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Changing contact patterns in Newfoundland and Labrador, Canada in response to public health measures during the COVID-19 pandemic. 为应对COVID-19大流行期间的公共卫生措施,加拿大纽芬兰和拉布拉多改变了接触模式。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-30 DOI: 10.1016/j.epidem.2026.100892
Renny Doig, Amy Hurford, Suzette Spurrell, Andrea Morrissey, Liangliang Wang, Caroline Colijn

The provincial government of Newfoundland and Labrador, Canada implemented a contact tracing program as part of a containment strategy during the COVID-19 pandemic. A high proportion of cases were detected and contact traced, and our analysis provides insights into secondary case distributions and contact patterns in Newfoundland and Labrador. We used a heuristic approximation of secondary cases to account for ambiguities in who infected whom. These approximate values provide an empirical distribution of secondary cases. These distributions are compared against the stringency of public health measures. Additionally, we visualised age- and contact-based patterns and compared these patterns with respect to stringency. The maximum number of contacts traced per week was 4645 and the mean number of contacts traced per case was 12.5. Approximate 95 % CIs of the effective reproduction number under Alert levels 2-4 were (1.02,1.21), (0.99,1.39), (0.84,1.06), and (1.20,1.47). We find that this level of contact tracing was sufficient, in combination with other public health interventions, to contain pandemic SARS-CoV-2 spread in Newfoundland and Labrador prior to the establishment of the Omicron variant. Understanding age-based contact patterns is necessary to describe disease spread and the risk of severe outcomes. A successful containment strategy requires that contact tracing capacity is not exceeded, making it necessary to understand the behaviour of high-contact individuals.

加拿大纽芬兰和拉布拉多省政府在2019冠状病毒病大流行期间实施了一项接触者追踪计划,作为遏制战略的一部分。发现了高比例的病例并追踪了接触者,我们的分析为纽芬兰和拉布拉多的继发性病例分布和接触模式提供了见解。我们使用继发性病例的启发式近似来解释谁感染了谁的模糊性。这些近似值提供了二次病例的经验分布。将这些分配情况与公共卫生措施的严格程度进行比较。此外,我们可视化了基于年龄和接触的模式,并比较了这些模式的严格性。每周追踪接触者最大人数为4645人,平均每例追踪接触者12.5人。2 ~ 4警戒等级下有效繁殖数的95 % ci分别为(1.02,1.21)、(0.99,1.39)、(0.84,1.06)和(1.20,1.47)。我们发现,在建立欧米克隆变体之前,这种接触者追踪水平与其他公共卫生干预措施相结合,足以遏制新芬兰和拉布拉多的SARS-CoV-2大流行传播。了解基于年龄的接触模式对于描述疾病传播和严重后果的风险是必要的。成功的遏制战略要求不超出接触者追踪能力,因此有必要了解高接触者的行为。
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引用次数: 0
From wastewater to infection estimates: Incident COVID-19 infections during Omicron in the U.S. 从废水到感染估计:美国欧米克隆期间发生的COVID-19感染事件
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-28 DOI: 10.1016/j.epidem.2026.100889
Rachel Lobay , Ajitesh Srivastava , Daniel J. McDonald
Reconstructing the course of the COVID-19 pandemic through estimating incident infections is important for assessing disease burden and characterizing transmission dynamics. While wastewater concentration data have been used to estimate infections in localized pre-Omicron studies, a scalable approach that estimates variant-specific shedding rates and that accounts for underreporting remains underdeveloped. To this end, we develop a multi-source approach to retrospectively estimate daily COVID-19 infections in U.S. states during the Omicron era. Our approach integrates wastewater and seroprevalence surveillance data to improve infection estimates during the Delta-Omicron transition period. These refined estimates, along with wastewater concentration data adjusted for limited coverage, are used to calculate variant-specific shedding rates, which inform daily infection estimates going forward. While case-based estimates tend to exhibit striking volatility, these infection estimates show more stable and interpretable patterns that closely align with Omicron subvariant transitions. Moreover, we directly quantify the degree of underreporting, showing the extent that reported cases significantly underestimate disease burden in a sample of seven U.S. states. In these states, case reports capture less than a quarter of total infections, leaving the vast majority unaccounted for in official reports. Finally, we estimate time-varying effective reproduction numbers and growth rates to provide a more accurate and timely picture of transmission dynamics over the Omicron era in U.S. states.
通过估算偶发感染重建COVID-19大流行过程对于评估疾病负担和表征传播动态具有重要意义。虽然废水浓度数据已被用于估计局部前omicron研究中的感染,但一种可扩展的方法来估计变异特异性脱落率并解释漏报的原因仍然不发达。为此,我们开发了一种多源方法来回顾性估计欧米克隆时代美国各州的每日COVID-19感染情况。我们的方法整合了废水和血清阳性率监测数据,以改善Delta-Omicron过渡期的感染估计。这些精细化的估计值,以及针对有限覆盖范围进行调整的废水浓度数据,用于计算变异特异性脱落率,从而为今后的每日感染估计值提供信息。虽然基于病例的估计往往表现出惊人的波动性,但这些感染估计显示出更稳定和可解释的模式,与Omicron亚变体转变密切相关。此外,我们直接量化了低报的程度,显示了在美国七个州的样本中报告的病例显著低估疾病负担的程度。在这些州,病例报告只占总感染病例的不到四分之一,这使得官方报告中绝大多数病例未被统计在内。最后,我们估计了时变的有效繁殖数量和增长率,以提供更准确和及时的美国各州欧米克隆时代传播动态的图片。
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引用次数: 0
Predicting local COVID-19 emergences: A time-series classification approach and value of data from social media, search engines, and neighbouring regions 预测当地COVID-19疫情:时间序列分类方法和来自社交媒体、搜索引擎和邻近地区的数据价值
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-22 DOI: 10.1016/j.epidem.2026.100891
Erin E. Rees , Mani Sotoodeh , José Denis-Robichaud , Hélène Carabin , Simon de de Montigny

Background

Early warning for known infectious disease threats use methods that focus on detection of outbreaks, often at large geographical scales. However, earlier warning, specifically at the onset of disease emergence (i.e., first case(s)) and at finer spatial scales could significantly improve timeliness and targeting of prevention and control efforts. As a proof-of-concept, we demonstrate that a early classification time-series approach can predict COVID-19 emergence at a local jurisdictional level with a 10-day lead time.

Methods

To predict emergence with a 10-day lead time in Canadian health regions (HRs) during January to November 2020, we developed three classification models. Predictor variables were restricted to information about COVID-19 and included daily metrics at the HR level for social media and traditional EBS data (i.e., news media), and at the provincial/territorial (P/T) level for search engine data. Predictor contributions from neighbouring areas additionally included reported case data (with the other predictors) from the nearest region, or weighted by distance and/or population size of all adjacent regions.

Results

Using the highest performing model, Deep Gated Recurrent Unit, the classification balanced accuracy was higher for distance- and population-based spatial weighting (0.78), than for nearest neighbour data only (0.64). It was also higher when open-access information was included with traditional EBS information (0.78), compared to excluding open-access information (0.63).

Conclusions

In a Canadian context for COVID-19, using a retrospective approach, study results demonstrate classification models can predict emergence with a 10-day lead time at the finest spatial scale of health governance (i.e., HRs) used by P/Ts. Furthermore, prediction accuracy improves with information from neighbouring regions and open-access data (social media, search engine). Implications for operationalizing our method in event-based surveillance systems are discussed.
背景对已知传染病威胁的严重预警使用的方法侧重于发现疫情,通常是在大地理范围内。然而,早期预警,特别是在疾病出现之初(即第一例)和更精细的空间尺度上预警,可显著提高预防和控制工作的及时性和针对性。作为概念验证,我们证明了早期分类时间序列方法可以在10天的提前时间内预测地方管辖范围内的COVID-19的出现。方法为了预测2020年1月至11月加拿大卫生区域(HRs) 10天的潜伏期,我们开发了三种分类模型。预测变量仅限于有关COVID-19的信息,包括HR层面的社交媒体和传统EBS数据(即新闻媒体)的日常指标,以及省/地区(P/T)层面的搜索引擎数据。邻近地区的预测因子贡献还包括最近地区报告的病例数据(与其他预测因子一起),或按所有邻近地区的距离和/或人口规模加权。结果使用性能最高的模型Deep门控循环单元,基于距离和人口的空间加权的分类平衡精度(0.78)高于仅近邻数据的分类平衡精度(0.64)。传统EBS信息中包含开放获取信息时(0.78)比不包含开放获取信息时(0.63)要高。结论在加拿大的COVID-19背景下,采用回顾性方法,研究结果表明,分类模型可以在P/Ts使用的最佳卫生治理空间尺度(即hr)上预测10天的提前期。此外,来自邻近地区的信息和开放获取的数据(社交媒体,搜索引擎)提高了预测的准确性。讨论了在基于事件的监视系统中实现我们的方法的含义。
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引用次数: 0
A robust compartmental modeling framework for infectious disease monitoring and analysis via fractional differential equations 通过分数阶微分方程进行传染病监测和分析的鲁棒分区建模框架。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-13 DOI: 10.1016/j.epidem.2026.100887
Farrukh A. Chishtie , John Drozd , X. Li , A. Benterki , Sree R. Valluri
This study presents a comprehensive framework for infectious disease monitoring using fractional differential equations, specifically developing the SEIQRDP (Susceptible, Exposed, Infected, Quarantined, Recovered, Deceased, Protected) model. Traditional compartmental models are extended by incorporating fractional calculus, with orders α(0,2], which provides enhanced flexibility in capturing memory effects and non-local behaviors inherent in disease transmission dynamics. The framework demonstrates improved accuracy when fitted to Canadian COVID-19 data compared to classical integer-order models, with Wave 1 achieving 22.1% improvement (95% CI: 17.4–26.8%) and Wave 2 achieving 6.2% improvement (95% CI: 3.1–9.3%) in predictive accuracy (average 14%). Fractional orders both below and above unity yield superior fits to empirical data depending on epidemic phase, successfully capturing multi-wave dynamics across different pandemic phases. The model incorporates time-dependent parameters to account for varying intervention strategies. Rigorous mathematical analysis including existence, uniqueness, and stability of solutions is provided alongside comprehensive sensitivity analysis. Out-of-sample validation using rolling-origin cross-validation demonstrates robust forecasting performance across 7-, 14-, and 21-day horizons. This research provides public health authorities with an evidence-based tool for epidemic modeling, with proposed extensions for AI-enhanced surveillance, interoperability standards, and Long COVID monitoring discussed as future research directions.
本研究提出了一个使用分数阶微分方程进行传染病监测的综合框架,特别是开发了SEIQRDP(易感、暴露、感染、隔离、恢复、死亡、保护)模型。传统的区室模型通过加入分数阶微积分得到扩展,阶数α∈(0,2),从而增强了捕捉记忆效应和疾病传播动力学中固有的非局部行为的灵活性。与经典整阶模型相比,该框架在拟合加拿大COVID-19数据时显示出更高的准确性,其中Wave 1在预测准确性方面提高了22.1% (95% CI: 17.4-26.8%), Wave 2在预测准确性方面提高了6.2% (95% CI: 3.1-9.3%)(平均~ 14%)。单位以下和单位以上的分数阶对经验数据的拟合都优于单位,这取决于流行阶段,成功地捕获了不同流行阶段的多波动力学。该模型纳入了与时间相关的参数,以考虑不同的干预策略。对解的存在性、唯一性和稳定性进行了严格的数学分析,并进行了全面的灵敏度分析。使用滚动原点交叉验证的样本外验证在7天、14天和21天的范围内展示了稳健的预测性能。这项研究为公共卫生当局提供了一种基于证据的流行病建模工具,并提出了人工智能增强监测、互操作性标准和长期COVID监测的扩展建议,作为未来的研究方向。
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引用次数: 0
Estimating influenza transmission parameters: Comparing two study designs, 2023–2024 估计流感传播参数:比较2023-2024年两项研究设计
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-12 DOI: 10.1016/j.epidem.2026.100888
Jessica E. Biddle , Stacey House , Jennie H. Kwon , Rachel M. Presti , Stephanie A. Fritz , Tara Curley , Son H. McLaren , Melissa S. Stockwell , Jonathan Schmitz , H. Keipp Talbot , Carlos G. Grijalva , Elie A. Saade , Zainab Albar , Vel Murugan , Rick A. Cruz , Emily T. Martin , Ivana A. Vaughn , Karen J. Wernli , Brianna M. Wickersham , Richard K. Zimmerman , Olivia L. Williams
Household studies play a critical role in estimating influenza transmission parameters, which are essential for real-time modeling of epidemic and pandemic dynamics to inform influenza control strategies. We compared two approaches for estimating household influenza transmission parameters from multisite studies conducted in the United States during the 2023–2024 influenza season: interviewing index cases about illnesses among household contacts (n = 1537 contacts) and prospective enrollment of index cases and their household contacts with systematic, daily symptom assessment and testing (n = 857 contacts). We compared the detection of symptomatic illness, influenza-like illness (ILI; fever and either cough or sore throat), influenza virus infection, and estimated serial illness onset intervals among household contacts across studies. Symptomatic illness episodes among household contacts were identified in 40 % of contacts by index case interview compared to 59 % of contacts from individual daily follow-up. Reports of ILI were more comparable between platforms (20 % vs. 26 % respectively). Index case interviews identified 12 % of household contacts with positive influenza tests while systematic, daily testing in the individual daily follow-up platform identified influenza infection among 44 % of household contacts. Both platforms yielded a median serial interval of 4 days. While index case interviews offer rapid, resource-efficient data collection and can inform epidemiological outcomes such as age-related risks and serial intervals, they substantially underestimate laboratory-confirmed influenza cases compared to systematic daily follow-up. These findings highlight the importance of study design in accurately capturing transmission dynamics and underscore the need for systematic laboratory testing to inform public health responses.
家庭研究在估计流感传播参数方面发挥着关键作用,这对于实时建模流行病和大流行动态至关重要,从而为流感控制策略提供信息。我们比较了2023-2024年流感季节在美国进行的多地点研究中估计家庭流感传播参数的两种方法:对家庭接触者中疾病的指示病例进行访谈( = 1537名接触者),并对指示病例及其家庭接触者进行系统的每日症状评估和检测( = 857名接触者)。我们比较了各研究中家庭接触者的症状性疾病、流感样疾病(ILI、发热、咳嗽或喉咙痛)、流感病毒感染的检出率,以及估计的系列疾病发病间隔。40% %的接触者通过指数病例访谈被确定为家庭接触者的症状性疾病发作,而59% %的接触者通过个人日常随访被确定为家庭接触者。不同平台间的ILI报告更具可比性(分别为20% %和26% %)。指数病例访谈确定了12% %的流感检测呈阳性的家庭接触者,而在个人每日随访平台中系统的每日检测确定了44% %的家庭接触者感染流感。两种平台的平均连续间隔均为4天。虽然索引病例访谈提供了快速、资源高效的数据收集,并可告知流行病学结果,如与年龄相关的风险和连续间隔,但与系统的日常随访相比,它们大大低估了实验室确诊的流感病例。这些发现强调了研究设计在准确捕捉传播动态方面的重要性,并强调需要进行系统的实验室检测,以便为公共卫生反应提供信息。
{"title":"Estimating influenza transmission parameters: Comparing two study designs, 2023–2024","authors":"Jessica E. Biddle ,&nbsp;Stacey House ,&nbsp;Jennie H. Kwon ,&nbsp;Rachel M. Presti ,&nbsp;Stephanie A. Fritz ,&nbsp;Tara Curley ,&nbsp;Son H. McLaren ,&nbsp;Melissa S. Stockwell ,&nbsp;Jonathan Schmitz ,&nbsp;H. Keipp Talbot ,&nbsp;Carlos G. Grijalva ,&nbsp;Elie A. Saade ,&nbsp;Zainab Albar ,&nbsp;Vel Murugan ,&nbsp;Rick A. Cruz ,&nbsp;Emily T. Martin ,&nbsp;Ivana A. Vaughn ,&nbsp;Karen J. Wernli ,&nbsp;Brianna M. Wickersham ,&nbsp;Richard K. Zimmerman ,&nbsp;Olivia L. Williams","doi":"10.1016/j.epidem.2026.100888","DOIUrl":"10.1016/j.epidem.2026.100888","url":null,"abstract":"<div><div>Household studies play a critical role in estimating influenza transmission parameters, which are essential for real-time modeling of epidemic and pandemic dynamics to inform influenza control strategies. We compared two approaches for estimating household influenza transmission parameters from multisite studies conducted in the United States during the 2023–2024 influenza season: interviewing index cases about illnesses among household contacts (n = 1537 contacts) and prospective enrollment of index cases and their household contacts with systematic, daily symptom assessment and testing (n = 857 contacts). We compared the detection of symptomatic illness, influenza-like illness (ILI; fever and either cough or sore throat), influenza virus infection, and estimated serial illness onset intervals among household contacts across studies. Symptomatic illness episodes among household contacts were identified in 40 % of contacts by index case interview compared to 59 % of contacts from individual daily follow-up. Reports of ILI were more comparable between platforms (20 % vs. 26 % respectively). Index case interviews identified 12 % of household contacts with positive influenza tests while systematic, daily testing in the individual daily follow-up platform identified influenza infection among 44 % of household contacts. Both platforms yielded a median serial interval of 4 days. While index case interviews offer rapid, resource-efficient data collection and can inform epidemiological outcomes such as age-related risks and serial intervals, they substantially underestimate laboratory-confirmed influenza cases compared to systematic daily follow-up. These findings highlight the importance of study design in accurately capturing transmission dynamics and underscore the need for systematic laboratory testing to inform public health responses.</div></div>","PeriodicalId":49206,"journal":{"name":"Epidemics","volume":"54 ","pages":"Article 100888"},"PeriodicalIF":2.4,"publicationDate":"2026-01-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145978271","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Social contact patterns derived from an epidemiological survey and GPS-based co-location data – A systematic comparison using parallel data collections during the COVID-19 pandemic in Germany 来自流行病学调查和基于gps的同址数据的社会接触模式——在德国COVID-19大流行期间使用平行数据收集进行系统比较
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-08 DOI: 10.1016/j.epidem.2026.100886
Huynh Thi Phuong , Janik Suer , Vitaly Belik , Alejandra Rincón Hidalgo , Andrzej K. Jarynowski , Richard Pastor , Steven Schulz , Ashish Thampi , Chao Xu , Marlli Zambrano , Rafael Mikolajczyk , André Karch , Veronika K. Jaeger , on behalf of OptimAgent Consortium
The parametrisation of contact behaviour is crucial for infectious disease transmission models. Contact information derived from self-reported surveys and from co-location in space and time (GPS-based) may reflect different dimensions of contact behaviour, which might be associated with distinct epidemiological risks depending on the contagion of interest. This study explores whether and how contacts measured using these distinct approaches exhibit similar or complementary contact patterns. We compare the mean number of contacts and the mean excess number of contacts (i.e. the ratio of mean squared contacts to mean contacts) from the COVIMOD survey and NETCHECK GPS co-location data between April 2020 and December 2021. While mean contacts measure contact intensity, mean excess contacts reflect dispersion, which is important for understanding superspreading behaviour. Mean contacts were considerably higher in co-location data (11.04; 95 %CI: 10.90–11.19) than in survey data (3.38; 95 % CI: 3.30–3.47); however, both data sources correlated well with each other. Mean excess contacts were similar during periods of strict non-pharmaceutical interventions (NPIs) but diverged when NPIs were lifted, with co-location data values rising more markedly. Setting-specific contact patterns also differed, potentially due to methodological differences in setting classification and data capture. Furthermore, regional variation was more pronounced in co-location data, with densely populated city-states showing higher contact numbers. Comparative insights from the two data sources demonstrate that GPS-based and survey-based contact data capture complementary and distinct aspects of human interaction. Combining both sources could provide a more comprehensive picture of human interactions relevant to infectious disease modelling.
接触行为的参数化对传染病传播模型至关重要。从自我报告的调查和从空间和时间上的共同定位(基于gps)获得的接触信息可能反映接触行为的不同方面,这可能与不同的流行病学风险有关,取决于感兴趣的传染。本研究探讨了使用这些不同的方法测量接触是否以及如何表现出相似或互补的接触模式。我们比较了2020年4月至2021年12月期间COVIMOD调查和NETCHECK GPS共定位数据中的平均接触数和平均过量接触数(即均方接触数与平均接触数的比率)。平均接触量测量的是接触强度,而平均过量接触量反映的是色散,这对理解超扩散行为很重要。同址数据的平均接触率(11.04;95 %CI: 10.90-11.19)明显高于调查数据(3.38;95 %CI: 3.30-3.47);然而,这两个数据源之间的相关性很好。在严格的非药物干预(npi)期间,平均过量接触相似,但在npi解除时出现分歧,共址数据值上升更为显著。特定环境的接触模式也有所不同,这可能是由于在环境分类和数据捕获方面的方法差异。此外,同一地点数据的区域差异更为明显,人口稠密的城邦显示出更高的联系号码。来自两种数据来源的对比分析表明,基于gps的接触数据和基于调查的接触数据捕捉到了人类互动的互补和不同方面。将这两种来源结合起来,可以更全面地了解与传染病建模有关的人类相互作用。
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引用次数: 0
ML-ABC: Machine-learning assisted Approximate Bayesian Computation for efficient calibration of agent-based models for pandemic outbreak analysis ML-ABC:机器学习辅助的近似贝叶斯计算,用于大流行爆发分析中基于主体的模型的有效校准
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-01-05 DOI: 10.1016/j.epidem.2025.100881
Thomas Bayley , Tony Ward , Fabian Sturman , Akashaditya Das , Luca Imeneo , Cliff Kerr , Christophe Fraser , Simon Maskell , Jasmina Panovska-Griffiths
Mathematical modelling with agent-based models (ABMs) has gained popularity during the COVID-19 pandemic, but their complexity makes efficient and robust calibration to data challenging, particularly when applying Bayesian methods to quantify parameter uncertainty. We propose a method for calibrating ABMs that combines a Machine-Learning step with Approximate Bayesian Computation (ML-ABC). We showcase ML-ABC application with a proof-of-principle case study, in which we calibrate the Covasim -a stochastic ABM that has been used to model the English COVID-19 epidemic and inform policy at important junctions. Benchmarking against traditional Rejection-ABC (R-ABC), we illustrate the advantage of ML-ABC application in calibrating Covasim to data on hospitalisations and deaths from COVID-19 during the first and the second COVID-19 epidemic waves of 2020 and early 2021. Across scenarios, we demonstrate that using an ML screening step allows us to derive identical posterior distributions of the calibrated Covasim parameters as with the traditional R-ABC method, but faster. Specifically, we derive posterior distributions for input parameters around 52% faster when calibrating to the first epidemic wave and around 33% faster when calibrating parameters for the second epidemic wave, compared to the traditional R-ABC. Policy modelling requires calibration which is both efficient to adapt to fast-changing pandemic environments and robust to ensure confidence in policy decisions. However, existing ABM calibration often relies on myopic non-exhaustive searches in order to remain tractable, resulting in point parameter estimates. In this preliminary study, ML-ABC strictly improves upon existing ABC calibration approaches in all tested scenarios, indicating its potential to make ABC competitive with point-estimate calibration approaches. This novel approach offers a pathway to effectively calibrate ABMs in a way which is both efficient and quantifies parameter uncertainty, crucial for realising the potential of ABMs for timely and responsively modelling during an emerging epidemic.
基于主体的模型(ABMs)的数学建模在COVID-19大流行期间得到了普及,但其复杂性使得对数据的有效和稳健校准具有挑战性,特别是在应用贝叶斯方法量化参数不确定性时。我们提出了一种校准ABMs的方法,该方法将机器学习步骤与近似贝叶斯计算(ML-ABC)相结合。我们通过一个原理验证案例研究展示了ML-ABC的应用,在该案例研究中,我们校准了Covasim(一种随机ABM,已用于模拟英国COVID-19流行病并在重要节点为政策提供信息)。以传统的拒绝abc (R-ABC)为基准,我们说明了ML-ABC应用在将Covasim校准为2020年和2021年初第一次和第二次COVID-19流行期间COVID-19住院和死亡数据方面的优势。在各种情况下,我们证明使用ML筛选步骤可以使我们获得与传统R-ABC方法相同的校准Covasim参数的后验分布,但速度更快。具体而言,与传统的R-ABC相比,我们在校准第一流行波时获得输入参数的后验分布速度约为52%,在校准第二流行波参数时获得输入参数的后验分布速度约为33%。政策建模需要校准,这既能有效地适应快速变化的大流行环境,又能确保对政策决定的信心。然而,现有的ABM校准为了保持可处理性,往往依赖于短视的非穷举搜索,导致点参数估计。在本初步研究中,ML-ABC在所有测试场景中都严格改进了现有的ABC校准方法,这表明它有可能使ABC与点估计校准方法竞争。这种新方法提供了一种有效校准ABMs的途径,这种方法既有效又量化参数不确定性,这对于实现ABMs在新出现的流行病期间及时和响应性建模的潜力至关重要。
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引用次数: 0
Evaluating mobility restrictions through spatiotemporal effective reproduction number analysis in a multi-patch model with complex mobility data 基于复杂迁移数据的多斑块模型时空有效繁殖数分析评估迁移限制。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-12-20 DOI: 10.1016/j.epidem.2025.100884
Byul Nim Kim , Minchan Choi , Hyosun Lee, Sunmi Lee
Understanding the spatial and temporal dynamics of infectious disease transmission is critical for effective epidemic preparedness and response. COVID-19 transmission is influenced by mobility patterns, regional connectivity, and evolving public health interventions, making it challenging to quantify region-specific transmission risks. Our study integrates intervention-driven analysis, real-world data, and high-resolution modeling to establish a robust computational framework for assessing interregional transmission dynamics. We employ a multi-patch model to estimate the time-dependent regional effective reproduction number and systematically quantify interregional infection contributions. By integrating high-resolution mobility and COVID-19 incidence data from South Korea, we identify key transmission hubs and assess the impact of mobility-driven transmission across different epidemic phases. Our results highlight Seoul and Gyeonggi as dominant sources of interregional spread, with their influence varying across phases of the pandemic. By distinguishing locally transmitted infections from mobility-induced cases, we introduce a data-driven approach to evaluate the effectiveness of movement restrictions and targeted interventions. Findings from the Pre-Delta phase demonstrate that mobility controls in transmission hubs significantly reduced the spread of infections. Our results underscore that densely connected regions disproportionately drive nationwide transmission, emphasizing the need for adaptive, phase-dependent intervention strategies rather than uniform nationwide policies. This study advances computational epidemiology by providing a scalable framework for integrating real-world mobility data with epidemic modeling to inform targeted, data-driven public health responses.
了解传染病传播的时空动态对有效防范和应对流行病至关重要。COVID-19的传播受到流动模式、区域连通性和不断发展的公共卫生干预措施的影响,因此很难量化特定区域的传播风险。我们的研究整合了干预驱动分析、真实世界数据和高分辨率模型,建立了评估区域间传播动态的强大计算框架。我们采用多斑块模型来估计随时间变化的区域有效繁殖数,并系统地量化区域间感染的贡献。通过整合来自韩国的高分辨率流动性和COVID-19发病率数据,我们确定了关键的传播中心,并评估了流动性驱动的传播在不同流行阶段的影响。我们的研究结果强调,首尔和京畿是区域间传播的主要来源,它们的影响在大流行的各个阶段有所不同。通过区分本地传播感染和活动引起的病例,我们引入了一种数据驱动的方法来评估活动限制和有针对性干预措施的有效性。前三角洲阶段的调查结果表明,传播中心的流动性控制大大减少了感染的传播。我们的研究结果强调,密集连接的地区不成比例地推动了全国范围的传播,强调需要适应性的、阶段性的干预策略,而不是统一的全国政策。这项研究通过提供一个可扩展的框架,将现实世界的流动性数据与流行病建模相结合,从而为有针对性的、数据驱动的公共卫生响应提供信息,从而推动了计算流行病学的发展。
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引用次数: 0
Machine learning-based short-term forecasting of COVID-19 hospital admissions using routine hospital patient data 基于机器学习的基于常规医院患者数据的COVID-19住院率短期预测
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-12-18 DOI: 10.1016/j.epidem.2025.100877
Martin S. Wohlfender , Judith A. Bouman , Olga Endrich , Alban Ramette , Alexander B. Leichtle , Guido Beldi , Christian L. Althaus , Julien Riou
During the COVID-19 pandemic, the field of infectious disease modeling advanced rapidly, with forecasting tools developed to track trends in transmission dynamics and anticipate potential shortages of critical resources such as hospital capacity. In this study, we compared short-term forecasting approaches for COVID-19 hospital admissions that generate forecasts one to five weeks ahead, using retrospective electronic health records. We extracted different features (e.g., daily emergency department visits) from an individual-level patient dataset covering six hospitals located in the region of Bern, Switzerland, from February 2020 to June 2023. We then applied five methods – last-observation carried forward (baseline), linear regression, XGBoost and two types of neural networks – to time series using a leave-future-out training scheme with multiple cutting points and optimized hyperparameters. Performance was evaluated using the root mean square error between forecasts and observations. Generally, we found that XGBoost outperformed the other methods in predicting future hospital admissions. Our results also show that adding features such as the number of hospital admissions with fever and augmenting hospital data with measurements of viral concentration in wastewater improves forecast accuracy. This study offers a thorough and systematic comparison of methods applicable to routine hospital data for real-time epidemic forecasting. With the increasing availability and volume of electronic health records, improved forecasting methods will contribute to more precise and timely information during epidemic waves of COVID-19 and other respiratory viruses, thereby strengthening evidence-based public health decision-making.
在2019冠状病毒病大流行期间,传染病建模领域发展迅速,开发了预测工具来跟踪传播动态趋势并预测医院能力等关键资源的潜在短缺。在这项研究中,我们比较了COVID-19住院率的短期预测方法,这些方法使用回顾性电子健康记录提前一到五周进行预测。从2020年2月至2023年6月,我们从覆盖瑞士伯尔尼地区六家医院的个人患者数据集中提取了不同的特征(例如,每日急诊室就诊次数)。然后,我们应用了五种方法-最后一次观测(基线),线性回归,XGBoost和两种类型的神经网络-使用具有多个切割点和优化超参数的留未来训练方案来处理时间序列。使用预测和观测之间的均方根误差来评估性能。一般来说,我们发现XGBoost在预测未来住院率方面优于其他方法。我们的研究结果还表明,增加发烧住院人数等特征,以及通过测量废水中的病毒浓度来增加医院数据,可以提高预测的准确性。本研究对适用于医院常规数据的流行病实时预测方法进行了全面、系统的比较。随着电子健康记录的可用性和数量的增加,改进的预测方法将有助于在2019冠状病毒病和其他呼吸道病毒流行期间提供更准确和及时的信息,从而加强基于证据的公共卫生决策。
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引用次数: 0
Whose knowledge counts? Equity, epistemic justice, and reforming infectious disease research culture 谁的知识更重要?公平、认识公正与改革传染病研究文化。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-12-17 DOI: 10.1016/j.epidem.2025.100883
Hanna-Tina Fischer , Augustina Koduah
Infectious disease epidemiology is shaped by engrained research cultures that privilege biomedical and quantitative knowledge systems, systematically marginalizing qualitative, contextual, and locally informed approaches. These hierarchies reflect deeper inequities in who leads, who participates, and whose knowledge counts—disparities often patterned along geography, gender, language, and disciplinary background. This perspectives paper examines how funding priorities, academic training, and publishing norms sustain epistemic and structural exclusion, particularly for researchers based in the Global South. Drawing on Ghana’s COVID-19 response, we show how reliance on externally developed epidemiological models mirrored broader marginalization in research authorship, agenda-setting, and decision-making. We argue that equity-focused reforms in funding, training, and publishing—grounded in epistemic and distributive justice—are necessary to transform infectious disease research culture. A more just and inclusive research culture is not only an ethical imperative but essential to the effectiveness and legitimacy of epidemic responses.
传染病流行病学受到根深蒂固的研究文化的影响,这种文化推崇生物医学和定量知识系统,系统性地边缘化定性、情境性和当地知情方法。这些等级制度反映了谁领导、谁参与、谁的知识有价值等方面更深层的不平等——这种不平等通常是按地理、性别、语言和学科背景划分的。这篇远景论文考察了资助优先级、学术培训和出版规范如何维持认知和结构性排斥,特别是对全球南方的研究人员而言。以加纳应对COVID-19为例,我们展示了对外部开发的流行病学模型的依赖如何反映了在研究作者、议程设置和决策方面更广泛的边缘化。我们认为,以公平为重点的资助、培训和出版改革——以认识和分配公正为基础——对于改变传染病研究文化是必要的。更加公正和包容的研究文化不仅是一种道德要求,而且对流行病应对的有效性和合法性至关重要。
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引用次数: 0
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Epidemics
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