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估算 COVID-19 疫情中未检测感染的方法:系统综述。

Estimating Methods of the Undetected Infections in the COVID-19 Outbreak: A Systematic Review.

机构信息

Department of Health Information Technology, Khalkhal University of Medical Sciences, Khalkhal, Iran.

Iranian Research Center for HIV/AIDS, Iranian Institute for Reduction of High-Risk Behaviors, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Infect Disord Drug Targets. 2023;23(4):e240123213106. doi: 10.2174/1871526523666230124162103.

Abstract

INTRODUCTION

The accurate number of COVID-19 cases is essential knowledge to control an epidemic. Currently, one of the most important obstacles in estimating the exact number of COVID-19 patients is the absence of typical clinical symptoms in a large number of people, called asymptomatic infections. In this systematic review, we included and evaluated the studies mainly focusing on the prediction of undetected COVID-19 incidence and mortality rates as well as the reproduction numbers, utilizing various mathematical models.

METHODS

This systematic review aims to investigate the estimating methods of undetected infections in the COVID-19 outbreak. Databases of PubMed, Web of Science, Scopus, Cochrane, and Embase, were searched for a combination of keywords. Applying the inclusion/exclusion criteria, all retrieved English literature by April 7, 2022, were reviewed for data extraction through a two-step screening process; first, titles/abstracts, and then full-text. This study is consistent with the PRISMA checklist.

RESULTS

In this study, 61 documents were retrieved using a systematic search strategy. After an initial review of retrieved articles, 6 articles were excluded and the remaining 55 articles met the inclusion criteria and were included in the final review. Most of the studies used mathematical models to estimate the number of underreported asymptomatic infected cases, assessing incidence and prevalence rates more precisely. The spread of COVID-19 has been investigated using various mathematical models. The output statistics were compared with official statistics obtained from different countries. Although the number of reported patients was lower than the estimated numbers, it appeared that the mathematical calculations could be a useful measure to predict pandemics and proper planning.

CONCLUSION

In conclusion, our study demonstrates the effectiveness of mathematical models in unraveling the true burden of the COVID-19 pandemic in terms of more precise, and accurate infection and mortality rates, and reproduction numbers, thus, statistical mathematical modeling could be an effective tool for measuring the detrimental global burden of pandemic infections. Additionally, they could be a really useful method for future pandemics and would assist the healthcare and public health systems with more accurate and valid information.

摘要

简介

准确的 COVID-19 病例数量是控制疫情的重要知识。目前,估计 COVID-19 患者确切数量的最重要障碍之一是大量人群缺乏典型的临床症状,称为无症状感染。在本系统评价中,我们纳入并评估了主要关注利用各种数学模型预测未检测到的 COVID-19 发病率和死亡率以及繁殖数的研究。

方法

本系统评价旨在调查 COVID-19 爆发中未检测到感染的估计方法。我们搜索了 PubMed、Web of Science、Scopus、Cochrane 和 Embase 数据库,使用了关键词组合。通过两步筛选过程(首先是标题/摘要,然后是全文),对所有检索到的英文文献进行了数据提取,以应用纳入/排除标准。本研究符合 PRISMA 清单。

结果

本研究通过系统搜索策略共检索到 61 篇文献。对检索到的文章进行初步审查后,排除了 6 篇文章,其余 55 篇文章符合纳入标准,并纳入最终审查。大多数研究使用数学模型来估计未报告的无症状感染病例数量,更准确地评估发病率和患病率。使用各种数学模型研究了 COVID-19 的传播。将输出统计数据与从不同国家获得的官方统计数据进行了比较。虽然报告的患者人数低于估计人数,但似乎数学计算可以成为预测大流行和适当规划的有用措施。

结论

总之,我们的研究表明,数学模型在揭示 COVID-19 大流行的真实负担方面非常有效,可更精确、准确地评估感染和死亡率以及繁殖数,因此,统计数学建模可以成为衡量大流行感染的全球负担的有效工具。此外,它们可能是未来大流行的一种非常有用的方法,并将为医疗保健和公共卫生系统提供更准确和有效的信息。

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