Privacy-aware estimation of relatedness in admixed populations

Author:

Wang Su1,Kim Miran2ORCID,Li Wentao3,Jiang Xiaoqian3,Chen Han14,Harmanci Arif1ORCID

Affiliation:

1. Center for Precision Health, School of Biomedical Informatics, The University of Texas Health Science Center at Houston , Houston, TX 77030 , USA

2. Department of Mathematics, Hanyang University , Seoul, 04763 . Republic of Korea

3. Center for Secure Artificial intelligence For hEalthcare (SAFE), School of Biomedical Informatics, University of Texas Health Science Center , Houston, TX, 77030 , USA

4. Human Genetics Center, Department of Epidemiology, Human Genetics and Environmental Sciences, School of Public Health, The University of Texas Health Science Center at Houston , Houston, TX 77030 , USA

Abstract

Abstract Background Estimation of genetic relatedness, or kinship, is used occasionally for recreational purposes and in forensic applications. While numerous methods were developed to estimate kinship, they suffer from high computational requirements and often make an untenable assumption of homogeneous population ancestry of the samples. Moreover, genetic privacy is generally overlooked in the usage of kinship estimation methods. There can be ethical concerns about finding unknown familial relationships in third-party databases. Similar ethical concerns may arise while estimating and reporting sensitive population-level statistics such as inbreeding coefficients for the concerns around marginalization and stigmatization. Results Here, we present SIGFRIED, which makes use of existing reference panels with a projection-based approach that simplifies kinship estimation in the admixed populations. We use simulated and real datasets to demonstrate the accuracy and efficiency of kinship estimation. We present a secure federated kinship estimation framework and implement a secure kinship estimator using homomorphic encryption-based primitives for computing relatedness between samples in two different sites while genotype data are kept confidential. Source code and documentation for our methods can be found at https://doi.org/10.5281/zenodo.7053352. Conclusions Analysis of relatedness is fundamentally important for identifying relatives, in association studies, and for estimation of population-level estimates of inbreeding. As the awareness of individual and group genomic privacy is growing, privacy-preserving methods for the estimation of relatedness are needed. Presented methods alleviate the ethical and privacy concerns in the analysis of relatedness in admixed, historically isolated and underrepresented populations. Short Abstract Genetic relatedness is a central quantity used for finding relatives in databases, correcting biases in genome wide association studies and for estimating population-level statistics. Methods for estimating genetic relatedness have high computational requirements, and occasionally do not consider individuals from admixed ancestries. Furthermore, the ethical concerns around using genetic data and calculating relatedness are not considered. We present a projection-based approach that can efficiently and accurately estimate kinship. We implement our method using encryption-based techniques that provide provable security guarantees to protect genetic data while kinship statistics are computed among multiple sites.

Funder

University of Texas Health Science Center, Houston

Settlement Research

UNIST

Institute of Information & communications Tech-nology Planning & Evaluation

Korea government

Artificial Intelligence graduate school

Scholar in Cancer Research

Christopher Sarofim Family Professorship

National Institute of Health

National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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