Hartnack Sonja, Nilius Henning, Jegerlehner Sabrina, Suter-Riniker Franziska, Bittel Pascal, Jent Philipp, Nagler Michael
Section of Epidemiology, Vetsuisse Faculty, University of Zurich, 8057 Zuric, Switzerland.
Department of Clinical Chemistry, Inselspital, Bern University Hospital, University of Bern, 3010 Bern, Switzerland.
Diagnostics (Basel). 2023 Sep 9;13(18):2892. doi: 10.3390/diagnostics13182892.
Currently, assessing the diagnostic performance of new laboratory tests assumes a perfect reference standard, which is rarely the case. Wrong classifications of the true disease status will inevitably lead to biased estimates of sensitivity and specificity.
Using Bayesian' latent class models (BLCMs), an approach that does not assume a perfect reference standard, we re-analyzed data of a large prospective observational study assessing the diagnostic accuracy of an antigen test for the diagnosis of SARS-CoV-2 infection in clinical practice.
A cohort of consecutive patients presenting to a COVID-19 testing facility affiliated with a Swiss University Hospital were recruited (n = 1465). Two real-time PCR tests were conducted in parallel with the Roche/SD Biosensor rapid antigen test on nasopharyngeal swabs. A two-test (PCR and antigen test), three-population BLCM was fitted to the frequencies of paired test results.
Based on the BLCM, the sensitivities of the RT-PCR and the Roche/SD Biosensor rapid antigen test were 98.5% [95% CRI 94.8;100] and 82.7% [95% CRI 66.8;100]. The specificities were 97.7% [96.1;99.7] and 99.9% [95% CRI 99.6;100].
Applying the BLCM, the diagnostic accuracy of RT-PCR was high but not perfect. In contrast to previous results, the sensitivity of the antigen test was higher. Our results suggest that BLCMs are valuable tools for investigating the diagnostic performance of laboratory tests in the absence of perfect reference standard.
目前,评估新实验室检测的诊断性能时假定有一个完美的参考标准,但实际情况很少如此。对真实疾病状态的错误分类将不可避免地导致对敏感性和特异性的估计出现偏差。
使用贝叶斯潜在类别模型(BLCM)这种不假定有完美参考标准的方法,我们重新分析了一项大型前瞻性观察性研究的数据,该研究评估了一种抗原检测在临床实践中诊断SARS-CoV-2感染的诊断准确性。
招募了一组连续到瑞士大学医院附属的COVID-19检测机构就诊的患者(n = 1465)。对鼻咽拭子同时进行两次实时PCR检测以及罗氏/ SD生物传感器快速抗原检测。将一个双检测(PCR和抗原检测)、三群体BLCM应用于配对检测结果的频率。
基于BLCM,RT-PCR和罗氏/ SD生物传感器快速抗原检测的敏感性分别为98.5% [95% CRI 94.8;100]和82.7% [95% CRI 66.8;100]。特异性分别为97.7% [96.1;99.7]和99.9% [95% CRI 99.6;100]。
应用BLCM,RT-PCR的诊断准确性较高但并非完美。与先前结果相反,抗原检测的敏感性更高。我们的结果表明,在缺乏完美参考标准的情况下,BLCM是研究实验室检测诊断性能的有价值工具。