On statistical inference for selective genotyping

Journal of Statistical Planning and Inference(2014)

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摘要
In Quantitative Trait Locus detection, selective genotyping is a way to reduce costs due to genotyping: only individuals with extreme phenotypes are genotyped. We focus here on statistical inference for selective genotyping. We propose different statistical tests suitable for selective genotyping and we compare their performances in a very large framework. We prove that the non-extreme phenotypes (i.e. the phenotypes for which the genotypes are missing) do not bring any information for statistical inference. We also prove that we have to genotype symmetrically, that is to say the same percentage of large and small phenotypes whatever the proportions of the two genotypes in the population. Same results are obtained in the case of a selective genotyping with two correlated phenotypes.
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关键词
Hypothesis testing,Asymptotic properties of tests,Asymptotic relative efficiency,Selective genotyping,Quantitative Trait Locus detection
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