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自我复杂性与抑郁症的持续性

Self-complexity and the persistence of depression.

作者信息

Woolfolk R L, Gara M A, Ambrose T K, Williams J E, Allen L A, Irvin S L, Beaver J D

机构信息

Department of Psychology, Rutgers University, Piscataway, New Jersey 08854-8040, USA.

出版信息

J Nerv Ment Dis. 1999 Jul;187(7):393-9. doi: 10.1097/00005053-199907000-00001.

Abstract

Self-complexity, a measure of the structure of cognition involving the self, was used to predict the persistence of depression in patients diagnosed with major depression. Self-descriptions offered by depressed patients were analyzed using a clustering algorithm to model cognitive structure. Indices of positive and negative self-complexity, derived from the resulting models, were used to predict depressive symptomatology 9 months after the onset of a major depression. Negative self-complexity uniquely predicted subsequent levels of depression even after the effects of initial levels of depression, self-evaluation, and dysfunctional attitudes were statistically removed. Highly complex negative self-representation appears to be associated with poor recovery from a major depressive episode. Future studies examining the relationship between cognition and psychopathology should investigate, in addition to its content, the formal and structural properties of cognition.

摘要

自我复杂性是一种衡量涉及自我的认知结构的指标,被用于预测被诊断为重度抑郁症患者的抑郁持续情况。使用聚类算法分析抑郁症患者提供的自我描述,以构建认知结构模型。从所得模型中得出的积极和消极自我复杂性指标,被用于预测重度抑郁症发作9个月后的抑郁症状。即使在统计学上消除了初始抑郁水平、自我评价和功能失调态度的影响后,消极自我复杂性仍能独特地预测后续的抑郁水平。高度复杂的消极自我表征似乎与重度抑郁发作后的恢复不佳有关。未来研究认知与精神病理学之间的关系时,除了其内容外,还应研究认知的形式和结构特性。

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