Uimari P, Pitkäniemi J, Onkamo P
Rolf Nevanlinna Institute, University of Helsinki, Finland.
Genet Epidemiol. 1999;17 Suppl 1:S743-8. doi: 10.1002/gepi.13701707122.
A Bayesian method for multipoint mapping of disease genes based on Markov chain Monte Carlo algorithms was applied to the simulated GAW11 data (Study 2). The method is based on repeated Gibbs and more general Metropolis-Hastings steps. For simplicity we assumed a single disease locus model with two alleles. A normal distribution for the underlying latent variable of the qualitative phenotype was assumed. Based on a single replicate of the data no clear evidence of any of the genes underlying the simulated disease was found. However, when three replicates were combined the method was able to locate the locus C correctly on chromosome 3.
一种基于马尔可夫链蒙特卡罗算法的疾病基因多点定位贝叶斯方法应用于模拟的GAW11数据(研究2)。该方法基于重复的吉布斯抽样和更一般的梅特罗波利斯-黑斯廷斯步骤。为简单起见,我们假设了一个具有两个等位基因的单疾病位点模型。假设定性表型的潜在变量服从正态分布。基于数据的单个复制品,未发现模拟疾病潜在的任何基因的明确证据。然而,当三个复制品合并时,该方法能够在3号染色体上正确定位位点C。