From the Department of Economics and Institute for Policy Research, Northwestern University, Evanston, IL.
Epidemiology. 2021 Mar 1;32(2):162-167. doi: 10.1097/EDE.0000000000001309.
Tests used to diagnose illness commonly have imperfect accuracy, with some false-positive and negative results. For risk assessment and clinical decisions, predictive values are of interest. Positive predictive value (PPV) is the chance that a member of a relevant population who tests positive has been ill. Negative predictive value (NPV) is the chance that someone who tests negative has not been ill. The medical literature regularly reports sensitivity and specificity. Sensitivity is the chance that an ill person receives a positive test result. Specificity is the chance that a nonill person receives a negative result. Knowledge of sensitivity and specificity enables one to predict the test result given a person's illness status. These predictions are not directly relevant to patient care but, given knowledge of sensitivity and specificity, PPV and NPV can be derived if one knows the prevalence of the disease, the population rate of illness. There is considerable uncertainty about the prevalence of some diseases, a notable case being COVID-19. This paper addresses the problem of identification of PPV and NPV given knowledge of sensitivity and specificity and given bounds on prevalence. I explain the problem and show how to bound PPV and NPV as well as the risk ratio and difference, which are functions thereof. I apply the findings to COVID-19 antibody tests. I question the realism of supposing that sensitivity and specificity are known.
用于诊断疾病的测试通常准确性不高,会出现一些假阳性和假阴性结果。对于风险评估和临床决策,预测值很重要。阳性预测值(PPV)是指在相关人群中,检测结果呈阳性的人患病的可能性。阴性预测值(NPV)是指检测结果呈阴性的人未患病的可能性。医学文献经常报告灵敏度和特异性。灵敏度是指患病者接受阳性检测结果的可能性。特异性是指未患病者接受阴性结果的可能性。了解灵敏度和特异性可以帮助预测给定患者疾病状态的测试结果。这些预测与患者护理没有直接关系,但是,在了解灵敏度和特异性的情况下,如果知道疾病的流行率(即人群中患病的比例),就可以推导出 PPV 和 NPV。一些疾病的流行率存在相当大的不确定性,一个显著的例子是 COVID-19。本文针对在了解灵敏度和特异性以及流行率上下限时,如何确定 PPV 和 NPV 的问题进行了探讨。我解释了这个问题,并展示了如何对 PPV 和 NPV 以及风险比和差异进行限定,它们是这些值的函数。我将这些发现应用于 COVID-19 抗体测试。我质疑假设灵敏度和特异性已知的现实性。