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首页> 外文期刊>Frontiers in Medicine >A COVID-19 Test Triage Tool, Predicting Negative Results and Reducing the Testing Burden on Healthcare Systems During a Pandemic
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A COVID-19 Test Triage Tool, Predicting Negative Results and Reducing the Testing Burden on Healthcare Systems During a Pandemic

机译:Covid-19测试分类工具,预测阴性期间的负面结果并降低医疗保健系统的测试负担

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Background: Detecting and isolating cases of COVID-19 are amongst the key elements listed by the WHO to reduce transmission. This approach has been reported to reduce those symptomatic with COVID-19 in the population by over 90%. Testing is part of a strategy that will save lives. Testing everyone maybe ideal, but it is not practical. A risk tool based on patient demographics and clinical parameters has the potential to help identify patients most likely to test negative for SARS-CoV-2. If effective it could be used to aide clinical decision making and reduce the testing burden. Methods: At the time of this analysis, a total of 9,516 patients with symptoms suggestive of Covid-19, were assessed and tested at Mount Sinai Institutions in New York. Patient demographics, clinical parameters and test results were collected. A robust prediction pipeline was used to develop a risk tool to predict the likelihood of a positive test for Covid-19. The risk tool was analyzed in a holdout dataset from the cohort and its discriminative ability, calibration and net benefit assessed. Results: Over 48% of those tested in this cohort, had a positive result. The derived model had an AUC of 0.77, provided reliable risk prediction, and demonstrated a superior net benefit than a strategy of testing everybody. When a risk cut-off of 70% was applied, the model had a negative predictive value of 96%. Conclusion: Such a tool could be used to help aide but not replace clinical decision making and conserve vital resources needed to effectively tackle this pandemic.
机译:背景:检测和隔离的情况下COVID-19之间是由世界卫生组织,以减少传输中列出的关键要素。这种方法已经被报道超过90%,以减少与COVID-19在人群中那些症状。测试是一种策略,将拯救生命的一部分。也许大家测试的理想,但它是不实际的。基于病人的人口统计和临床参数进行风险工具能够帮助潜在确定患者最有可能测试为阴性SARS-COV-2。如果有效,它可以用来辅助临床决策,减少测试的负担。方法:在此分析的时间,共有9,516例症状提示Covid-19,进行了评估,并在西奈山机构在纽约进行测试。病人的人口统计资料,临床参数和测试结果收集。一个强大的预测管道被用来制定风险的工具来预测Covid-19阳性试验的可能性。风险工具是从队列和甄别能力,校准和净效益评估了抵抗数据集进行分析。结果:那些在这个队列测试超过48%,产生了阳性结果。派生模型具有0.77的AUC,提供了可靠的风险预测,并表现出优异的净效益不是测试大家的策略。当施加风险截止的70%,该模型有96%的阴性预测值。结论:这样的工具可以用来帮助助手,但不能代替临床决策和保护需要有效地解决这一流行病的重要资源。

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