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首页> 外文期刊>International journal of imaging systems and technology >An improved machine learning technique based on downsized KPCA for Alzheimer's disease classification
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An improved machine learning technique based on downsized KPCA for Alzheimer's disease classification

机译:一种基于小型KPCA的改进的机器学习技术,用于阿尔茨海默氏病的分类

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摘要

Alzheimer's disease (AD), a neurodegenerative disorder, is a very serious illness that cannot be cured, but the early diagnosis allows precautionary measures to be taken. The current used methods to detect Alzheimer's disease are based on tests of cognitive impairment, which does not provide an exact diagnosis before the patient passes a moderate stage of AD. In this article, a novel classifier of brain magnetic resonance images (MRI) based on the new downsized kernel principal component analysis (DKPCA) and multiclass support vector machine (SVM) is proposed. The suggested scheme classifies AD MRIs. First, a multiobjective optimization technique is used to determine the optimal parameter of the kernel function in order to ensure good classification results and to minimize the number of retained principle components simultaneously. The optimal parameter is used to build the optimized DKPCA model. Second, DKPCA is applied to normalized features. Downsized features are then fed to the classifier to output the prediction. To validate the effectiveness of the proposed method, DKPCA was tested using synthetic data to demonstrate its efficiency on dimensionality reduction, then the DKPCA based technique was tested on the OASIS MRI database and the results were satisfactory compared to conventional approaches.
机译:阿尔茨海默氏病(AD)是一种神经退行性疾病,是一种非常严重的疾病,无法治愈,但早期诊断可以采取预防措施。当前用于检测阿尔茨海默氏病的方法是基于认知障碍的测试,在患者通过中度AD之前不能提供确切的诊断。本文提出了一种新的基于新的小型化核主成分分析(DKPCA)和多类支持向量机(SVM)的脑磁共振图像(MRI)分类器。建议的方案对AD MRI进行分类。首先,多目标优化技术用于确定核函数的最佳参数,以确保获得良好的分类结果并同时最小化保留的主成分的数量。最佳参数用于构建优化的DKPCA模型。其次,将DKPCA应用于规范化功能。然后将缩小的特征馈送到分类器以输出预测。为了验证所提出方法的有效性,使用合成数据对DKPCA进行了测试以证明其在降维方面的效率,然后在OASIS MRI数据库上对基于DKPCA的技术进行了测试,与常规方法相比,结果令人满意。

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