磁共振图像分类使用非负矩阵分解和集成树学习技术

J. Ramírez, J. Górriz, Francisco J. Martínez-Murcia, F. Segovia, D. Salas-González
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引用次数: 2

摘要

提出了一种基于非负矩阵分解(NNMF)和集成树学习方法的磁共振图像分类技术。该系统包括一个特征提取过程,该过程将NNMF应用于许多皮层下结构的灰质(GM) MRI一阶统计量,以及决策树集合的学习过程。通过提升和套袋的方法对集合进行训练,同时使用k-fold交叉验证,根据分类误差和接收的工作特征曲线(ROC)对其性能进行比较。结果表明,NNMF非常适合于在不影响集成性能的情况下降低输入数据的维数。在收敛速度和最小残余损失方面,通过bagging获得了最佳性能,特别是对于高复杂性的分类任务(即NC与MCI和MCI与AD)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Magnetic resonance image classification using nonnegative matrix factorization and ensemble tree learning techniques
This paper shows a magnetic resonance image (MRI) classification technique based on nonnegative matrix factorization (NNMF) and ensemble tree learning methods. The system consists of a feature extraction process that applies NNMF to gray matter (GM) MRI first-order statistics of a number of sub-cortical structures and a learning process of an ensemble of decision trees. The ensembles are trained by means of boosting and bagging while their performance is compared in terms of the classification error and the received operating characteristics curve (ROC) using k-fold cross validation. The results show that NNMF is well suited for reducing the dimensionality of the input data without a penalty on the performance of the ensembles. The best performance was obtained by bagging in terms of convergence rate and minimum residual loss, especially for high complexity classification tasks (i.e. NC vs. MCI and MCI vs. AD.
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