Trajectories of resilience, depression, and anxiety following spinal cord injury.

焦虑 脱离理论 萧条(经济学) 压力源 心理学 临床心理学 应对(心理学) 脊髓损伤 纵向研究 精神科 医学 脊髓 老年学 宏观经济学 病理 经济
作者
George A. Bonanno,Paul Kennedy,Isaac R. Galatzer‐Levy,Peter Ludé,Magnus Elfström
出处
期刊:Rehabilitation Psychology [American Psychological Association]
卷期号:57 (3): 236-247 被引量:283
标识
DOI:10.1037/a0029256
摘要

To investigate longitudinal trajectories of depression and anxiety symptoms following spinal cord injury (SCI) as well as the predictors of those trajectories.A longitudinal study of 233 participants assessed at 4 time points: within 6 weeks, 3 months, 1 year, and 2 years from the point of injury. Data were analyzed using latent growth mixture modeling to determine the best-fitting model of depression and anxiety trajectories. Covariates assessed during hospitalization were explored as predictors of the trajectories.Analyses for depression and anxiety symptoms revealed 3 similar latent classes: a resilient pattern of stable low symptoms, a pattern of high symptoms followed by improvement (recovery), and delayed symptom elevations. A chronic high depression pattern also emerged but not a chronic high anxiety pattern. Analyses of predictors indicated that compared with other groups, resilient patients had fewer SCI-related quality of life problems, more challenge appraisals and fewer threat appraisals, greater acceptance and fighting spirit, and less coping through social reliance and behavioral disengagement.Overall, the majority of SCI patients demonstrated considerable psychological resilience. Models for depression and anxiety evidenced a pattern of elevated symptoms followed by improvement and a pattern of delayed symptoms. Chronic high depression was also observed but not chronic high anxiety. Analyses of predictors were consistent with the hypothesis that resilient individuals view major stressors as challenges to be accepted and met with active coping efforts. These results are comparable to other recent studies of major health stressors.

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