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Cost-effective prediction of gender-labeling errors and estimation of gender-labeling error rates in candidate-gene association studies.


ABSTRACT: We describe a statistical approach to predict gender-labeling errors in candidate-gene association studies, when Y-chromosome markers have not been included in the genotyping set. The approach adds value to methods that consider only the heterozygosity of X-chromosome SNPs, by incorporating available information about the intensity of X-chromosome SNPs in candidate genes relative to autosomal SNPs from the same individual. To our knowledge, no published methods formalize a framework in which heterozygosity and relative intensity are simultaneously taken into account. Our method offers the advantage that, in the genotyping set, no additional space is required beyond that already assigned to X-chromosome SNPs in the candidate genes. We also show how the predictions can be used in a two-phase sampling design to estimate the gender-labeling error rates for an entire study, at a fraction of the cost of a conventional design.

SUBMITTER: Qu C 

PROVIDER: S-EPMC3270323 | biostudies-literature | 2011

REPOSITORIES: biostudies-literature

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Cost-effective prediction of gender-labeling errors and estimation of gender-labeling error rates in candidate-gene association studies.

Qu Conghui C   Schuetz Johanna M JM   Min Jeong Eun JE   Leach Stephen S   Daley Denise D   Spinelli John J JJ   Brooks-Wilson Angela A   Graham Jinko J  

Frontiers in genetics 20110615


We describe a statistical approach to predict gender-labeling errors in candidate-gene association studies, when Y-chromosome markers have not been included in the genotyping set. The approach adds value to methods that consider only the heterozygosity of X-chromosome SNPs, by incorporating available information about the intensity of X-chromosome SNPs in candidate genes relative to autosomal SNPs from the same individual. To our knowledge, no published methods formalize a framework in which het  ...[more]

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