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Breast cancer diagnosis from fluorescence spectroscopy using support vector machine

机译:乳腺癌诊断荧光光谱使用支持向量机

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A novel support vector machine (SVM) classifier incorporating the complexity of fluorescent spectral data is designed to reliably differentiate normal and malignant human breast cancer tissues. Analysis has been carried out with parallel and perpendicularly polarized fluorescence data using 36 normal and 36 cancerous tissue samples. In order to incorporate the complexity of fluorescence spectral profile into a SVM design, the curvature of phase space trajectory is extracted as a useful complexity feature. We found that the fluorescence intensity peaks at 541nm-620nm as well as the complexity features at 621nm-700nm are important discriminating features. By incorporating both features in SVM design, we can improve both sensitivity and specificity of the classifier.
机译:一种新的支持向量机(SVM)分类器,其包含荧光光谱数据的复杂性的设计,以可靠地区分正常和恶性人乳腺癌组织。 使用36正常和36个癌组织样品的平行和垂直极化的荧光数据进行分析。 为了将荧光光谱分布的复杂性纳入SVM设计中,相位空间轨迹的曲率被提取为有用的复杂性特征。 我们发现,541nm-620nm的荧光强度峰以及621nm-700nm处的复杂性特征是重要的辨别特征。 通过在SVM设计中结合两个功能,我们可以提高分类器的灵敏度和特异性。

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