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Using brain structural neuroimaging measures to predict psychosis onset for individuals at clinical high-risk.

Authors :
Zhu Y
Maikusa N
Radua J
Sämann PG
Fusar-Poli P
Agartz I
Andreassen OA
Bachman P
Baeza I
Chen X
Choi S
Corcoran CM
Ebdrup BH
Fortea A
Garani RR
Glenthøj BY
Glenthøj LB
Haas SS
Hamilton HK
Hayes RA
He Y
Heekeren K
Kasai K
Katagiri N
Kim M
Kristensen TD
Kwon JS
Lawrie SM
Lebedeva I
Lee J
Loewy RL
Mathalon DH
McGuire P
Mizrahi R
Mizuno M
Møller P
Nemoto T
Nordholm D
Omelchenko MA
Raghava JM
Røssberg JI
Rössler W
Salisbury DF
Sasabayashi D
Smigielski L
Sugranyes G
Takahashi T
Tamnes CK
Tang J
Theodoridou A
Tomyshev AS
Uhlhaas PJ
Værnes TG
van Amelsvoort TAMJ
Waltz JA
Westlye LT
Zhou JH
Thompson PM
Hernaus D
Jalbrzikowski M
Koike S
Source :
Molecular psychiatry [Mol Psychiatry] 2024 May; Vol. 29 (5), pp. 1465-1477. Date of Electronic Publication: 2024 Feb 09.
Publication Year :
2024

Abstract

Machine learning approaches using structural magnetic resonance imaging (sMRI) can be informative for disease classification, although their ability to predict psychosis is largely unknown. We created a model with individuals at CHR who developed psychosis later (CHR-PS+) from healthy controls (HCs) that can differentiate each other. We also evaluated whether we could distinguish CHR-PS+ individuals from those who did not develop psychosis later (CHR-PS-) and those with uncertain follow-up status (CHR-UNK). T1-weighted structural brain MRI scans from 1165 individuals at CHR (CHR-PS+, n = 144; CHR-PS-, n = 793; and CHR-UNK, n = 228), and 1029 HCs, were obtained from 21 sites. We used ComBat to harmonize measures of subcortical volume, cortical thickness and surface area data and corrected for non-linear effects of age and sex using a general additive model. CHR-PS+ (n = 120) and HC (n = 799) data from 20 sites served as a training dataset, which we used to build a classifier. The remaining samples were used external validation datasets to evaluate classifier performance (test, independent confirmatory, and independent group [CHR-PS- and CHR-UNK] datasets). The accuracy of the classifier on the training and independent confirmatory datasets was 85% and 73% respectively. Regional cortical surface area measures-including those from the right superior frontal, right superior temporal, and bilateral insular cortices strongly contributed to classifying CHR-PS+ from HC. CHR-PS- and CHR-UNK individuals were more likely to be classified as HC compared to CHR-PS+ (classification rate to HC: CHR-PS+, 30%; CHR-PS-, 73%; CHR-UNK, 80%). We used multisite sMRI to train a classifier to predict psychosis onset in CHR individuals, and it showed promise predicting CHR-PS+ in an independent sample. The results suggest that when considering adolescent brain development, baseline MRI scans for CHR individuals may be helpful to identify their prognosis. Future prospective studies are required about whether the classifier could be actually helpful in the clinical settings.<br /> (© 2024. The Author(s).)

Details

Language :
English
ISSN :
1476-5578
Volume :
29
Issue :
5
Database :
MEDLINE
Journal :
Molecular psychiatry
Publication Type :
Academic Journal
Accession number :
38332374
Full Text :
https://doi.org/10.1038/s41380-024-02426-7