Léger Ainhoa-Elena, Mazzuco Stefano
Department of Statistical Sciences, University of Padua, Padua, Italy.
Eur J Popul. 2021 Jun 28;37(4-5):769-798. doi: 10.1007/s10680-021-09588-y. eCollection 2021 Nov.
This study analyzed whether there are different patterns of mortality decline among low-mortality countries by identifying the role played by all the mortality components. We implemented a cluster analysis using a functional data analysis (FDA) approach, which allowed us to consider age-specific mortality rather than summary measures, as it analyses curves rather than scalar data. Combined with a functional principal component analysis, it can identify what part of the curves is responsible for assigning one country to a specific cluster. FDA clustering was applied to the data from 32 countries in the Human Mortality Database from 1960 to 2018 to provide a comprehensive understanding of their patterns of mortality. The results show that the evolution of developed countries followed the same pattern of stages (with different timings): (1) a reduction of infant mortality, (2) an increase of premature mortality and (3) a shift and compression of deaths. Some countries were following this scheme and recovering the gap with precursors; others did not show signs of recovery. Eastern European countries were still at Stage (2), and it was not clear if and when they will enter Stage 3. All the country differences related to the different timings with which countries underwent the stages, as identified by the clusters.
本研究通过确定所有死亡构成部分所起的作用,分析了低死亡率国家之间死亡率下降的模式是否存在差异。我们采用功能数据分析(FDA)方法进行聚类分析,该方法使我们能够考虑特定年龄的死亡率,而不是汇总指标,因为它分析的是曲线而非标量数据。结合功能主成分分析,它可以确定曲线的哪一部分导致一个国家被归为特定的聚类。FDA聚类应用于1960年至2018年人类死亡率数据库中32个国家的数据,以全面了解它们的死亡率模式。结果表明,发达国家的演变遵循相同的阶段模式(时间不同):(1)婴儿死亡率下降,(2)过早死亡率上升,以及(3)死亡的转移和压缩。一些国家遵循这一模式并缩小与先行者的差距;其他国家则没有恢复的迹象。东欧国家仍处于阶段(2),尚不清楚它们是否以及何时会进入阶段3。所有国家的差异都与聚类所确定的各国经历这些阶段的不同时间有关。