Department of Psychiatry, Chu-Tung Veterans Hospital, Hsin-Chu County, Taiwan.
J Affect Disord. 2011 Mar;129(1-3):275-81. doi: 10.1016/j.jad.2010.08.010. Epub 2010 Sep 15.
Research has implicated environmental risk factors, such as meteorological variables, in suicide. However, studies have not investigated air pollution, known to induce acute medical conditions and increase mortality, in suicide. This study comprehensively assesses the temporal relationship between suicide and air pollution, weather, and unemployment variables in Taipei City from January 1 1991 to December 31 2008.
This research used the empirical mode decomposition (EMD) method to de-trend the suicide data into a set of intrinsic oscillations, called intrinsic mode functions (IMFs). Multiple linear regression analysis with forward stepwise method was used to identify significant predictors of suicide from a pool of air pollution, weather, and unemployment data, and to quantify the temporal association between decomposed suicide IMFs with these predictors at different time scales.
Findings of this study predicted a classic seasonal pattern of increased suicide occurring in early summer by increased air particulates and decreased barometric pressure, in which the latter was in accordance with increased temperature during the corresponding time. Gaseous air pollutants, such as sulfur dioxide and ozone, were found to increase the risk of suicide at longer time scales. Decreased sunshine duration and sunspot activity predicted the increased suicide. After controlling for the unemployment factor, environmental risks predicted 33.7% of variance in the suicide data.
Using EMD analysis, this study found time-scale dependent associations between suicide and air pollution, weather and unemployment data. Contributing environmental risks may vary in different geographic regions and in different populations.
研究表明,环境风险因素,如气象变量,与自杀有关。然而,研究尚未调查已知会引发急性疾病并增加死亡率的空气污染与自杀之间的关系。本研究全面评估了 1991 年 1 月 1 日至 2008 年 12 月 31 日期间台北市自杀与空气污染、天气和失业变量之间的时间关系。
本研究使用经验模态分解(EMD)方法将自杀数据分解为一组固有振荡,称为固有模态函数(IMF)。使用逐步向前的多元线性回归分析从空气污染、天气和失业数据中识别自杀的显著预测因子,并量化分解的自杀 IMF 与这些预测因子在不同时间尺度上的时间关联。
本研究的结果预测了初夏自杀增加的经典季节性模式,这是由于空气颗粒物增加和气压降低所致,后者与相应时间的温度升高相符。发现气态空气污染物,如二氧化硫和臭氧,在较长时间尺度上增加了自杀的风险。日照时间和太阳黑子活动减少预测了自杀的增加。在控制失业因素后,环境风险预测了自杀数据 33.7%的方差。
使用 EMD 分析,本研究发现自杀与空气污染、天气和失业数据之间存在时间尺度相关的关联。不同地理区域和不同人群的环境风险因素可能有所不同。