自杀预防
毒物控制
人为因素与人体工程学
伤害预防
精神科
职业安全与健康
医疗急救
荒地-城市界面
医学
地理
环境规划
病理
作者
Grant N. Marshall,Terry L. Schell,Marc N. Elliott,Nadine Recker Rayburn,Lisa H. Jaycox
出处
期刊:Psychiatric Services
[American Psychiatric Association]
日期:2007-04-01
卷期号:58 (4): 509-514
被引量:73
标识
DOI:10.1176/ps.2007.58.4.509
摘要
This study estimated the prevalence of psychopathology at a three-month follow-up among persons seeking emergency relief services after a wildfire and identified a practical screener for use in these disaster assistance settings to aid early identification of persons at risk of subsequent psychopathology.During the October 2003 California firestorm that occurred at the wildland-urban interface, 357 persons who were seeking assistance from adjacent American Red Cross and government relief centers were recruited for this study. Within days of mandatory evacuation, participants completed baseline self-administered questionnaires assessing demographic characteristics, initial subjective reactions, and degree of fire exposure. At the three-month follow-up, symptoms of posttraumatic stress disorder (PTSD) and major depression were measured via a mailed survey.At follow-up 33% showed evidence of probable major depression; 24% exhibited probable PTSD. On a bivariate basis, seven initial reaction and fire exposure items were significantly associated with subsequent psychopathology. Best-subsets logistic regression analyses revealed that property damage and physical injury were the best multivariate predictors of psychopathology at follow-up. No additional items provided a significant incremental improvement in prediction.Individuals seeking immediate emergency assistance related to the wildland-urban interface fire were at elevated risk of psychopathology in the weeks after the fire. A short, easily administered, two-item screener, composed of items assessing fire exposure severity, appears to hold promise for aiding early identification of persons at risk of postfire psychopathology. These findings may also have implications for other mass disasters.
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