Hawke Jesse L, Stallings Michael C, Wadsworth Sally J, DeFries John C
Institute for Behavioral Genetics, University of Colorado, Boulder, 447 UCB, Boulder, CO 80309-0447, US.
Behav Genet. 2008 Mar;38(2):101-7. doi: 10.1007/s10519-008-9189-0. Epub 2008 Jan 23.
Although a comparison of concordance rates for deviant scores in identical and fraternal twin pairs can provide prima facie evidence for a genetic etiology, information is not fully utilized when continuous measures are analyzed in a dichotomous manner. Thus, DeFries and Fulker (Behav Genet 15:467-473, 1985; Acta Genet Med Gemellol, 37:205-216, 1988) developed a regression-based methodology (DF analysis) to assess genetic etiology in both selected and unselected twin samples. While the DF analysis is a very versatile and relatively powerful statistical approach, it is not easily extended to the multivariate case. In contrast, structural equation models may be readily extended to analyze multivariate data sets (Neale and Cardon, Methodology for genetic studies of twins and families, 1992). However, such methodologies may yield biased estimates of additive genetic, shared environmental, and non-shared environmental influences when multivariate models are fitted to selected twin data. Therefore, the Pearson-Aitken (PA) selection formula (Aitken, Proc Edinburgh Math Soc B, 4:106-110, 1934) was used to analyze reading performance data from twins with reading difficulties (selected sample) and a population of normally-achieving twin pairs (control sample). As a comparison, DF models were also fitted to these same data sets. In general, resulting estimates of additive genetic, shared environmental, and non-shared environmental influences were similar when the DF and PA models were fitted to the data. However, the PA selection formula may be more readily generalized to the multivariate case.
虽然比较同卵双胞胎和异卵双胞胎对偏差分数的一致性比率可以为遗传病因提供初步证据,但当以二分法分析连续测量值时,信息并未得到充分利用。因此,德弗里斯和富尔克(《行为遗传学》15:467 - 473,1985;《遗传学与双生子医学学报》,37:205 - 216,1988)开发了一种基于回归的方法(DF分析)来评估选定和未选定双胞胎样本中的遗传病因。虽然DF分析是一种非常通用且相对强大的统计方法,但它不容易扩展到多变量情况。相比之下,结构方程模型可以很容易地扩展以分析多变量数据集(尼尔和卡登,《双胞胎和家庭遗传研究方法》,1992)。然而,当多变量模型应用于选定的双胞胎数据时,这些方法可能会对加性遗传、共享环境和非共享环境影响产生有偏差的估计。因此,使用皮尔逊 - 艾特肯(PA)选择公式(艾特肯,《爱丁堡数学学会学报B》,4:106 - 110,1934)来分析有阅读困难的双胞胎(选定样本)和正常成绩双胞胎对群体(对照样本)的阅读表现数据。作为比较,DF模型也应用于这些相同的数据集。总体而言,当DF和PA模型应用于数据时,加性遗传、共享环境和非共享环境影响的估计结果相似。然而,PA选择公式可能更容易推广到多变量情况。