White matter diffusion estimates in obsessive-compulsive disorder across 1653 individuals: machine learning findings from the ENIGMA OCD Working Group

ENIGMA-OCD Working Group

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

White matter pathways, typically studied with diffusion tensor imaging (DTI), have been implicated in the neurobiology of obsessive-compulsive disorder (OCD). However, due to limited sample sizes and the predominance of single-site studies, the generalizability of OCD classification based on diffusion white matter estimates remains unclear. Here, we tested classification accuracy using the largest OCD DTI dataset to date, involving 1336 adult participants (690 OCD patients and 646 healthy controls) and 317 pediatric participants (175 OCD patients and 142 healthy controls) from 18 international sites within the ENIGMA OCD Working Group. We used an automatic machine learning pipeline (with feature engineering and selection, and model optimization) and examined the cross-site generalizability of the OCD classification models using leave-one-site-out cross-validation. Our models showed low-to-moderate accuracy in classifying (1) “OCD vs. healthy controls” (Adults, receiver operator characteristic-area under the curve = 57.19 ± 3.47 in the replication set; Children, 59.8 ± 7.39), (2) “unmedicated OCD vs. healthy controls” (Adults, 62.67 ± 3.84; Children, 48.51 ± 10.14), and (3) “medicated OCD vs. unmedicated OCD” (Adults, 76.72 ± 3.97; Children, 72.45 ± 8.87). There was significant site variability in model performance (cross-validated ROC AUC ranges 51.6–79.1 in adults; 35.9–63.2 in children). Machine learning interpretation showed that diffusivity measures of the corpus callosum, internal capsule, and posterior thalamic radiation contributed to the classification of OCD from HC. The classification performance appeared greater than the model trained on grey matter morphometry in the prior ENIGMA OCD study (our study includes subsamples from the morphometry study). Taken together, this study points to the meaningful multivariate patterns of white matter features relevant to the neurobiology of OCD, but with low-to-moderate classification accuracy. The OCD classification performance may be constrained by site variability and medication effects on the white matter integrity, indicating room for improvement for future research.

Original languageEnglish
Pages (from-to)1063-1074
Number of pages12
JournalMolecular Psychiatry
Volume29
Issue number4
DOIs
StatePublished - Apr 2024
Externally publishedYes

Funding

FundersFunder number
National Research Foundation of Korea
Conselho Nacional de Desenvolvimento Científico e Tecnológico
Samsung
Artificial Intelligence Graduate School Program
British Columbia Children’s Hospital
Wellcome Trust DBT India AllianceIA/CPHE/18/1/503956
Fundação de Amparo à Pesquisa do Estado de São PauloBT/PR13334/Med/30/259/2009, SGR 1247, 18/21934-5, 2021/05332-8, SR/S0/HS/0016/2011, 2018/21934-5, 21/05331-8, JP22dm0307008, PI19/01171
Michael Smith Health Research BCJP22dm0307002
Japan Society for the Promotion of Science19K03309, 18K15523, 22H01090
H2O Inc.K01MH122774
Horizon 2020 Framework Programme847818
Instituto de Salud Carlos IIIPI11/01419, K24MH121571
MSitRS-2023-00265406, 2021K1A3A1A2103751212, 2021R1C1C1006503, 2021M3E5D2A01022515, 2019H1D3A2A01102270, RS-2023-00266787
CANDYCM21/00278
European Commission278948
CNP307386/2021-0
Seoul National University200-20230058
Wellcome-DBT India Alliance091510, 500236/Z/11/Z
Institute for Information and Communications Technology PromotionNO.2021-0-01343
Department of Science and Technology, Ministry of Science and Technology, IndiaIFA12-LSBM-26, BT/06/IYBA/2012
Brain and Behavior Research FoundationP41EB015922, R01MH116147, 07040
National Research Foundation78829

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