Dwyer Terence, Blizzard Leigh
Menzies Research Institute, University of Tasmania, Hobart, Tasmania, Australia.
Paediatr Perinat Epidemiol. 2005 Jan;19 Suppl 1:48-53. doi: 10.1111/j.1365-3016.2005.00615.x.
Twin data can be used to gain insights into the origin of associations between factors arising in fetal life and the risk of later disease. This is because twin data afford an opportunity to conduct paired analyses that take the influence of shared factors into account. When an association that is present in an unpaired analysis is present also in a paired analysis, there is evidence that the causal pathway linking the fetal factor and the disease may have a fetal origin. If the association disappears in the paired analysis, there is evidence that it may have has arisen from a shared source such as the mother. The relevant factors include diet and socio-economic status. There are several statistical approaches to this. The simplest involves comparing, say, a coefficient from a regression of an outcome on a fetal factor for all subjects in a twin sample, with the coefficient obtained from regressing the within-pair difference in the outcome on the within-pair difference in the fetal factor. Alternative approaches involve simultaneously estimating regression parameters for between- and within-pair components. These approaches permit similar inferences about whether the association is due to individual (fetal) or shared (maternal) factors, and are valid in the circumstances that non-shared factors missing from the regression model do not influence the regression estimates.
双胞胎数据可用于深入了解胎儿期出现的因素与后期疾病风险之间关联的起源。这是因为双胞胎数据提供了一个机会来进行配对分析,从而考虑到共享因素的影响。当在非配对分析中存在的关联在配对分析中也存在时,就有证据表明连接胎儿因素和疾病的因果途径可能起源于胎儿期。如果该关联在配对分析中消失,则有证据表明它可能源于诸如母亲等共享来源。相关因素包括饮食和社会经济地位。对此有几种统计方法。最简单的方法是,比如说,将双胞胎样本中所有受试者的结局对胎儿因素的回归系数,与从结局的配对内差异对胎儿因素的配对内差异进行回归得到的系数进行比较。替代方法涉及同时估计配对间和配对内成分的回归参数。这些方法允许对该关联是由于个体(胎儿)因素还是共享(母亲)因素做出类似推断,并且在回归模型中缺失的非共享因素不影响回归估计的情况下是有效的。