Zhou Qi, Goryawala Mohammed, Cabrerizo Mercedes, Barker Warren, Duara Ranjan, Adjouadi Malek
Department of Electrical Engineering at the Florida International University, Miami, FL 33174, USA.
Wien Center for Alzheimer's Disease and Memory Disorders, Mount Sinai Medical Center, Miami Beach, FL 33140, USA.
ScientificWorldJournal. 2014 Jan 6;2014:541802. doi: 10.1155/2014/541802. eCollection 2014.
This study establishes a new approach for combining neuroimaging and neuropsychological measures for an optimal decisional space to classify subjects with Alzheimer's disease (AD). This approach relies on a multivariate feature selection method with different MRI normalization techniques. Subcortical volume, cortical thickness, and surface area measures are obtained using MRIs from 189 participants (129 normal controls and 60 AD patients). Statistically significant variables were selected for each combination model to construct a multidimensional space for classification. Different normalization approaches were explored to gauge the effect on classification performance using a support vector machine classifier. Results indicate that the Mini-mental state examination (MMSE) measure is most discriminative among single-measure models, while subcortical volume combined with MMSE is the most effective multivariate model for AD classification. The study demonstrates that subcortical volumes need not be normalized, whereas cortical thickness should be normalized either by intracranial volume or mean thickness, and surface area is a weak indicator of AD with and without normalization. On the significant brain regions, a nearly perfect symmetry is observed for subcortical volumes and cortical thickness, and a significant reduction in thickness is particularly seen in the temporal lobe, which is associated with brain deficits characterizing AD.
本研究建立了一种将神经影像学和神经心理学测量相结合的新方法,以获得一个最佳决策空间来对阿尔茨海默病(AD)患者进行分类。该方法依赖于一种采用不同MRI标准化技术的多变量特征选择方法。使用189名参与者(129名正常对照者和60名AD患者)的MRI获得皮质下体积、皮质厚度和表面积测量值。为每个组合模型选择具有统计学意义的变量,以构建一个用于分类的多维空间。使用支持向量机分类器探索不同的标准化方法,以评估其对分类性能的影响。结果表明,在单测量模型中,简易精神状态检查表(MMSE)测量最具判别力,而皮质下体积与MMSE相结合是AD分类最有效的多变量模型。该研究表明,皮质下体积无需标准化,而皮质厚度应通过颅内体积或平均厚度进行标准化,且无论是否标准化,表面积都是AD的一个弱指标。在重要脑区,观察到皮质下体积和皮质厚度几乎完全对称,且颞叶厚度显著减小,这与AD的脑功能缺陷相关。