Edwards Darren J, Lowe Rob
Department of Public Health, Policy, and Social Sciences, Swansea University, Swansea, United Kingdom.
Department of Psychology, Swansea University, Swansea, United Kingdom.
Front Psychol. 2021 Mar 24;12:637802. doi: 10.3389/fpsyg.2021.637802. eCollection 2021.
Alexithymia is a personality trait which is characterized by an inability to identify and describe conscious emotions of oneself and others. The present study aimed to determine whether various measures of mental health, interoception, psychological flexibility, and self-as-context, predicted through linear associations alexithymia as an outcome. This also included relevant mediators and non-linear predictors identified for particular sub-groups of participants through cluster analyses of an Artificial Neural Network (ANN) output. Two hundred and thirty participants completed an online survey which included the following questionnaires: Toronto alexithymia scale; Acceptance and Action Questionnaire 2 (AQQII); Positive and Negative Affect Scale (PANAS-SF), Depression, Anxiety, and Stress Scale 21 (DAS21); Multidimensional Assessment of Interoceptive Awareness (MAIA); and the Self-as-Context (SAC) scale. A stepwise backwards linear regression and mediation analysis were performed, as well as a cluster analysis of the non-linear ANN upper hidden layer output. Higher levels of alexithymia were associated with increased psychological inflexibility, lower positive affect scores, and lower interoception for the subscales of "not distracting" and "attention regulation." SAC mediated the relation between emotional regulation and total alexithymia. The ANNs accounted for more of the variance than the linear regressions, and were able to identify complex and varied patterns within the participant subgroupings. The findings were discussed within the context of developing a SAC processed-based therapeutic model for alexithymia, where it is suggested that alexithymia is a complex and multi-faceted condition, which requires a similarly complex, and process-based approach to accurately diagnose and treat this condition.
述情障碍是一种人格特质,其特征是无法识别和描述自己及他人的有意识情绪。本研究旨在确定心理健康、内感受性、心理灵活性和自我作为情境的各种测量指标,是否通过线性关联预测述情障碍这一结果。这还包括通过人工神经网络(ANN)输出的聚类分析为特定参与者亚组确定的相关中介变量和非线性预测变量。230名参与者完成了一项在线调查,其中包括以下问卷:多伦多述情障碍量表;接受与行动问卷2(AQQII);正负性情绪量表(PANAS-SF)、抑郁、焦虑和压力量表21(DAS21);内感受性意识多维评估(MAIA);以及自我作为情境(SAC)量表。进行了逐步向后线性回归和中介分析,以及对非线性ANN上层隐藏层输出的聚类分析。述情障碍水平较高与心理灵活性增加、积极情绪得分较低以及“不分散注意力”和“注意力调节”子量表的内感受性较低有关。SAC介导了情绪调节与总述情障碍之间的关系。人工神经网络比线性回归解释了更多的方差,并且能够识别参与者亚组中的复杂多样模式。研究结果在为述情障碍开发基于SAC加工的治疗模型的背景下进行了讨论,其中表明述情障碍是一种复杂且多方面 的状况,需要一种同样复杂且基于过程的方法来准确诊断和治疗这种状况。