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MKL for Robust Multi-modality AD Classification

机译:MKL用于稳健的多模态AD分类

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We study the problem of classifying mild Alzheimer's disease (AD) subjects from healthy individuals (controls) using multi-modal image data, to facilitate early identification of AD related pathologies. Several recent papers have demonstrated that such classification is possible with MR or PET images, using machine learning methods such as SVM and boosting. These algorithms learn the classifier using one type of image data. However, AD is not well characterized by one imaging modality alone, and analysis is typically performed using several image types - each measuring a different type of structural/functional characteristic. This paper explores the AD classification problem using multiple modalities simultaneously. The difficulty here is to assess the relevance of each modality (which cannot be assumed a priori), as well as to optimize the classifier. To tackle this problem, we utilize and adapt a recently developed idea called Multi-Kernel learning (MKL). Briefly, each imaging modality spawns one (or more kernels) and we simultaneously solve for the kernel weights and a maximum margin classifier. To make the model robust, we propose strategies to suppress the influence of a small subset of outliers on the classifier - this yields an alternative minimization based algorithm for robust MKL. We present promising multi-modal classification experiments on a large dataset of images from the ADNI project.
机译:我们研究使用多模式图像数据对来自健康个体(对照)的轻度阿尔茨海默氏病(AD)受试者进行分类的问题,以促进AD相关病理的早期识别。最近的几篇论文表明,使用机器学习方法(例如SVM和Boosting),可以对MR或PET图像进行这种分类。这些算法使用一种类型的图像数据学习分类器。但是,AD不能仅通过一种成像方式来很好地表征,并且通常使用几种图像类型进行分析-每种图像都测量不同类型的结构/功能特征。本文探讨了同时使用多种模式的广告分类问题。此处的困难是评估每个模态的相关性(不能先验地假定),以及优化分类器。为了解决这个问题,我们利用并适应了最近开发的想法,即多核学习(MKL)。简而言之,每种成像方式都产生一个(或多个)内核,我们同时求解内核权重和最大余量分类器。为了使模型健壮,我们提出了抑制一小部分离群值对分类器的影响的策略-这为健壮的MKL提供了一种基于最小化的替代算法。我们在来自ADNI项目的大型图像数据集上展示了有前途的多模式分类实验。

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