Benchmarking Relatedness Inference Methods with Genome-Wide Data from Thousands of Relatives

Author:

Ramstetter Monica D1,Dyer Thomas D2,Lehman Donna M3,Curran Joanne E2,Duggirala Ravindranath2,Blangero John2,Mezey Jason G14,Williams Amy L1

Affiliation:

1. Department of Biological Statistics and Computational Biology, Cornell University, Ithaca, New York 14853

2. South Texas Diabetes and Obesity Institute, University of Texas Rio Grande Valley, Brownsville, Texas 78520

3. Department of Medicine, University of Texas Health San Antonio, San Antonio, Texas 78229

4. Department of Genetic Medicine, Weill Cornell Medicine, New York, New York 10065

Abstract

Abstract Relatedness inference is an essential component of many genetic analyses and popular in consumer genetic testing. Ramstetter et al. evaluate twelve..... Inferring relatedness from genomic data is an essential component of genetic association studies, population genetics, forensics, and genealogy. While numerous methods exist for inferring relatedness, thorough evaluation of these approaches in real data has been lacking. Here, we report an assessment of 12 state-of-the-art pairwise relatedness inference methods using a data set with 2485 individuals contained in several large pedigrees that span up to six generations. We find that all methods have high accuracy (92–99%) when detecting first- and second-degree relationships, but their accuracy dwindles to <43% for seventh-degree relationships. However, most identical by descent (IBD) segment-based methods inferred seventh-degree relatives correct to within one relatedness degree for >76% of relative pairs. Overall, the most accurate methods are Estimation of Recent Shared Ancestry (ERSA) and approaches that compute total IBD sharing using the output from GERMLINE and Refined IBD to infer relatedness. Combining information from the most accurate methods provides little accuracy improvement, indicating that novel approaches, such as new methods that leverage relatedness signals from multiple samples, are needed to achieve a sizeable jump in performance.

Publisher

Oxford University Press (OUP)

Subject

Genetics

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