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A Hierarchical Feature and Sample Selection Framework and Its Application for Alzheimer’s Disease Diagnosis

机译:分层特征和样本选择框架及其在阿尔茨海默氏病诊断中的应用

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摘要

Classification is one of the most important tasks in machine learning. Due to feature redundancy or outliers in samples, using all available data for training a classifier may be suboptimal. For example, the Alzheimer’s disease (AD) is correlated with certain brain regions or single nucleotide polymorphisms (SNPs), and identification of relevant features is critical for computer-aided diagnosis. Many existing methods first select features from structural magnetic resonance imaging (MRI) or SNPs and then use those features to build the classifier. However, with the presence of many redundant features, the most discriminative features are difficult to be identified in a single step. Thus, we formulate a hierarchical feature and sample selection framework to gradually select informative features and discard ambiguous samples in multiple steps for improved classifier learning. To positively guide the data manifold preservation process, we utilize both labeled and unlabeled data during training, making our method semi-supervised. For validation, we conduct experiments on AD diagnosis by selecting mutually informative features from both MRI and SNP, and using the most discriminative samples for training. The superior classification results demonstrate the effectiveness of our approach, as compared with the rivals.
机译:分类是机器学习中最重要的任务之一。由于样本中的特征冗余或离群值,将所有可用数据用于训练分类器可能不是最优的。例如,阿尔茨海默氏病(AD)与某些大脑区域或单核苷酸多态性(SNP)相关,而相关特征的识别对于计算机辅助诊断至关重要。许多现有方法首先从结构磁共振成像(MRI)或SNP中选择特征,然后使用这些特征构建分类器。但是,由于存在许多冗余功能,很难在一个步骤中识别出最具区别性的功能。因此,我们制定了分层的特征和样本选择框架,以逐步选择信息特征,并分多个步骤丢弃不明确的样本,以提高分类器学习的效率。为了积极指导数据多方面的保存过程,我们在训练过程中同时使用了标记和未标记的数据,从而使我们的方法处于半监督状态。为了进行验证,我们通过从MRI和SNP中选择互有信息的特征并使用最具区分性的样本进行训练来进行AD诊断实验。优异的分类结果表明,与竞争对手相比,我们的方法是有效的。

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