Greenland Sander, Gustafson Paul
Department of Epidemiology, University of California, Los Angeles, CA 90095-1772, USA.
Am J Epidemiol. 2006 Jul 1;164(1):63-8. doi: 10.1093/aje/kwj155. Epub 2006 Apr 26.
Researchers sometimes argue that their exposure-measurement errors are independent of other errors and are nondifferential with respect to disease, resulting in estimation bias toward the null. Among well-known problems with such arguments are that independence and nondifferentiality are harder to satisfy than ordinarily appreciated (e.g., because of correlation of errors in questionnaire items, and because of uncontrolled covariate effects on error rates); small violations of independence or nondifferentiality may lead to bias away from the null; and, if exposure is polytomous, the bias produced by independent nondifferential error is not always toward the null. The authors add to this list by showing that, in a 2 x 2 table (for which independent nondifferential error produces bias toward the null), accounting for independent nondifferential error does not reduce the p value even though it increases the point estimate. Thus, such accounting should not increase certainty that an association is present.
研究人员有时认为,他们的暴露测量误差独立于其他误差,且在疾病方面是无差异的,从而导致向无效值的估计偏差。这类观点存在的诸多众所周知的问题包括:独立性和无差异性比通常认为的更难满足(例如,由于问卷项目中的误差相关性,以及由于未控制的协变量对错误率的影响);独立性或无差异性的微小违反可能导致偏离无效值的偏差;而且,如果暴露是多分类的,独立无差异误差产生的偏差并不总是朝向无效值。作者补充了这一清单,表明在一个2×2表格中(对于该表格,独立无差异误差会产生朝向无效值的偏差),考虑独立无差异误差并不会降低p值,即使它会增加点估计值。因此,这种考虑不应增加对存在关联的确信度。