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Multiscale modeling of vector-borne diseases: The role of dose-dependent transmission. 媒介传播疾病的多尺度建模:剂量依赖传播的作用。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-16 DOI: 10.1016/j.epidem.2026.100904
Fernando Saldaña, Jorge X Velasco-Hernández, Pauline Ezanno, Hélène Cecilia

The transmission of infectious diseases involves complex interactions across multiple biological scales, from within-host immunological processes to between-host transmission dynamics. While multiscale models have the potential to capture these interactions more accurately, they are often hindered by increased complexity and limited data availability. In this study, we develop a multiscale epidemic model linking host-vector population-level transmission dynamics to within-host and within-vector pathogen dynamics. Our model captures key features of within-vector viral progression and allows bidirectional coupling between within-host and between-host processes. The scales are linked under the assumption of dose-dependent transmission, with the functional form informed by empirical viremia-infectiousness data obtained from mosquito feeding experiments on live hosts. Focusing on Dengue, Zika, and West Nile viruses as case studies, we assess how different functional forms of the coupling affect the number of equilibria of the epidemic model. We find that when the transmission is modeled using linear coupling functions, the multiscale model yields the same bifurcation structure of the simpler, uncoupled model, indicating that the linking of scales does not alter the range of possible long-term epidemiological states in such cases. However, nonlinear coupling can induce complex behaviors such as multiple endemic equilibria, which the uncoupled model does not capture. These results underscore the importance of carefully selecting coupling functions and provide guidance on when multiscale modeling is essential for understanding and managing vector-borne diseases.

传染病的传播涉及多个生物尺度的复杂相互作用,从宿主内免疫过程到宿主间传播动力学。虽然多尺度模型有可能更准确地捕获这些相互作用,但它们往往受到复杂性增加和数据可用性有限的阻碍。在这项研究中,我们建立了一个多尺度流行病模型,将宿主-媒介种群水平的传播动力学与宿主内和媒介内的病原体动力学联系起来。我们的模型捕捉了载体内病毒进展的关键特征,并允许宿主内和宿主间过程之间的双向耦合。根据剂量依赖传播的假设,这些鳞片与功能形式联系在一起,这些功能形式由蚊子对活宿主进行摄食实验获得的经验病毒传染性数据提供。以登革热、寨卡病毒和西尼罗河病毒为例,我们评估了耦合的不同功能形式如何影响流行病模型的平衡数。我们发现,当使用线性耦合函数对传播进行建模时,多尺度模型产生了与简单的非耦合模型相同的分岔结构,这表明在这种情况下,尺度的联系不会改变可能的长期流行病学状态的范围。然而,非线性耦合会导致复杂的行为,如多重地方性平衡,这是解耦合模型所不能捕捉的。这些结果强调了仔细选择耦合函数的重要性,并为何时多尺度建模对于理解和管理媒介传播疾病至关重要提供了指导。
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引用次数: 0
Modelling the transmission and impact of Omicron variants of Covid-19 in different ethnicity groups in Aotearoa New Zealand. 对新西兰奥特罗阿不同种族群体中Covid-19基因组变异的传播和影响进行建模。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-16 DOI: 10.1016/j.epidem.2026.100905
Samik Datta, Vincent X Lomas, Nicole Satherley, Andrew Sporle, Michael J Plank

Previous pandemics, including influenza pandemics and Covid-19, have disproportionately impacted Māori and Pacific populations in Aotearoa New Zealand. The reasons for this are multi-faceted, including differences in socioeconomic deprivation, housing conditions and household size, vaccination rates, access to healthcare, and prevalence of pre-existing health conditions. Many mathematical models that were used to inform the response to the Covid-19 pandemic did not explicitly include ethnicity or other socioeconomic variables. This limited their ability to predict, understand and mitigate inequitable impacts of the pandemic. Here, we extend a model that was developed during the Covid-19 pandemic to support the public health response by stratifying the population into four ethnicity groups: Māori, Pacific, Asian and European/other. We include three ethnicity-specific components in the model: vaccination rates, clinical severity parameters, and contact patterns. We compare model results to ethnicity-specific data on Covid-19 cases, hospital admissions and deaths between 1 January 2022 and 30 June 2023, under different model scenarios in which these ethnicity-specific components are present or absent. We find that differences in vaccination rates explain only part of the observed disparities in outcomes. While no model scenario is able to fully capture the heterogeneous temporal dynamics, our results suggest that differences between ethnicities in the per-infection risk of clinical severe disease is an important factor. Our work is an important step towards models that are better able to predict inequitable impacts of future pandemic and emerging disease threats, and investigate the ability of interventions to mitigate these.

以前的大流行,包括流感大流行和Covid-19,对新西兰奥特罗阿岛的Māori和太平洋人口造成了不成比例的影响。造成这种情况的原因是多方面的,包括社会经济剥夺、住房条件和家庭规模、疫苗接种率、获得医疗保健的机会以及已有健康状况的普遍程度等方面的差异。许多用于应对Covid-19大流行的数学模型没有明确包括种族或其他社会经济变量。这限制了他们预测、理解和减轻大流行病不公平影响的能力。在这里,我们扩展了在Covid-19大流行期间开发的模型,通过将人口分为四个种族群体:Māori、太平洋、亚洲和欧洲/其他,为公共卫生应对提供支持。我们在模型中包括三个特定种族的组成部分:疫苗接种率、临床严重程度参数和接触模式。我们将模型结果与2022年1月1日至2023年6月30日期间特定种族的Covid-19病例、住院和死亡数据进行了比较,在不同的模型情景中,这些特定种族的成分存在或不存在。我们发现疫苗接种率的差异只能部分解释观察到的结果差异。虽然没有模型情景能够完全捕获异质性时间动态,但我们的结果表明,临床严重疾病的每次感染风险在种族之间的差异是一个重要因素。我们的工作是朝着能够更好地预测未来大流行和新出现的疾病威胁的不公平影响并调查干预措施减轻这些影响的能力的模型迈出的重要一步。
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引用次数: 0
Leveraging regularity in COVID-19 growth rate dynamics for epidemic wave forecasting. 利用COVID-19增长率动态的规律性进行流行波预测。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-16 DOI: 10.1016/j.epidem.2026.100908
Matthew J Y Shin, Juliette Paireau, Simon Cauchemez

Real-time forecasting of infectious diseases is essential for public health decision-making. Traditional forecasting methods for epidemics exhibiting repeated waves, such as influenza and RSV, rely on strongly regular patterns in the incidence data, with stable duration (i.e., one year), peak timing, magnitude and initial incidence. In 2022-2023, COVID-19 epidemic waves became more regular compared to early in the pandemic, but they were nonetheless characterised by an absence of seasonality that shaped their overall trajectories, rendering existing methods unfit for use. Furthermore, the total number of waves with which to train the models was highly limited (as few as two). Leveraging an observed regularity in the dynamics of the growth rate, as opposed to the incidence, we developed a Bayesian framework for epidemic forecasting in situations where traditional forecasting methods would struggle. Our method learns from past epidemic waves to construct priors on the shape of the growth rate trajectory and updates the forecast as new data become available. We report a 27%-61% improvement in the weighted interval score for 14-day ahead forecasts compared to baseline models, as well as the ability to predict medium-term statistics such as peak timing and magnitude. We also introduce Gaussian processes for real-time smoothing and growth rate estimation, leading to a 41% reduction in root mean squared error on a simulated dataset over a popular, traditional technique. Our work highlights a promising approach for forecasting infectious diseases that do not follow strict seasonal patterns and reveals opportunities for further research into nonmechanistic time series models.

传染病的实时预测对公共卫生决策至关重要。流感和呼吸道合流病毒等呈现反复波动的流行病的传统预测方法,依赖于发病率数据的高度规律性,具有稳定的持续时间(即一年)、高峰时间、规模和初始发病率。与大流行早期相比,2022-2023年,2019冠状病毒病流行波变得更加有规律,但其特点是缺乏影响其整体轨迹的季节性,使现有方法不适合使用。此外,用于训练模型的波的总数是非常有限的(少至两个)。利用在增长率动态中观察到的规律性,而不是发病率,我们开发了一个贝叶斯框架,用于在传统预测方法难以实现的情况下进行流行病预测。我们的方法从过去的流行病波中学习,以增长率轨迹的形状构建先验,并在获得新数据时更新预测。与基线模型相比,我们报告了14天前预测的加权间隔得分提高了27%-61%,以及预测中期统计数据(如峰值时间和幅度)的能力。我们还引入了用于实时平滑和增长率估计的高斯过程,使模拟数据集的均方根误差比流行的传统技术降低了41%。我们的工作强调了一种有希望的方法来预测不遵循严格的季节模式的传染病,并揭示了进一步研究非机制时间序列模型的机会。
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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 : 2026-03-01 Epub 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
Assessing methodological variability in wastewater surveillance: A wavelet decomposition approach 评估废水监测方法的可变性:小波分解方法。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-01 Epub Date: 2026-02-27 DOI: 10.1016/j.epidem.2026.100897
Maria L. Daza–Torres , J. Cricelio Montesinos-López , Rachel Olson , C. Winston Bess , Colleen C. Naughton , Heather N. Bischel , Miriam Nuño
Wastewater surveillance has emerged as a critical public health tool, enabling early detection of infectious disease outbreaks and providing timely, population-level insights into community health trends. However, variability in sample collection and processing, for example, between wastewater influent and settled solids, can introduce methodological noise that differentially impacts true epidemiological signals and limits cross-site comparability.
To address this challenge, we aimed to discern underlying disease trends from methodological variability in SARS-CoV-2 wastewater data using the discrete wavelet transform (DWT), with a focus on comparing influent and solids samples from the same geographic locations.
We applied DWT to longitudinal SARS-CoV-2 RNA concentrations in wastewater from five cities in California: Los Banos, Turlock, Woodland, Winters, and Esparto—each with paired influent and solids samples. DWT decomposes each signal into two components: (1) approximation coefficients that capture smoothed long-term trends, and (2) detail coefficients that isolate high-frequency fluctuations and transient variations in the signal. We reconstructed signals by progressively removing the high-frequency components (detail coefficients) and assessed similarity between sample types using hierarchical clustering.
Clustering of raw signals did not yield city-specific groupings, indicating that methodological noise obscured the underlying epidemiological signal. Intermediate reconstructions that retained some high-frequency components continued to show mixed groupings. In contrast, reconstructions based solely on low-frequency approximation coefficients revealed clear, city-specific clustering, with influent and solids samples from the same city aligning closely.
These findings support our hypothesis that high-frequency components are primarily driven by sample processing and laboratory noise, while low-frequency components reflect shared epidemiological trends. Our findings underscore the importance of denoising in wastewater data preprocessing and offer a scalable approach for enhancing signal comparability across regions and sample types.
废水监测已成为一项重要的公共卫生工具,能够及早发现传染病暴发,并及时提供人口层面的社区卫生趋势。然而,样品收集和处理的可变性,例如废水和沉淀固体之间的差异,可能会引入方法学上的噪声,从而对真正的流行病学信号产生不同的影响,并限制跨站点的可比性。为了应对这一挑战,我们旨在利用离散小波变换(DWT)从SARS-CoV-2废水数据的方解学变异中识别潜在的疾病趋势,重点是比较来自同一地理位置的来水和固体样品。我们将DWT应用于加州五个城市(洛斯巴诺斯、特洛克、伍德兰、温特斯和埃斯帕托)废水中SARS-CoV-2 RNA的纵向浓度,每个城市都有成对的进水和固体样品。DWT将每个信号分解为两个部分:(1)捕获平滑长期趋势的近似系数,(2)隔离信号中高频波动和瞬态变化的细节系数。我们通过逐步去除高频成分(细节系数)来重建信号,并使用分层聚类评估样本类型之间的相似性。原始信号的聚类没有产生城市特定的分组,表明方法噪声掩盖了潜在的流行病学信号。保留一些高频成分的中间重建继续显示混合分组。相比之下,仅基于低频近似系数的重建显示出清晰的城市特定聚类,来自同一城市的进水和固体样本紧密排列。这些发现支持了我们的假设,即高频成分主要由样本处理和实验室噪声驱动,而低频成分反映了共同的流行病学趋势。我们的研究结果强调了去噪在废水数据预处理中的重要性,并提供了一种可扩展的方法来增强不同地区和样本类型的信号可比性。
{"title":"Assessing methodological variability in wastewater surveillance: A wavelet decomposition approach","authors":"Maria L. Daza–Torres ,&nbsp;J. Cricelio Montesinos-López ,&nbsp;Rachel Olson ,&nbsp;C. Winston Bess ,&nbsp;Colleen C. Naughton ,&nbsp;Heather N. Bischel ,&nbsp;Miriam Nuño","doi":"10.1016/j.epidem.2026.100897","DOIUrl":"10.1016/j.epidem.2026.100897","url":null,"abstract":"<div><div>Wastewater surveillance has emerged as a critical public health tool, enabling early detection of infectious disease outbreaks and providing timely, population-level insights into community health trends. However, variability in sample collection and processing, for example, between wastewater influent and settled solids, can introduce methodological noise that differentially impacts true epidemiological signals and limits cross-site comparability.</div><div>To address this challenge, we aimed to discern underlying disease trends from methodological variability in SARS-CoV-2 wastewater data using the discrete wavelet transform (DWT), with a focus on comparing influent and solids samples from the same geographic locations.</div><div>We applied DWT to longitudinal SARS-CoV-2 RNA concentrations in wastewater from five cities in California: Los Banos, Turlock, Woodland, Winters, and Esparto—each with paired influent and solids samples. DWT decomposes each signal into two components: (1) approximation coefficients that capture smoothed long-term trends, and (2) detail coefficients that isolate high-frequency fluctuations and transient variations in the signal. We reconstructed signals by progressively removing the high-frequency components (detail coefficients) and assessed similarity between sample types using hierarchical clustering.</div><div>Clustering of raw signals did not yield city-specific groupings, indicating that methodological noise obscured the underlying epidemiological signal. Intermediate reconstructions that retained some high-frequency components continued to show mixed groupings. In contrast, reconstructions based solely on low-frequency approximation coefficients revealed clear, city-specific clustering, with influent and solids samples from the same city aligning closely.</div><div>These findings support our hypothesis that high-frequency components are primarily driven by sample processing and laboratory noise, while low-frequency components reflect shared epidemiological trends. Our findings underscore the importance of denoising in wastewater data preprocessing and offer a scalable approach for enhancing signal comparability across regions and sample types.</div></div>","PeriodicalId":49206,"journal":{"name":"Epidemics","volume":"54 ","pages":"Article 100897"},"PeriodicalIF":2.4,"publicationDate":"2026-03-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"147327781","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
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 : 2026-03-01 Epub 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
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 : 2026-03-01 Epub 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
Transmission lineage dynamics and the detection of viral importation in emerging epidemics 新发流行病的传播谱系动力学和病毒输入检测。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-01 Epub Date: 2026-02-19 DOI: 10.1016/j.epidem.2026.100893
Joseph L.-H. Tsui , Prathyush Sambaturu , Rosario Evans Pena , Linus Too , Bernardo Gutierrez , Rhys Inward , Moritz U.G. Kraemer , Louis du Plessis , Oliver G. Pybus
The accurate inference of pathogen movements among locations during an epidemic is crucial for measuring infectious disease spread and for informing effective control strategies. Phylogeographic methods can reconstruct historical patterns of disease dissemination by combining the evolutionary history of sampled pathogen genomes with geographic information. Despite a substantial expansion of pathogen genomics during and after the COVID-19 pandemic, only a small fraction of infections are typically sampled and sequenced, leading to underestimation of the true intensity of viral importation. Here, we seek to understand the sampling processes underlying this underestimation. We show that the coupling of viral importation and local transmission dynamics can result in local transmission lineages with different size distributions, influencing the probability that individual viral importation events will be detected. Using analytical and simulation approaches, we show that both the proportion of importation events detected and the temporal patterns of inferred importation are highly sensitive to importation dynamics and local transmission parameters, resulting in substantial biases, particularly under low-intensity sampling. Our findings highlight the importance of interpreting phylogeographic estimates in the context of outbreak conditions, particularly when comparing viral movements across time and among epidemic settings characterised by rapid spatial dissemination. These insights are critical for improving the reliability of genomic epidemiology approaches to the design of public health responses.
在流行病期间,准确推断病原体在不同地点之间的移动对于测量传染病传播和告知有效的控制策略至关重要。系统地理学方法将病原基因组的进化历史与地理信息相结合,可以重建疾病传播的历史模式。尽管在2019冠状病毒病大流行期间和之后,病原体基因组学得到了大量扩展,但通常只有一小部分感染得到了采样和测序,从而导致对病毒输入的真实强度的低估。在这里,我们试图理解这种低估背后的抽样过程。研究表明,病毒输入和本地传播动力学的耦合可以导致具有不同大小分布的本地传播谱系,从而影响单个病毒输入事件被检测到的概率。通过分析和模拟方法,我们发现检测到的输入事件的比例和推断输入的时间模式对输入动态和本地传播参数高度敏感,导致大量偏差,特别是在低强度采样下。我们的研究结果强调了在爆发条件下解释系统地理学估计的重要性,特别是在比较病毒跨时间运动和以快速空间传播为特征的流行病环境时。这些见解对于提高基因组流行病学方法设计公共卫生对策的可靠性至关重要。
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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 : 2026-03-01 Epub 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
Generating geographically detailed synthetic contact networks: A generalizable approach with applications to epidemic outcome disparities 生成地理上详细的合成接触网络:一种适用于流行病结果差异的可推广方法。
IF 2.4 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2026-03-01 Epub Date: 2026-02-20 DOI: 10.1016/j.epidem.2026.100900
Alexander Y. Tulchinsky , Alisa Hamilton , Fardad Haghpanah , Nodar Kipshidze , Eili Y. Klein
Social contact networks based on synthetic populations are useful for studying the effects of population features and policy interventions on disease transmission. We present an adaptable and accessible method for generating geographically detailed synthetic populations and associated contact networks from public census data, and apply it to a selection of US metropolitan areas. We simulate a respiratory pathogen spreading in each population and find that network structure alone produces differences in infection risk among racial/ethnic subpopulations, as well as between geographic locations of differing socioeconomic status, particularly in urban centers. We then simulate a work and school closure policy intervention, and find an increase in geographic infection risk differences, and in some cities, in racial/ethnic risk differences as well. Different outcomes between cities are associated with demographic and geographic differences in household size, contact with school-age children, and employment industry. The results suggest that demography, socioeconomics, and policy interact in a context-dependent manner to shape epidemiological outcomes. We have made our methods available as open-source software that can be extended by other researchers.
基于合成种群的社会联系网络有助于研究种群特征和政策干预对疾病传播的影响。我们提出了一种适应性强且易于使用的方法,用于从公共人口普查数据中生成地理上详细的合成人口和相关的联系网络,并将其应用于美国大都市地区的选择。我们模拟了呼吸道病原体在每个人群中的传播,发现仅网络结构就会产生种族/民族亚人群之间以及不同社会经济地位的地理位置之间的感染风险差异,特别是在城市中心。然后,我们模拟了工作和学校关闭政策干预,发现地理感染风险差异的增加,在一些城市,种族/民族风险差异也有所增加。城市之间的不同结果与家庭规模、与学龄儿童的接触以及就业行业的人口和地理差异有关。结果表明,人口统计学、社会经济学和政策以一种依赖于环境的方式相互作用,形成流行病学结果。我们已经将我们的方法作为开源软件提供给其他研究人员。
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引用次数: 0
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Epidemics
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