Accurate estimate of relatedness is important for genetic data analyses, such as heritability estimation and association mapping based on data collected from genome-wide association studies. Inaccurate relatedness estimates may lead to biased heritability estimations and spurious associations. Individual-level genotype data are often used to estimate kinship coefficient between individuals. The commonly used sample correlation-based genomic relationship matrix (scGRM) method estimates kinship coefficient by calculating the average sample correlation coefficient among all single nucleotide polymorphisms (SNPs), where the observed allele frequencies are used to calculate both the expectations and variances of genotypes. Although this method is widely used, a substantial proportion of estimated kinship coefficients are negative, which are difficult to interpret. In this paper, through mathematical derivation, we show that there indeed exists bias in the estimated kinship coefficient using the scGRM method when the observed allele frequencies are regarded as true frequencies. This leads to negative bias for the average estimate of kinship among all individuals, which explains the estimated negative kinship coefficients. Based on this observation, we propose an unbiased estimation method, UKin, which can reduce kinship estimation bias. We justify our improved method with rigorous mathematical proof. We have conducted simulations as well as two real data analyses to compare UKin with scGRM and three other kinship estimating methods: rGRM, tsGRM, and KING. Our results demonstrate that both bias and root mean square error in kinship coefficient estimation could be reduced by using UKin. We further investigated the performance of UKin, KING, and three GRM-based methods in calculating the SNP-based heritability, and show that UKin can improve estimation accuracy for heritability regardless of the scale of SNP panel.
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http://dx.doi.org/10.1186/s12859-022-05082-2 | DOI Listing |
Genes (Basel)
January 2025
Faculty of Biology, University of Bialystok, Ciołkowskiego 1J Street, 15-245 Białystok, Poland.
Background: The patterns of inbreeding coefficients () and fine spatial genetic structure (FSGS) were evaluated regarding the mating system and inbreeding depression of food-deceptive orchids, , var. , and , from NE Poland.
Methods: We used 455 individuals, representing nine populations of three taxa and AFLPs, to estimate percent polymorphic loci and Nei's gene diversity, which are calculated using the Bayesian method; ; ; FSGS with the pairwise kinship coefficient (); and AMOVA in populations.
Health Serv Res
November 2024
Department of Family and Consumer Studies, University of Utah, Salt Lake City, Utah, USA.
Objective: To ascertain how an instrumental variables (IV) model can improve upon the estimates obtained from traditional cost-of-illness (COI) models that treat health conditions as predetermined.
Study Setting And Design: A simulation study based on observational data compares the coefficients and average marginal effects from an IV model to a traditional COI model when an unobservable confounder is introduced. The two approaches are then applied to real data, using a kinship-weighted family history as an instrument, and differences are interpreted within the context of the findings from the simulation study.
Evol Appl
November 2024
Alaska Department of Fish and Game Arctic Marine Mammal Program Fairbanks USA.
Reliable estimates of population abundance and demographics are essential for managing harvested species. Ice-associated phocids, "ice seals," are a vital resource for subsistence-dependent coastal Native communities in western and northern Alaska, USA. In 2012, the Beringia distinct population segment of the bearded seal, , was listed as "threatened" under the US Endangered Species Act requiring greater scrutiny for management assessments.
View Article and Find Full Text PDFHeredity (Edinb)
January 2025
Department of Ecology and Evolution, University of Lausanne, Lausanne, Switzerland.
The Jacquard genetic identity coefficients are of fundamental importance in relatedness research. We address the estimation of these coefficients as well as other relationship parameters that derive from them such as kinship and inbreeding coefficients using a concise matrix framework. Estimation of the Jacquard coefficients via likelihood methods and the expectation-maximization algorithm is computationally very demanding for large numbers of polymorphisms.
View Article and Find Full Text PDFAnimals (Basel)
September 2024
College of Animal Science and Technology, Gansu Agricultural University, Lanzhou 730070, China.
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