Aguayo-Estremera Raimundo, Cañadas-De la Fuente Gustavo R, Ariza Tania, Ortega-Campos Elena, Gómez-Urquiza José Luis, Romero-Béjar José Luís, De la Fuente-Solana Emilia I
Department of Psychobiology and Methodology in Behavioral Science, Universidad Complutense de Madrid, Madrid, Spain.
Department of Didactic of Mathematics, Faculty of Education Science, University of Granada, Granada, Spain.
Front Psychol. 2024 May 3;15:1383619. doi: 10.3389/fpsyg.2024.1383619. eCollection 2024.
Reliability is a property of tests scores that varies from sample to sample. One way of generalizing reliability of a test is to perform a meta-analysis on some reliability estimator. In 2011, a reliability generalization meta-analysis on the Maslach Burnout Inventory (MBI) was conducted, concluding that average alpha values for the MBI dimensions ranged from 0.71 to 0.88. In the present study, we aimed to update the average reliability values of the MBI by conducting a literature search from 2010 until now and comparing to statistical procedures of meta-analysis: the Univariate approach, that were used in the previous study, and a novel meta-analytic approach based on structural equation modeling.
An estimation of average reliability was done based on 69 independent primary reliability coefficients for the Univariate approach. The average reliability was based on 9 independent studies in the case of the Meta-analytic Structural Equation Modeling (MASEM) approach. Given that MASEM has the additional capability of testing the internal structure of a test, we also fitted several models.
The data was well-suited to the bifactor model, revealing the dominance of the general factor over the domain-specific ones. Acceptable overall alpha and omega coefficients were achieved for the two of the MBI dimensions, having depersonalization reliability estimates below recommendations.
In general, the MBI can be viewed as a highly interconnected three-factor scale, being its appropriate for research purposes.
信度是测验分数的一种属性,会因样本不同而有所变化。概括测验信度的一种方法是对某些信度估计量进行元分析。2011年,对马氏倦怠量表(MBI)进行了信度概括元分析,得出MBI各维度的平均α值在0.71至0.88之间。在本研究中,我们旨在通过检索2010年至今的文献并与元分析的统计程序进行比较,来更新MBI的平均信度值:前一项研究中使用的单变量方法,以及一种基于结构方程模型的新型元分析方法。
基于单变量方法的69个独立的主要信度系数对平均信度进行了估计。在元分析结构方程建模(MASEM)方法中,平均信度基于9项独立研究。鉴于MASEM还具有检验测验内部结构的能力,我们还拟合了几个模型。
数据非常适合双因素模型,表明一般因素比特定领域因素更具主导性。MBI的两个维度获得了可接受的总体α和ω系数,去个性化的信度估计低于推荐值。
总体而言,MBI可被视为一个高度相互关联的三因素量表,适用于研究目的。