Burstyn Igor, Goldstein Neal D, Gustafson Paul
Department of Environmental and Occupational Health, Drexel University Dornsife School of Public Health, 3215 Market St, Philadelphia, PA, 19104, USA.
Department of Epidemiology & Biostatistics, Drexel University Dornsife School of Public Health, Philadelphia, PA, USA.
BMC Med Res Methodol. 2020 Jun 6;20(1):146. doi: 10.1186/s12874-020-01037-4.
Despite widespread use, the accuracy of the diagnostic test for SARS-CoV-2 infection is poorly understood. The aim of our work was to better quantify misclassification errors in identification of true cases of COVID-19 and to study the impact of these errors in epidemic curves using publicly available surveillance data from Alberta, Canada and Philadelphia, USA.
We examined time-series data of laboratory tests for SARS-CoV-2 viral infection, the causal agent for COVID-19, to try to explore, using a Bayesian approach, the sensitivity and specificity of the diagnostic test.
Our analysis revealed that the data were compatible with near-perfect specificity, but it was challenging to gain information about sensitivity. We applied these insights to uncertainty/bias analysis of epidemic curves under the assumptions of both improving and degrading sensitivity. If the sensitivity improved from 60 to 95%, the adjusted epidemic curves likely falls within the 95% confidence intervals of the observed counts. However, bias in the shape and peak of the epidemic curves can be pronounced, if sensitivity either degrades or remains poor in the 60-70% range. In the extreme scenario, hundreds of undiagnosed cases, even among the tested, are possible, potentially leading to further unchecked contagion should these cases not self-isolate.
The best way to better understand bias in the epidemic curves of COVID-19 due to errors in testing is to empirically evaluate misclassification of diagnosis in clinical settings and apply this knowledge to adjustment of epidemic curves.
尽管广泛使用,但对严重急性呼吸综合征冠状病毒2(SARS-CoV-2)感染诊断测试的准确性了解不足。我们研究的目的是更好地量化2019冠状病毒病(COVID-19)确诊病例识别中的错误分类误差,并利用加拿大艾伯塔省和美国费城公开可用的监测数据研究这些误差对流行曲线的影响。
我们检查了针对COVID-19病原体SARS-CoV-2病毒感染的实验室检测的时间序列数据,试图采用贝叶斯方法探索诊断测试的敏感性和特异性。
我们的分析表明,数据与近乎完美的特异性相符,但获取有关敏感性的信息具有挑战性。我们将这些见解应用于在敏感性提高和降低的假设下对流行曲线的不确定性/偏差分析。如果敏感性从60%提高到95%,调整后的流行曲线可能落在观察计数的95%置信区间内。然而,如果敏感性降低或在60%-70%范围内保持较低水平,流行曲线的形状和峰值偏差可能会很明显。在极端情况下,即使在接受检测的人群中也可能有数百例未确诊病例,如果这些病例不自我隔离,可能会导致进一步的未加控制的传播。
更好地理解由于检测误差导致的COVID-19流行曲线偏差的最佳方法是在临床环境中实证评估诊断的错误分类,并将这些知识应用于流行曲线的调整。