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COVID-19 诊断和预后预测模型:系统评价和批判性评估。

Prediction models for diagnosis and prognosis of covid-19: systematic review and critical appraisal.

机构信息

Department of Epidemiology, CAPHRI Care and Public Health Research Institute, Maastricht University, Peter Debyeplein 1, 6229 HA Maastricht, Netherlands

Department of Development and Regeneration, KU Leuven, Leuven, Belgium.

出版信息

BMJ. 2020 Apr 7;369:m1328. doi: 10.1136/bmj.m1328.

Abstract

OBJECTIVE

To review and appraise the validity and usefulness of published and preprint reports of prediction models for diagnosing coronavirus disease 2019 (covid-19) in patients with suspected infection, for prognosis of patients with covid-19, and for detecting people in the general population at increased risk of covid-19 infection or being admitted to hospital with the disease.

DESIGN

Living systematic review and critical appraisal by the COVID-PRECISE (Precise Risk Estimation to optimise covid-19 Care for Infected or Suspected patients in diverse sEttings) group.

DATA SOURCES

PubMed and Embase through Ovid, up to 1 July 2020, supplemented with arXiv, medRxiv, and bioRxiv up to 5 May 2020.

STUDY SELECTION

Studies that developed or validated a multivariable covid-19 related prediction model.

DATA EXTRACTION

At least two authors independently extracted data using the CHARMS (critical appraisal and data extraction for systematic reviews of prediction modelling studies) checklist; risk of bias was assessed using PROBAST (prediction model risk of bias assessment tool).

RESULTS

37 421 titles were screened, and 169 studies describing 232 prediction models were included. The review identified seven models for identifying people at risk in the general population; 118 diagnostic models for detecting covid-19 (75 were based on medical imaging, 10 to diagnose disease severity); and 107 prognostic models for predicting mortality risk, progression to severe disease, intensive care unit admission, ventilation, intubation, or length of hospital stay. The most frequent types of predictors included in the covid-19 prediction models are vital signs, age, comorbidities, and image features. Flu-like symptoms are frequently predictive in diagnostic models, while sex, C reactive protein, and lymphocyte counts are frequent prognostic factors. Reported C index estimates from the strongest form of validation available per model ranged from 0.71 to 0.99 in prediction models for the general population, from 0.65 to more than 0.99 in diagnostic models, and from 0.54 to 0.99 in prognostic models. All models were rated at high or unclear risk of bias, mostly because of non-representative selection of control patients, exclusion of patients who had not experienced the event of interest by the end of the study, high risk of model overfitting, and unclear reporting. Many models did not include a description of the target population (n=27, 12%) or care setting (n=75, 32%), and only 11 (5%) were externally validated by a calibration plot. The Jehi diagnostic model and the 4C mortality score were identified as promising models.

CONCLUSION

Prediction models for covid-19 are quickly entering the academic literature to support medical decision making at a time when they are urgently needed. This review indicates that almost all pubished prediction models are poorly reported, and at high risk of bias such that their reported predictive performance is probably optimistic. However, we have identified two (one diagnostic and one prognostic) promising models that should soon be validated in multiple cohorts, preferably through collaborative efforts and data sharing to also allow an investigation of the stability and heterogeneity in their performance across populations and settings. Details on all reviewed models are publicly available at https://www.covprecise.org/. Methodological guidance as provided in this paper should be followed because unreliable predictions could cause more harm than benefit in guiding clinical decisions. Finally, prediction model authors should adhere to the TRIPOD (transparent reporting of a multivariable prediction model for individual prognosis or diagnosis) reporting guideline.

SYSTEMATIC REVIEW REGISTRATION

Protocol https://osf.io/ehc47/, registration https://osf.io/wy245.

READERS' NOTE: This article is a living systematic review that will be updated to reflect emerging evidence. Updates may occur for up to two years from the date of original publication. This version is update 3 of the original article published on 7 April 2020 (BMJ 2020;369:m1328). Previous updates can be found as data supplements (https://www.bmj.com/content/369/bmj.m1328/related#datasupp). When citing this paper please consider adding the update number and date of access for clarity.

摘要

目的

综述和评价已发表和预印本报告中用于诊断疑似感染患者的 2019 年冠状病毒病(COVID-19)、COVID-19 患者预后以及一般人群中 COVID-19 感染风险增加或住院风险增加人群的预测模型的有效性和实用性。

设计

COVID-PRECISE(通过精确风险估计来优化不同环境下疑似或感染患者的 COVID-19 护理)组进行的实时系统综述和批判性评价。

资料来源

通过 Ovid 平台检索 PubMed 和 Embase 数据库,检索时间截至 2020 年 7 月 1 日,同时检索 arXiv、medRxiv 和 bioRxiv 数据库,检索时间截至 2020 年 5 月 5 日。

研究选择

开发或验证多变量 COVID-19 相关预测模型的研究。

数据提取

至少两名作者使用 CHARMS(预测模型研究的系统评价的批判性评估和数据提取)清单独立提取数据;使用 PROBAST(预测模型风险偏倚评估工具)评估风险偏倚。

结果

筛选出 37421 个标题,纳入了 169 项描述了 232 个预测模型的研究。综述确定了 7 种用于识别一般人群中风险人群的模型;118 个用于检测 COVID-19 的诊断模型(其中 75 个基于医学影像学,10 个用于诊断疾病严重程度);以及 107 个用于预测死亡率、疾病进展至严重程度、入住重症监护病房、通气、插管或住院时间的预后模型。最常见的预测因素类型包括生命体征、年龄、合并症和影像学特征。在诊断模型中,流感样症状通常具有预测性,而性别、C 反应蛋白和淋巴细胞计数则是常见的预后因素。根据模型最强形式的可用验证报告,预测模型在一般人群中的报告 C 指数估计值范围为 0.71 至 0.99,诊断模型为 0.65 至 0.99 以上,预后模型为 0.54 至 0.99。所有模型的风险偏倚均被评为高或不清楚,主要原因是对照组患者的选择非代表性、研究结束时未经历感兴趣事件的患者被排除、模型过度拟合的风险高以及报告不清楚。许多模型未描述目标人群(n=27,12%)或护理环境(n=75,32%),仅有 11 个(5%)通过校准图进行了外部验证。Jehi 诊断模型和 4C 死亡率评分被认为是有前途的模型。

结论

在急需的时候,COVID-19 的预测模型迅速进入学术文献,以支持医疗决策。本综述表明,几乎所有已发表的预测模型都报告不佳,且风险偏倚较高,因此其报告的预测性能可能过于乐观。然而,我们已经确定了两个(一个诊断模型和一个预后模型)有前途的模型,这些模型应尽快在多个队列中进行验证,最好是通过协作努力和数据共享进行,以进一步研究其在不同人群和环境中的稳定性和异质性。所有经过审查的模型的详细信息都可在 https://www.covprecise.org/ 上公开获取。由于预测不准确可能会对指导临床决策造成更多危害而不是益处,因此应遵循本文提供的方法学指导。最后,预测模型作者应遵守 TRIPOD(用于个体预后或诊断的多变量预测模型的透明报告)报告准则。

系统综述注册

https://osf.io/ehc47/,注册 https://osf.io/wy245。

读者须知

本文是一篇实时系统综述,将根据新证据进行更新。更新可能会在原始文章发表日期后的两年内进行。本文是 2020 年 4 月 7 日发表的原始文章的更新 3 版(BMJ 2020;369:m1328)。可以在数据补充(https://www.bmj.com/content/369/bmj.m1328/related#datasupp)中找到之前的更新。在引用本文时,请考虑添加更新号和访问日期以明确。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6f3/7223055/a8c2ffb74feb/wynl056013_1.f1.jpg

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