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Graph-Kernel-Based Multi-task Structured Feature Selection on Multi-level Functional Connectivity Networks for Brain Disease Classification

机译:基于Graph-Kernel的多任务结构化特征选择,用于脑病分类的多级功能连接网络

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Function connectivity networks (FCNs) based on resting-state functional magnetic resonance imaging (rs-fMRI) have been used for analysis of brain diseases, such as Alzheimer's disease (AD) and Attention Deficit Hyperactivity Disorder (ADHD). However, existing studies usually extract meaningful measures (e.g., local clustering coefficients) from FCNs as a feature vector for brain disease classification, and perform vector-based feature selection methods (e.g., t-test) to improve the performance of learning model, thus ignoring important structural information of FCNs. To address this problem, we propose a graph-kernel-based structured feature selection (gk-MTSFS) method for brain disease classification using rs-fMRI data. Different with existing method that focus on vector-based feature selection, our proposed gk-MTSFS method adopts the graph kernel (i.e., kernel constructed on graphs) to preserve the structural information of FCNs, and uses the multi-task learning to explore the complementary information of multi-level thresholded FCNs (i.e., thresholded FCNs with different thresholds). Specifically, in the proposed gk-MTSFS model, we first develop a novel graph-kernel based Laplacian regularizer to preserve the structural information of FCNs. Then, we employ an L_(2,1)-norm based group sparsity regularizer to joint select a small amount of discriminative features from multi-level FCNs for brain disease classification. Experimental results on both ADNI and ADHD-200 datasets with rs-fMRI data demonstrate the effectiveness of our proposed gk-MTSFS method in rs-fMRI-based brain disease diagnosis.
机译:基于静息功能磁共振成像(RS-FMRI)的功能连接网络(FCN)已被用于分析脑疾病,例如阿尔茨海默病(AD)和注意力缺陷多动障碍(ADHD)。然而,现有研究通常从FCN中提取有意义的措施(例如,局部聚类系数)作为脑病分类的特征向量,并执行基于向量的特征选择方法(例如,T-Test)以提高学习模型的性能,从而提高学习模型的性能忽略FCN的重要结构信息。为了解决这个问题,我们建议使用RS-FMRI数据的基于Graph-Kernel的结构化特征选择(GK-MTSFS)方法,用于脑病分类。与现有方法相比,专注于基于向量的特征选择,我们提出的GK-MTSFS方法采用图形内核(即图中构造的内核)以保留FCN的结构信息,并使用多任务学习来探索互补多级别阈值FCN的信息(即,具有不同阈值的阈值FCN)。具体地,在提议的GK-MTSFS模型中,我们首先开发一种基于新的Graph-kernel的Laplacian符号器,以保留FCN的结构信息。然后,我们使用基于L_(2,1)-NOMOM的基团稀疏规则器来联合选择来自多级FCN的少量辨别特征,用于脑疾病分类。 ADNI和ADHD-200具有RS-FMRI数据的数据集的实验结果证明了我们提出的GK-MTSFS方法在基于RS-FMRI的脑病诊断中的有效性。

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