Searching across-cohort relatives in 54,092 GWAS samples via encrypted genotype regression

Author:

Zhang Qi-Xin,Liu Tianzi,Guo Xinxin,Zhen Jianxin,Yang Meng-yuan,Khederzadeh Saber,Zhou Fang,Han Xiaotong,Zheng Qiwen,Jia Peilin,Ding Xiaohu,He Mingguang,Zou Xin,Liao Jia-Kai,Zhang Hongxin,He Ji,Zhu Xiaofeng,Lu Daru,Chen Hongyan,Zeng Changqing,Liu Fan,Zheng Hou-Feng,Liu Siyang,Xu Hai-Ming,Chen Guo-BoORCID

Abstract

Explicitly sharing individual level data in genomics studies has many merits comparing to sharing summary statistics, including more strict QCs, common statistical analyses, relative identification and improved statistical power in GWAS, but it is hampered by privacy or ethical constraints. In this study, we developed encG-reg, a regression approach that can detect relatives of various degrees based on encrypted genomic data, which is immune of ethical constraints. The encryption properties of encG-reg are based on the random matrix theory by masking the original genotypic matrix without sacrificing precision of individual-level genotype data. We established a connection between the dimension of a random matrix, which masked genotype matrices, and the required precision of a study for encrypted genotype data. encG-reg has false positive and false negative rates equivalent to sharing original individual level data, and is computationally efficient when searching relatives. We split the UK Biobank into their respective centers, and then encrypted the genotype data. We observed that the relatives estimated using encG-reg was equivalently accurate with the estimation by KING, which is a widely used software but requires original genotype data. In a more complex application, we launched a finely devised multi-center collaboration across 5 research institutes in China, covering 9 cohorts of 54,092 GWAS samples. encG-reg again identified true relatives existing across the cohorts with even different ethnic backgrounds and genotypic qualities. Our study clearly demonstrates that encrypted genomic data can be used for data sharing without loss of information or data sharing barrier.

Funder

National Natural Science Foundation of China

Chinese Academy of Sciences

Shenzhen Basic Research Foundation

Guangdong Basic and Applied Basic Research Foundation

Strategic Priority Research Program of Chinese Academy of Sciences

Science and Technology Service Network Initiative of Chinese Academy of Sciences

Shanghai Municipal Science and Technology Major Project

Publisher

Public Library of Science (PLoS)

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