Author
Listed:
- Jian Yan
(Northwest University
Ludwig Institute for Cancer Research
City University of Hong Kong
Karolinska Institutet)
- Yunjiang Qiu
(Ludwig Institute for Cancer Research
University of California San Diego)
- André M. Ribeiro dos Santos
(Ludwig Institute for Cancer Research
Universidade Federal do Pará, Institute of Biological Sciences)
- Yimeng Yin
(Karolinska Institutet
University of Cambridge)
- Yang E. Li
(Ludwig Institute for Cancer Research
University of California San Diego)
- Nick Vinckier
(University of California San Diego)
- Naoki Nariai
(University of California San Diego)
- Paola Benaglio
(University of California San Diego)
- Anugraha Raman
(Ludwig Institute for Cancer Research
University of California San Diego)
- Xiaoyu Li
(Northwest University
City University of Hong Kong)
- Shicai Fan
(University of California San Diego)
- Joshua Chiou
(University of California San Diego)
- Fulin Chen
(Northwest University)
- Kelly A. Frazer
(University of California San Diego)
- Kyle J. Gaulton
(University of California San Diego)
- Maike Sander
(University of California San Diego
University of California San Diego)
- Jussi Taipale
(Karolinska Institutet
University of Cambridge
University of Helsinki)
- Bing Ren
(Ludwig Institute for Cancer Research
University of California San Diego
University of California San Diego)
Abstract
Many sequence variants have been linked to complex human traits and diseases1, but deciphering their biological functions remains challenging, as most of them reside in noncoding DNA. Here we have systematically assessed the binding of 270 human transcription factors to 95,886 noncoding variants in the human genome using an ultra-high-throughput multiplex protein–DNA binding assay, termed single-nucleotide polymorphism evaluation by systematic evolution of ligands by exponential enrichment (SNP-SELEX). The resulting 828 million measurements of transcription factor–DNA interactions enable estimation of the relative affinity of these transcription factors to each variant in vitro and evaluation of the current methods to predict the effects of noncoding variants on transcription factor binding. We show that the position weight matrices of most transcription factors lack sufficient predictive power, whereas the support vector machine combined with the gapped k-mer representation show much improved performance, when assessed on results from independent SNP-SELEX experiments involving a new set of 61,020 sequence variants. We report highly predictive models for 94 human transcription factors and demonstrate their utility in genome-wide association studies and understanding of the molecular pathways involved in diverse human traits and diseases.
Suggested Citation
Jian Yan & Yunjiang Qiu & André M. Ribeiro dos Santos & Yimeng Yin & Yang E. Li & Nick Vinckier & Naoki Nariai & Paola Benaglio & Anugraha Raman & Xiaoyu Li & Shicai Fan & Joshua Chiou & Fulin Chen & , 2021.
"Systematic analysis of binding of transcription factors to noncoding variants,"
Nature, Nature, vol. 591(7848), pages 147-151, March.
Handle:
RePEc:nat:nature:v:591:y:2021:i:7848:d:10.1038_s41586-021-03211-0
DOI: 10.1038/s41586-021-03211-0
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Cited by:
- Jennifer P. Nguyen & Timothy D. Arthur & Kyohei Fujita & Bianca M. Salgado & Margaret K. R. Donovan & Hiroko Matsui & Ji Hyun Kim & Agnieszka D’Antonio-Chronowska & Matteo D’Antonio & Kelly A. Frazer, 2023.
"eQTL mapping in fetal-like pancreatic progenitor cells reveals early developmental insights into diabetes risk,"
Nature Communications, Nature, vol. 14(1), pages 1-22, December.
- Jin Woo Oh & Michael A. Beer, 2024.
"Gapped-kmer sequence modeling robustly identifies regulatory vocabularies and distal enhancers conserved between evolutionarily distant mammals,"
Nature Communications, Nature, vol. 15(1), pages 1-16, December.
- Jingni He & Wanqing Wen & Alicia Beeghly & Zhishan Chen & Chen Cao & Xiao-Ou Shu & Wei Zheng & Quan Long & Xingyi Guo, 2022.
"Integrating transcription factor occupancy with transcriptome-wide association analysis identifies susceptibility genes in human cancers,"
Nature Communications, Nature, vol. 13(1), pages 1-15, December.
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