首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Sparse Principal Component Analysis in Medical Shape Modeling
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Sparse Principal Component Analysis in Medical Shape Modeling

机译:医学形状建模中的稀疏主成分分析

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Principal component analysis (PCA) is a widely used tool in medical image analysis for data reduction, model building, and data understanding and exploration. While PCA is a holistic approach where each new variable is a linear combination of all original variables, sparse PCA (SPCA) aims at producing easily interpreted models through sparse loadings, i.e. each new variable is a linear combination of a subset of the original variables. One of the aims of using SPCA is the possible separation of the results into isolated and easily identifiable effects. This article introduces SPCA for shape analysis in medicine. Results for three different data sets are given in relation to standard PCA and sparse PCA by simple thresholding of small loadings. Focus is on a recent algorithm for computing sparse principal components, but a review of other approaches is supplied as well. The SPCA algorithm has been implemented using Matlab and is available for download. The general behavior of the algorithm is investigated, and strengths and weaknesses are discussed. The original report on the SPCA algorithm argues that the ordering of modes is not an issue. We disagree on this point and propose several approaches to establish sensible orderings. A method that orders modes by decreasing variance and maximizes the sum of variances for all modes is presented and investigated in detail.
机译:主成分分析(PCA)是医学图像分析中广泛使用的工具,用于数据缩减,模型构建以及数据理解和探索。 PCA是一种整体方法,其中每个新变量都是所有原始变量的线性组合,而稀疏PCA(SPCA)旨在通过稀疏加载来生成易于解释的模型,即每个新变量都是原始变量的子集的线性组合。使用SPCA的目的之一是可能将结果分离为孤立且易于识别的效果。本文介绍了用于医学形状分析的SPCA。通过简单的小负载阈值,给出了与标准PCA和稀疏PCA有关的三个不同数据集的结果。重点是用于计算稀疏主成分的最新算法,但也提供了对其他方法的综述。 SPCA算法已经使用Matlab实现,可以下载。研究了该算法的一般行为,并讨论了优点和缺点。关于SPCA算法的原始报告认为,模式的顺序不是问题。我们不同意这一点,并提出了几种建立合理排序的方法。提出并详细研究了一种通过减少方差对模式进行排序并最大化所有模式的方差之和的方法。

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