TY - JOUR
T1 - New correction algorithms for multiple comparisons in case-control multilocus association studies based on haplotypes and diplotype configurations
AU - Misawa, Kazuharu
AU - Fujii, Shoogo
AU - Yamazaki, Toshimasa
AU - Takahashi, Atsushi
AU - Takasaki, Junichi
AU - Yanagisawa, Masao
AU - Ohnishi, Yozo
AU - Nakamura, Yusuke
AU - Kamatani, Naoyuki
N1 - Copyright:
Copyright 2008 Elsevier B.V., All rights reserved.
PY - 2008/9
Y1 - 2008/9
N2 - The multiple comparison problem arises in population-based studies when the association between phenotypes and multilocus genotypes is examined. Although Bonferroni's correction is often used to cope with such a problem, it may yield too conservative conclusions because all of the tests are assumed to be independent. We have developed new correction algorithms for the test of independence between phenotypes and multilocus genotypes at loci in linkage disequilibrium. In one of the algorithms, the exact type I error rate is calculated for the independency test. We found that such exact probabilities can be calculated using a 128 CPU PC cluster if the numbers of cases and controls are not more than 50. As an alternative method, we developed algorithms to calculate asymptotically the type I error rates using a Markov-chain Monte Carlo sampler that provided a good approximation to values calculated by the exact method. When the new algorithms were applied to both simulation and real data, the real overall type I error rates for the loci in linkage disequilibrium were from one-third to half as high as those obtained by Bonferroni's correction. These algorithms are likely to be useful for multilocus association studies for data obtained by case-control and cohort studies.
AB - The multiple comparison problem arises in population-based studies when the association between phenotypes and multilocus genotypes is examined. Although Bonferroni's correction is often used to cope with such a problem, it may yield too conservative conclusions because all of the tests are assumed to be independent. We have developed new correction algorithms for the test of independence between phenotypes and multilocus genotypes at loci in linkage disequilibrium. In one of the algorithms, the exact type I error rate is calculated for the independency test. We found that such exact probabilities can be calculated using a 128 CPU PC cluster if the numbers of cases and controls are not more than 50. As an alternative method, we developed algorithms to calculate asymptotically the type I error rates using a Markov-chain Monte Carlo sampler that provided a good approximation to values calculated by the exact method. When the new algorithms were applied to both simulation and real data, the real overall type I error rates for the loci in linkage disequilibrium were from one-third to half as high as those obtained by Bonferroni's correction. These algorithms are likely to be useful for multilocus association studies for data obtained by case-control and cohort studies.
KW - Haplotype
KW - Linkage disequilibrium
KW - Markov chain Monte Carlo
KW - Single nucleotide polymorphism
KW - Type I error
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U2 - 10.1007/s10038-008-0312-0
DO - 10.1007/s10038-008-0312-0
M3 - Article
C2 - 18651098
AN - SCOPUS:50249108915
SN - 1434-5161
VL - 53
SP - 789
EP - 801
JO - Jinrui idengaku zasshi. The Japanese journal of human genetics
JF - Jinrui idengaku zasshi. The Japanese journal of human genetics
IS - 9
ER -