Jie Biao, Liu Mingxia, Lian Chunfeng, Shi Feng, Shen Dinggang
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
Department of Computer Science and Technology, Anhui Normal University, Anhui 241003, China.
Mach Learn Med Imaging. 2018 Sep;11046:1-9. doi: 10.1007/978-3-030-00919-9_1. Epub 2018 Sep 15.
Functional magnetic resonance imaging (fMRI) has been widely applied to analysis and diagnosis of brain diseases, including Alzheimer's disease (AD) and its prodrome, , mild cognitive impairment (MCI). Traditional methods usually construct connectivity networks (CNs) by simply calculating Pearson correlation coefficients (PCCs) between time series of brain regions, and then extract low-level network measures as features to train the learning model. However, the valuable observation information in network construction (, specific contributions of different time points) and high-level (, high-order) network properties are neglected in these methods. In this paper, we first define a novel weighted correlation kernel (called wc-kernel) to measure the correlation of brain regions, by which weighting factors are determined in a data-driven manner to characterize the contribution of each time point, thus conveying the richer interaction information of brain regions compared with the PCC method. Furthermore, we propose a wc-kernel based convolutional neural network (CNN) (called wck-CNN) framework for extracting the hierarchical (, from low-order to high-order) functional connectivities for disease diagnosis, by using fMRI data. Specifically, we first define a layer to build dynamic CNs (DCNs) using the defined wc-kernels. Then, we define three layers to extract local (region specific), global (network specific) and temporal high-order properties from the constructed low-order functional connectivities as features for classification. Results on 174 subjects (a total of 563 scans) with rs-fMRI data from ADNI suggest that the our method can improve the performance compared with state-of-the-art methods, provide novel insights into the interaction patterns of brain activities and their changes in diseases.
功能磁共振成像(fMRI)已广泛应用于脑部疾病的分析和诊断,包括阿尔茨海默病(AD)及其前驱症状——轻度认知障碍(MCI)。传统方法通常通过简单计算脑区时间序列之间的皮尔逊相关系数(PCC)来构建连接网络(CNs),然后提取低层次网络度量作为特征来训练学习模型。然而,这些方法忽略了网络构建中的宝贵观测信息(即不同时间点的特定贡献)和高层次(即高阶)网络属性。在本文中,我们首先定义了一种新颖的加权相关核(称为wc核)来测量脑区相关性,通过这种方法以数据驱动的方式确定加权因子,以表征每个时间点的贡献,从而与PCC方法相比传递更丰富的脑区交互信息。此外,我们提出了一种基于wc核的卷积神经网络(CNN)(称为wck-CNN)框架,用于利用fMRI数据提取分层(即从低阶到高阶)功能连接以进行疾病诊断。具体而言,我们首先定义一层,使用定义的wc核构建动态CNs(DCNs)。然后,我们定义三层,从构建的低阶功能连接中提取局部(区域特定)、全局(网络特定)和时间高阶属性作为分类特征。对来自ADNI的174名受试者(共563次扫描)的静息态fMRI数据的研究结果表明,我们的方法与现有方法相比可以提高性能,并为脑活动的交互模式及其在疾病中的变化提供新的见解。