Measuring Vaccine Efficacy Against Infection and Disease in Clinical Trials: Sources and Magnitude of Bias in Coronavirus Disease 2019 (COVID-19) Vaccine Efficacy Estimates

L. Williams, N. Ferguson, C. Donnelly, N. Grassly
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引用次数: 4

Abstract

Background Phase III trials have estimated COVID-19 vaccine efficacy (VE) against symptomatic and asymptomatic infection. We explore the direction and magnitude of potential biases in these estimates and their implications for vaccine protection against infection and against disease in breakthrough infections. Methods We developed a mathematical model that accounts for natural and vaccine-induced immunity, changes in serostatus and imperfect sensitivity and specificity of tests for infection and antibodies. We estimated expected biases in VE against symptomatic, asymptomatic and any SARS-CoV-2 infections and against disease following infection for a range of vaccine characteristics and measurement approaches, and the likely overall biases for published trial results that included asymptomatic infections. Results VE against asymptomatic infection measured by PCR or serology is expected to be low or negative for vaccines that prevent disease but not infection. VE against any infection is overestimated when asymptomatic infections are less likely to be detected than symptomatic infections and the vaccine protects against symptom development. A competing bias towards underestimation arises for estimates based on tests with imperfect specificity, especially when testing is performed frequently. Our model indicates considerable uncertainty in Oxford-AstraZeneca ChAdOx1 and Janssen Ad26.COV2.S VE against any infection, with slightly higher than published, bias-adjusted values of 59.0% (95% uncertainty interval [UI] 38.4 to 77.1) and 70.9% (95% UI 49.8 to 80.7) respectively. Conclusion Multiple biases are likely to influence COVID-19 VE estimates, potentially explaining the observed difference between ChAdOx1 and Ad26.COV2.S vaccines. These biases should be considered when interpreting both efficacy and effectiveness study results.
在临床试验中测量疫苗对感染和疾病的有效性:2019年冠状病毒病(COVID-19)疫苗有效性估计的偏倚来源和程度
III期试验估计了COVID-19疫苗对有症状和无症状感染的有效性。我们探讨了这些估计中潜在偏差的方向和程度,以及它们对疫苗保护免受感染和突破性感染疾病的影响。方法建立了一个数学模型,该模型考虑了自然免疫和疫苗诱导免疫、血清状态变化以及感染和抗体检测的不完美敏感性和特异性。我们根据一系列疫苗特征和测量方法估计了VE对有症状、无症状和任何SARS-CoV-2感染以及感染后疾病的预期偏倚,以及对包括无症状感染的已发表试验结果的可能总体偏倚。结果对于预防疾病而非感染的疫苗,PCR或血清学检测对无症状感染的VE可能较低或阴性。当无症状感染比有症状感染更不可能被发现,并且疫苗可以防止症状发展时,对任何感染的VE都被高估了。对于基于不完全特异性的测试的估计,特别是在频繁进行测试的情况下,会产生低估的竞争性偏见。我们的模型表明,Oxford-AstraZeneca ChAdOx1和Janssen Ad26.COV2具有相当大的不确定性。对任何感染的S - VE,略高于已发表的偏倚校正值59.0%(95%不确定区间[UI] 38.4至77.1)和70.9% (95% UI为49.8至80.7)。结论多重偏倚可能会影响COVID-19 VE的估计,这可能解释了ChAdOx1和Ad26.COV2之间观察到的差异。年代的疫苗。在解释疗效和有效性研究结果时应考虑这些偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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