| Literature DB >> 33350441 |
Wenchao Zhang1, Gang Ji2, Peter Manza3, Guanya Li1, Yang Hu1, Jia Wang1, Ganggang Lv1, Yang He1, Karen M von Deneen1, Yu Han4, Guangbin Cui4, Dardo Tomasi3, Nora D Volkow3, Yongzhan Nie2, Gene-Jack Wang3, Yi Zhang1.
Abstract
Despite bariatric surgery being the most effective treatment for obesity, a proportion of subjects have suboptimal weight loss post-surgery. Therefore, it is necessary to understand the mechanisms behind the variance in weight loss and identify specific baseline biomarkers to predict optimal weight loss. Here, we employed functional magnetic resonance imaging (fMRI) with baseline whole-brain resting-state functional connectivity (RSFC) and a multivariate prediction framework integrating feature selection, feature transformation, and classification to prospectively identify obese patients that exhibited optimal weight loss at 6 months post-surgery. Siamese network, which is a multivariate machine learning method suitable for small sample analysis, and K-nearest neighbor (KNN) were cascaded as the classifier (Siamese-KNN). In the leave-one-out cross-validation, the Siamese-KNN achieved an accuracy of 83.78%, which was substantially higher than results from traditional classifiers. RSFC patterns contributing to the prediction consisted of brain networks related to salience, reward, self-referential, and cognitive processing. Further RSFC feature analysis indicated that the connection strength between frontal and parietal cortices was stronger in the optimal versus the suboptimal weight loss group. These findings show that specific RSFC patterns could be used as neuroimaging biomarkers to predict individual weight loss post-surgery and assist in personalized diagnosis for treatment of obesity.Entities:
Keywords: bariatric surgery; machine learning; obesity; resting-state functional connectivity; weight loss
Mesh:
Year: 2021 PMID: 33350441 PMCID: PMC8248852 DOI: 10.1093/cercor/bhaa374
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 5.357