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Estimating the generation time for influenza transmission using household data in the United States.
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-01-18 DOI: 10.1016/j.epidem.2025.100815
Louis Yat Hin Chan, Sinead E Morris, Melissa S Stockwell, Natalie M Bowman, Edwin Asturias, Suchitra Rao, Karen Lutrick, Katherine D Ellingson, Huong Q Nguyen, Yvonne Maldonado, Son H McLaren, Ellen Sano, Jessica E Biddle, Sarah E Smith-Jeffcoat, Matthew Biggerstaff, Melissa A Rolfes, H Keipp Talbot, Carlos G Grijalva, Rebecca K Borchering, Alexandra M Mellis

The generation time, representing the interval between infections in primary and secondary cases, is essential for understanding and predicting the transmission dynamics of seasonal influenza, including the real-time effective reproduction number (Rt). However, comprehensive generation time estimates for seasonal influenza, especially since the 2009 influenza pandemic, are lacking. We estimated the generation time utilizing data from a 7-site case-ascertained household study in the United States over two influenza seasons, 2021/2022 and 2022/2023. More than 200 individuals who tested positive for influenza and their household contacts were enrolled within 7 days of the first illness in the household. All participants were prospectively followed for 10 days, completing daily symptom diaries and collecting nasal swabs, which were then tested for influenza via RT-PCR. We analyzed these data by modifying a previously published Bayesian data augmentation approach that imputes infection times of cases to obtain both intrinsic (assuming no susceptible depletion) and realized (observed within household) generation times. We assessed the robustness of the generation time estimate by varying the incubation period, and generated estimates of the proportion of transmission occurring before symptomatic onset, the infectious period, and the latent period. We estimated a mean intrinsic generation time of 3.2 (95 % credible interval, CrI: 2.9-3.6) days, with a realized household generation time of 2.8 (95 % CrI: 2.7-3.0) days. The generation time exhibited limited sensitivity to incubation period variation. Estimates of the proportion of transmission that occurred before symptom onset, the infectious period, and the latent period were sensitive to variations in the incubation period. Our study contributes to the ongoing efforts to refine estimates of the generation time for influenza. Our estimates, derived from recent data following the COVID-19 pandemic, are consistent with previous pre-pandemic estimates, and will be incorporated into real-time Rt estimation efforts.

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引用次数: 0
Reconstructing the first COVID-19 pandemic wave with minimal data in England. 用最少的数据重建英格兰的第一次COVID-19大流行浪潮。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-01-14 DOI: 10.1016/j.epidem.2025.100814
Siyu Chen, Jennifer A Flegg, Katrina A Lythgoe, Lisa J White

Accurate measurement of exposure to SARS-CoV-2 in the population is crucial for understanding the dynamics of disease transmission and evaluating the impacts of interventions. However, it was particularly challenging to achieve this in the early phase of a pandemic because of the sparsity of epidemiological data. We previously developed an early pandemic diagnostic tool that linked minimum datasets: seroprevalence, mortality and infection testing data to estimate the true exposure in different regions of England and found levels of SARS-CoV-2 population exposure to be considerably higher than suggested by seroprevalence surveys. Here, we re-examine and evaluate the model in the context of reconstructing the first COVID-19 epidemic wave in England from three perspectives: validation against the Office for National Statistics (ONS) Coronavirus Infection Survey, relationship among model performance and data abundance and time-varying case detection ratios. We find that our model can recover the first, unobserved, epidemic wave of COVID-19 in England from March 2020 to June 2020 if two or three serological measurements are given as additional model inputs, while the second wave during winter of 2020 is validated by estimates from the ONS Coronavirus Infection Survey. Moreover, the model estimates that by the end of October in 2020 the UK government's official COVID-9 online dashboard reported COVID-19 cases only accounted for 9.1 % of cumulative exposure, dramatically varying across the two epidemic waves in England in 2020, 4.3 % vs 43.7 %.

准确测量人群中SARS-CoV-2暴露情况对于了解疾病传播动态和评估干预措施的影响至关重要。然而,由于流行病学数据稀少,在大流行的早期阶段实现这一目标尤其具有挑战性。我们之前开发了一种早期大流行诊断工具,该工具将最低数据集:血清阳性率、死亡率和感染检测数据联系起来,以估计英格兰不同地区的真实暴露情况,并发现SARS-CoV-2人群暴露水平远高于血清阳性率调查所显示的水平。本文从英国国家统计局(ONS)冠状病毒感染调查的验证、模型性能与数据丰度的关系以及时变病例检出率三个方面,在重构英国第一次COVID-19流行波的背景下对模型进行重新检验和评估。我们发现,如果将两到三个血清学测量值作为额外的模型输入,我们的模型可以恢复2020年3月至2020年6月英格兰第一次未观察到的COVID-19流行波,而2020年冬季的第二波流行波通过英国国家统计局冠状病毒感染调查的估计得到验证。此外,该模型估计,到2020年10月底,英国政府官方COVID-9在线仪表板报告的COVID-19病例仅占累积暴露量的9.1% %,在2020年英格兰的两波疫情中差异很大,分别为4.3% %和43.7% %。
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引用次数: 0
Retrospective modelling of the disease and mortality burden of the 1918-1920 influenza pandemic in Zurich, Switzerland. 1918-1920年瑞士苏黎世流感大流行的疾病和死亡率负担回顾性建模
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2025-01-11 DOI: 10.1016/j.epidem.2025.100813
Ella Ziegler, Katarina L Matthes, Peter W Middelkamp, Verena J Schuenemann, Christian L Althaus, Frank Rühli, Kaspar Staub

Background: Our study aims to enhance future pandemic preparedness by integrating lessons from historical pandemics, focusing on the multidimensional analysis of past outbreaks. It addresses the gap in existing modelling studies by combining various pandemic parameters in a comprehensive setting. Using Zurich as a case study, we seek a deeper understanding of pandemic dynamics to inform future scenarios.

Data and methods: We use newly digitized weekly aggregated epidemic/pandemic time series (incidence, hospitalisations, mortality and sickness absences from work) to retrospectively model the 1918-1920 pandemic in Zurich and investigate how different parameters correspond, how transmissibility changed during the different waves, and how public health interventions were associated with changes in these pandemic parameters.

Results: In general, the various time series show a good temporal correspondence, but differences in their expression can also be observed. The first wave in the summer of 1918 did lead to illness, absence from work and hospitalisations, but to a lesser extent to increased mortality. In contrast, the second, longest and strongest wave in the autumn/winter of 1918 also led to greatly increased (excess) mortality in addition to the burden of illness. The later wave in the first months of 1920 was again associated with an increase in all pandemic parameters. Furthermore, we can see that public health measures such as bans on gatherings and school closures were associated with a decrease in the course of the pandemic, while the lifting or non-compliance with these measures was associated with an increase of reported cases.

Discussion: Our study emphasizes the need to analyse a pandemic's disease burden comprehensively, beyond mortality. It highlights the importance of considering incidence, hospitalizations, and work absences as distinct but related aspects of disease impact. This approach reveals the nuanced dynamics of a pandemic, especially crucial during multi-wave outbreaks.

背景:我们的研究旨在通过整合历史大流行的经验教训,重点是对过去疫情的多维分析,加强未来的大流行防范。它将各种流行病参数综合起来,填补了现有模型研究中的空白。我们以苏黎世为案例研究,力求更深入地了解大流行动态,为未来情景提供信息。数据和方法:我们使用最新数字化的每周汇总流行病/大流行时间序列(发病率、住院率、死亡率和疾病缺勤率)对1918-1920年苏黎世大流行进行回顾性建模,并调查不同参数如何对应,在不同浪潮中传播率如何变化,以及公共卫生干预措施如何与这些大流行参数的变化相关联。结果:总体而言,各时间序列表现出较好的时间对应性,但在表达上也存在差异。1918年夏天的第一波浪潮确实导致了疾病、缺勤和住院,但在较小程度上增加了死亡率。相比之下,1918年秋冬的第二波,最长和最强的一波,除了疾病负担之外,也导致了死亡率的大幅增加。1920年头几个月的后一波疫情再次与所有大流行参数的增加有关。此外,我们可以看到,禁止集会和关闭学校等公共卫生措施与大流行期间的减少有关,而取消或不遵守这些措施与报告病例的增加有关。讨论:我们的研究强调需要全面分析大流行的疾病负担,而不仅仅是死亡率。它强调了将发病率、住院和缺勤视为疾病影响的不同但相关方面的重要性。这种方法揭示了大流行的微妙动态,在多波暴发期间尤其重要。
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引用次数: 0
Flusion: Integrating multiple data sources for accurate influenza predictions. fluusion:整合多个数据源以实现准确的流感预测。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-25 DOI: 10.1016/j.epidem.2024.100810
Evan L Ray, Yijin Wang, Russell D Wolfinger, Nicholas G Reich

Over the last ten years, the US Centers for Disease Control and Prevention (CDC) has organized an annual influenza forecasting challenge with the motivation that accurate probabilistic forecasts could improve situational awareness and yield more effective public health actions. Starting with the 2021/22 influenza season, the forecasting targets for this challenge have been based on hospital admissions reported in the CDC's National Healthcare Safety Network (NHSN) surveillance system. Reporting of influenza hospital admissions through NHSN began within the last few years, and as such only a limited amount of historical data are available for this target signal. To produce forecasts in the presence of limited data for the target surveillance system, we augmented these data with two signals that have a longer historical record: 1) ILI+, which estimates the proportion of outpatient doctor visits where the patient has influenza; and 2) rates of laboratory-confirmed influenza hospitalizations at a selected set of healthcare facilities. Our model, Flusion, is an ensemble model that combines two machine learning models using gradient boosting for quantile regression based on different feature sets with a Bayesian autoregressive model. The gradient boosting models were trained on all three data signals, while the autoregressive model was trained on only data for the target surveillance signal, NHSN admissions; all three models were trained jointly on data for multiple locations. In each week of the influenza season, these models produced quantiles of a predictive distribution of influenza hospital admissions in each state for the current week and the following three weeks; the ensemble prediction was computed by averaging these quantile predictions. Flusion emerged as the top-performing model in the CDC's influenza prediction challenge for the 2023/24 season. In this article we investigate the factors contributing to Flusion's success, and we find that its strong performance was primarily driven by the use of a gradient boosting model that was trained jointly on data from multiple surveillance signals and multiple locations. These results indicate the value of sharing information across multiple locations and surveillance signals, especially when doing so adds to the pool of available training data.

在过去十年中,美国疾病控制和预防中心(CDC)组织了一年一度的流感预测挑战,其动机是准确的概率预测可以提高态势意识,并产生更有效的公共卫生行动。从2021/22年流感季节开始,这一挑战的预测目标是基于疾病预防控制中心国家卫生保健安全网(NHSN)监测系统报告的住院情况。在过去几年中,通过国家卫生保健网络开始报告流感住院情况,因此只有有限数量的历史数据可用于这一目标信号。为了在目标监测系统数据有限的情况下做出预测,我们用两个具有较长历史记录的信号来增强这些数据:1)ILI+,它估计患者患流感的门诊医生就诊比例;2)在选定的一组卫生保健机构中经实验室确诊的流感住院率。我们的模型fluusion是一个集成模型,它结合了两个机器学习模型,使用梯度增强进行基于不同特征集和贝叶斯自回归模型的分位数回归。梯度增强模型在所有三个数据信号上进行训练,而自回归模型仅在目标监视信号(NHSN录取)的数据上进行训练;所有三个模型都是在多个地点的数据上进行联合训练的。在流感季节的每一周,这些模型产生了当周和接下来三周内每个州流感住院人数的预测分布的分位数;集合预测是通过平均这些分位数预测来计算的。在美国疾病控制与预防中心的2023/24年流感预测挑战赛中,fluusion成为表现最好的模型。在本文中,我们研究了促成fluusion成功的因素,我们发现其强大的性能主要是由使用梯度增强模型驱动的,该模型是根据来自多个监视信号和多个位置的数据联合训练的。这些结果表明跨多个位置和监视信号共享信息的价值,特别是当这样做增加了可用的训练数据池时。
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引用次数: 0
Infectious diseases: Household modeling with missing data. 传染病:缺少数据的家庭建模。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-16 DOI: 10.1016/j.epidem.2024.100811
Oron Madmon, Yair Goldberg

Over three years since the first identified SARS-CoV-2 case was discovered, the role of adolescents and children in spreading the virus remains unclear. Specifically, estimating the relative susceptibility of a child with respect to an adult is still an open question. In our work, we generalize a well-known household model for modeling infectious diseases, to include missing tests. Due to missingness, the likelihood of the generalized model cannot be maximized directly. Thus, we propose an estimation methodology, using a novel EM algorithm, for estimating the MLE in the presence of missing data. We implement the proposed mechanism using R software. Using a simulation study, we illustrate the performance of the proposed estimation methodology compared with the estimation procedure in the complete case. Finally, using the proposed estimation methodology we analyzed a dataset containing SARS-CoV-2 testing results, collected from the city of Bnei Brak, Israel, during the beginning of the pandemic. Using this dataset, we show that adolescents are less susceptible than adults, and children are less susceptible than adolescents.

自第一例确诊的SARS-CoV-2病例被发现以来的三年多时间里,青少年和儿童在病毒传播中的作用仍不清楚。具体来说,估计儿童相对于成人的相对易感性仍然是一个悬而未决的问题。在我们的工作中,我们推广了一个众所周知的传染病建模家庭模型,包括缺失测试。由于缺失,广义模型的似然不能直接最大化。因此,我们提出了一种估计方法,使用一种新的EM算法来估计存在缺失数据的最大似然。我们使用R软件实现了所提出的机制。通过仿真研究,我们将所提出的估计方法与完整情况下的估计过程进行了比较。最后,使用提出的估计方法,我们分析了一个包含SARS-CoV-2检测结果的数据集,该数据集是在大流行开始时从以色列Bnei Brak市收集的。使用这个数据集,我们表明青少年比成年人更不容易受到影响,儿童比青少年更不容易受到影响。
{"title":"Infectious diseases: Household modeling with missing data.","authors":"Oron Madmon, Yair Goldberg","doi":"10.1016/j.epidem.2024.100811","DOIUrl":"https://doi.org/10.1016/j.epidem.2024.100811","url":null,"abstract":"<p><p>Over three years since the first identified SARS-CoV-2 case was discovered, the role of adolescents and children in spreading the virus remains unclear. Specifically, estimating the relative susceptibility of a child with respect to an adult is still an open question. In our work, we generalize a well-known household model for modeling infectious diseases, to include missing tests. Due to missingness, the likelihood of the generalized model cannot be maximized directly. Thus, we propose an estimation methodology, using a novel EM algorithm, for estimating the MLE in the presence of missing data. We implement the proposed mechanism using R software. Using a simulation study, we illustrate the performance of the proposed estimation methodology compared with the estimation procedure in the complete case. Finally, using the proposed estimation methodology we analyzed a dataset containing SARS-CoV-2 testing results, collected from the city of Bnei Brak, Israel, during the beginning of the pandemic. Using this dataset, we show that adolescents are less susceptible than adults, and children are less susceptible than adolescents.</p>","PeriodicalId":49206,"journal":{"name":"Epidemics","volume":"50 ","pages":"100811"},"PeriodicalIF":3.0,"publicationDate":"2024-12-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142873119","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
Transmission models of respiratory infections in carceral settings: A systematic review. 呼吸道感染在医疗机构的传播模式:系统综述。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-06 DOI: 10.1016/j.epidem.2024.100809
Sara N Levintow, Molly Remch, Emily P Jones, Justin Lessler, Jessie K Edwards, Lauren Brinkley-Rubinstein, Dana K Rice, David L Rosen, Kimberly A Powers

Background: The prevention and control of infectious disease outbreaks in carceral settings face unique challenges. Transmission modeling is a powerful tool for understanding and addressing these challenges, but reviews of modeling work in this context pre-date the proliferation of outbreaks in jails and prisons during the SARS-CoV-2 pandemic. We conducted a systematic review of studies using transmission models of respiratory infections in carceral settings before and during the pandemic.

Methods: We searched PubMed, Embase, Scopus, CINAHL, and PsycInfo to identify studies published between 1970 and 2024 that modeled transmission of respiratory infectious diseases in carceral settings. We extracted information on the diseases, populations, and settings modeled; approaches used for parameterizing models and simulating transmission; outcomes of interest and techniques for model calibration, validation, and sensitivity analyses; and types, impacts, and ethical aspects of modeled interventions.

Results: Forty-six studies met eligibility criteria, with transmission dynamics of tuberculosis modeled in 24 (52 %), SARS-CoV-2 in 20 (43 %), influenza in one (2 %), and varicella-zoster virus in one (2 %). Carceral facilities in the United States were the most common focus (15, 33 %), followed by Brazil (8, 17 %). Most studies (36, 80 %) used compartmental models (vs. individual- or agent-based). Tuberculosis studies typically modeled transmission within a single facility, while most SARS-CoV-2 studies simulated transmission in multiple places, including between carceral and community settings. Half of studies fit models to epidemiological data; three validated model predictions. Models were used to estimate past or potential future intervention impacts in 32 (70 %) studies, forecast the status quo (without changing conditions) in six (13 %), and examine only theoretical aspects of transmission in eight (17 %). Interventions commonly involved testing and treatment, quarantine and isolation, and/or facility ventilation. Modeled interventions substantially reduced transmission, but some were not well-defined or did not consider ethical issues.

Conclusion: The pandemic prompted urgent attention to transmission dynamics in jails and prisons, but there has been little modeling of respiratory infections other than SARS-CoV-2 and tuberculosis. Increased attention to calibration, validation, and the practical and ethical aspects of intervention implementation could improve translation of model estimates into tangible benefits for the highly vulnerable populations in carceral settings.

背景:在医疗环境中预防和控制传染病暴发面临着独特的挑战。传播建模是理解和应对这些挑战的有力工具,但在此背景下对建模工作的审查早于SARS-CoV-2大流行期间监狱和监狱中疫情的扩散。我们对大流行之前和大流行期间使用呼吸道感染传播模型的研究进行了系统回顾。方法:我们检索了PubMed、Embase、Scopus、CINAHL和PsycInfo,以确定1970年至2024年间发表的模拟呼吸道传染病在癌症环境中传播的研究。我们提取了疾病、人群和建模环境的信息;用于参数化模型和模拟传输的方法;模型校准、验证和敏感性分析的相关结果和技术;以及模型干预的类型,影响和伦理方面。结果:46项研究符合资格标准,其中24项(52 %)模拟了结核病的传播动力学,20项(43 %)模拟了SARS-CoV-2, 1项(2 %)模拟了流感,1项(2 %)模拟了水痘-带状疱疹病毒的传播动力学。美国的监狱设施是最常见的焦点(15.33 %),其次是巴西(8.17 %)。大多数研究(36.80 %)使用隔间模型(相对于基于个体或主体的模型)。结核病研究通常模拟在单一设施内的传播,而大多数SARS-CoV-2研究模拟在多个地方的传播,包括在监狱和社区环境之间。一半的研究使模型符合流行病学数据;三个经过验证的模型预测。在32项(70 %)研究中使用模型估计过去或潜在的未来干预影响,在6项(13 %)研究中预测现状(没有改变条件),在8项(17 %)研究中仅检查传播的理论方面。干预措施通常涉及检测和治疗、检疫和隔离和/或设施通风。模拟干预措施大大减少了传播,但有些干预措施没有明确定义或没有考虑伦理问题。结论:大流行促使人们迫切关注监狱和监狱中的传播动态,但除了SARS-CoV-2和结核病之外,很少有呼吸道感染的建模。加强对干预措施实施的校准、验证以及实践和伦理方面的关注,可以改善将模型估计转化为癌症环境中高度脆弱人群的切实利益。
{"title":"Transmission models of respiratory infections in carceral settings: A systematic review.","authors":"Sara N Levintow, Molly Remch, Emily P Jones, Justin Lessler, Jessie K Edwards, Lauren Brinkley-Rubinstein, Dana K Rice, David L Rosen, Kimberly A Powers","doi":"10.1016/j.epidem.2024.100809","DOIUrl":"https://doi.org/10.1016/j.epidem.2024.100809","url":null,"abstract":"<p><strong>Background: </strong>The prevention and control of infectious disease outbreaks in carceral settings face unique challenges. Transmission modeling is a powerful tool for understanding and addressing these challenges, but reviews of modeling work in this context pre-date the proliferation of outbreaks in jails and prisons during the SARS-CoV-2 pandemic. We conducted a systematic review of studies using transmission models of respiratory infections in carceral settings before and during the pandemic.</p><p><strong>Methods: </strong>We searched PubMed, Embase, Scopus, CINAHL, and PsycInfo to identify studies published between 1970 and 2024 that modeled transmission of respiratory infectious diseases in carceral settings. We extracted information on the diseases, populations, and settings modeled; approaches used for parameterizing models and simulating transmission; outcomes of interest and techniques for model calibration, validation, and sensitivity analyses; and types, impacts, and ethical aspects of modeled interventions.</p><p><strong>Results: </strong>Forty-six studies met eligibility criteria, with transmission dynamics of tuberculosis modeled in 24 (52 %), SARS-CoV-2 in 20 (43 %), influenza in one (2 %), and varicella-zoster virus in one (2 %). Carceral facilities in the United States were the most common focus (15, 33 %), followed by Brazil (8, 17 %). Most studies (36, 80 %) used compartmental models (vs. individual- or agent-based). Tuberculosis studies typically modeled transmission within a single facility, while most SARS-CoV-2 studies simulated transmission in multiple places, including between carceral and community settings. Half of studies fit models to epidemiological data; three validated model predictions. Models were used to estimate past or potential future intervention impacts in 32 (70 %) studies, forecast the status quo (without changing conditions) in six (13 %), and examine only theoretical aspects of transmission in eight (17 %). Interventions commonly involved testing and treatment, quarantine and isolation, and/or facility ventilation. Modeled interventions substantially reduced transmission, but some were not well-defined or did not consider ethical issues.</p><p><strong>Conclusion: </strong>The pandemic prompted urgent attention to transmission dynamics in jails and prisons, but there has been little modeling of respiratory infections other than SARS-CoV-2 and tuberculosis. Increased attention to calibration, validation, and the practical and ethical aspects of intervention implementation could improve translation of model estimates into tangible benefits for the highly vulnerable populations in carceral settings.</p>","PeriodicalId":49206,"journal":{"name":"Epidemics","volume":"50 ","pages":"100809"},"PeriodicalIF":3.0,"publicationDate":"2024-12-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142873088","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
Estimating effective reproduction numbers using wastewater data from multiple sewersheds for SARS-CoV-2 in California counties. 利用加州各县多个下水道的污水数据估计SARS-CoV-2的有效繁殖数量。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-06 DOI: 10.1016/j.epidem.2024.100803
Sindhu Ravuri, Elisabeth Burnor, Isobel Routledge, Natalie M Linton, Mugdha Thakur, Alexandria Boehm, Marlene Wolfe, Heather N Bischel, Colleen C Naughton, Alexander T Yu, Lauren A White, Tomás M León

The effective reproduction number serves as a metric of population-wide, time-varying disease spread. During the early years of the COVID-19 pandemic, this metric was primarily derived from case data, which has varied in quality and representativeness due to changes in testing volume, test-seeking behavior, and resource constraints. Deriving nowcasting estimates from alternative data sources such as wastewater provides complementary information that could inform future public health responses. We estimated county-aggregated, sewershed-restricted wastewater-based SARS-CoV-2 effective reproduction numbers from May 1, 2022 to April 30, 2023 for five counties in California with heterogeneous population sizes, clinical testing rates, demographics, wastewater coverage, and sampling frequencies. We used two methods to produce sewershed-restricted effective reproduction numbers, both based on smoothed and deconvolved wastewater concentrations. We then population-weighted and aggregated these sewershed-level estimates to arrive at county-level effective reproduction numbers. Using mean absolute error (MAE), Spearman's rank correlation (ρ), confusion matrix classification, and cross-correlation analyses, we compared the timing and trajectory of our two wastewater-based models to: (1) a publicly available, county-level ensemble of case-based estimates, and (2) county-aggregated, sewershed-restricted case-based estimates. Both wastewater models demonstrated high concordance with the traditional case-based estimates, as indicated by low mean absolute errors (MAE ≤ 0.09), significant positive Spearman correlation (ρ ≥ 0.66), and high confusion matrix classification accuracy (≥ 0.81). The relative timings of wastewater- and case-based estimates were less clear, with cross-correlation analyses suggesting strong associations for a wide range of temporal lags that varied by county and wastewater model type. This methodology provides a generalizable, robust, and operationalizable framework for estimating county-level wastewater-based effective reproduction numbers. Our retrospective evaluation supports the potential usage of real-time wastewater-based nowcasting as a complementary epidemiological tool for surveillance by public health agencies at the state and local levels. Based on this research, we produced publicly available wastewater-based nowcasts for the California Communicable diseases Assessment Tool (calcat.cdph.ca.gov).

有效繁殖数可作为种群范围内随时间变化的疾病传播的度量。在COVID-19大流行的最初几年,这一指标主要来自病例数据,由于检测量、寻求检测行为和资源限制的变化,这些数据的质量和代表性各不相同。从废水等替代数据来源得出临近预报估计数,可提供补充信息,为今后的公共卫生对策提供信息。我们估计了2022年5月1日至2023年4月30日期间加州5个县的县聚集性、下水道限制废水的SARS-CoV-2有效繁殖数,这些县的人口规模、临床检测率、人口统计学、废水覆盖率和采样频率各不相同。我们使用了两种方法来产生下水道限制的有效繁殖数,这两种方法都是基于平滑和反卷积的废水浓度。然后,我们对这些下水道水平的估计进行人口加权和汇总,以得出县级的有效再生产数字。利用平均绝对误差(MAE)、斯皮尔曼秩相关(ρ)、混淆矩阵分类和交叉相关分析,我们将两个基于废水的模型的时间和轨迹进行了比较:(1)公开可用的、县级的基于病例的估计集合,以及(2)县级汇总的、受下水道限制的基于病例的估计。这两种废水模型都与传统的基于案例的估计具有很高的一致性,这表明平均绝对误差低(MAE≤0.09),Spearman正相关显著(ρ≥0.66),混淆矩阵分类精度高(≥0.81)。基于废水和基于案例的估算的相对时间不太清楚,相互关联分析表明,随着国家和废水模型类型的不同,时间滞后的范围也有所不同。该方法为估计县级废水有效再生产数提供了一个可推广、可靠和可操作的框架。我们的回顾性评估支持将基于废水的实时临近预报作为州和地方各级公共卫生机构监测的补充流行病学工具的潜力。基于这项研究,我们为加州传染病评估工具(calcat.cdph.ca.gov)制作了公开可用的基于废水的临近预报。
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引用次数: 0
Predicting the impact of non-pharmaceutical interventions against COVID-19 on Mycoplasma pneumoniae in the United States. 预测美国针对COVID-19的非药物干预措施对肺炎支原体的影响
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-01 Epub Date: 2024-11-30 DOI: 10.1016/j.epidem.2024.100808
Sang Woo Park, Brooklyn Noble, Emily Howerton, Bjarke F Nielsen, Sarah Lentz, Lilliam Ambroggio, Samuel Dominguez, Kevin Messacar, Bryan T Grenfell

The introduction of non-pharmaceutical interventions (NPIs) against COVID-19 disrupted circulation of many respiratory pathogens and eventually caused large, delayed outbreaks, owing to the build up of the susceptible pool during the intervention period. In contrast to other common respiratory pathogens that re-emerged soon after the NPIs were lifted, longer delays (> 3 years) in the outbreaks of Mycoplasma pneumoniae (Mp), a bacterium commonly responsible for respiratory infections and pneumonia, have been reported in Europe and Asia. As Mp cases are continuing to increase in the US, predicting the size of an imminent outbreak is timely for public health agencies and decision makers. Here, we use simple mathematical models to provide robust predictions about a large Mp outbreak ongoing in the US. Our model further illustrates that NPIs and waning immunity are important factors in driving long delays in epidemic resurgence.

针对COVID-19的非药物干预措施(npi)的引入扰乱了许多呼吸道病原体的循环,并最终由于干预期间易感人群的积累而导致大规模延迟暴发。与其他常见呼吸道病原体在国家行动计划解除后不久重新出现的情况相反,据报道,在欧洲和亚洲,肺炎支原体(一种通常导致呼吸道感染和肺炎的细菌)暴发的时间延迟较长(50至30年)。随着美国的新冠肺炎病例持续增加,对公共卫生机构和决策者来说,预测即将爆发的疫情规模是及时的。在这里,我们使用简单的数学模型来提供关于美国正在发生的大规模Mp爆发的可靠预测。我们的模型进一步表明,npi和免疫力下降是导致流行病长期延迟复发的重要因素。
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引用次数: 0
Serodynamics: A primer and synthetic review of methods for epidemiological inference using serological data. 血清动力学:血清动力学:利用血清学数据进行流行病学推断的方法入门与综合评述。
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-01 Epub Date: 2024-11-30 DOI: 10.1016/j.epidem.2024.100806
James A Hay, Isobel Routledge, Saki Takahashi

We present a review and primer of methods to understand epidemiological dynamics and identify past exposures from serological data, referred to as serodynamics. We discuss processing and interpreting serological data prior to fitting serodynamical models, and review approaches for estimating epidemiological trends and past exposures, ranging from serocatalytic models applied to binary serostatus data, to more complex models incorporating quantitative antibody measurements and immunological understanding. Although these methods are seemingly disparate, we demonstrate how they are derived within a common mathematical framework. Finally, we discuss key areas for methodological development to improve scientific discovery and public health insights in seroepidemiology.

我们回顾并介绍了从血清学数据中了解流行病学动态和确定过去暴露情况的方法,这些方法被称为血清动力学。我们讨论了在拟合血清动力学模型之前对血清学数据的处理和解释,并回顾了估计流行病学趋势和过去暴露情况的方法,包括应用于二元血清状态数据的血清催化模型,以及结合定量抗体测量和免疫学理解的更复杂模型。虽然这些方法看似各不相同,但我们展示了它们是如何在一个共同的数学框架内衍生出来的。最后,我们讨论了方法论发展的关键领域,以提高血清流行病学的科学发现和公共健康洞察力。
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引用次数: 0
Real-time estimates of the emergence and dynamics of SARS-CoV-2 variants of concern: A modeling approach. 关注的SARS-CoV-2变体的出现和动态的实时估计:一种建模方法
IF 3 3区 医学 Q2 INFECTIOUS DISEASES Pub Date : 2024-12-01 Epub Date: 2024-12-03 DOI: 10.1016/j.epidem.2024.100805
Nicolò Gozzi, Matteo Chinazzi, Jessica T Davis, Kunpeng Mu, Ana Pastore Y Piontti, Marco Ajelli, Alessandro Vespignani, Nicola Perra

The emergence of SARS-CoV-2 variants of concern (VOCs) punctuated the dynamics of the COVID-19 pandemic in multiple occasions. The stages subsequent to their identification have been particularly challenging due to the hurdles associated with a prompt assessment of transmissibility and immune evasion characteristics of the newly emerged VOC. Here, we retrospectively analyze the performance of a modeling strategy developed to evaluate, in real-time, the risks posed by the Alpha and Omicron VOC soon after their emergence. Our approach utilized multi-strain, stochastic, compartmental models enriched with demographic information, age-specific contact patterns, the influence of non-pharmaceutical interventions, and the trajectory of vaccine distribution. The models' preliminary assessment about Omicron's transmissibility and immune evasion closely match later findings. Additionally, analyses based on data collected since our initial assessments demonstrate the retrospective accuracy of our real-time projections in capturing the emergence and subsequent dominance of the Alpha VOC in seven European countries and the Omicron VOC in South Africa. This study shows the value of relatively simple epidemic models in assessing the impact of emerging VOCs in real time, the importance of timely and accurate data, and the need for regular evaluation of these methodologies as we prepare for future global health crises.

SARS-CoV-2关注变体(VOCs)的出现在多个场合突显了COVID-19大流行的动态。由于与迅速评估新出现的挥发性有机化合物的传播性和免疫逃避特性相关的障碍,鉴定后的阶段尤其具有挑战性。在这里,我们回顾性地分析了建模策略的性能,该策略用于实时评估Alpha和Omicron VOC出现后不久所带来的风险。我们的方法利用了多毒株、随机、区室模型,丰富了人口统计信息、年龄特异性接触模式、非药物干预的影响以及疫苗分布轨迹。这些模型对Omicron的传播性和免疫逃避的初步评估与后来的发现非常吻合。此外,基于我们最初评估以来收集的数据的分析表明,我们的实时预测在捕捉七个欧洲国家Alpha VOC的出现和随后的主导地位以及南非的Omicron VOC方面的回顾性准确性。这项研究显示了相对简单的流行病模型在实时评估新出现的挥发性有机化合物的影响方面的价值,及时和准确数据的重要性,以及在我们为未来的全球卫生危机做准备时定期评估这些方法的必要性。
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Epidemics
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