Ziv Ido, Baram Heli, Bar Kfir, Zilberstein Vered, Itzikowitz Samuel, Harel Eran V, Dershowitz Nachum
Psychology Department, The College of Management - Academic Studies, Rishon LeZion, Israel.
Psychology Department, Ruppin Academic Center, Ruppin, Israel.
Scand J Psychol. 2022 Apr;63(2):91-99. doi: 10.1111/sjop.12790. Epub 2021 Nov 23.
Psychosis is diagnosed based on disruptions in the structure and use of language, including reduced syntactic complexity, derailment, and tangentiality. With the development of computational analysis, natural language processing (NLP) techniques are used in many areas of life to make evaluations and inferences regarding people's thoughts, feelings and behavior. The present study explores morphological characteristic of schizophrenia inpatients using NLP. Transcripts of recorded stories by 49 male subjects (24 inpatients diagnosed with schizophrenia and 25 controls) about 14 Thematic Apperception Test (TAT) pictures were morphologically analyzed. Relative to the control group, the schizophrenic inpatients employed: (1) a similar ratio of nouns, but fewer verbs, adjectives and adverbs; (2) a higher ratio of lemmas to token (LTR) and type to token (TTR); (3) a smaller gap between LTR and TTR; and (4) greater use of the first person. The results were cross-verified using three well-known fitting classifier algorithms (Random Forest, XGBoost and a support vector machine). Tests of prediction accuracy, precision and recall found correct attribution of patients to the schizophrenia group at a rate of between 80 and 90%. Overall, the results suggest that the language of schizophrenic inpatients is significantly different from that of healthy controls, being morphologically less complex, more associative and more focused on the self. The findings support NLP analysis as a complementary addition to the traditional clinical psychosis evaluation for schizophrenia.
精神病是根据语言结构和使用的紊乱来诊断的,包括句法复杂性降低、思维奔逸和离题。随着计算分析的发展,自然语言处理(NLP)技术在生活的许多领域被用于对人们的思想、情感和行为进行评估和推断。本研究使用NLP探索精神分裂症住院患者的语言形态特征。对49名男性受试者(24名被诊断为精神分裂症的住院患者和25名对照组)关于14张主题统觉测验(TAT)图片所记录故事的文字记录进行了形态分析。相对于对照组,精神分裂症住院患者使用:(1)名词比例相似,但动词、形容词和副词较少;(2)词元与词频(LTR)以及类型与词频(TTR)的比例较高;(3)LTR和TTR之间的差距较小;(4)更多地使用第一人称。使用三种著名的拟合分类器算法(随机森林、XGBoost和支持向量机)对结果进行了交叉验证。预测准确性、精确性和召回率测试发现,将患者正确归为精神分裂症组的比例在80%至90%之间。总体而言,结果表明精神分裂症住院患者的语言与健康对照组有显著差异,在形态上不那么复杂,关联性更强,且更关注自我。这些发现支持将NLP分析作为对精神分裂症传统临床精神病评估的一种补充。