杜海鹏, 邵立珍, 张冬辉. 基于多目标支持向量机的ADHD分类[J]. 工程科学学报, 2020, 42(4): 441-447. DOI: 10.13374/j.issn2095-9389.2019.09.12.007
引用本文: 杜海鹏, 邵立珍, 张冬辉. 基于多目标支持向量机的ADHD分类[J]. 工程科学学报, 2020, 42(4): 441-447. DOI: 10.13374/j.issn2095-9389.2019.09.12.007
DU Hai-peng, SHAO Li-zhen, ZHANG Dong-hui. ADHD classification based on a multi-objective support vector machine[J]. Chinese Journal of Engineering, 2020, 42(4): 441-447. DOI: 10.13374/j.issn2095-9389.2019.09.12.007
Citation: DU Hai-peng, SHAO Li-zhen, ZHANG Dong-hui. ADHD classification based on a multi-objective support vector machine[J]. Chinese Journal of Engineering, 2020, 42(4): 441-447. DOI: 10.13374/j.issn2095-9389.2019.09.12.007

基于多目标支持向量机的ADHD分类

ADHD classification based on a multi-objective support vector machine

  • 摘要: 注意力缺陷多动障碍(ADHD)是儿童期最常见的精神疾病之一,在大多数情况下持续到成年期。近年来,基于功能磁共振数据的ADHD分类成为了研究热点。文献中已有的大多数分类算法均假设样本是均衡的,然而事实上,ADHD数据集通常是不平衡的。传统的学习算法会使得分类器倾向于多数类样本,从而导致性能下降。本文研究了基于不平衡神经影像数据的ADHD分类问题,即基于静息状态功能磁共振数据对ADHD进行分类。采用功能连接矩阵作为分类特征,提出了一种基于多目标支持向量机的ADHD数据分类方案。该方案将不均衡数据分类问题建模为具有三个目标的支持向量机模型,其中三个目标分别为最大化分类间隔、最小化正样本误差和最小化负样本误差,进而正负样本经验误差可以被分开处理。然后采用多目标优化的法向量边界交叉法对模型进行求解,并给出一组代表性的分类器供决策者进行选择。该方案在ADHD-200竞赛的五个数据集上进行测试评估,并与传统分类方法进行对比。实验结果表明本文提出的三个目标支持向量机分类方案比传统的分类方法效果好,可以有效的从算法层面解决数据不平衡问题。该方案不仅可用于辅助ADHD诊断,还可用于阿尔茨海默病和自闭症等疾病的辅助诊断。

     

    Abstract: Attention deficit hyperactivity disorder (ADHD) is one of the most common mental disorders during childhood, which lasts until adulthood in most cases. In recent years, ADHD classification based on functional magnetic resonance imaging (fMRI) data has become a research hotspot. Most existing classification algorithms reported in the literature assume that samples are balanced; however, ADHD data sets are usually imbalanced. Imbalanced data sets can cause the performance degradation of a classifier by imbalanced learning, which tends to overfocus on the majority class. In this study, we considered an imbalanced neuroimaging classification problem: classification of ADHD using resting state fMRI. We used the functional connection matrix of fMRI as the classification feature and proposed a multi-objective data classification scheme based on a support vector machine (SVM) to aid the diagnosis of ADHD. In this scheme, the imbalanced data classification problem is formulated as an SVM model with three objectives: maximizing the margin, minimizing the sum of positive errors, and minimizing the sum of negative errors. Accordingly, the positive and negative sample empirical errors can be separately handled. Then, the model is solved by a multi-objective optimization method, i.e., normal boundary intersection method. A set of representative classifiers are computed for selection by decision makers. The proposed scheme was tested and evaluated on five data sets from the ADHD-200 consortium and compared with traditional classification methods. Experimental results show that the proposed three-objective SVM classification scheme is better than traditional classification methods reported in the literature. It can effectively address the data imbalance problem from the algorithm level. This scheme can be used in the diagnosis of ADHD as well as other diseases, such as Alzheimer’s and Autism.

     

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