Abstract

BackgroundMonitoring 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.MethodsThe 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.ResultsForty-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.ConclusionThe 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.

Highlights

  • Monitoring the time course of mortality by cause is a key public health issue

  • The aim of this paper is to propose a complement to a time series analysis method that was previously developed by Janssen et al [22], allowing detection of sustainable jumps attributable to changes in data production and development of correction factors by age and gender in order to enable subsequent epidemiological analyses

  • For documented or plausible jump positions, the statistical significance of the between-age and betweengender jump amplitude heterogeneity was evaluated by means of a regression model, and correction factors were deduced from the results

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Summary

Introduction

Monitoring the time course of mortality by cause is a key public health issue. Several mortality data production changes may affect cause-specific time trends, altering the interpretation. The study of cause-specific mortality time series is one of the main sources of information for public health monitoring [1,2,3]. While demonstrative and striking use can be made of such trends when communicating with the general public, many concerns relating to the data production process have to be addressed. The production processes for mortality databases have been similar in many industrialized countries ( in Western Europe) since the end of World War II. A medical certificate based on the international form recommended by the World Health Organization (WHO) [4] is filled in by a physician. The underlying cause is the most commonly used in statistical analyses

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