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成人因冠状病毒 19 住院和死亡风险的生存风险预测算法(QCOVID):全国推导和验证队列研究。

Living risk prediction algorithm (QCOVID) for risk of hospital admission and mortality from coronavirus 19 in adults: national derivation and validation cohort study.

机构信息

Nuffield Department of Primary Care Health Sciences, Radcliffe Observatory Quarter, Oxford OX2 6GG, UK.

Division of Primary Care, School of Medicine, University of Nottingham, Nottingham, UK.

出版信息

BMJ. 2020 Oct 20;371:m3731. doi: 10.1136/bmj.m3731.

Abstract

OBJECTIVE

To derive and validate a risk prediction algorithm to estimate hospital admission and mortality outcomes from coronavirus disease 2019 (covid-19) in adults.

DESIGN

Population based cohort study.

SETTING AND PARTICIPANTS

QResearch database, comprising 1205 general practices in England with linkage to covid-19 test results, Hospital Episode Statistics, and death registry data. 6.08 million adults aged 19-100 years were included in the derivation dataset and 2.17 million in the validation dataset. The derivation and first validation cohort period was 24 January 2020 to 30 April 2020. The second temporal validation cohort covered the period 1 May 2020 to 30 June 2020.

MAIN OUTCOME MEASURES

The primary outcome was time to death from covid-19, defined as death due to confirmed or suspected covid-19 as per the death certification or death occurring in a person with confirmed severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection in the period 24 January to 30 April 2020. The secondary outcome was time to hospital admission with confirmed SARS-CoV-2 infection. Models were fitted in the derivation cohort to derive risk equations using a range of predictor variables. Performance, including measures of discrimination and calibration, was evaluated in each validation time period.

RESULTS

4384 deaths from covid-19 occurred in the derivation cohort during follow-up and 1722 in the first validation cohort period and 621 in the second validation cohort period. The final risk algorithms included age, ethnicity, deprivation, body mass index, and a range of comorbidities. The algorithm had good calibration in the first validation cohort. For deaths from covid-19 in men, it explained 73.1% (95% confidence interval 71.9% to 74.3%) of the variation in time to death (R); the D statistic was 3.37 (95% confidence interval 3.27 to 3.47), and Harrell's C was 0.928 (0.919 to 0.938). Similar results were obtained for women, for both outcomes, and in both time periods. In the top 5% of patients with the highest predicted risks of death, the sensitivity for identifying deaths within 97 days was 75.7%. People in the top 20% of predicted risk of death accounted for 94% of all deaths from covid-19.

CONCLUSION

The QCOVID population based risk algorithm performed well, showing very high levels of discrimination for deaths and hospital admissions due to covid-19. The absolute risks presented, however, will change over time in line with the prevailing SARS-C0V-2 infection rate and the extent of social distancing measures in place, so they should be interpreted with caution. The model can be recalibrated for different time periods, however, and has the potential to be dynamically updated as the pandemic evolves.

摘要

目的

从冠状病毒病 2019(covid-19)中推导和验证一种用于估计成年人住院和死亡结果的风险预测算法。

设计

基于人群的队列研究。

地点和参与者

QResearch 数据库,包含英格兰的 1205 个普通实践,与 covid-19 检测结果、医院入院统计和死亡登记数据相关联。纳入了 608 万 19-100 岁的成年人用于推导数据集和 217 万用于验证数据集。推导和第一个验证队列的时间段为 2020 年 1 月 24 日至 2020 年 4 月 30 日。第二个时间验证队列涵盖了 2020 年 5 月 1 日至 2020 年 6 月 30 日的时期。

主要结果

主要结局是从 covid-19 死亡的时间,定义为因死亡认证或在 2020 年 1 月 24 日至 4 月 30 日期间因确诊或疑似 covid-19 而死亡的时间。次要结局是因确诊严重急性呼吸综合征冠状病毒 2(SARS-CoV-2)感染而住院的时间。在推导队列中使用一系列预测变量拟合模型以得出风险方程。在每个验证时间段内评估性能,包括区分度和校准度的测量。

结果

在随访期间,推导队列中有 4384 人死于 covid-19,第一个验证队列中有 1722 人,第二个验证队列中有 621 人。最终的风险算法包括年龄、种族、贫困、体重指数和一系列合并症。该算法在第一个验证队列中具有良好的校准。对于男性的 covid-19 死亡,它解释了死亡时间(R)变化的 73.1%(95%置信区间 71.9%至 74.3%);D 统计量为 3.37(95%置信区间 3.27 至 3.47),哈雷尔 C 为 0.928(0.919 至 0.938)。对于女性和两个时间段的两个结果,都得到了类似的结果。在预测死亡风险最高的前 5%的患者中,在 97 天内识别死亡的敏感性为 75.7%。在预测死亡风险最高的前 20%的人中,占所有 covid-19 死亡人数的 94%。

结论

基于 QCOVID 的人群风险算法表现良好,对 covid-19 导致的死亡和住院具有非常高的区分度。然而,呈现的绝对风险将随着 SARS-CoV-2 感染率和现行社会隔离措施的变化而随时间变化,因此应谨慎解释。然而,该模型可以为不同的时间段重新校准,并有可能随着大流行的发展而动态更新。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7fe9/7574532/a31701206463/clia060842.f1.jpg

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