COVID-19 latent age-specific mortality in US states: a county-level spatio-temporal analysis with counterfactuals.

Frontiers in epidemiology Pub Date : 2024-11-11 eCollection Date: 2024-01-01 DOI:10.3389/fepid.2024.1403212
Andrew B Lawson, Yao Xin
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Abstract

During the COVID-19 pandemic, which spanned much of 2020-2023 and beyond, daily case and death counts were recorded globally. In this study, we examined available mortality counts and associated case counts, with a focus on the estimation missing information related to age distributions. In this paper, we explored a model-based paradigm for generating age distributions of mortality counts in a spatio-temporal context. We pursued this aim by employing Bayesian spatio-temporal lagged dependence models for weekly mortality at the county level. We compared three US states at the county level: South Carolina (SC), Ohio, and New Jersey (NJ). Models were developed for mortality counts using Bayesian spatio-temporal constructs, incorporating both dependence on current and cumulative case counts and lagged dependence on previous deaths. Age dependence was predicted based on total deaths in proportion to population estimates. This latent age field was generated as counterfactuals and then compared to observed deaths within age groups. The optimal retrospective space-time models for weekly mortality counts were those with lagged dependence and a function of caseload. Added random effects were found to vary across states: Ohio favored a spatially correlated model, while SC and NJ favored a simpler formulation. The generation of age-specific latent fields was performed for SC only and compared to a 15-month, 13-county data set of observed >65 age population. It is possible to model spatio-temporal variations in mortality at the county level with lagged dependencies, spatial effects, and case dependencies. In addition, it is also possible to generate latent age-specific fields based on estimates of death risk (using population proportions or more sophisticated modeling approaches). More detailed data will be needed to make more calibrated comparisons for future epidemic monitoring. The proposed discrepancy tool could serve as a useful resource for public health planners in tailoring interventions during epidemic situations.

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美国各州 COVID-19 潜在年龄死亡率:县级时空分析与反事实分析。
COVID-19 大流行期间,即 2020-2023 年的大部分时间及以后,全球每天都有病例和死亡人数记录。在本研究中,我们检查了现有的死亡人数和相关病例数,重点是估计与年龄分布相关的缺失信息。在本文中,我们探索了一种基于模型的模式,用于生成时空背景下死亡人数的年龄分布。为了实现这一目标,我们采用了贝叶斯时空滞后依赖模型来计算县级的周死亡率。我们对美国三个州进行了县级比较:南卡罗来纳州(SC)、俄亥俄州和新泽西州(NJ)。我们使用贝叶斯时空结构为死亡率计数建立了模型,其中既包括对当前和累积病例计数的依赖性,也包括对以前死亡病例的滞后依赖性。年龄依赖性是根据总死亡人数与人口估计值的比例来预测的。这种潜在的年龄场是作为反事实生成的,然后与年龄组内观察到的死亡人数进行比较。每周死亡率计数的最佳回顾性时空模型是具有滞后依赖性和病例数函数的模型。添加的随机效应在各州有所不同:俄亥俄州倾向于空间相关模型,而南卡罗来纳州和新泽西州则倾向于更简单的表述。仅在南卡罗来纳州生成了特定年龄的潜场,并与观察到的年龄大于 65 岁的人口的 15 个月、13 个县的数据集进行了比较。通过滞后相关性、空间效应和病例相关性,可以建立县级死亡率时空变化模型。此外,还可以根据死亡风险估计值(使用人口比例或更复杂的建模方法)生成特定年龄的潜在字段。未来的流行病监测需要更详细的数据来进行校准比较。拟议的差异工具可作为公共卫生规划人员在流行病情况下调整干预措施的有用资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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