COVID-19 related deaths underestimate the pandemic burden on mortality because they suffer from completeness and accuracy issues. Excess mortality is a popular alternative, as it compares observed with expected deaths based on the assumption that the pandemic did not occur. Expected deaths had the pandemic not occurred depend on population trends, temperature, and spatio-temporal patterns. In addition to this, high geographical resolution is required to examine within country trends and the effectiveness of the different public health policies. In this tutorial, we propose a framework using R to estimate and visualise excess mortality at high geographical resolution. We show a case study estimating excess deaths during 2020 in Italy. The proposed framework is fast to implement and allows combining different models and presenting the results in any age, sex, spatial and temporal aggregation desired. This makes it particularly powerful and appealing for online monitoring of the pandemic burden and timely policy making.
翻译:高死亡率是一种流行的替代办法,因为它与预计的死亡率相比较,其依据的假设是,没有发生这种流行病。预期没有发生这种流行病的死亡取决于人口趋势、温度和时空模式。除此之外,还需要高地理分辨率来审查国家内部的趋势和不同公共卫生政策的有效性。在这个指导性文件中,我们提议了一个框架,用R来估计和直观地预测高地理分辨率的超死亡率。我们提出了一个案例研究,估计2020年意大利超死亡率。拟议的框架可以快速实施,并允许将不同模式结合起来,并在任何年龄、性别、空间和时间总和中呈现所期望的结果。这使得它特别强大,需要在线监测流行病负担和及时制定政策。