基于共聚焦拉曼光谱波段法的皮肤癌检测增强

A. Park, In-Wook Jung, Seong-Joon Back, J. Y. Kim, Daejung Shin
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引用次数: 2

摘要

在本研究中,我们研究了基于最大后验概率、模糊算法和支持向量机的共聚焦拉曼光谱皮肤癌分类方法。预处理步骤包括用最小最大值法进行数据归一化和用主成分分析法进行降维。为了提高分类性能,我们将拉曼光谱分为三个重要的蛋白质波段,即由正常和BCC组织两个波段组成的Amide I模式和Amide III模式。所有的特征都是独立提取的。在支持向量机的情况下,216个光谱的分类结果的正确率为97.2%,这充分证明了三波段方法对皮肤癌检测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhancement on the Detection of Skin Cancer Based on Band Approach of Confocal Raman Spectra
In this study, we investigated skin cancer classification methods based on confocal Raman spectroscopy using maximum a posterior probability, fuzzy algorithm and support vector machine (SVM). The preprocessing steps were consisted of data normalization with minmax method and dimension reduction with principal components analysis. To enhance the classification performance, we divided Raman spectra into three significant protein bands, i.e., Amide I mode composed of two bands, normal and BCC tissue and Amide III mode. All the features were extracted independently. Classification results involving 216 spectra showed 97.2 % true classification in case of SVM, which is an evident proof of the effectiveness of three band approach for skin cancer detection.
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