论文标题
灵活的贝叶斯支持向量机,用于基于大脑网络的分类
Flexible Bayesian Support Vector Machines for Brain Network-based Classification
论文作者
论文摘要
目的:作为心理健康研究中潜在的生物标志物,大脑网络已越来越多,但是有限的方法可以利用复杂的大脑网络进行准确的分类。我们的目标是开发一种新型的贝叶斯支持向量机(SVM)方法,该方法将高维网络作为协变量,并能够克服现有惩罚方法的局限性。方法:我们通过在跨越边缘汇总信息以以不受欢迎的方式来确定差异稀疏度,从而在贝叶斯SVM模型中开发了双重指数先验的新型Dirichlet工艺混合物,能够执行特征选择和不确定性定量。我们开发了包含静态和动态连接特征的模型的不同版本,以及共同包含多个扫描会话特征的集成分析。我们使用人类连接项目(HCP)的静止状态fMRI数据对智力水平进行分类,并进行第二次注意力缺陷多动障碍(ADHD)分类任务。结果:我们的结果清楚地揭示了与最先进方法相比,提出的方法下的分类准确性更高。多节奏分析在HCP数据分析中提高了最高分类精度。结论:我们提供了具体的证据表明,新型的贝叶斯SVM为基于网络的分类提供了一种无监督和自动化的方法,从而导致对惩罚方法和参数贝叶斯方法的相当改善。意义:我们的工作是最早证明贝叶斯SVM在基于网络的心理健康结果分类以及多课程网络分析的重要性方面的优势之一。
Objective: Brain networks have gained increasing recognition as potential biomarkers in mental health studies, but there are limited approaches that can leverage complex brain networks for accurate classification. Our goal is to develop a novel Bayesian Support Vector Machine (SVM) approach that incorporates high-dimensional networks as covariates and is able to overcome limitations of existing penalized methods. Methods: We develop a novel Dirichlet process mixture of double exponential priors on the coefficients in the Bayesian SVM model that is able to perform feature selection and uncertainty quantification, by pooling information across edges to determine differential sparsity levels in an unsupervised manner. We develop different versions of the model that incorporates static and dynamic connectivity features, as well as an integrative analysis that jointly includes features from multiple scanning sessions. We perform classification of intelligence levels using resting state fMRI data from the Human Connectome Project (HCP), and a second Attention Deficiency Hyperactivity Disorder (ADHD) classification task. Results: Our results clearly reveal the considerable greater classification accuracy under the proposed approach over state-of-the-art methods. The multi-session analysis results in the highest classification accuracy in the HCP data analysis. Conclusion: We provide concrete evidence that the novel Bayesian SVMs provides an unsupervised and automated approach for network-based classification, that results in considerable improvements over penalized methods and parametric Bayesian approaches. Significance: Our work is one of the first to conclusively demonstrate the advantages of a Bayesian SVM in network-based classification of mental health outcomes, and the importance of multi-session network analysis.