Li J, Ji L
The Ministry of Education (MOE) Key Laboratory of Bioinformatics, Department of Automation, Tsinghua University, Beijing, People's Republic of China.
Heredity (Edinb). 2005 Sep;95(3):221-7. doi: 10.1038/sj.hdy.6800717.
Correlated multiple testing is widely performed in genetic research, particularly in multilocus analyses of complex diseases. Failure to control appropriately for the effect of multiple testing will either result in a flood of false-positive claims or in true hits being overlooked. Cheverud proposed the idea of adjusting correlated tests as if they were independent, according to an 'effective number' (M(eff)) of independent tests. However, our experience has indicated that Cheverud's estimate of the Meff is overly large and will lead to excessively conservative results. We propose a more accurate estimate of the M(eff), and design M(eff)-based procedures to control the experiment-wise significant level and the false discovery rate. In an evaluation, based on both real and simulated data, the M(eff)-based procedures were able to control the error rate accurately and consequently resulted in a power increase, especially in multilocus analyses. The results confirm that the M(eff) is a useful concept in the error-rate control of correlated tests. With its efficiency and accuracy, the M(eff) method provides an alternative to computationally intensive methods such as the permutation test.
相关多重检验在基因研究中广泛应用,尤其是在复杂疾病的多位点分析中。若不能适当控制多重检验的影响,要么会导致大量假阳性结果,要么会忽略真正的发现。切弗鲁德提出根据独立检验的“有效数量”(M(eff)),将相关检验当作独立检验来进行调整的想法。然而,我们的经验表明,切弗鲁德对M(eff)的估计过大,会导致结果过于保守。我们提出了对M(eff)更准确的估计,并设计了基于M(eff)的程序来控制实验性显著水平和错误发现率。在一项基于真实数据和模拟数据的评估中,基于M(eff)的程序能够准确控制错误率,从而提高检验效能,尤其是在多位点分析中。结果证实,M(eff)在相关检验的错误率控制中是一个有用的概念。凭借其效率和准确性,M(eff)方法为诸如置换检验等计算量大的方法提供了一种替代方案。