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Efficient and Automatic Subspace Relevance Determination via Multiple Kernel Learning for High-Dimensional Neuroimaging Data

机译:通过多核学习对高维神经影像数据进行高效且自动的子空间相关性确定

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Alzheimer's disease is a major cause of dementia. Its pathology induces complex spatial patterns of brain atrophy that evolve as the disease progresses. The diagnosis requires accurate biomarkers that are sensitive to disease stages. Probabilistic biomarkers naturally support the interpretation of decisions and evaluation of uncertainty associated with them. We obtain probabilistic biomarkers via Gaussian Processes, which also offer flexible means to accomplish Multiple Kernel Learning. Exploiting this flexibility, we propose a novel solution, Multiple Kernel Learning for Automatic Subspace Relevance Determination, to tackle the challenges of working with high-dimensional neuroimaging data. The proposed Gaussian Process models are competitive with or better than the well-known Support Vector Machine in terms of classification performance even in the cases of single kernel learning. Also, our method improves the capability of the Gaussian Process models and their inter-pretability in terms of the known anatomical correlates of the disease.
机译:阿尔茨海默氏病是痴呆症的主要原因。其病理学引起脑萎缩的复杂空间格局,随着疾病的发展而发展。诊断需要对疾病阶段敏感的准确生物标记。概率生物标志物自然支持决策的解释和与之相关的不确定性评估。我们通过高斯过程获得概率生物标志物,这也提供了完成多核学习的灵活方法。利用这种灵活性,我们提出了一种新颖的解决方案,即用于自动子空间相关性确定的多核学习,以解决使用高维神经影像数据的挑战。就分类性能而言,即使在单核学习的情况下,提出的高斯过程模型也可以与知名的支持向量机竞争甚至更好。同样,根据疾病的已知解剖学关联,我们的方法提高了高斯过程模型的功能及其可解释性。

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