| Literature DB >> 30407537 |
Saori Sakaue1,2,3, Jun Hirata1,4, Yuichi Maeda5,6,7, Eiryo Kawakami8,9, Takuro Nii5,6,7, Toshihiro Kishikawa1,10, Kazuyoshi Ishigaki2, Chikashi Terao2,11,12,13, Ken Suzuki1,2, Masato Akiyama2,14, Naomasa Suita1,15, Tatsuo Masuda1,16, Kotaro Ogawa1,17, Kenichi Yamamoto1,18, Yukihiko Saeki19, Masato Matsushita20,21, Maiko Yoshimura21, Hidetoshi Matsuoka21, Katsunori Ikari22,23, Atsuo Taniguchi22, Hisashi Yamanaka22, Hideya Kawaji24,25,26,27, Timo Lassmann24,25,28, Masayoshi Itoh24,25,26, Hiroyuki Yoshitomi29,30, Hiromu Ito30, Koichiro Ohmura13, Alistair R R Forrest24,25,31, Yoshihide Hayashizaki25,26, Piero Carninci24,25,32, Atsushi Kumanogoh5, Yoichiro Kamatani2,33, Michiel de Hoon24,25,34, Kazuhiko Yamamoto35, Yukinori Okada1,2,36.
Abstract
MicroRNAs (miRNAs) modulate the post-transcriptional regulation of target genes and are related to biology of complex human traits, but genetic landscape of miRNAs remains largely unknown. Given the strikingly tissue-specific miRNA expression profiles, we here expand a previous method to quantitatively evaluate enrichment of genome-wide association study (GWAS) signals on miRNA-target gene networks (MIGWAS) to further estimate tissue-specific enrichment. Our approach integrates tissue-specific expression profiles of miRNAs (∼1800 miRNAs in 179 cells) with GWAS to test whether polygenic signals enrich in miRNA-target gene networks and whether they fall within specific tissues. We applied MIGWAS to 49 GWASs (nTotal = 3 520 246), and successfully identified biologically relevant tissues. Further, MIGWAS could point miRNAs as candidate biomarkers of the trait. As an illustrative example, we performed differentially expressed miRNA analysis between rheumatoid arthritis (RA) patients and healthy controls (n = 63). We identified novel biomarker miRNAs (e.g. hsa-miR-762) by integrating differentially expressed miRNAs with MIGWAS results for RA, as well as novel associated loci with significant genetic risk (rs56656810 at MIR762 at 16q11; n = 91 482, P = 3.6 × 10-8). Our result highlighted that miRNA-target gene network contributes to human disease genetics in a cell type-specific manner, which could yield an efficient screening of miRNAs as promising biomarkers.Entities:
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Year: 2018 PMID: 30407537 PMCID: PMC6294505 DOI: 10.1093/nar/gky1066
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 16.971