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Whole genome sequence analyses of eGFR in 23,732 people representing multiple ancestries in the NHLBI trans-omics for precision medicine (TOPMed) consortium
- Lin, Bridget M;
- Grinde, Kelsey E;
- Brody, Jennifer A;
- Breeze, Charles E;
- Raffield, Laura M;
- Mychaleckyj, Josyf C;
- Thornton, Timothy A;
- Perry, James A;
- Baier, Leslie J;
- de las Fuentes, Lisa;
- Guo, Xiuqing;
- Heavner, Benjamin D;
- Hanson, Robert L;
- Hung, Yi-Jen;
- Qian, Huijun;
- Hsiung, Chao A;
- Hwang, Shih-Jen;
- Irvin, Margaret R;
- Jain, Deepti;
- Kelly, Tanika N;
- Kobes, Sayuko;
- Lange, Leslie;
- Lash, James P;
- Li, Yun;
- Liu, Xiaoming;
- Mi, Xuenan;
- Musani, Solomon K;
- Papanicolaou, George J;
- Parsa, Afshin;
- Reiner, Alex P;
- Salimi, Shabnam;
- Sheu, Wayne H-H;
- Shuldiner, Alan R;
- Taylor, Kent D;
- Smith, Albert V;
- Smith, Jennifer A;
- Tin, Adrienne;
- Vaidya, Dhananjay;
- Wallace, Robert B;
- Yamamoto, Kenichi;
- Sakaue, Saori;
- Matsuda, Koichi;
- Kamatani, Yoichiro;
- Momozawa, Yukihide;
- Yanek, Lisa R;
- Young, Betsi A;
- Zhao, Wei;
- Okada, Yukinori;
- Abecasis, Gonzalo;
- Psaty, Bruce M;
- Arnett, Donna K;
- Boerwinkle, Eric;
- Cai, Jianwen;
- Chen, Ida Yii-Der;
- Correa, Adolfo;
- Cupples, L Adrienne;
- He, Jiang;
- Kardia, Sharon LR;
- Kooperberg, Charles;
- Mathias, Rasika A;
- Mitchell, Braxton D;
- Nickerson, Deborah A;
- Turner, Steve T;
- Ramachandran, Vasan S;
- Rotter, Jerome I;
- Levy, Daniel;
- Kramer, Holly J;
- Köttgen, Anna;
- Consortium, NHLBI Trans-Omics for Precision Medicine;
- Group, TOPMed Kidney Working;
- Rich, Stephen S;
- Lin, Dan-Yu;
- Browning, Sharon R;
- Franceschini, Nora
- et al.
Abstract
Background
Genetic factors that influence kidney traits have been understudied for low frequency and ancestry-specific variants.Methods
We combined whole genome sequencing (WGS) data from 23,732 participants from 10 NHLBI Trans-Omics for Precision Medicine (TOPMed) Program multi-ethnic studies to identify novel loci for estimated glomerular filtration rate (eGFR). Participants included European, African, East Asian, and Hispanic ancestries. We applied linear mixed models using a genetic relationship matrix estimated from the WGS data and adjusted for age, sex, study, and ethnicity.Findings
When testing single variants, we identified three novel loci driven by low frequency variants more commonly observed in non-European ancestry (PRKAA2, rs180996919, minor allele frequency [MAF] 0.04%, P = 6.1 × 10-11; METTL8, rs116951054, MAF 0.09%, P = 4.5 × 10-9; and MATK, rs539182790, MAF 0.05%, P = 3.4 × 10-9). We also replicated two known loci for common variants (rs2461702, MAF=0.49, P = 1.2 × 10-9, nearest gene GATM, and rs71147340, MAF=0.34, P = 3.3 × 10-9, CDK12). Testing aggregated variants within a gene identified the MAF gene. A statistical approach based on local ancestry helped to identify replication samples for ancestry-specific variants.Interpretation
This study highlights challenges in studying variants influencing kidney traits that are low frequency in populations and more common in non-European ancestry.Many UC-authored scholarly publications are freely available on this site because of the UC's open access policies. Let us know how this access is important for you.
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