Forecast models for suicide: Time-series analysis with data from Italy

被引:5
|
作者
Preti, Antonio [1 ]
Lentini, Gianluca [2 ]
机构
[1] Univ Cagliari, Univ Hosp, Ctr Liaison Psychiat & Psychosomat, Cagliari, Italy
[2] Politecn Milan, Poliedra, Milan, Italy
关键词
Suicide; season; periodicity; prevention; forecast; risk; SEASONAL-VARIATION; LIFE EVENTS; ASSOCIATION; TEMPERATURE; MORTALITY; RATES; PATTERNS; AGE; IDEATION; SUNSHINE;
D O I
10.1080/07420528.2016.1211669
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
The prediction of suicidal behavior is a complex task. To fine-tune targeted preventative interventions, predictive analytics (i.e. forecasting future risk of suicide) is more important than exploratory data analysis (pattern recognition, e.g. detection of seasonality in suicide time series). This study sets out to investigate the accuracy of forecasting models of suicide for men and women. A total of 101 499 male suicides and of 39 681 female suicides - occurred in Italy from 1969 to 2003 - were investigated. In order to apply the forecasting model and test its accuracy, the time series were split into a training set (1969 to 1996; 336 months) and a test set (1997 to 2003; 84 months). The main outcome was the accuracy of forecasting models on the monthly number of suicides. These measures of accuracy were used: mean absolute error; root mean squared error; mean absolute percentage error; mean absolute scaled error. In both male and female suicides a change in the trend pattern was observed, with an increase from 1969 onwards to reach a maximum around 1990 and decrease thereafter. The variances attributable to the seasonal and trend components were, respectively, 24% and 64% in male suicides, and 28% and 41% in female ones. Both annual and seasonal historical trends of monthly data contributed to forecast future trends of suicide with a margin of error around 10%. The finding is clearer in male than in female time series of suicide. The main conclusion of the study is that models taking seasonality into account seem to be able to derive information on deviation from the mean when this occurs as a zenith, but they fail to reproduce it when it occurs as a nadir. Preventative efforts should concentrate on the factors that influence the occurrence of increases above the main trend in both seasonal and cyclic patterns of suicides.
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页码:1235 / 1246
页数:12
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