基于盲源分离的心血管组织多光谱图像分析

J. Galeano, S. Perez, Deivid Botina, J. Garzon
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引用次数: 0

摘要

本文介绍了利用盲源分离方法对心血管组织多光谱图像的主要形态成分进行分解。评估后的图像是用两种系统获得的:一种基于共聚焦配置,另一种基于干涉滤光片。所实现的源分离算法基于乘法系数上传和主成分分析(PCA)技术。目标是将给定的多光谱图像表示为不同分量的加权和。所得的加权系数用于量化给定多光谱图像中主要成分的含量。该方法在心血管牛组织上得到了验证。结果表明,主成分分析不仅可以减少图像,而且可以提高图像的对比度。这一事实有助于更好地确定组织的结构。此外,应用NMF的结果表明,该方法允许量化构成心血管组织的主要发色团的地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of mutli-spectral images from cardiovascular tissue by means of blind source separation methods
This article presents the use of blind source separation methods for the decomposition of cardiovascular tissue multi-spectral images in its main morphological components. The evaluated images were acquired with two kinds of systems: one based in a confocal configuration and another based in interference filters. The implemented source separation algorithms are based on a multiplicative coefficient upload and on Principal Component Analysis (PCA) techniques. The goal is to represent a given multi-spectral image as the weighted sum of different components. The resulting weighted coefficients are used to quantify the content of the main components in a given multi-spectral image. The methodology is validated on cardiovascular bovine tissue. The results show that PCA not only allows image reduction but also an increase in the image contrast. This fact allows for a better determination of the tissue's structure. Also, the result of applying NMF shows that the method allows for maps that quantify the principal chromophores that compose cardiovascular tissue.
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