Hajcak Greg, Meyer Alexandria, Kotov Roman
Department of Psychology, Stony Brook University.
Department of Psychology, Florida State University.
J Abnorm Psychol. 2017 Aug;126(6):823-834. doi: 10.1037/abn0000274. Epub 2017 Apr 27.
In the clinical neuroscience literature, between-subjects differences in neural activity are presumed to reflect reliable measures-even though the psychometric properties of neural measures are almost never reported. The current article focuses on the critical importance of assessing and reporting internal consistency reliability-the homogeneity of "items" that comprise a neural "score." We demonstrate how variability in the internal consistency of neural measures limits between-subjects (i.e., individual differences) effects. To this end, we utilize error-related brain activity (i.e., the error-related negativity or ERN) in both healthy and generalized anxiety disorder (GAD) participants to demonstrate options for psychometric analyses of neural measures; we examine between-groups differences in internal consistency, between-groups effect sizes, and between-groups discriminability (i.e., ROC analyses)-all as a function of increasing items (i.e., number of trials). Overall, internal consistency should be used to inform experimental design and the choice of neural measures in individual differences research. The internal consistency of neural measures is necessary for interpreting results and guiding progress in clinical neuroscience-and should be routinely reported in all individual differences studies. (PsycINFO Database Record
在临床神经科学文献中,神经活动的个体间差异被假定为反映了可靠的测量结果——尽管神经测量的心理测量特性几乎从未被报告过。本文重点关注评估和报告内部一致性信度的至关重要性——即构成神经“分数”的“项目”的同质性。我们展示了神经测量内部一致性的变异性如何限制个体间(即个体差异)效应。为此,我们在健康参与者和广泛性焦虑症(GAD)参与者中利用与错误相关的脑活动(即错误相关负波或ERN)来展示神经测量心理测量分析的选项;我们研究了组间内部一致性差异、组间效应大小和组间可辨别性(即ROC分析)——所有这些都是作为增加项目(即试验次数)的函数。总体而言,内部一致性应用于为个体差异研究中的实验设计和神经测量的选择提供信息。神经测量的内部一致性对于解释结果和指导临床神经科学的进展是必要的——并且应该在所有个体差异研究中常规报告。(PsycINFO数据库记录)