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Discriminative Learning Approach Based on Flexible Mixture Model for Medical Data Categorization and Recognition

机译:基于灵活混合模型的医学数据分类与识别辨识性学习方法

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摘要

In this paper, we propose a novel hybrid discriminative learning approach based on shifted-scaled Dirichlet mixture model (SSDMM) and Support Vector Machines (SVMs) to address some challenging problems of medical data categorization and recognition. The main goal is to capture accurately the intrinsic nature of biomedical images by considering the desirable properties of both generative and discriminative models. To achieve this objective, we propose to derive new data-based SVM kernels generated from the developed mixture model SSDMM. The proposed approach includes the following steps: the extraction of robust local descriptors, the learning of the developed mixture model via the expectation–maximization (EM) algorithm, and finally the building of three SVM kernels for data categorization and classification. The potential of the implemented framework is illustrated through two challenging problems that concern the categorization of retinal images into normal or diabetic cases and the recognition of lung diseases in chest X-rays (CXR) images. The obtained results demonstrate the merits of our hybrid approach as compared to other methods.
机译:在本文中,我们提出了一种基于移动缩放狄利克雷混合模型(SSDMM)和支持向量机(SVM)的一种新颖的混合判别学习方法来解决医疗数据分类和识别的一些挑战性的问题。其主要目标是通过考虑生成和判别模型的理想特性准确地捕捉生物医学图像的内在本质。为了实现这一目标,我们建议派生出新的数据基于支持向量机的内核从发达的混合模型SSDMM产生。所提出的方法包括以下步骤:强大的局部描述符的提取,通过期望最大化(EM)算法的开发混合模型的学习,和三个SVM内核进行数据分类和分级最后的建设。所实现的框架的电势被通过关注视网膜图像的分类为正常或糖尿病病例和胸部X射线的识别肺部疾病(CXR)图像的两个具有挑战性的问题说明。相比于其他方法得到的结果证明我们的混合方法的优点。

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