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Detection of Alzheimer's disease using advanced local binary pattern from hippocampus and whole brain of MR images

机译:使用来自海马和MR图像全脑的高级局部二进制模式检测阿尔茨海默氏病

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Alzheimer's disease as one type of dementia can cause problems to human memory, thinking and behavior. The brain damage can be detected using brain volume and whole brain form. The correlation between brain shrinkage and reduction of brain volume can affect to deformation texture. In this research, the enhancement texture approach was proposed, called advanced local binary pattern (ALBP) method. ALBP is introduced as a 2D and 3D feature extraction descriptor. In the ALBP, sign and magnitude value were introduced as an enhancement to the previous LBP method. Due to a great number of features are produced by ALBP, the principal component analysis (PCA) and factor analysis are used as feature selection method. Furthermore, SVM classifier is applied for multiclass classification including Alzheimer's, mild cognitive impairment, and normal condition of whole brain and hippocampus. The experimental results from two scenarios (ALBP sign magnitude (2D) and ALBP sign magnitude using three orthogonal planes (3D) methods) show better accuracy and performance compare to previous method. Our proposed method achieved the average value of accuracy between 80% - 100% for both the whole brain and hippocampus data. In addition, uniform rotation invariant ALBP sign magnitude using three orthogonal planes as a 3D descriptor also outperforms other approaches with an average accuracy of 96.28% for multiclass classifications for whole brain image.
机译:阿尔茨海默氏病是一种痴呆,会给人类的记忆,思维和行为带来问题。可以使用脑容量和全脑形态来检测脑损伤。脑部收缩与脑部体积减少之间的相关性会影响变形质地。在这项研究中,提出了增强纹理方法,称为高级局部二进制模式(ALBP)方法。引入ALBP作为2D和3D特征提取描述符。在ALBP中,引入了符号和幅度值,作为对先前LBP方法的增强。由于ALBP产生了大量特征,因此将主成分分析(PCA)和因子分析用作特征选择方法。此外,SVM分类器可用于包括阿尔茨海默氏症,轻度认知障碍以及全脑和海马的正常状况在内的多类分类。来自两种方案的实验结果(ALBP符号幅度(2D)和使用三个正交平面(3D)方法的ALBP符号幅度)显示出比以前的方法更好的准确性和性能。对于整个大脑和海马数据,我们提出的方法均达到了80%-100%的准确度平均值。此外,使用三个正交平面作为3D描述符的均匀旋转不变ALBP符号幅度也优于其他方法,对于全脑图像的多类分类,其平均准确度为96.28%。

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