Amorese Terry, Cuciniello Marialucia, Greco Claudia, Sheveleva Olga, Cordasco Gennaro, Glackin Cornelius, McConvey Gavin, Callejas Zoraida, Esposito Anna
Department of Psychology, Università degli Studi della Campania "L. Vanvitelli", Caserta, Italy.
Department of Brain and Behavioural Sciences, Università degli Studi di Pavia, Pavia, Italy.
Front Psychol. 2025 May 29;16:1514918. doi: 10.3389/fpsyg.2025.1514918. eCollection 2025.
Language analysis has proven to be a reliable methodology for discriminating depressed people from healthy subjects; the present study investigates differences in the linguistic content of spoken interactions from depressed and healthy subjects belonging to three different European areas: Northern Ireland, Italy, and Russia.
The speech of 241 participants (65 native English speakers, 108 native Italian speakers, and 68 native Russian speakers) was analyzed, using the computerized text analysis tool LIWC (Linguistic Inquiry Word Count).
In line with the current literature, it was observed that depressed subjects tended to use more first-person singular pronouns, speak less, use a more negative tone while speaking and use more words related to negative emotions and anxiety compared to healthy controls. Our study also highlighted some innovative findings, such as depressed subjects' greater spontaneity and tendency to speak with less self-censorship compared to healthy participants, as well as a tendency to adopt a type of thinking defined as "informal" rather than analytic. Moreover, our study is the first, at least to the best of our knowledge, comparing speech content of depressed participants belonging to three European areas: Western Europe (Northern Ireland), Southern Europe (Italy) and Eastern Europe (Russia).
Data collected through the present study could be useful in providing guidelines for the design of autonomous systems able to detect early signs of mood changes and depression through the analysis of interactional exchanges. The final aim is to provide automated and cost-effective technological interventions to be used in health care centers, as well as by mental health professionals, such as psychologists, psychiatrists, psychotherapists, therefore with the aim to provide assistance, jointly with the clinician's expertise, in the process of diagnosing depression.
语言分析已被证明是一种区分抑郁症患者与健康受试者的可靠方法;本研究调查了来自欧洲三个不同地区(北爱尔兰、意大利和俄罗斯)的抑郁症患者和健康受试者在言语互动语言内容上的差异。
使用计算机化文本分析工具LIWC(语言调查词频统计)对241名参与者(65名以英语为母语者、108名以意大利语为母语者和68名以俄语为母语者)的言语进行了分析。
与当前文献一致,研究发现,与健康对照组相比,抑郁症患者倾向于更多地使用第一人称单数代词,说话较少,说话时语气更消极,且使用更多与负面情绪和焦虑相关的词汇。我们的研究还突出了一些创新性发现,比如与健康参与者相比,抑郁症患者更自发,说话时自我审查较少,以及倾向于采用一种被定义为“非正式”而非分析性的思维方式。此外,据我们所知,我们的研究首次比较了来自欧洲三个地区(西欧的北爱尔兰、南欧的意大利和东欧的俄罗斯)的抑郁症患者的言语内容。
通过本研究收集的数据可能有助于为自主系统的设计提供指导方针,该系统能够通过分析互动交流来检测情绪变化和抑郁症的早期迹象。最终目标是提供自动化且具有成本效益的技术干预措施,供医疗保健中心以及心理健康专业人员(如心理学家、精神科医生、心理治疗师)使用,从而旨在与临床医生的专业知识相结合,在抑郁症诊断过程中提供帮助。