Am J Epidemiol. 2021 Jan 4;190(1):109-115. doi: 10.1093/aje/kwaa174.
Testing representative populations to determine the prevalence or the percentage of the population with active severe acute respiratory syndrome coronavirus 2 infection and/or antibodies to infection is being recommended as essential for making public policy decisions to ease restrictions or to continue enforcing national, state, and local government rules to shelter in place. However, all laboratory tests are imperfect and have estimates of sensitivity and specificity less than 100%-in some cases, considerably less than 100%. That error will lead to biased prevalence estimates. If the true prevalence is low, possibly in the range of 1%-5%, then testing error will lead to a constant background of bias that most likely will be larger, and possibly much larger, than the true prevalence itself. As a result, what is needed is a method for adjusting prevalence estimates for testing error. Methods are outlined in this article for adjusting prevalence estimates for testing error both prospectively in studies being planned and retrospectively in studies that have been conducted. If used, these methods also would help harmonize study results within countries and worldwide. Adjustment can lead to more accurate prevalence estimates and to better policy decisions. However, adjustment will not improve the accuracy of an individual test.
建议对具有代表性的人群进行检测,以确定活跃的严重急性呼吸综合征冠状病毒 2 感染和/或感染抗体的人群的流行率或百分比,这对于制定公共政策决策以放宽限制或继续执行国家、州和地方政府的就地避难规则是必要的。然而,所有实验室检测都不完美,其灵敏度和特异性估计值都低于 100%--在某些情况下,远低于 100%。这种误差将导致流行率估计值出现偏差。如果真实的流行率较低,可能在 1%-5%的范围内,那么检测误差将导致一个持续的背景偏差,其大小很可能比真实的流行率本身还要大,而且可能大得多。因此,需要一种针对检测误差调整流行率估计值的方法。本文概述了用于前瞻性研究(即在计划中的研究中)和回顾性研究(即已经进行的研究中)中调整流行率估计值的方法。如果使用这些方法,还可以帮助协调各国和全球范围内的研究结果。调整可以导致更准确的流行率估计值和更好的政策决策。然而,调整不会提高单个测试的准确性。