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Brain MR image classification for Alzheimer's disease diagnosis using structural hippocampal asymmetrical attributes from directional 3-D log-Gabor filter responses

机译:使用来自定向3-D对速率滤波器响应的结构海马不对称属性的阿尔茨海默病诊断脑MR图像分类

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Alzheimer's disease (AD) is a progressive and irreversible neurodegenerative condition whose development is characterized by lateralized brain atrophies. In AD, the hippocampus is the first brain structure to present atrophy, which, although to a lesser extent, is also a precursor to the broader asymmetrical development of the human brain. Structural magnetic resonance (MR) imaging is capable of detecting the disease-induced anatomical changes in the brain, thus aiding the diagnosis of AD. MR image attributes extracted from the hippocampal regions are commonly used for the AD classification task. However, most of the published methods do not explore hippocampal asymmetries for image classification. In this study, we propose a new technique for performing the classification of MR images for AD using only hippocampal asymmetrical attributes. By using the new proposed asymmetry index (AI), we assessed the attributes and the ones that passed the analysis of variance test, i.e., showing statistically mean differences among the classes (CN, MCI, and AD), were selected for classification. As a result of our study, the statistical analysis of our AI has shown a significant increase in hippocampal asymmetry as disease progress (CN MCI AD). Moreover, for the classification using clinical MR images, we obtained accuracy values of 69.44% and 82.59%; and AUC values of 0.76 and 0.9 for CN x MCI and CN x AD, respectively. Last, we found the results of our asymmetry analysis consistent with other statistical assessments and our classification results, using only asymmetry attributes comparable to (or even higher than) existing hippocampus studies. (c) 2020 Published by Elsevier B.V.
机译:阿尔茨海默病的疾病(AD)是一种渐进和不可逆的神经变性条件,其发展的特征在于脑萎缩的脑萎缩。在AD中,海马是呈现萎缩的第一种脑结构,尽管在较小程度上,也是人脑的更广泛不对称发育的前兆。结构磁共振(MR)成像能够检测疾病诱导的疾病的解剖学变化,从而帮助诊断广告。从海马区域中提取的MR图像属性通常用于广告分类任务。然而,大多数已发表的方法都不探索用于图像分类的海马不对称。在这项研究中,我们提出了一种新的技术,用于仅使用海马不对称属性来执行广告MR图像的分类。通过使用新的提出的不对称索引(AI),我们评估了通过对方差测试分析的属性和那些,即,为分类选择了类别(CN,MCI和AD)之间的统计上意味着差异。由于我们的研究,我们的AI的统计分析显示出海马不对称的显着增加,作为疾病进展(CN

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