Macgregor Stuart, Cornes Belinda K, Martin Nicholas G, Visscher Peter M
Genetic Epidemiology, Queensland Institute of Medical Research, Herston Road, Brisbane, Australia.
Hum Genet. 2006 Nov;120(4):571-80. doi: 10.1007/s00439-006-0240-z. Epub 2006 Aug 25.
Many studies of quantitative and disease traits in human genetics rely upon self-reported measures. Such measures are based on questionnaires or interviews and are often cheaper and more readily available than alternatives. However, the precision and potential bias cannot usually be assessed. Here we report a detailed quantitative genetic analysis of stature. We characterise the degree of measurement error by utilising a large sample of Australian twin pairs (857 MZ, 815 DZ) with both clinical and self-reported measures of height. Self-report height measurements are shown to be more variable than clinical measures. This has led to lowered estimates of heritability in many previous studies of stature. In our twin sample the heritability estimate for clinical height exceeded 90%. Repeated measures analysis shows that 2-3 times as many self-report measures are required to recover heritability estimates similar to those obtained from clinical measures. Bivariate genetic repeated measures analysis of self-report and clinical height measures showed an additive genetic correlation >0.98. We show that the accuracy of self-report height is upwardly biased in older individuals and in individuals of short stature. By comparing clinical and self-report measures we also showed that there was a genetic component to females systematically reporting their height incorrectly; this phenomenon appeared to not be present in males. The results from the measurement error analysis were subsequently used to assess the effects of error on the power to detect linkage in a genome scan. Moderate reduction in error (through the use of accurate clinical or multiple self-report measures) increased the effective sample size by 22%; elimination of measurement error led to increases in effective sample size of 41%.
人类遗传学中许多关于数量性状和疾病性状的研究都依赖于自我报告的测量方法。这些测量方法基于问卷调查或访谈,通常比其他方法更便宜且更容易获得。然而,通常无法评估其精度和潜在偏差。在此,我们报告了一项关于身高的详细数量遗传学分析。我们利用大量澳大利亚双胞胎对(857对同卵双胞胎,815对异卵双胞胎)的临床测量和自我报告的身高数据来表征测量误差的程度。结果表明,自我报告的身高测量比临床测量更具变异性。这导致在许多先前关于身高的研究中遗传力估计值降低。在我们的双胞胎样本中,临床身高的遗传力估计值超过90%。重复测量分析表明,需要2至3倍数量的自我报告测量才能获得与临床测量相似的遗传力估计值。自我报告身高和临床身高测量的双变量遗传重复测量分析显示加性遗传相关性>0.98。我们发现,自我报告身高的准确性在老年人和身材矮小的个体中存在向上偏差。通过比较临床测量和自我报告测量,我们还表明,女性系统性地错误报告身高存在遗传成分;而这种现象在男性中似乎不存在。测量误差分析的结果随后被用于评估误差对基因组扫描中检测连锁的能力的影响。适度减少误差(通过使用准确的临床测量或多次自我报告测量)可使有效样本量增加22%;消除测量误差可使有效样本量增加41%。