{"title":"对经典 SIR 模型进行简单修改,利用流感和 COVID-19 的案例研究估算漏报感染的比例","authors":"Leonid Kalachev , Jon Graham , Erin L. Landguth","doi":"10.1016/j.idm.2024.06.002","DOIUrl":null,"url":null,"abstract":"<div><h3>Background</h3><p>Under-reporting and, thus, uncertainty around the true incidence of health events is common in all public health reporting systems. While the problem of under-reporting is acknowledged in epidemiology, the guidance and methods available for assessing and correcting the resulting bias are obscure.</p></div><div><h3>Objective</h3><p>We aim to design a simple modification to the Susceptible – Infected – Removed (SIR) model for estimating the fraction or proportion of reported infection cases.</p></div><div><h3>Methods</h3><p>The suggested modification involves rescaling of the classical SIR model producing its mathematically equivalent version with explicit dependence on the reporting parameter (true proportion of cases reported). We justify the rescaling using the phase plane analysis of the SIR model system and show how this rescaling parameter can be estimated from the data along with the other model parameters.</p></div><div><h3>Results</h3><p>We demonstrate how the proposed method is cross-validated using simulated data with known disease cases and then apply it to two empirical reported data sets to estimate the fraction of reported cases in Missoula County, Montana, USA, using: (1) flu data for 2016–2017 and (2) COVID-19 data for fall of 2020.</p></div><div><h3>Conclusions</h3><p>We establish with the simulated and COVID-19 data that when most of the disease cases are presumed reported, the value of the additional reporting parameter in the modified SIR model is close or equal to one, so that the original SIR model is appropriate for data analysis. Conversely, the flu example shows that when the reporting parameter is close to zero, the original SIR model is not accurately estimating the usual rate parameters, and the re-scaled SIR model should be used. This research demonstrates the role of under-reporting of disease data and the importance of accounting for under-reporting when modeling simulated, endemic, and pandemic disease data. Correctly reporting the “true” number of disease cases will have downstream impacts on predictions of disease dynamics. A simple parameter adjustment to the SIR modeling framework can help alleviate bias and uncertainty around crucial epidemiological metrics (e.g.: basic disease reproduction number) and public health decision making.</p></div>","PeriodicalId":36831,"journal":{"name":"Infectious Disease Modelling","volume":"9 4","pages":"Pages 1147-1162"},"PeriodicalIF":8.8000,"publicationDate":"2024-06-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2468042724000848/pdfft?md5=4a2260ac63652639f45a355fcd3800e1&pid=1-s2.0-S2468042724000848-main.pdf","citationCount":"0","resultStr":"{\"title\":\"A simple modification to the classical SIR model to estimate the proportion of under-reported infections using case studies in flu and COVID-19\",\"authors\":\"Leonid Kalachev , Jon Graham , Erin L. 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We justify the rescaling using the phase plane analysis of the SIR model system and show how this rescaling parameter can be estimated from the data along with the other model parameters.</p></div><div><h3>Results</h3><p>We demonstrate how the proposed method is cross-validated using simulated data with known disease cases and then apply it to two empirical reported data sets to estimate the fraction of reported cases in Missoula County, Montana, USA, using: (1) flu data for 2016–2017 and (2) COVID-19 data for fall of 2020.</p></div><div><h3>Conclusions</h3><p>We establish with the simulated and COVID-19 data that when most of the disease cases are presumed reported, the value of the additional reporting parameter in the modified SIR model is close or equal to one, so that the original SIR model is appropriate for data analysis. Conversely, the flu example shows that when the reporting parameter is close to zero, the original SIR model is not accurately estimating the usual rate parameters, and the re-scaled SIR model should be used. This research demonstrates the role of under-reporting of disease data and the importance of accounting for under-reporting when modeling simulated, endemic, and pandemic disease data. Correctly reporting the “true” number of disease cases will have downstream impacts on predictions of disease dynamics. 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引用次数: 0
摘要
背景在所有公共卫生报告系统中,健康事件真实发生率的漏报和不确定性都很常见。尽管流行病学承认存在漏报问题,但评估和纠正由此产生的偏差的指南和方法却并不明确。目标我们旨在设计一种对易感-感染-清除(SIR)模型的简单修改,用于估算已报告感染病例的比例。我们利用 SIR 模型系统的相位平面分析证明了重新缩放的合理性,并展示了如何从数据中估算出该重新缩放参数以及其他模型参数。结果我们展示了如何利用已知疾病病例的模拟数据对所建议的方法进行交叉验证,然后将其应用于两个经验报告数据集,以估算美国蒙大拿州米苏拉县的报告病例比例,使用的数据包括:(1)2016-2017 年的流感数据;(2)2020 年秋季的 COVID-19 数据。结论我们通过模拟数据和 COVID-19 数据确定,当大多数疾病病例被推定为报告病例时,修改后的 SIR 模型中的额外报告参数值接近或等于 1,因此原始 SIR 模型适合用于数据分析。相反,流感实例表明,当报告参数接近零时,原始 SIR 模型不能准确估计通常的比率参数,应使用重新缩放的 SIR 模型。这项研究表明了疾病数据报告不足的作用,以及在模拟、地方病和大流行病数据建模时考虑报告不足的重要性。正确报告疾病病例的 "真实 "数量将对疾病动态预测产生下游影响。对 SIR 建模框架进行简单的参数调整,有助于减轻关键流行病学指标(如基本疾病繁殖数)和公共卫生决策的偏差和不确定性。
A simple modification to the classical SIR model to estimate the proportion of under-reported infections using case studies in flu and COVID-19
Background
Under-reporting and, thus, uncertainty around the true incidence of health events is common in all public health reporting systems. While the problem of under-reporting is acknowledged in epidemiology, the guidance and methods available for assessing and correcting the resulting bias are obscure.
Objective
We aim to design a simple modification to the Susceptible – Infected – Removed (SIR) model for estimating the fraction or proportion of reported infection cases.
Methods
The suggested modification involves rescaling of the classical SIR model producing its mathematically equivalent version with explicit dependence on the reporting parameter (true proportion of cases reported). We justify the rescaling using the phase plane analysis of the SIR model system and show how this rescaling parameter can be estimated from the data along with the other model parameters.
Results
We demonstrate how the proposed method is cross-validated using simulated data with known disease cases and then apply it to two empirical reported data sets to estimate the fraction of reported cases in Missoula County, Montana, USA, using: (1) flu data for 2016–2017 and (2) COVID-19 data for fall of 2020.
Conclusions
We establish with the simulated and COVID-19 data that when most of the disease cases are presumed reported, the value of the additional reporting parameter in the modified SIR model is close or equal to one, so that the original SIR model is appropriate for data analysis. Conversely, the flu example shows that when the reporting parameter is close to zero, the original SIR model is not accurately estimating the usual rate parameters, and the re-scaled SIR model should be used. This research demonstrates the role of under-reporting of disease data and the importance of accounting for under-reporting when modeling simulated, endemic, and pandemic disease data. Correctly reporting the “true” number of disease cases will have downstream impacts on predictions of disease dynamics. A simple parameter adjustment to the SIR modeling framework can help alleviate bias and uncertainty around crucial epidemiological metrics (e.g.: basic disease reproduction number) and public health decision making.
期刊介绍:
Infectious Disease Modelling is an open access journal that undergoes peer-review. Its main objective is to facilitate research that combines mathematical modelling, retrieval and analysis of infection disease data, and public health decision support. The journal actively encourages original research that improves this interface, as well as review articles that highlight innovative methodologies relevant to data collection, informatics, and policy making in the field of public health.