论文标题
大脑连接网络分类的序数模式内核
Ordinal Pattern Kernel for Brain Connectivity Network Classification
论文作者
论文摘要
大脑连通性网络表征了大脑区域的功能或结构相互作用,已被广泛用于脑部疾病分类。已经提出了基于内核的方法,例如图内核(即在图上定义的内核),用于测量脑网络的相似性,并产生有希望的分类性能。但是,大多数图形内核都是基于没有边缘的未加权图(即网络)构建的,并忽略了大脑连接网络中边缘的宝贵重量信息,而边缘的重量则传达了大脑区域之间时间相关性或光纤连接的强度。因此,在本文中,我们提出了用于大脑连通性网络分类的序数模式内核。与现有的图形内核不同,该图表衡量未加权图的拓扑相似性,提出的序数模式内核通过比较加权网络的序数模式来计算加权网络的相似性。 为了评估拟议的序数内核的有效性,我们进一步开发了一个基于深度的序数模式内核,并在ADNI数据库的脑疾病的真实数据集中进行了广泛的实验。结果表明,与最先进的图表相比,我们提出的序数模式内核可以实现更好的分类性能。
Brain connectivity networks, which characterize the functional or structural interaction of brain regions, has been widely used for brain disease classification. Kernel-based method, such as graph kernel (i.e., kernel defined on graphs), has been proposed for measuring the similarity of brain networks, and yields the promising classification performance. However, most of graph kernels are built on unweighted graph (i.e., network) with edge present or not, and neglecting the valuable weight information of edges in brain connectivity network, with edge weights conveying the strengths of temporal correlation or fiber connection between brain regions. Accordingly, in this paper, we present an ordinal pattern kernel for brain connectivity network classification. Different with existing graph kernels that measures the topological similarity of unweighted graphs, the proposed ordinal pattern kernels calculate the similarity of weighted networks by comparing ordinal patterns from weighted networks. To evaluate the effectiveness of the proposed ordinal kernel, we further develop a depth-first-based ordinal pattern kernel, and perform extensive experiments in a real dataset of brain disease from ADNI database. The results demonstrate that our proposed ordinal pattern kernel can achieve better classification performance compared with state-of-the-art graph kernels.