Multivariate Effect Ranking via Adaptive Sparse PLS

J. Monteiro, A. Rao, J. Ashburner, J. Shawe-Taylor, J. Miranda
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引用次数: 6

Abstract

Unsupervised learning approaches, such as Sparse Partial Least Squares (SPLS), may provide useful insights into the brain mechanisms by finding relationships between two sets of variables (i.e. Views) from the same subjects. The algorithm outputs two sets of paired weight vectors, where each pair expresses an "effect" between both views. However, each effect can be described by a different number of variables. In this paper, we propose a novel approach to find multivariate associations between combinations of clinical/behavioural variables and brain voxels/regions which provides an unique solution with different levels of sparsity per weight vector pair. The effects described by the weight vector pairs are ranked by how much data covariance they explain. The proposed method was able to find statistically significant effects or relationships in a dementia dataset between clinical/demographic information and brain scans. Its adaptive nature allowed not only to determine an optimal sparse solution, but also provided the flexibility to select the adequate number of clinical/demographic variables and voxels to describe each effect, which enabled it to distinguish the effects associated with age from the ones associated with dementia.
基于自适应稀疏PLS的多变量效应排序
无监督学习方法,如稀疏偏最小二乘法(SPLS),可以通过发现来自同一受试者的两组变量(即视图)之间的关系,为大脑机制提供有用的见解。该算法输出两组成对的权重向量,其中每一对表示两个视图之间的“效果”。然而,每种效应都可以用不同数量的变量来描述。在本文中,我们提出了一种新的方法来寻找临床/行为变量与脑体素/区域组合之间的多变量关联,该方法提供了每个权重向量对具有不同稀疏度的独特解决方案。权重向量对所描述的效果根据它们解释的数据协方差的多少进行排序。所提出的方法能够在痴呆症数据集中发现临床/人口统计信息与脑部扫描之间的统计学显著影响或关系。它的适应性不仅允许确定最优的稀疏解决方案,而且还提供了选择足够数量的临床/人口变量和体素来描述每种效应的灵活性,这使得它能够区分与年龄相关的效应和与痴呆相关的效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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