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用于动脉粥样硬化诊断的拉曼光谱:使用神经网络的快速分析

Raman spectroscopy for diagnosis of atherosclerosis: a rapid analysis using neural networks.

作者信息

de Paula Alderico R, Sathaiah Sokki

机构信息

Group of Biomedical Engineering, Institute for Research and Development-IP&D, University of Vale do Paraíba-UNIVAP, Av Shishima Hifumi 2911, CEP: 12244-000, São José dos Campos, SP, Brazil.

出版信息

Med Eng Phys. 2005 Apr;27(3):237-44. doi: 10.1016/j.medengphy.2004.10.007.

Abstract

Near-infrared Raman spectroscopy (NIRS) is one of the novel techniques that has a potential for in vivo diagnosis of atherosclerosis in human arteries. For such real time clinical applications, a rapid collection and analysis of the data is needed. One of the major problems with the fast data collection is that the noise generated by the detector has the same level as the Raman signal from the tissue, which makes the analysis difficult. In this work, NIRS measurements have been carried out on a total of 60 samples from human coronary arteries. Raman spectral data with the correlated histopathological analysis have been used as a basis to stimulate the cases of severe noise conditions. The main objective of this paper is the comparison of different processing algorithms that have been developed based on either wavelet transformation or principal component analysis for compressing the Raman spectral vectors and a rapid data classification based on different neural network architectures. The developed algorithms found to provide promising diagnosis results with classification errors smaller than 5%, even in the cases of Raman data with collection times as small as 20 ms. It has been concluded that the developed algorithms would be very much useful in the development of Raman spectroscopy systems for in vivo biological applications.

摘要

近红外拉曼光谱(NIRS)是一种具有在人体动脉中对动脉粥样硬化进行体内诊断潜力的新技术。对于此类实时临床应用,需要快速收集和分析数据。快速数据收集的主要问题之一是探测器产生的噪声与来自组织的拉曼信号处于相同水平,这使得分析变得困难。在这项工作中,对总共60个人类冠状动脉样本进行了近红外拉曼光谱测量。具有相关组织病理学分析的拉曼光谱数据已被用作模拟严重噪声条件情况的基础。本文的主要目的是比较基于小波变换或主成分分析开发的不同处理算法,这些算法用于压缩拉曼光谱向量以及基于不同神经网络架构的快速数据分类。所开发的算法被发现即使在采集时间短至20毫秒的拉曼数据情况下,也能提供有前景的诊断结果,分类误差小于5%。得出的结论是,所开发的算法在用于体内生物应用的拉曼光谱系统的开发中将非常有用。

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