Two distinct subtypes of obsessive compulsive disorder revealed by a framework integrating multimodal neuroimaging information

Patients with obsessive compulsive disorder (OCD) exhibit tremendous heterogeneity in structural and functional neuroimaging aberrance. However, most previous studies just focus on group‐level aberrance of a single modality ignoring heterogeneity and multimodal features. On that account, we aimed to...

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Published inHuman brain mapping Vol. 43; no. 14; pp. 4254 - 4265
Main Authors Han, Shaoqiang, Xu, Yinhuan, Guo, Hui‐Rong, Fang, Keke, Wei, Yarui, Liu, Liang, Cheng, Junying, Zhang, Yong, Cheng, Jingliang
Format Journal Article
LanguageEnglish
Published Hoboken, USA John Wiley & Sons, Inc 01.10.2022
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Summary:Patients with obsessive compulsive disorder (OCD) exhibit tremendous heterogeneity in structural and functional neuroimaging aberrance. However, most previous studies just focus on group‐level aberrance of a single modality ignoring heterogeneity and multimodal features. On that account, we aimed to uncover OCD subtypes integrating structural and functional neuroimaging features with the help of a multiview learning method and examined multimodal aberrance for each subtype. Ninety‐nine first‐episode untreated patients with OCD and 104 matched healthy controls (HCs) undergoing structural and functional MRI were included in this study. Voxel‐based morphometric and amplitude of low‐frequency fluctuation (ALFF) were adopted to assess gray matter volumes (GMVs) and the spontaneous neuronal fluctuations respectively. Structural/functional distance network was obtained by calculating Euclidean distance between pairs of regional GMVs/ALFF values across patients. Similarity network fusion, one of multiview learning methods capturing shared and complementary information from multimodal data sources, was used to fuse multimodal distance networks into one fused network. Then spectral clustering was adopted to categorize patients into subtypes. As a result, two robust subtypes were identified. These two subtypes presented opposite GMV aberrance and distinct ALFF aberrance compared with HCs while shared indistinguishable clinical and demographic features. In addition, these two subtypes exhibited opposite structure–function difference correlation reflecting distinct adaptive modifications between multimodal aberrance. Altogether, these results uncover two objective subtypes with distinct multimodal aberrance and provide a new insight into taxonomy of OCD. With the help of a multiview learning method named SNF, we proposed a novel framework integrating structural and functional information and successfully uncovered two subject subtypes of OCD. These two subtypes presented totally opposite GMV difference and distinct ALFF aberrance compared with HCs while shared indistinguishable clinical and demographic features.
Bibliography:Funding information
Medical Science and Technology Research project of Henan province, Grant/Award Numbers: SBGJ202101013, SBGJ202102102, 201701011; Natural Science Foundation of China, Grant/Award Numbers: 62106229, 81871327, 81601467
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Funding information Medical Science and Technology Research project of Henan province, Grant/Award Numbers: SBGJ202101013, SBGJ202102102, 201701011; Natural Science Foundation of China, Grant/Award Numbers: 62106229, 81871327, 81601467
ISSN:1065-9471
1097-0193
1097-0193
DOI:10.1002/hbm.25951