COVID-19 临床症状和体征的诊断准确性:一项系统评价和荟萃分析,旨在研究大流行爆发不同阶段的不同估计值。
Diagnostic accuracy of clinical signs and symptoms of COVID-19: A systematic review and meta-analysis to investigate the different estimates in a different stage of the pandemic outbreak.
机构信息
Department of Emergency Medicine, Chang Gung Memorial Hospital, Linkou, Taiwan.
Clinical Informatics and Medical Statistics Research Center, Chang Gung University, Taoyuan, Taiwan.
出版信息
J Glob Health. 2023 Jul 14;13:06026. doi: 10.7189/jogh.13.06026.
BACKGROUND
The coronavirus (COVID-19) pandemic caused enormous adverse socioeconomic impacts worldwide. Evidence suggests that the diagnostic accuracy of clinical features of COVID-19 may vary among different populations.
METHODS
We conducted a systematic review and meta-analysis of studies from PubMed, Embase, Cochrane Library, Google Scholar, and the WHO Global Health Library for studies evaluating the accuracy of clinical features to predict and prognosticate COVID-19. We used the National Institutes of Health Quality Assessment Tool to evaluate the risk of bias, and the random-effects approach to obtain pooled prevalence, sensitivity, specificity, and likelihood ratios.
RESULTS
Among the 189 included studies (53 659 patients), fever, cough, diarrhoea, dyspnoea, and fatigue were the most reported predictors. In the later stage of the pandemic, the sensitivity in predicting COVID-19 of fever and cough decreased, while the sensitivity of other symptoms, including sputum production, sore throat, myalgia, fatigue, dyspnoea, headache, and diarrhoea, increased. A combination of fever, cough, fatigue, hypertension, and diabetes mellitus increases the odds of having a COVID-19 diagnosis in patients with a positive test (positive likelihood ratio (PLR) = 3.06)) and decreases the odds in those with a negative test (negative likelihood ratio (NLR) = 0.59)). A combination of fever, cough, sputum production, myalgia, fatigue, and dyspnea had a PLR = 10.44 and an NLR = 0.16 in predicting severe COVID-19. Further updating the umbrella review (1092 studies, including 3 342 969 patients) revealed the different prevalence of symptoms in different stages of the pandemic.
CONCLUSIONS
Understanding the possible different distributions of predictors is essential for screening for potential COVID-19 infection and severe outcomes. Understanding that the prevalence of symptoms may change with time is important to developing a prediction model.
背景
冠状病毒(COVID-19)大流行在全球造成了巨大的不利社会经济影响。有证据表明,COVID-19 的临床特征的诊断准确性可能因不同人群而异。
方法
我们对来自 PubMed、Embase、Cochrane 图书馆、Google Scholar 和世界卫生组织全球卫生图书馆的评估 COVID-19 临床特征预测和预后准确性的研究进行了系统评价和荟萃分析。我们使用美国国立卫生研究院质量评估工具评估偏倚风险,并采用随机效应方法获得汇总患病率、敏感性、特异性和似然比。
结果
在纳入的 189 项研究(53659 例患者)中,发热、咳嗽、腹泻、呼吸困难和疲劳是最常见的预测指标。在大流行后期,发热和咳嗽预测 COVID-19 的敏感性降低,而其他症状(包括咳痰、咽痛、肌痛、疲劳、呼吸困难、头痛和腹泻)的敏感性增加。发热、咳嗽、疲劳、高血压和糖尿病的组合增加了阳性检测患者 COVID-19 诊断的可能性(阳性似然比(PLR)=3.06))并降低了阴性检测患者的可能性(阴性似然比(NLR)=0.59))。发热、咳嗽、咳痰、肌痛、疲劳和呼吸困难的组合预测严重 COVID-19 的 PLR=10.44,NLR=0.16。进一步更新伞式综述(包括 3342969 例患者的 1092 项研究)显示了不同阶段大流行中症状的不同流行率。
结论
了解预测因素可能存在的不同分布对于筛选潜在的 COVID-19 感染和严重后果至关重要。了解症状的流行率可能随时间而变化对于开发预测模型很重要。