Background: Formal thought disorder (FThD) is a core feature of psychosis, and its severity and long-term persistence relates to poor clinical outcomes. However, advances in developing early recognition and management tools for FThD are hindered by a lack of insight into the brain-level predictors of FThD states and progression at the individual level. Methods: Two hundred thirty-three individuals with recent-onset psychosis were drawn from the multisite European Prognostic Tools for Early Psychosis Management study. Support vector machine classifiers were trained within a cross-validation framework to separate two FThD symptom-based subgroups (high vs. low FThD severity), using cross-sectional whole-brain multiband fractional amplitude of low frequency fluctuations, gray matter volume and white matter volume data. Moreover, we trained machine learning models on these neuroimaging readouts to predict the persistence of high FThD subgroup membership from baseline to 1-year follow-up. Results: Cross-sectionally, multivariate patterns of gray matter volume within the salience, dorsal attention, visual, and ventral attention networks separated the FThD severity subgroups (balanced accuracy [BAC] = 60.8%). Longitudinally, distributed activations/deactivations within all fractional amplitude of low frequency fluctuation sub-bands (BACslow-5 = 73.2%, BACslow-4 = 72.9%, BACslow-3 = 68.0%), gray matter volume patterns overlapping with the cross-sectional ones (BAC = 62.7%), and smaller frontal white matter volume (BAC = 73.1%) predicted the persistence of high FThD severity from baseline to follow-up, with a combined multimodal balanced accuracy of BAC = 77%. Conclusions: We report the first evidence of brain structural and functional patterns predictive of FThD severity and persistence in early psychosis. These findings open up avenues for the development of neuroimaging-based diagnostic, prognostic, and treatment options for the early recognition and management of FThD and associated poor outcomes.

Structural and Functional Brain Patterns Predict Formal Thought Disorder's Severity and Its Persistence in Recent-Onset Psychosis: Results From the PRONIA Study / M. Buciuman, O.F. Oeztuerk, D. Popovic, P. Enrico, A. Ruef, N. Bieler, E. Sarisik, J. Weiske, M.S. Dong, D.B. Dwyer, L. Kambeitz-Ilankovic, S.S. Haas, A. Stainton, S. Ruhrmann, K. Chisholm, J. Kambeitz, A. Riecher-Rössler, R. Upthegrove, F. Schultze-Lutter, R.K.R. Salokangas, J. Hietala, C. Pantelis, R. Lencer, E. Meisenzahl, S.J. Wood, P. Brambilla, S. Borgwardt, P. Falkai, L.A. Antonucci, A. Bertolino, P. Liddle, N. Koutsouleris. - In: BIOLOGICAL PSYCHIATRY. - ISSN 2451-9022. - (2023), pp. 1-11. [Epub ahead of print] [10.1016/j.bpsc.2023.06.001]

Structural and Functional Brain Patterns Predict Formal Thought Disorder's Severity and Its Persistence in Recent-Onset Psychosis: Results From the PRONIA Study

P. Enrico;P. Brambilla;
2023

Abstract

Background: Formal thought disorder (FThD) is a core feature of psychosis, and its severity and long-term persistence relates to poor clinical outcomes. However, advances in developing early recognition and management tools for FThD are hindered by a lack of insight into the brain-level predictors of FThD states and progression at the individual level. Methods: Two hundred thirty-three individuals with recent-onset psychosis were drawn from the multisite European Prognostic Tools for Early Psychosis Management study. Support vector machine classifiers were trained within a cross-validation framework to separate two FThD symptom-based subgroups (high vs. low FThD severity), using cross-sectional whole-brain multiband fractional amplitude of low frequency fluctuations, gray matter volume and white matter volume data. Moreover, we trained machine learning models on these neuroimaging readouts to predict the persistence of high FThD subgroup membership from baseline to 1-year follow-up. Results: Cross-sectionally, multivariate patterns of gray matter volume within the salience, dorsal attention, visual, and ventral attention networks separated the FThD severity subgroups (balanced accuracy [BAC] = 60.8%). Longitudinally, distributed activations/deactivations within all fractional amplitude of low frequency fluctuation sub-bands (BACslow-5 = 73.2%, BACslow-4 = 72.9%, BACslow-3 = 68.0%), gray matter volume patterns overlapping with the cross-sectional ones (BAC = 62.7%), and smaller frontal white matter volume (BAC = 73.1%) predicted the persistence of high FThD severity from baseline to follow-up, with a combined multimodal balanced accuracy of BAC = 77%. Conclusions: We report the first evidence of brain structural and functional patterns predictive of FThD severity and persistence in early psychosis. These findings open up avenues for the development of neuroimaging-based diagnostic, prognostic, and treatment options for the early recognition and management of FThD and associated poor outcomes.
English
Early recognition; Formal thought disorder; Neuroimaging; Predictive modeling; Recent-onset psychosis; Subtyping;
Settore MED/25 - Psichiatria
Articolo
Sì, ma tipo non specificato
Pubblicazione scientifica
2023
19-giu-2023
Elsevier
1
11
11
Epub ahead of print
Periodico con rilevanza internazionale
pubmed
Aderisco
info:eu-repo/semantics/article
Structural and Functional Brain Patterns Predict Formal Thought Disorder's Severity and Its Persistence in Recent-Onset Psychosis: Results From the PRONIA Study / M. Buciuman, O.F. Oeztuerk, D. Popovic, P. Enrico, A. Ruef, N. Bieler, E. Sarisik, J. Weiske, M.S. Dong, D.B. Dwyer, L. Kambeitz-Ilankovic, S.S. Haas, A. Stainton, S. Ruhrmann, K. Chisholm, J. Kambeitz, A. Riecher-Rössler, R. Upthegrove, F. Schultze-Lutter, R.K.R. Salokangas, J. Hietala, C. Pantelis, R. Lencer, E. Meisenzahl, S.J. Wood, P. Brambilla, S. Borgwardt, P. Falkai, L.A. Antonucci, A. Bertolino, P. Liddle, N. Koutsouleris. - In: BIOLOGICAL PSYCHIATRY. - ISSN 2451-9022. - (2023), pp. 1-11. [Epub ahead of print] [10.1016/j.bpsc.2023.06.001]
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Prodotti della ricerca::01 - Articolo su periodico
32
262
Article (author)
Periodico con Impact Factor
M. Buciuman, O.F. Oeztuerk, D. Popovic, P. Enrico, A. Ruef, N. Bieler, E. Sarisik, J. Weiske, M.S. Dong, D.B. Dwyer, L. Kambeitz-Ilankovic, S.S. Haas, A. Stainton, S. Ruhrmann, K. Chisholm, J. Kambeitz, A. Riecher-Rössler, R. Upthegrove, F. Schultze-Lutter, R.K.R. Salokangas, J. Hietala, C. Pantelis, R. Lencer, E. Meisenzahl, S.J. Wood, P. Brambilla, S. Borgwardt, P. Falkai, L.A. Antonucci, A. Bertolino, P. Liddle, N. Koutsouleris
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1000073
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