首页> 外文会议>Applied Sciences in Biomedical and Communication Technologies, 2009. ISABEL 2009 >Improved skin xerosis detection by combining extracted features from Raman spectra
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Improved skin xerosis detection by combining extracted features from Raman spectra

机译:通过结合拉曼光谱中提取的特征来改善皮肤干燥症的检测

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In this paper, we studied skin roughness, so called skin xerosis, with Raman Spectroscopy technique. The main goal of this study was to determine the features from the Raman spectral data associated with skin xerosis and finally detecting Xerosis from normal skin by using an optimal classification method. The Raman spectral dataset was constructed from two classes of spectral data, 70 spectra of normal intact skin and 70 spectra of irritated rough skin. Roughness irritation was done by sodium dodecyl sulfate(SDS) non-ionic surfactant applied once a day on rat skin within a week. The spectra were obtained from two rats from legs and dorsal anatomical regions. Some features related to specific bond vibrations of water, lipid and protein structures were extracted from the spectra. T-test statistical analysis was then utilized to determine if the specified feature could discriminate the two classes of spectral data. The reported efficient features from t-test stage were then applied to well-known classification methods such as LDA and KNN for classification. Classification performance was calculated using k-fold cross validation method for selecting the optimum classifier and features. The statistical analysis of water content and lipid structures between two classes showed a significant difference by p-value0.1, whereas alterations in features related to proteins were not remarkable between two classes of data. These results suggest that water content and lipid structures are the proper features for skin roughness detection. Classifiers performance results propose that water content feature is the most altered feature amongst the two classes.
机译:在本文中,我们使用拉曼光谱技术研究了皮肤粗糙度,即所谓的皮肤干燥症。这项研究的主要目的是从与皮肤干燥症相关的拉曼光谱数据确定特征,并最终通过使用最佳分类方法从正常皮肤中检测干燥症。拉曼光谱数据集由两类光谱数据构成:70个正常完整皮肤的光谱和70个受刺激的粗糙皮肤的光谱。用十二烷基硫酸钠(SDS)非离子表面活性剂刺激皮肤粗糙,每天一次在一周内施用在大鼠皮肤上。光谱是从两只大鼠的腿和背部解剖区域获得的。从光谱中提取了一些与水,脂质和蛋白质结构的特定键振动有关的特征。然后使用T检验统计分析来确定指定特征是否可以区分两类光谱数据。然后将报告的t检验阶段的有效特征应用于著名的分类方法,例如LDA和KNN进行分类。使用k倍交叉验证方法计算分类性能,以选择最佳分类器和特征。两类之间的水含量和脂质结构的统计分析表明,p值<< 0.1时有显着差异,而两类数据之间与蛋白质相关的特征变化并不明显。这些结果表明水含量和脂质结构是皮肤粗糙度检测的适当特征。分类器的性能结果表明,含水量特征是两个类别中变化最大的特征。

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