Optimum two-stage designs in case–control association studies using false discovery rate

被引:0
|
作者
Aya Kuchiba
Noriko Y. Tanaka
Yasuo Ohashi
机构
[1] University of Tokyo,Department of Biostatistics/Epidemiology and Preventive Health Sciences, Graduate School of Medicine
[2] University of Tokyo,Department of Clinical Bioinformatics, Graduate School of Medicine
来源
Journal of Human Genetics | 2006年 / 51卷
关键词
Population-based association studies; Common diseases; Power; Genotyping cost; A prior probability;
D O I
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中图分类号
学科分类号
摘要
Genetic association studies using case–control designs are often done to identify loci associated with disease susceptibility. These studies are often expensive to perform, due to a large number of genetic markers. Several types of two-stage designs are proposed and used from the point of cost effectiveness. We proposed to control the false discovery rate for multiple-testing correction in two-stage designs, using optimal sample sizes and criteria for selecting markers associated with a disease in each stage to minimize the cost of genotyping. The expected power and cost of two-stage designs were compared with those of one-stage designs, under the assumptions that the genetic markers are independent and total sample size is fixed. The results showed that the proposed two-stage procedure usually reduced the cost of genotyping by 40–60%, with a power similar to that of the one-stage designs. In addition, the sample size and selection criteria, which are optimized parameters, are defined as a function of a prior probability that marker–disease association is true. So, the effects of mis-specification of a prior probability on efficiency were also considered.
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页码:1046 / 1054
页数:8
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