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Cause-specific mortality time series analysis: a general method to detect and correct for abrupt data production changes

机译:特定原因的死亡率时间序列分析:一种检测和纠正突然的数据产生变化的通用方法

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Background Monitoring the time course of mortality by cause is a key public health issue. However, several mortality data production changes may affect cause-specific time trends, thus altering the interpretation. This paper proposes a statistical method that detects abrupt changes ("jumps") and estimates correction factors that may be used for further analysis. Methods The method was applied to a subset of the AMIEHS (Avoidable Mortality in the European Union, toward better Indicators for the Effectiveness of Health Systems) project mortality database and considered for six European countries and 13 selected causes of deaths. For each country and cause of death, an automated jump detection method called Polydect was applied to the log mortality rate time series. The plausibility of a data production change associated with each detected jump was evaluated through literature search or feedback obtained from the national data producers. For each plausible jump position, the statistical significance of the between-age and between-gender jump amplitude heterogeneity was evaluated by means of a generalized additive regression model, and correction factors were deduced from the results. Results Forty-nine jumps were detected by the Polydect method from 1970 to 2005. Most of the detected jumps were found to be plausible. The age- and gender-specific amplitudes of the jumps were estimated when they were statistically heterogeneous, and they showed greater by-age heterogeneity than by-gender heterogeneity. Conclusion The method presented in this paper was successfully applied to a large set of causes of death and countries. The method appears to be an alternative to bridge coding methods when the latter are not systematically implemented because they are time- and resource-consuming.
机译:背景技术按原因监测死亡率的时程是关键的公共卫生问题。但是,一些死亡率数据产生的变化可能会影响特定原因的时间趋势,从而改变了解释。本文提出了一种统计方法,该方法可检测突变(“跃变”)并估计可用于进一步分析的校正因子。方法该方法应用于AMIEHS(欧盟的可避免死亡率,朝着更好的卫生系统有效性指标)项目死亡率数据库的一部分,并考虑了六个欧洲国家和13种选定的死亡原因。对于每个国家和死亡原因,将称为Polydect的自动跳跃检测方法应用于对数死亡率时间序列。通过文献搜索或从国家数据生产商那里获得的反馈,评估了与每次检测到的跳跃相关的数据生产变化的合理性。对于每个可能的跳跃位置,通过广义加性回归模型评估了年龄之间和性别之间的跳跃幅度异质性的统计显着性,并从结果中推导了校正因子。结果1970年至2005年,采用Polydect方法检测到49次跳跃。发现的大多数跳跃都是合理的。当跳跃在统计上是异质的时,就可以估计其年龄和性别的跳跃幅度,并且它们的年龄异质性大于性别异质性。结论本文提出的方法已成功地应用于各种死亡原因和国家。当桥式编码方法没有被系统地实现时,该方法似乎是桥式编码方法的替代方法,因为它们既费时又费资源。

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