Semantic Speech Networks Linked to Formal Thought Disorder in Early Psychosis

Author:

Nettekoven Caroline R1ORCID,Diederen Kelly2,Giles Oscar3,Duncan Helen3,Stenson Iain3,Olah Julianna2,Gibbs-Dean Toni2,Collier Nigel4ORCID,Vértes Petra E13ORCID,Spencer Tom J2,Morgan Sarah E135,McGuire Philip2

Affiliation:

1. Department of Psychiatry, School of Clinical Medicine, University of Cambridge , Cambridge , UK

2. Department of Psychosis Studies, Institute of Psychiatry, Psychology and Neuroscience, King’s College London , London , UK

3. The Alan Turing Institute , London , UK

4. Theoretical and Applied Linguistics, Faculty of Modern and Medieval Languages, University of Cambridge , Cambridge , UK

5. Department of Computer Science and Technology, University of Cambridge , Cambridge , UK

Abstract

AbstractBackground and HypothesisMapping a patient’s speech as a network has proved to be a useful way of understanding formal thought disorder in psychosis. However, to date, graph theory tools have not explicitly modelled the semantic content of speech, which is altered in psychosis.Study DesignWe developed an algorithm, “netts,” to map the semantic content of speech as a network, then applied netts to construct semantic speech networks for a general population sample (N = 436), and a clinical sample comprising patients with first episode psychosis (FEP), people at clinical high risk of psychosis (CHR-P), and healthy controls (total N = 53).Study ResultsSemantic speech networks from the general population were more connected than size-matched randomized networks, with fewer and larger connected components, reflecting the nonrandom nature of speech. Networks from FEP patients were smaller than from healthy participants, for a picture description task but not a story recall task. For the former task, FEP networks were also more fragmented than those from controls; showing more connected components, which tended to include fewer nodes on average. CHR-P networks showed fragmentation values in-between FEP patients and controls. A clustering analysis suggested that semantic speech networks captured novel signals not already described by existing NLP measures. Network features were also related to negative symptom scores and scores on the Thought and Language Index, although these relationships did not survive correcting for multiple comparisons.ConclusionsOverall, these data suggest that semantic networks can enable deeper phenotyping of formal thought disorder in psychosis. Whilst here we focus on network fragmentation, the semantic speech networks created by Netts also contain other, rich information which could be extracted to shed further light on formal thought disorder. We are releasing Netts as an open Python package alongside this manuscript.

Funder

Schmidt Futures

Alan Turing Institute

Engineering and Physical Sciences Research Council

UK Medical Research Council

NIHR Cambridge Biomedical Research Centre

King's Health Partners

Publisher

Oxford University Press (OUP)

Subject

Psychiatry and Mental health

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