Hierarchical Ensemble Learning for Alzheimer's Disease Classification

Ruyue Wang, Hanhui Li, Rushi Lan, S. Luo, Xiaonan Luo
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引用次数: 3

Abstract

In this paper, we propose to tackle the problem of Alzheimer's Disease (AD) classification by a novel Hierarchical Ensemble Learning (HEL) framework. Given an MRI image of a subject, our method will divide it into multiple slices, and generate the classification result in a coarse-to-fine way: First, for each slice, multiple pre-trained deep neural networks are adopted to extract features, and classiflers trained with each type of these features are used to generate the coarse predictions; Second, we employ ensemble learning on the coarse results to generate a refined result for each slice; At last, the given subject is classified based on the refined results aggregated from all slices. Using pre-trained networks for feature extraction can reduce the computational costs of training significantly, and the ensemble of multiple features and predicted results from slices can increase the classification accuracy effectively. Hence, our method can achieve the balance between efficiency and effectiveness. Experimental results show that the HEL framework can obtain notable performance gains with respect to various features and classifiers.
分层集成学习在阿尔茨海默病分类中的应用
在本文中,我们提出了一个新的层次集成学习(HEL)框架来解决阿尔茨海默病(AD)的分类问题。给定受试者的MRI图像,我们的方法将其分成多个切片,并以粗到精的方式生成分类结果:首先,对于每个切片,使用多个预训练的深度神经网络提取特征,并使用每种特征训练的分类器生成粗预测;其次,我们对粗糙的结果采用集成学习,为每个切片生成一个精细的结果;最后,根据所有切片汇总的精细化结果对给定主题进行分类。使用预训练的网络进行特征提取可以显著减少训练的计算成本,并且将多个特征与切片预测结果进行集成可以有效地提高分类精度。因此,我们的方法可以在效率和效果之间取得平衡。实验结果表明,HEL框架可以在不同的特征和分类器上获得显著的性能提升。
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