Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Neuroimage. 2011 Feb 1;54(3):1812-22. doi: 10.1016/j.neuroimage.2010.10.026. Epub 2010 Oct 21.
Mild cognitive impairment (MCI), often a prodromal phase of Alzheimer's disease (AD), is frequently considered to be a good target for early diagnosis and therapeutic interventions of AD. Recent emergence of reliable network characterization techniques has made it possible to understand neurological disorders at a whole-brain connectivity level. Accordingly, we propose an effective network-based multivariate classification algorithm, using a collection of measures derived from white matter (WM) connectivity networks, to accurately identify MCI patients from normal controls. An enriched description of WM connections, utilizing six physiological parameters, i.e., fiber count, fractional anisotropy (FA), mean diffusivity (MD), and principal diffusivities(λ(1), λ(2), and λ(3)), results in six connectivity networks for each subject to account for the connection topology and the biophysical properties of the connections. Upon parcellating the brain into 90 regions-of-interest (ROIs), these properties can be quantified for each pair of regions with common traversing fibers. For building an MCI classifier, clustering coefficient of each ROI in relation to the remaining ROIs is extracted as feature for classification. These features are then ranked according to their Pearson correlation with respect to the clinical labels, and are further sieved to select the most discriminant subset of features using an SVM-based feature selection algorithm. Finally, support vector machines (SVMs) are trained using the selected subset of features. Classification accuracy was evaluated via leave-one-out cross-validation to ensure generalization of performance. The classification accuracy given by our enriched description of WM connections is 88.9%, which is an increase of at least 14.8% from that using simple WM connectivity description with any single physiological parameter. A cross-validation estimation of the generalization performance shows an area of 0.929 under the receiver operating characteristic (ROC) curve, indicating excellent diagnostic power. It was also found, based on the selected features, that portions of the prefrontal cortex, orbitofrontal cortex, parietal lobe and insula regions provided the most discriminant features for classification, in line with results reported in previous studies. Our MCI classification framework, especially the enriched description of WM connections, allows accurate early detection of brain abnormalities, which is of paramount importance for treatment management of potential AD patients.
轻度认知障碍(MCI),通常是阿尔茨海默病(AD)的前驱阶段,常被认为是 AD 早期诊断和治疗干预的良好靶点。最近出现的可靠网络特征技术使得在全脑连接水平上理解神经障碍成为可能。因此,我们提出了一种有效的基于网络的多变量分类算法,使用从白质(WM)连接网络中提取的一系列度量标准,准确地从正常对照中识别 MCI 患者。利用六个生理参数(即纤维计数、各向异性分数(FA)、平均扩散率(MD)和主扩散率(λ(1)、λ(2)和 λ(3)))对 WM 连接进行丰富描述,为每个受试者生成六个连接网络,以说明连接拓扑和连接的生物物理特性。在将大脑分割成 90 个感兴趣区域(ROI)后,可以对每个具有共同穿越纤维的区域对量化这些特性。为了构建 MCI 分类器,从分类的角度提取每个 ROI 与其余 ROI 之间的聚类系数作为特征。然后根据它们与临床标签的皮尔逊相关性对这些特征进行排序,并进一步使用基于 SVM 的特征选择算法筛选出最具判别力的特征子集。最后,使用所选特征子集训练支持向量机(SVM)。通过留一交叉验证评估分类准确性,以确保性能的泛化。我们对 WM 连接的丰富描述所给出的分类准确性为 88.9%,比使用任何单一生理参数的简单 WM 连接描述至少提高了 14.8%。接收器操作特征(ROC)曲线下的交叉验证估计表明,该方法具有 0.929 的区域,表明具有出色的诊断能力。根据所选特征,还发现前额叶皮层、眶额皮层、顶叶和岛叶区域的部分区域为分类提供了最具判别力的特征,这与之前研究报告的结果一致。我们的 MCI 分类框架,特别是对白质连接的丰富描述,允许对大脑异常进行准确的早期检测,这对于潜在 AD 患者的治疗管理至关重要。