从医学图像中提取判别信息:一种多元线性方法

C. Thomaz, Nelson A. O. Aguiar, Sergio H. A. Oliveira, F. Duran, G. Busatto, D. Gillies, D. Rueckert
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引用次数: 7

摘要

统计判别方法不仅适用于分类,而且适用于鉴定参考组与调查人群之间的差异。在过去的几年里,已经提出了统计方法来分类和分析医学图像的形态和解剖结构。这些技术大多适用于具有特定特征的高维空间,如形状或统计参数图,并且通过单独分析分割结构或对每个特征分别进行假设检验,克服了处理医学图像固有高维的困难。在本文中,我们提出了一个通用的多元线性框架来识别和分析最具判别性的分离两个种群的超平面。目标是同时分析所有强度特征,而不是单独或逐个特征地分析数据的分段版本。该方法的概念和数学上的简单性,其关键步骤是空间归一化,涉及相同的操作,而不考虑实验的复杂性或数据的性质,从而给出易于解释的多元结果。为了证明其性能,我们给出了人工生成数据集和真实医疗数据的实验结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Discriminative Information from Medical Images: A Multivariate Linear Approach
Statistical discrimination methods are suitable not only for classification but also for characterization of differences between a reference group of patterns and the population under investigation. In the last years, statistical methods have been proposed to classify and analyze morphological and anatomical structures of medical images. Most of these techniques work in high-dimensional spaces of particular features such as shapes or statistical parametric maps and have overcome the difficulty of dealing with the inherent high dimensionality of medical images by analyzing segmented structures individually or performing hypothesis tests on each feature separately. In this paper, we present a general multivariate linear framework to identify and analyze the most discriminating hyper-plane separating two populations. The goal is to analyze all the intensity features simultaneously rather than segmented versions of the data separately or feature-by-feature. The conceptual and mathematical simplicity of the approach, which pivotal step is spatial normalization, involves the same operations irrespective of the complexity of the experiment or nature of the data, giving multivariate results that are easy to interpret. To demonstrate its performance we present experimental results on artificially generated data set and real medical data
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