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Review
. 2024 Apr:266:205-215.
doi: 10.1016/j.schres.2024.02.036. Epub 2024 Feb 29.

Speech markers to predict and prevent recurrent episodes of psychosis: A narrative overview and emerging opportunities

Affiliations
Review

Speech markers to predict and prevent recurrent episodes of psychosis: A narrative overview and emerging opportunities

Farida Zaher et al. Schizophr Res. 2024 Apr.

Abstract

Preventing relapse in schizophrenia improves long-term health outcomes. Repeated episodes of psychotic symptoms shape the trajectory of this illness and can be a detriment to functional recovery. Despite early intervention programs, high relapse rates persist, calling for alternative approaches in relapse prevention. Predicting imminent relapse at an individual level is critical for effective intervention. While clinical profiles are often used to foresee relapse, they lack the specificity and sensitivity needed for timely prediction. Here, we review the use of speech through Natural Language Processing (NLP) to predict a recurrent psychotic episode. Recent advancements in NLP of speech have shown the ability to detect linguistic markers related to thought disorder and other language disruptions within 2-4 weeks preceding a relapse. This approach has shown to be able to capture individual speech patterns, showing promise in its use as a prediction tool. We outline current developments in remote monitoring for psychotic relapses, discuss the challenges and limitations and present the speech-NLP based approach as an alternative to detect relapses with sufficient accuracy, construct validity and lead time to generate clinical actions towards prevention.

Keywords: Disorganization; Intervention; Linguistics; NLP; Natural language processing; Prediction; Relapse; Thought disorder; mHealth; schizophrenia.

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Conflict of interest statement

Declaration of competing interest LP reports personal fees from Janssen Canada, Otsuka Canada, SPMM Course Limited, UK, Canadian Psychiatric Association; book royalties from Oxford University Press; investigator-initiated educational grants from Sunovion, Janssen Canada, Otsuka Canada outside the submitted work. M. L. reports grants from Otsuka Lundbeck Alliance and Roche, personal fees from Otsuka Canada, personal fees from Lundbeck Canada, personal fees from Boehringer Ingelheim, and grants and personal fees from Janssen. KL reports grants from Otsuka Lundbeck Alliance and personal fees from Otsuka Canada and Lundbeck Canada. SL and RJ reports none in the last 3 yrs. MAR reports personal honoraria from Janssen, Otsuka-Lundbeck Alliance, Viatris; research grants from Janssen; Research contracts from Lundbeck, Boehringer-Ingelheim, Otsuka-Lundbeck Alliance. FZ, MD, AA, MFD, P Subramanian, DG, IZ, KD, MM, P Sabesan, and AV report no conflicts.

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