Schouten Tijn M, Koini Marisa, Vos Frank de, Seiler Stephan, Rooij Mark de, Lechner Anita, Schmidt Reinhold, Heuvel Martijn van den, Grond Jeroen van der, Rombouts Serge A R B
Institute of Psychology, Leiden University, The Netherlands; Department of Radiology, Leiden University, The Netherlands; Leiden Institute for Brain and Cognition, The Netherlands.
Department of Neurology, Medical University of Graz, Austria.
Neuroimage. 2017 May 15;152:476-481. doi: 10.1016/j.neuroimage.2017.03.025. Epub 2017 Mar 16.
Diffusion magnetic resonance imaging (MRI) is a powerful non-invasive method to study white matter integrity, and is sensitive to detect differences in Alzheimer's disease (AD) patients. Diffusion MRI may be able to contribute towards reliable diagnosis of AD. We used diffusion MRI to classify AD patients (N=77), and controls (N=173). We use different methods to extract information from the diffusion MRI data. First, we use the voxel-wise diffusion tensor measures that have been skeletonised using tract based spatial statistics. Second, we clustered the voxel-wise diffusion measures with independent component analysis (ICA), and extracted the mixing weights. Third, we determined structural connectivity between Harvard Oxford atlas regions with probabilistic tractography, as well as graph measures based on these structural connectivity graphs. Classification performance for voxel-wise measures ranged between an AUC of 0.888, and 0.902. The ICA-clustered measures ranged between an AUC of 0.893, and 0.920. The AUC for the structural connectivity graph was 0.900, while graph measures based upon this graph ranged between an AUC of 0.531, and 0.840. All measures combined with a sparse group lasso resulted in an AUC of 0.896. Overall, fractional anisotropy clustered into ICA components was the best performing measure. These findings may be useful for future incorporation of diffusion MRI into protocols for AD classification, or as a starting point for early detection of AD using diffusion MRI.
扩散磁共振成像(MRI)是一种用于研究白质完整性的强大非侵入性方法,对检测阿尔茨海默病(AD)患者的差异很敏感。扩散MRI可能有助于AD的可靠诊断。我们使用扩散MRI对AD患者(N = 77)和对照组(N = 173)进行分类。我们使用不同方法从扩散MRI数据中提取信息。首先,我们使用基于纤维束空间统计进行骨架化的体素级扩散张量测量。其次,我们使用独立成分分析(ICA)对体素级扩散测量进行聚类,并提取混合权重。第三,我们使用概率纤维束成像确定哈佛牛津图谱区域之间的结构连通性,以及基于这些结构连通性图的图论测量。体素级测量的分类性能的曲线下面积(AUC)在0.888至0.902之间。ICA聚类测量的AUC在0.893至0.920之间。结构连通性图的AUC为0.900,而基于该图的图论测量的AUC在0.531至0.840之间。所有测量与稀疏组套索相结合的AUC为0.896。总体而言,聚类到ICA成分中的各向异性分数是表现最佳的测量方法。这些发现可能有助于未来将扩散MRI纳入AD分类方案,或作为使用扩散MRI早期检测AD的起点。