Zhao L P, Grove J, Quiaoit F
Program of Epidemiology, School of Public Health, University of Hawaii, Honolulu 96813.
Am J Hum Genet. 1992 Jul;51(1):178-90.
An analytic method is described for estimating phenotypic correlations between pairs of members of specific relationships in pedigrees. In estimating correlations, this new method allows simultaneous adjustment for available covariates such as age, gender, environmental factors, and variables reflecting ascertainment mode, through mean- and variance-regression models. The estimated correlations and regression coefficients corresponding to covariates are consistent and asymptotically normally distributed. Differing from a full-likelihood approach, this new method does not require the assumption of a particular joint distribution of phenotypes from a pedigree, such as the multivariate normal distribution, but instead only requires correct specification of mean- and variance-regression models. Within this framework, missing data, if they are missing completely at random, can be ignored without biasing estimates. The method is illustrated by an application using nevus-count data from 28 Utah kinships. The results from the analysis are that covariate-adjusted nevus counts are correlated between parents and children (correlation .22; P less than .001) and between siblings (correlation .32; P less than .001), while the correlation of -.04 between husband and wife is not significantly different (P = .31) from 0. This result is consistent with a genetic etiology of nevus count.
本文描述了一种分析方法,用于估计系谱中特定亲属关系成员对之间的表型相关性。在估计相关性时,这种新方法允许通过均值回归模型和方差回归模型,对年龄、性别、环境因素以及反映确诊模式的变量等可用协变量进行同时调整。与协变量对应的估计相关性和回归系数是一致的,并且渐近正态分布。与全似然方法不同,这种新方法不需要假设系谱中表型的特定联合分布,如多元正态分布,而是只需要正确指定均值回归模型和方差回归模型。在此框架内,如果缺失数据是完全随机缺失的,则可以忽略不计,而不会使估计产生偏差。通过使用来自28个犹他州亲属关系的痣计数数据进行应用来说明该方法。分析结果表明,经协变量调整后的痣计数在父母与子女之间(相关性为0.22;P小于0.001)以及兄弟姐妹之间(相关性为0.32;P小于0.001)存在相关性,而夫妻之间-0.04的相关性与0没有显著差异(P = 0.31)。这一结果与痣计数的遗传病因一致。