Detecting grey matter changes in preclinical phase of Alzheimer's disease by voxel-based morphometric and textural features: A preliminary study

Su-zhen Liu, Huifang Yang, Longzheng Tong, Weifang Liu
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引用次数: 2

Abstract

In the present study, a voxel-based morphometry (VBM) and three dimensional texture analysis were used to detect brain structural changes of AD subjects in preclinical phase. Three groups of T1-weighed MRI data were selected from Open Access Series of Imaging Studies (OASIS) database, including 13 converted subjects (CS) who were cognitively healthy at baseline, 13 non-demented subjects (NS) remained cognitively healthy, and 64 demented subjects (DS) for control study. Results showed grey matter (GM) atrophy in bilateral occipital lobe, superior temporal gyrus, and left inferior temporal lobe in CS (p< 0.001); textural features of the largest cluster significantly differed from that of NS, with the classification accuracy of 88.5% through cross validation, which may highlight the key role of these regions in prediction of the disease. Morphometric measurement plus texture analysis presents feasible in detecting preclinical AD.
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基于体素的形态学和纹理特征检测阿尔茨海默病临床前阶段灰质变化:一项初步研究
本研究采用基于体素的形态测量(VBM)和三维纹理分析方法检测阿尔茨海默病受试者临床前阶段的脑结构变化。从Open Access Series Imaging Studies (OASIS)数据库中选择三组t1加权MRI数据,包括13例基线认知健康的转换受试者(CS)、13例认知健康的非痴呆受试者(NS)和64例痴呆受试者(DS)作为对照研究。结果CS患者双侧枕叶、颞上回、左侧颞下叶灰质萎缩(p< 0.001);最大聚类的纹理特征与NS存在显著差异,交叉验证的分类准确率为88.5%,这可能突出了这些区域在疾病预测中的关键作用。形态学测量加织构分析在临床前AD检测中是可行的。
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