Leipzig Heart Institute, Leipzig, Germany; Heart Center Leipzig at University of Leipzig, Department of Electrophysiology, Leipzig, Germany.
Leipzig Heart Institute, Leipzig, Germany; Heart Center Leipzig at University of Leipzig, Department of Electrophysiology, Leipzig, Germany.
Int J Infect Dis. 2021 Nov;112:117-123. doi: 10.1016/j.ijid.2021.09.008. Epub 2021 Sep 10.
SARS-CoV-2 rapid antigen tests (RAT) provide fast identification of infectious patients when RT-PCR results are not immediately available. We aimed to develop a prediction model for identification of false negative (FN) RAT results.
In this multicenter trial, patients with documented paired results of RAT and RT-PCR between October 1 2020 and January 31 2021 were retrospectively analyzed regarding clinical findings. Variables included demographics, laboratory values and specific symptoms. Three different models were evaluated using Bayesian logistic regression.
The initial dataset contained 4,076 patients. Overall sensitivity and specificity of RAT was 62.3% and 97.6%. 2,997 cases with negative RAT results (FN: 120; true negative: 2,877; reference: RT-PCR) underwent further evaluation after removal of cases with missing data. The best-performing model for predicting FN RAT results containing 10 variables yielded an area under the curve of 0.971. Sensitivity, specificity, PPV and NPV for 0.09 as cut-off value (probability for FN RAT) were 0.85, 0.99, 0.7 and 0.99.
FN RAT results can be accurately identified through ten routinely available variables. Implementation of a prediction model in addition to RAT testing in clinical care can provide decision guidance for initiating appropriate hygiene measures and therefore helps avoiding nosocomial infections.
SARS-CoV-2 快速抗原检测(RAT)可在 RT-PCR 结果无法立即获得时快速识别感染患者。我们旨在开发一种预测模型,以识别假阴性(FN)RAT 结果。
在这项多中心试验中,回顾性分析了 2020 年 10 月 1 日至 2021 年 1 月 31 日期间记录的 RAT 和 RT-PCR 配对结果的患者的临床发现。变量包括人口统计学、实验室值和特定症状。使用贝叶斯逻辑回归评估了三种不同的模型。
初始数据集包含 4076 例患者。RAT 的总体敏感性和特异性分别为 62.3%和 97.6%。2997 例 RAT 结果为阴性(FN:120;真阴性:2877;参考:RT-PCR)的病例在删除缺失数据的病例后进行了进一步评估。包含 10 个变量的预测 FN RAT 结果的最佳模型的曲线下面积为 0.971。0.09 作为截断值(FN RAT 概率)的敏感性、特异性、PPV 和 NPV 分别为 0.85、0.99、0.7 和 0.99。
通过 10 个常规可用变量可准确识别 FN RAT 结果。在临床护理中除 RAT 检测外实施预测模型可以为启动适当的卫生措施提供决策指导,从而有助于避免医院感染。