差分进化与多类支持向量机在阿尔茨海默病分类中的应用

Jhansi Rani Kaka, K. Prasad
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引用次数: 3

摘要

阿尔茨海默氏症的早期诊断有助于医生根据患者的阶段决定治疗方案。现有的方法涉及到将深度学习方法应用于阿尔茨海默病分类,并且存在过拟合问题的局限性。基于优化方法的特征选择存在容易陷入局部最优和收敛性差的局限性,一些研究人员参与了该方法的应用。本研究提出差分进化-多类支持向量机(DE-MSVM)来提高阿尔茨海默病分类的性能。采用图像归一化方法,提高了图像的质量,有效地表达了特征。将AlexNet模型应用于归一化后的图像进行特征提取和特征选择。差分进化方法采用帕累托最优前沿进行非支配特征选择。这有助于选择代表输入图像特征的特征。将选择的特征应用到MSVM方法中进行高维表示,并对阿尔茨海默病进行分类。DE-MSVM方法在轴向切片上的精度为98.13%,现有的MSVM鲸鱼优化精度为95.23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Evolution and Multiclass Support Vector Machine for Alzheimer's Classification
Early diagnosis of Alzheimer’s helps a doctor to decide the treatment for the patient based on the stages. The existing methods involve applying the deep learning methods for Alzheimer’s classification and have the limitations of overfitting problems. Some researchers were involved in applying the feature selection based on the optimization method, having limitations of easily trapping into local optima and poor convergence. In this research, Differential Evolution-Multiclass Support Vector Machine (DE-MSVM) is proposed to increase the performance of Alzheimer’s classification. The image normalization method is applied to enhance the quality of the image and represent the features effectively. The AlexNet model is applied to the normalized images to extract the features and also applied for feature selection. The Differential Evolution method applies Pareto Optimal Front for nondominated feature selection. This helps to select the feature that represents the characteristics of the input images. The selected features are applied in the MSVM method to represent in high dimension and classify Alzheimer’s. The DE-MSVM method has accuracy of 98.13% in the axial slice, and the existing whale optimization with MSVM has 95.23% accuracy.
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