作者
Deepti Pachauri, Chris Hinrichs, Moo K Chung, Sterling C Johnson, Vikas Singh
发表日期
2011/4/29
期刊
IEEE transactions on medical imaging
卷号
30
期号
10
页码范围
1760-1770
出版商
IEEE
简介
Alzheimer's disease (AD) research has recently witnessed a great deal of activity focused on developing new statistical learning tools for automated inference using imaging data. The workhorse for many of these techniques is the support vector machine (SVM) framework (or more generally kernel-based methods). Most of these require, as a first step, specification of a kernel matrix K between input examples (i.e., images). The inner product between images I i and I j in a feature space can generally be written in closed form and so it is convenient to treat K as “given.” However, in certain neuroimaging applications such an assumption becomes problematic. As an example, it is rather challenging to provide a scalar measure of similarity between two instances of highly attributed data such as cortical thickness measures on cortical surfaces. Note that cortical thickness is known to be discriminative for neurological …
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D Pachauri, C Hinrichs, MK Chung, SC Johnson… - IEEE transactions on medical imaging, 2011