Natural language processing methods are sensitive to sub-clinical linguistic differences in schizophrenia spectrum disorders

Author:

Tang Sunny X.ORCID,Kriz Reno,Cho SunghyeORCID,Park Suh Jung,Harowitz Jenna,Gur Raquel E.,Bhati Mahendra T.,Wolf Daniel H.,Sedoc João,Liberman Mark Y.

Abstract

AbstractComputerized natural language processing (NLP) allows for objective and sensitive detection of speech disturbance, a hallmark of schizophrenia spectrum disorders (SSD). We explored several methods for characterizing speech changes in SSD (n = 20) compared to healthy control (HC) participants (n = 11) and approached linguistic phenotyping on three levels: individual words, parts-of-speech (POS), and sentence-level coherence. NLP features were compared with a clinical gold standard, the Scale for the Assessment of Thought, Language and Communication (TLC). We utilized Bidirectional Encoder Representations from Transformers (BERT), a state-of-the-art embedding algorithm incorporating bidirectional context. Through the POS approach, we found that SSD used more pronouns but fewer adverbs, adjectives, and determiners (e.g., “the,” “a,”). Analysis of individual word usage was notable for more frequent use of first-person singular pronouns among individuals with SSD and first-person plural pronouns among HC. There was a striking increase in incomplete words among SSD. Sentence-level analysis using BERT reflected increased tangentiality among SSD with greater sentence embedding distances. The SSD sample had low speech disturbance on average and there was no difference in group means for TLC scores. However, NLP measures of language disturbance appear to be sensitive to these subclinical differences and showed greater ability to discriminate between HC and SSD than a model based on clinical ratings alone. These intriguing exploratory results from a small sample prompt further inquiry into NLP methods for characterizing language disturbance in SSD and suggest that NLP measures may yield clinically relevant and informative biomarkers.

Funder

United States Department of Defense | Defense Advanced Research Projects Agency

U.S. Department of Health & Human Services | NIH | National Institute of Mental Health

Microsoft Research

Publisher

Springer Science and Business Media LLC

Subject

Psychiatry and Mental health

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