Tang Sunny X, Cong Yan, Nikzad Amir H, Mehta Aarush, Cho Sunghye, Hänsel Katrin, Berretta Sarah, Dhar Aamina A, Kane John M, Malhotra Anil K
Zucker Hillside Hospital, Department of Psychiatry, Feinstein Institutes for Medical Research, 75-59 263rd St., Glen Oaks, NY 11004, United States of America.
University of Pennsylvania, Linguistic Data Consortium, 3600 Market St., Suite 810, Philadelphia, PA 19104, United States of America.
Schizophr Res. 2023 Sep;259:28-37. doi: 10.1016/j.schres.2022.06.012. Epub 2022 Jul 11.
In this study, we compared three domains of social cognition (emotion processing, mentalizing, and attribution bias) to clinical and computational language measures in 63 participants with schizophrenia spectrum disorders. Based on the active inference model for discourse, we hypothesized that emotion processing and mentalizing, but not attribution bias, would be related to language disturbances. Clinical ratings for speech disturbance assessed disorganized and underproductive dimensions. Computational features included speech graph metrics, use of modal verbs, use of first-person pronouns, cosine similarity of adjacent utterances, and measures of sentiment; these were represented by four principal components. We found that higher clinical ratings for disorganized speech were predicted by greater impairments in both emotion processing and mentalizing, and that these relationships remained significant when accounting for demographic variables, overall psychosis symptoms, and verbal ability. Similarly, a computational speech component reflecting insular speech was consistently predicted by impairment in emotion processing. There were notable trends for computational speech components reflecting underproductive speech and decreased content-rich speech predicting mentalizing ability. Exploratory longitudinal analyses in a small subset of participants (n = 17) found that improvements in both emotion processing and mentalizing predicted improvements in disorganized speech. Attribution bias did not demonstrate strong relationships with language measures. Altogether, our findings are consistent with the active inference model of discourse and suggest greater emphasis on treatments that target social cognitive and language systems.
在本研究中,我们将63名精神分裂症谱系障碍患者的社会认知的三个领域(情绪加工、心理理论和归因偏差)与临床及计算语言指标进行了比较。基于话语的主动推理模型,我们假设情绪加工和心理理论(而非归因偏差)会与语言障碍相关。言语紊乱的临床评分评估了紊乱和低效两个维度。计算特征包括言语图指标、情态动词的使用、第一人称代词的使用、相邻话语的余弦相似度以及情感测量;这些由四个主成分表示。我们发现,情绪加工和心理理论方面的更大损伤预示着言语紊乱的临床评分更高,并且在考虑人口统计学变量、总体精神病症状和语言能力后,这些关系仍然显著。同样,反映岛叶言语的计算言语成分始终由情绪加工损伤所预测。反映低效言语和内容丰富言语减少的计算言语成分预测心理理论能力存在显著趋势。对一小部分参与者(n = 17)进行的探索性纵向分析发现,情绪加工和心理理论的改善预示着言语紊乱的改善。归因偏差与语言指标未表现出强烈关系。总体而言,我们的研究结果与话语的主动推理模型一致,并建议更加强调针对社会认知和语言系统的治疗方法。