McGue M, Wette R, Rao D C
Genet Epidemiol. 1984;1(3):255-69. doi: 10.1002/gepi.1370010305.
Path analysis of family data has been widely applied to resolve genetic and environmental patterns of familial resemblance. A prevalent statistical approach in path analysis has been, first, to estimate the familial correlations and, second, by assuming these estimates to be independently distributed, define a likelihood function from which maximum likelihood estimates of model parameters can be obtained and likelihood ratio tests of hypotheses performed. Although it is generally known that the independence assumption does not hold when multiple familial correlations are estimated from the same family data, this statistical method has still been used in these situations owing, in part, to the lack of any viable alternatives and, in part, to the lack of any knowledge about the specific quantitative effects of not meeting the assumption of independence. Here, using computer-simulation methods, we evaluate the robustness of this statistical method to deviations from the assumption of independence. In general, we found that the failure to meet the assumption of independence leads to a conservative test of the goodness-of-fit of the path model, although likelihood ratio tests of specific null hypotheses were at times liberal, at times conservative, and at times nearly exact. Although the test statistics were found to be distorted, the parameter estimates using this method were nearly unbiased.
家庭数据的路径分析已被广泛应用于解析家族相似性的遗传和环境模式。路径分析中一种普遍的统计方法是,首先估计家族相关性,其次,通过假设这些估计值是独立分布的,定义一个似然函数,从中可以获得模型参数的最大似然估计值,并进行假设的似然比检验。尽管人们普遍知道,当从同一家族数据中估计多个家族相关性时,独立性假设并不成立,但这种统计方法在这些情况下仍被使用,部分原因是缺乏任何可行的替代方法,部分原因是对于不满足独立性假设的具体定量影响缺乏了解。在此,我们使用计算机模拟方法,评估这种统计方法对偏离独立性假设的稳健性。总体而言,我们发现不满足独立性假设会导致对路径模型拟合优度的保守检验,尽管特定零假设的似然比检验有时宽松,有时保守,有时几乎准确。尽管发现检验统计量存在扭曲,但使用这种方法得到的参数估计值几乎无偏。