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Implementation of the COVID-19 Vulnerability Index Across an International Network of Health Care Data Sets: Collaborative External Validation Study

机译:在国际卫生保健数据集网络中实施Covid-19漏洞指数:协作外部验证研究

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Background SARS-CoV-2 is straining health care systems globally. The burden on hospitals during the pandemic could be reduced by implementing prediction models that can discriminate patients who require hospitalization from those who do not. The COVID-19 vulnerability (C-19) index, a model that predicts which patients will be admitted to hospital for treatment of pneumonia or pneumonia proxies, has been developed and proposed as a valuable tool for decision-making during the pandemic. However, the model is at high risk of bias according to the “prediction model risk of bias assessment” criteria, and it has not been externally validated. Objective The aim of this study was to externally validate the C-19 index across a range of health care settings to determine how well it broadly predicts hospitalization due to pneumonia in COVID-19 cases. Methods We followed the Observational Health Data Sciences and Informatics (OHDSI) framework for external validation to assess the reliability of the C-19 index. We evaluated the model on two different target populations, 41,381 patients who presented with SARS-CoV-2 at an outpatient or emergency department visit and 9,429,285 patients who presented with influenza or related symptoms during an outpatient or emergency department visit, to predict their risk of hospitalization with pneumonia during the following 0-30 days. In total, we validated the model across a network of 14 databases spanning the United States, Europe, Australia, and Asia. Results The internal validation performance of the C-19 index had a C statistic of 0.73, and the calibration was not reported by the authors. When we externally validated it by transporting it to SARS-CoV-2 data, the model obtained C statistics of 0.36, 0.53 (0.473-0.584) and 0.56 (0.488-0.636) on Spanish, US, and South Korean data sets, respectively. The calibration was poor, with the model underestimating risk. When validated on 12 data sets containing influenza patients across the OHDSI network, the C statistics ranged between 0.40 and 0.68. Conclusions Our results show that the discriminative performance of the C-19 index model is low for influenza cohorts and even worse among patients with COVID-19 in the United States, Spain, and South Korea. These results suggest that C-19 should not be used to aid decision-making during the COVID-19 pandemic. Our findings highlight the importance of performing external validation across a range of settings, especially when a prediction model is being extrapolated to a different population. In the field of prediction, extensive validation is required to create appropriate trust in a model.
机译:背景SARS-COV-2在全球范围内排除医疗保健系统。通过实施可能歧视需要从没有住院治疗的患者的预测模型可以减少大流行期间的医院负担。 Covid-19漏洞(C-19)指数,这一模型预测哪种患者将被制定为治疗肺炎或肺炎代理的医院,并提出作为在大流行期间决策的有价值的工具。然而,根据“偏见评估”标准的“预测模型风险”标准,该模型处于高偏见风险,并且尚未从外部验证。客观本研究的目的是在外部验证一系列医疗保健环境的C-19指数,以确定其在Covid-19案件中由于肺炎而预测住院的程度。方法遵循观察卫生数据科学和信息学(OHDSI)的外部验证框架,以评估C-19索引的可靠性。我们评估了两种不同的目标人群的模型,在门诊或急诊部门访问中介绍了SARS-COV-2的41,381名患者,9,429,285名患者在门诊或急诊部门访问期间呈现流感或相关症状,以预测其风险在接下来的0-30天内与肺炎住院治疗。总共验证了跨越美国,欧洲,澳大利亚和亚洲的14个数据库网络的模型。结果C-19索引的内部验证性能具有0.73的C统计信息,作者未报告校准。当我们通过将其运送到SARS-COV-2数据来外部验证时,该模型分别获得了0.36,0.53(0.47-0.584)和0.56(0.48-0.636)的C统计数据分别在西班牙语,美国和韩国数据集上。校准很差,模型低估风险。当在含有OHDSI网络上的含流感患者的12个数据集上验证时,C统计值在0.40和0.68之间。结论我们的研究结果表明,C-19指数模型的鉴别性表现为流感队列的差异低,在美国,西班牙和韩国的Covid-19患者中甚至更糟糕。这些结果表明,C-19不应用于在Covid-19流行期间援助决策。我们的研究结果强调了在一系列设置中执行外部验证的重要性,特别是当预测模型被推断为不同的人群时。在预测领域中,需要广泛的验证来在模型中创建适当的信任。

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