在新的流行病制度下对超额死亡率进行实时监测。

IF 9.9 2区 医学 Q1 INFECTIOUS DISEASES
Sasikiran Kandula, Birgitte F de Blasio, Marissa LeBlanc
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引用次数: 0

摘要

背景:监测死亡率以确定趋势并发现与正常水平的偏差是常规监测的重要组成部分。在许多欧洲国家,COVID-19大流行对死亡模式的破坏要求对当前SARS-CoV-2流行阶段的预期死亡率估计(和模型)进行修订。目的:确定未来死亡率监测的基本特征,并描述两种满足这些标准的贝叶斯方法,同时对过去的COVID-19高死亡率时期具有鲁棒性。我们展示了它们在19个欧洲国家和美国次国家估计中的应用,并报告了模型校准的措施。方法采用带光滑样条项的广义加性模型(GAM)分析年趋势和年内季节性,采用带Serfling分量的广义线性模型(GLM)分析年内季节性和断点的趋势变化。这两种方法都模拟了人口规模和特定群体(年龄和性别)死亡率模式的变化。结果模型经过良好校准,能够估计COVID-19急性大流行阶段之前和期间的国家和群体特异性死亡率。纳入急性大流行期间死亡率的影响主要是增加了预测期间预期死亡率的不确定性。GAM方法具有更好的校准和国家间偏差变异性较小。结论在不需要调整观测数据或模型规格的情况下,能够适应COVID-19急性大流行期间死亡率异常的模型是可行的。拟议的方法可以补充欧洲目前使用的国家和机构间监测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time monitoring of excess mortality under a new endemic regime.

BACKGROUNDMonitoring of mortality to identify trends and detect deviations from normal levels is an essential part of routine surveillance. In many European countries, disruptions in mortality patterns from the COVID-19 pandemic have required revisions to expected mortality estimates (and models) in the current endemic phase of SARS-CoV-2.AIMTo identify essential characteristics for future mortality surveillance and describe two Bayesian methods that satisfy these criteria while being robust to past periods of high COVID-19 mortality. We demonstrate their application in 19 European countries and subnational estimates in the United States, and report measures of model calibration.METHODSWe used a generalised additive model (GAM) with smoothed spline terms for annual trend and within-year seasonality and a generalised linear model (GLM) with a Serfling component for within-year seasonality and breakpoints to detect trend changes in trend. Both approaches modelled change in population size and group-specific (age and sex) mortality patterns.RESULTSModels were well-calibrated and able to estimate national and group-specific mortality before and during the acute COVID-19 pandemic phase. The effect of inclusion of mortality from the acute pandemic period was primarily an increase in uncertainty in expected mortality over the projection period. The GAM approach had better calibration and less variability in bias among countries.CONCLUSIONModels that can adapt to mortality anomalies seen during the acute COVID-19 pandemic period without a need for adjustments to observational data, or tailoring of model specifications, are feasible. The proposed methods can complement operational national and inter-agency surveillance systems currently used in Europe.

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来源期刊
Eurosurveillance
Eurosurveillance INFECTIOUS DISEASES-
CiteScore
32.70
自引率
2.10%
发文量
430
审稿时长
3-8 weeks
期刊介绍: Eurosurveillance is a European peer-reviewed journal focusing on the epidemiology, surveillance, prevention, and control of communicable diseases relevant to Europe.It is a weekly online journal, with 50 issues per year published on Thursdays. The journal includes short rapid communications, in-depth research articles, surveillance reports, reviews, and perspective papers. It excels in timely publication of authoritative papers on ongoing outbreaks or other public health events. Under special circumstances when current events need to be urgently communicated to readers for rapid public health action, e-alerts can be released outside of the regular publishing schedule. Additionally, topical compilations and special issues may be provided in PDF format.
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