Raman spectral classification of atherosclerosis using neural networks and discriminant analysis

A. R. de Paula, S. Sathaiah
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引用次数: 3

Abstract

Raman spectroscopy is a powerful non-destructive technique and has a high potential for in vivo diagnosis applications of atherosclerotic plaques 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 rapid data collection is that the noise generated by the detector (even with one of the most advanced versions) has the same level as the Raman signal from the tissue which makes the analysis difficult. In this paper, different processing techniques for compressing the spectrum vector collected with very short time scales (/spl sim/msec) and its rapid classification methods were analyzed. The accomplished results demonstrated that the classification error was smaller than 5%, even with the data collection times as low as 50 msec, when the wavelet transformation was utilized to compress the input vector and the classification methods based on either neural network or discriminant analysis were applied.
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基于神经网络和判别分析的动脉粥样硬化拉曼光谱分类
拉曼光谱是一种强大的非破坏性技术,在人体动脉粥样硬化斑块的体内诊断中具有很高的应用潜力。对于这种实时临床应用,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(即使是最先进的探测器之一)与来自组织的拉曼信号具有相同的水平,这使得分析变得困难。本文分析了极短时间尺度(/spl sim/msec)采集的光谱矢量的不同压缩处理技术及其快速分类方法。实验结果表明,使用小波变换压缩输入向量,采用基于神经网络或判别分析的分类方法,即使数据采集时间低至50 msec,分类误差也小于5%。
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