Am J Epidemiol. 2024 Jun 3;193(6):898-907. doi: 10.1093/aje/kwae004.
Forecasting of seasonal mortality patterns can provide useful information for planning health-care demand and capacity. Timely mortality forecasts are needed during severe winter spikes and/or pandemic waves to guide policy-making and public health decisions. In this article, we propose a flexible method for forecasting all-cause mortality in real time considering short-term changes in seasonal patterns within an epidemiologic year. All-cause mortality data have the advantage of being available with less delay than cause-specific mortality data. In this study, we use all-cause monthly death counts obtained from the national statistical offices of Denmark, France, Spain, and Sweden from epidemic seasons 2012-2013 through 2021-2022 to demonstrate the performance of the proposed approach. The method forecasts deaths 1 month ahead, based on their expected ratio to the next month. Prediction intervals are obtained via bootstrapping. The forecasts accurately predict the winter mortality peaks before the COVID-19 pandemic. Although the method predicts mortality less accurately during the first wave of the COVID-19 pandemic, it captures the aspects of later waves better than other traditional methods. The method is attractive for health researchers and governmental offices for aiding public health responses because it uses minimal input data, makes simple and intuitive assumptions, and provides accurate forecasts both during seasonal influenza epidemics and during novel virus pandemics.
预测季节性死亡模式可以为规划医疗保健需求和能力提供有用的信息。在严重的冬季高峰和/或大流行期间,需要及时的死亡率预测来指导政策制定和公共卫生决策。在本文中,我们提出了一种灵活的方法,用于实时预测全因死亡率,同时考虑到一个流行病学年内季节性模式的短期变化。全因死亡率数据的优点是比病因特异性死亡率数据延迟更少。在这项研究中,我们使用了丹麦、法国、西班牙和瑞典的国家统计办公室在 2012-2013 年至 2021-2022 年流行季节获得的全因每月死亡人数,以展示所提出方法的性能。该方法基于下一个月的预期比例,预测提前 1 个月的死亡人数。通过自举法获得预测区间。该预测准确地预测了 COVID-19 大流行前的冬季死亡率高峰。尽管该方法在 COVID-19 大流行的第一波期间对死亡率的预测准确性较低,但它比其他传统方法更好地捕捉了后期波的特征。该方法对卫生研究人员和政府部门来说很有吸引力,因为它使用最少的输入数据,做出简单直观的假设,并在季节性流感流行和新型病毒大流行期间提供准确的预测。