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Predicting Risk of Hospital Admission in Patients With Suspected COVID-19 in a Community Setting: Protocol for Development and Validation of a Multivariate Risk Prediction Tool

机译:在社区环境中预测疑似Covid-19患者医院入院风险:多变量风险预测工具的开发和验证议定书

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Background During the pandemic, remote consultations have become the norm for assessing patients with signs and symptoms of COVID-19 to decrease the risk of transmission. This has intensified the clinical uncertainty already experienced by primary care clinicians when assessing patients with suspected COVID-19 and has prompted the use of risk prediction scores, such as the National Early Warning Score (NEWS2), to assess severity and guide treatment. However, the risk prediction tools available have not been validated in a community setting and are not designed to capture the idiosyncrasies of COVID-19 infection. Objective The objective of this study is to produce a multivariate risk prediction tool, RECAP-V1 (Remote COVID-19 Assessment in Primary Care), to support primary care clinicians in the identification of those patients with COVID-19 that are at higher risk of deterioration and facilitate the early escalation of their treatment with the aim of improving patient outcomes. Methods The study follows a prospective cohort observational design, whereby patients presenting in primary care with signs and symptoms suggestive of COVID-19 will be followed and their data linked to hospital outcomes (hospital admission and death). Data collection will be carried out by primary care clinicians in four arms: North West London Clinical Commissioning Groups (NWL CCGs), Oxford-Royal College of General Practitioners (RCGP) Research and Surveillance Centre (RSC), Covid Clinical Assessment Service (CCAS), and South East London CCGs (Doctaly platform). The study involves the use of an electronic template that incorporates a list of items (known as RECAP-V0) thought to be associated with disease outcome according to previous qualitative work. Data collected will be linked to patient outcomes in highly secure environments. We will then use multivariate logistic regression analyses for model development and validation. Results Recruitment of participants started in October 2020. Initially, only the NWL CCGs and RCGP RSC arms were active. As of March 24, 2021, we have recruited a combined sample of 3827 participants in these two arms. CCAS and Doctaly joined the study in February 2021, with CCAS starting the recruitment process on March 15, 2021. The first part of the analysis (RECAP-V1 model development) is planned to start in April 2021 using the first half of the NWL CCGs and RCGP RSC combined data set. Posteriorly, the model will be validated with the rest of the NWL CCGs and RCGP RSC data as well as the CCAS and Doctaly data sets. The study was approved by the Research Ethics Committee on May 27, 2020 (Integrated Research Application System number: 283024, Research Ethics Committee reference number: 20/NW/0266) and badged as National Institute of Health Research Urgent Public Health Study on October 14, 2020. Conclusions We believe the validated RECAP-V1 early warning score will be a valuable tool for the assessment of severity in patients with suspected COVID-19 in the community, either in face-to-face or remote consultations, and will facilitate the timely escalation of treatment with the potential to improve patient outcomes.
机译:背景技术在大流行期间,远程咨询已成为评估Covid-19患者的患者,以降低传播风险。这加剧了初级保健临床医生已经经历过临床不确定性,当评估疑似Covid-19患者时,促使使用风险预测分数(如国家预警得分(新闻2),以评估严重程度和指导治疗。然而,可用的风险预测工具尚未在社区设置中验证,并且不旨在捕获Covid-19感染的特质。目的本研究的目的是产生多变量风险预测工具,RECAP-V1(初级保健中远程Covid-19评估),以支持初级保健临床医生在鉴定那些处于更高风险的Covid-19患者中恶化并促进他们治疗的早期升级,目的是改善患者结果。方法采用预期队列观察设计,从而遵循初级护理的患者,旨在暗示Covid-19的迹象和症状,他们与医院结果相关的数据(住院入学和死亡)。数据收集将由四个武器的初级保健临床医生进行:西北伦敦临床调试团体(NWL CCGS),牛津 - 皇家普通科学者(RCGP)研究和监测中心(RSC),Covid临床评估服务(CCAS)和东南伦敦CCGS(非法平台)。该研究涉及使用一种电子模板,该模板包括根据以前的定性工作与疾病结果相关的物品列表。收集的数据将与高度安全环境中的患者结果相关联。然后,我们将使用多变量逻辑回归分析进行模型开发和验证。结果招聘参与者于10月20日开始招募。最初,只有NWL CCG和RCGP RSC手臂处于活跃状态。截至2021年3月24日,我们招募了这两只武器中的3827名参与者的组合样本。 CCAS和Extory于2月2021年加入了该研究,CCA在2021年3月15日开始招聘过程。计划分析(RECAP-V1模型开发)的第一部分是在4月2021年开始使用NWL CCGS的前半部分开始和RCGP RSC组合数据集。后部,该模型将与其他NWL CCG和RCGP RSC数据以及CCA和Dectry数据集进行验证。研究伦理委员会于5月27日批准了2020年5月27日(综合研究申请系统:283024,研究道德委员会参考编号:20 / NW / 0266),并担任国家卫生研究所第14次紧急公共卫生研究所结论我们认为,我们认为经过验证的RECAP-V1预警评分将是评估社区中涉嫌Covid-19患者的严重程度的有价值的工具,无论是面对面还是远程咨询,都会有助于及时升级治疗,有可能改善患者结果。

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