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A cross-national factor analytic comparison of three models of PANSS symptoms in schizophrenia

机译:精神分裂症三种PANSS症状模型的跨国因素分析比较

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The 30-item Positive and Negative Syndrome Scale (PANSS) is used worldwide in the assessment of symptom severity in schizophrenia. The present study uses confirmatory factor analysis (CFA) to compare three different factorial models and to evaluate the best-fitting representation of schizophrenia symptom structure on the PANSS across four samples of patients diagnosed with schizophrenia from the US (the CATIE schizophrenia trial), S?o Paulo, Brazil, and from Beijing and Changsha, China. We examine the goodness of fit of several previously proposed models. The traditional trifactorial model for the PANSS and two five-factor models were evaluated using absolute and incremental indices. Single group CFA found that the five-factor model proposed by NIMH researchers based on an extensive literature review demonstrates the best fit in each of the four samples. This model used 20 of the 30 PANSS items grouped into five factors: positive, negative, disorganized, excited, and depressed symptoms. Subgroups defined by age, gender, nationality, hospitalization status, and severity of illness also did not differ in overall symptom structure as assessed by several standard indices. Our findings suggest that the five factor NIMH model showed the best representation among all four samples from different countries and potentially contrasting cultures.
机译:全球共有30个项目的正负综合症量表(PANSS)用于评估精神分裂症的症状严重程度。本研究使用验证性因子分析(CFA)来比较三种不同的因子模型,并评估来自美国的四例确诊为精神分裂症的患者样本中PANSS上的精神分裂症症状结构的最合适表示(CATIE精神分裂症试验),S巴西圣保罗,以及中国北京和长沙。我们研究了几种先前提出的模型的拟合优度。使用绝对和增量指数评估了PANSS的传统三因子模型和两个五因子模型。单组CFA发现,NIMH研究人员基于广泛的文献综述提出的五因素模型证明了这四个样本中的最佳拟合。该模型使用了PANSS的30个项目中的20个,分为五个因素:积极,消极,混乱,兴奋和沮丧的症状。根据年龄,性别,国籍,住院状态和疾病严重程度定义的亚组,在总体症状结构上也没有差异,如通过几个标准指标评估的那样。我们的发现表明,五因素NIMH模型显示了来自不同国家的所有四个样本以及具有潜在差异的文化中的最佳代表性。

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