Center for Brain Imaging, School of Life Science and Technology, Xidian University, Xi'an, Shaanxi 710071, China.
State Key Laboratory of Cancer Biology, National Clinical Research Center for Digestive Diseases and Xijing Hospital of Digestive Diseases, Fourth Military Medical University, Xi'an, Shaanxi 710032, China.
Cereb Cortex. 2021 Mar 31;31(5):2561-2573. doi: 10.1093/cercor/bhaa374.
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.
尽管减重手术是治疗肥胖症最有效的方法,但一部分患者在手术后体重减轻效果并不理想。因此,有必要了解体重减轻差异的背后机制,并确定特定的基线生物标志物来预测最佳的体重减轻效果。在这里,我们使用功能磁共振成像(fMRI),对基线全脑静息态功能连接(RSFC)进行了分析,并采用了一种多变量预测框架,该框架集成了特征选择、特征转换和分类,以预测在术后 6 个月体重减轻效果最佳的肥胖患者。我们采用了一种适合小样本分析的多变量机器学习方法——孪生网络(Siamese network),并将其与 K 近邻(KNN)级联作为分类器(Siamese-KNN)。在留一交叉验证中,Siamese-KNN 的准确率达到 83.78%,明显高于传统分类器的结果。有助于预测的 RSFC 模式包括与突显、奖励、自我参照和认知处理相关的大脑网络。进一步的 RSFC 特征分析表明,在最佳体重减轻组中,额皮质和顶皮质之间的连接强度更强。这些发现表明,特定的 RSFC 模式可以作为神经影像学生物标志物,用于预测术后个体体重减轻情况,并有助于肥胖症的个性化诊断和治疗。