Reiczigel J, Singer J, Lang Z S
University of Veterinary Medicine Budapest,Hungary.
Accelsiors CRO & Consultancy Services Ltd,Budapest,Hungary.
Epidemiol Infect. 2017 Jan;145(1):187-193. doi: 10.1017/S0950268816002028. Epub 2016 Sep 9.
The risk ratio quantifies the risk of disease in a study population relative to a reference population. Standard methods of estimation and testing assume a perfect diagnostic test having sensitivity and specificity of 100%. However, this assumption typically does not hold, and this may invalidate naive estimation and testing for the risk ratio. We propose procedures that control for sensitivity and specificity of the diagnostic test, given the risks are measured by proportions, as it is in cross-sectional studies or studies with fixed follow-up times. These procedures provide an exact unconditional test and confidence interval for the true risk ratio. The methods also cover the case when sensitivity and specificity differ in the two groups (differential misclassification). The resulting test and confidence interval may be useful in epidemiological studies as well as in clinical and vaccine trials. We illustrate the method with real-life examples which demonstrate that ignoring sensitivity and specificity of the diagnostic test may lead to considerable bias in the estimated risk ratio.
风险比量化了研究人群相对于参考人群的疾病风险。标准的估计和检验方法假定诊断试验完美,灵敏度和特异度均为100%。然而,这一假设通常并不成立,这可能会使对风险比的简单估计和检验无效。我们提出了一些程序,在风险以比例衡量时(如在横断面研究或固定随访时间的研究中),控制诊断试验的灵敏度和特异度。这些程序为真实风险比提供了精确的无条件检验和置信区间。该方法还涵盖了两组中灵敏度和特异度不同的情况(差异错误分类)。由此产生的检验和置信区间在流行病学研究以及临床和疫苗试验中可能会有用。我们用实际例子说明了该方法,这些例子表明忽略诊断试验的灵敏度和特异度可能会导致估计的风险比出现相当大的偏差。