Although the items of the Positive and Negative Syndrome Scale (PANSS) are ordinal, continuous data methods are consistently used to analyze them. The current study addresses this issue by applying a categorical method and critically examining the ideas of item inclusion and goodness of fit. Data from 1527 subjects were used to test a proposed solution to the factor structure of the PANSS using a categorical factor analytic method. The model was made more generalizable by setting a minimum level of association between the item and the factor, and the results were then compared to existing solutions. The model was also tested for consistency in a first-episode sample. Use of categorical methods indicated similar results to previous analyses; however, it is demonstrated that the strength of the estimates can be unstable when items are shared across factors. The current study demonstrates that solutions can change substantially when a model is over-fitted, and therefore use of measures of fit as the criterion for an acceptable model can mask important relationships and decrease clinical validity.

译文

尽管阳性和阴性综合症量表 (PANSS) 的项目是有序的,但始终使用连续数据方法对其进行分析。当前的研究通过应用分类方法并严格检查项目包含和拟合优度的思想来解决此问题。使用分类因子分析方法,使用来自1527名受试者的数据来测试针对PANSS因子结构的建议解决方案。通过在项目和因子之间设置最小关联级别,使模型更具通用性,然后将结果与现有解决方案进行比较。还在第一集样本中测试了该模型的一致性。使用分类方法表明与以前的分析结果相似; 但是,事实证明,当跨因素共享项目时,估计的强度可能不稳定。当前的研究表明,当模型过拟合时,解决方案可能会发生重大变化,因此使用拟合度量作为可接受模型的标准可能会掩盖重要关系并降低临床有效性。

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