Stochl Jan, Jones Peter B, Plaistow James, Reininghaus Ulrich, Priebe Stefan, Perez Jesus, Croudace Tim J
Department of Psychiatry, University of Cambridge, Cambridge, UK; Cameo Early Intervention Services, Cambridgeshire and Peterborough NHS Foundation Trust, Cambridge, UK.
Int J Methods Psychiatr Res. 2014 Mar;23(1):25-35. doi: 10.1002/mpr.1429. Epub 2014 Jan 21.
Clinical assessments of the presence and severity of psychopathology are often collected by health care professionals in mental health services or clinical researchers trained to use semi-structured interviews. Clustering by interviewer or rater needs to be considered when performing psychometric analyses such as factor analysis or item response modelling as non-independence of observations arises in these situations. We apply more suitable multilevel methods to analyse ordinally scored Positive and Negative Syndrome Scale (PANSS) items. Our aim is to highlight the differences in results that occur when the data are analysed using a hierarchically sensitive approach rather than using a traditional (aggregated) analysis. Our sample (n = 507) consisted of patients diagnosed with schizophrenia who participated in a multi-centre randomized control clinical trial, the DIALOG study. Analyses reported and compared include an exploratory factor analysis as well as several recently published multifactor models re-estimated within a confirmatory analysis framework. Our results show that the fit of the model and the parsimony of the exploratory factor analysis (EFA) models indicated by the number of factors necessary to explain the inter-correlation among PANSS items improved significantly when data clustering is taken into account through multilevel analysis. Our modeling results support the pentagonal PANSS model first proposed by White et al. (1997). Copyright © 2014 John Wiley & Sons, Ltd.
精神病理学存在与否及严重程度的临床评估,通常由心理健康服务领域的医护专业人员或接受过使用半结构化访谈培训的临床研究人员收集。在进行诸如因子分析或项目反应建模等心理测量分析时,需要考虑访谈者或评分者的聚类情况,因为在这些情况下会出现观察值的非独立性。我们应用更合适的多层次方法来分析按顺序计分的阳性和阴性症状量表(PANSS)项目。我们的目的是突出使用层次敏感方法而非传统(汇总)分析方法分析数据时所产生的结果差异。我们的样本(n = 507)由参与多中心随机对照临床试验即DIALOG研究的精神分裂症患者组成。报告和比较的分析包括探索性因子分析以及在验证性分析框架内重新估计的几个最近发表的多因素模型。我们的结果表明,当通过多层次分析考虑数据聚类时,由解释PANSS项目间相互关系所需的因子数量所表明的模型拟合度和探索性因子分析(EFA)模型的简约性显著提高。我们的建模结果支持White等人(1997年)首次提出的五角形PANSS模型。版权所有© 2014约翰威立国际出版公司。