish N. Adhikari(University of California, Berkeley), Shengcheng Dong(University of Michigan), Alex Hawkins‐Hooker(University of Cambridge), Fumitaka Inoue(QB3), Tamar Juven‐Gershon(Bar-Ilan University), Henry Kenlay(University of Cambridge), Beth Martin(University of Washington), Ayoti Patra(Johns Hopkins University), Dmitry Penzar(Lomonosov Moscow State University), Max Schubach(Berlin Institute of Health at Charité - Universitätsmedizin Berlin), Chenling Xiong(QB3), Zhongxia Yan(Charité - Universitätsmedizin Berlin), Alan P. Boyle(University of Michigan), Anat Kreimer(QB3), Ivan V. Kulakovskiy(Engelhardt Institute of Molecular Biology), John E. Reid(Turing Institute), Ron Unger(Bar-Ilan University), Nir Yosef(University of California, Berkeley), Jay Shendure(University of Washington), Nadav Ahituv(QB3), Martin Kircher(University of Washington), M Beer(Johns Hopkins University)
Human Mutation
May 20, 2019
Cited by 67Open Access
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Abstract

The integrative analysis of high-throughput reporter assays, machine learning, and profiles of epigenomic chromatin state in a broad array of cells and tissues has the potential to significantly improve our understanding of noncoding regulatory element function and its contribution to human disease. Here, we report results from the CAGI 5 regulation saturation challenge where participants were asked to predict the impact of nucleotide substitution at every base pair within five disease-associated human enhancers and nine disease-associated promoters. A library of mutations covering all bases was generated by saturation mutagenesis and altered activity was assessed in a massively parallel reporter assay (MPRA) in relevant cell lines. Reporter expression was measured relative to plasmid DNA to determine the impact of variants. The challenge was to predict the functional effects of variants on reporter expression. Comparative analysis of the full range of submitted prediction results identifies the most successful models of transcription factor binding sites, machine learning algorithms, and ways to choose among or incorporate diverse datatypes and cell-types for training computational models. These results have the potential to improve the design of future studies on more diverse sets of regulatory elements and aid the interpretation of disease-associated genetic variation.


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