利用非负矩阵因式分解实现基于解剖部位的回归。

Swapna Joshi, S Karthikeyan, B S Manjunath, Scott Grafton, Kent A Kiehl
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引用次数: 0

摘要

非负矩阵因式分解(NMF)是一种基于局部的无监督学习的优秀工具,但当一个整体的局部遵循特定模式时,NMF 就会失效。分析这种局部变化对研究解剖转换尤为重要。我们提出了一种监督方法,将回归约束纳入 NMF 框架,并学习基础图像中变化最大的部分,称为基于回归的 NMF (RNMF)。通过学习数据所在的输入流形空间的分布,该算法对异常值具有鲁棒性。我们的主要目标之一是实现良好的区域定位。通过在因式分解基中加入梯度平滑和独立性约束,可以捕捉到连续的局部区域。我们将这一技术应用于合成数据集和不同年龄受试者的磁共振成像脑结构图像。RNMF 发现的局部区域预计会随着年龄的增长而发生很大变化,这些区域会在其重要基础中得到体现,与其他统计回归和降维技术相比,RNMF 的性能也是最好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Anatomical Parts-Based Regression Using Non-Negative Matrix Factorization.

Anatomical Parts-Based Regression Using Non-Negative Matrix Factorization.

Anatomical Parts-Based Regression Using Non-Negative Matrix Factorization.

Anatomical Parts-Based Regression Using Non-Negative Matrix Factorization.

Non-negative matrix factorization (NMF) is an excellent tool for unsupervised parts-based learning, but proves to be ineffective when parts of a whole follow a specific pattern. Analyzing such local changes is particularly important when studying anatomical transformations. We propose a supervised method that incorporates a regression constraint into the NMF framework and learns maximally changing parts in the basis images, called Regression based NMF (RNMF). The algorithm is made robust against outliers by learning the distribution of the input manifold space, where the data resides. One of our main goals is to achieve good region localization. By incorporating a gradient smoothing and independence constraint into the factorized bases, contiguous local regions are captured. We apply our technique to a synthetic dataset and structural MRI brain images of subjects with varying ages. RNMF finds the localized regions which are expected to be highly changing over age to be manifested in its significant basis and it also achieves the best performance compared to other statistical regression and dimensionality reduction techniques.

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