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Isometry Invariant Shape Descriptors for Abnormality Detection on Brain Surfaces Affected by Alzheimer’s Disease

机译:等距不变形状描述符用于检测受阿尔茨海默氏病影响的大脑表面异常

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Alzheimer's disease (AD), a progressive brain disorder, is the most common neurodegenerative disease in older adults. There is a need for brain structural magnetic resonance imaging (MRI) biomarkers to help assess AD progression and intervention effects. Prior research showed that surface based brain imaging features hold great promise as efficient AD biomarkers. However, the complex geometry of cortical surfaces poses a major challenge to defining such a feature that is sensitive in qualification, robust in analysis, and intuitive in visualization. Here we propose a novel isometry invariant shape descriptor for brain morphometry analysis. First, we calculate a global area-preserving mapping from cortical surface to the unit sphere. Based on the mapping, the Beltrami coefficient shape descriptor is calculated. An analysis of average shape descriptors reveals that our detected features are consistent with some previous AD studies where medial temporal lobe volume was identified as an important AD imaging biomarker. We further apply a novel patch-based spherical sparse coding scheme for feature dimension reduction. Later, a support vector machine (SVM) classifier is applied to discriminate 135 amyloid-beta positive persons with the clinical diagnosis of Mild Cognitive Impairment (MCI) from 248 amyloid-beta-negative normal control subjects. The 5-folder cross-validation accuracy is about 81.82% on the dataset, outperforming some traditional, Freesurfer based, brain surface features. The results show that our shape descriptor is effective in distinguishing dementia due to AD from age-matched normal aging individuals. Our isometry invariant shape descriptors may provide a unique and intuitive way to inspect cortical surface and its morphometry changes.
机译:阿尔茨海默氏病(AD)是一种进行性脑部疾病,是老年人中最常见的神经退行性疾病。需要脑结构磁共振成像(MRI)生物标志物来帮助评估AD进展和干预效果。先前的研究表明,基于表面的大脑成像功能作为有效的AD生物标记物具有广阔的前景。然而,复杂的皮质表面几何形状对于定义这样的特征提出了重大挑战,该特征在鉴定中敏感,分析鲁棒并且在可视化中直观。在这里,我们提出了一种新颖的等距不变形状描述符,用于大脑形态分析。首先,我们计算了从皮质表面到单位球体的全局保留区域映射。基于该映射,计算Beltrami系数形状描述符。对平均形状描述符的分析表明,我们检测到的特征与一些先前的AD研究一致,在这些研究中,颞中叶体积被确定为重要的AD成像生物标记。我们进一步应用一种新颖的基于补丁的球形稀疏编码方案,以减少特征尺寸。后来,应用支持向量机(SVM)分类器,从248名淀粉样β阴性的正常对照受试者中区分出135名淀粉样β阳性的人,并诊断为轻度认知障碍(MCI)。在数据集上,五折交叉验证的准确性约为81.82%,优于某些基于Freesurfer的传统大脑表面特征。结果表明,我们的形状描述符可有效区分AD与年龄匹配的正常衰老个体所致的痴呆。我们的等距不变形状描述符可以提供一种独特而直观的方式来检查皮质表面及其形态变化。

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