Cook Karon F, Kallen Michael A, Amtmann Dagmar
Department of Rehabilitation Medicine, University of Washington, Box 357920, Seattle, WA, 98195-7920, USA.
Qual Life Res. 2009 May;18(4):447-60. doi: 10.1007/s11136-009-9464-4. Epub 2009 Mar 18.
Confirmatory factor analysis fit criteria typically are used to evaluate the unidimensionality of item banks. This study explored the degree to which the values of these statistics are affected by two characteristics of item banks developed to measure health outcomes: large numbers of items and nonnormal data.
Analyses were conducted on simulated and observed data. Observed data were responses to the Patient-Reported Outcome Measurement Information System (PROMIS) Pain Impact Item Bank. Simulated data fit the graded response model and conformed to a normal distribution or mirrored the distribution of the observed data. Confirmatory factor analyses (CFA), parallel analysis, and bifactor analysis were conducted.
CFA fit values were found to be sensitive to data distribution and number of items. In some instances impact of distribution and item number was quite large.
We concluded that using traditional cutoffs and standards for CFA fit statistics is not recommended for establishing unidimensionality of item banks. An investigative approach is favored over reliance on published criteria. We found bifactor analysis to be appealing in this regard because it allows evaluation of the relative impact of secondary dimensions. In addition to these methodological conclusions, we judged the items of the PROMIS Pain Impact bank to be sufficiently unidimensional for item response theory (IRT) modeling.
验证性因素分析拟合标准通常用于评估题库的单维度性。本研究探讨了这些统计量的值受为测量健康结果而开发的题库的两个特征影响的程度:大量题目和非正态数据。
对模拟数据和观测数据进行分析。观测数据是对患者报告结局测量信息系统(PROMIS)疼痛影响题库的回答。模拟数据符合等级反应模型,符合正态分布或反映观测数据的分布。进行了验证性因素分析(CFA)、平行分析和双因素分析。
发现CFA拟合值对数据分布和题目数量敏感。在某些情况下,分布和题目数量的影响相当大。
我们得出结论,不建议使用传统的CFA拟合统计临界值和标准来确定题库的单维度性。比起依赖已发表的标准,采用调查方法更可取。我们发现双因素分析在这方面很有吸引力,因为它允许评估次要维度的相对影响。除了这些方法学结论外,我们判断PROMIS疼痛影响题库的题目对于项目反应理论(IRT)建模具有足够的单维度性。