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首页> 外文期刊>Journal of spectroscopy >Raman Microspectral Study and Classification of the Pathological Evolution of Breast Cancer Using Both Principal Component Analysis-Linear Discriminant Analysis and Principal Component Analysis-Support Vector Machine
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Raman Microspectral Study and Classification of the Pathological Evolution of Breast Cancer Using Both Principal Component Analysis-Linear Discriminant Analysis and Principal Component Analysis-Support Vector Machine

机译:拉曼微渗流分辨率使用主成分分析 - 线性判别分析和主成分分析 - 支持向量机使用乳腺癌病理演化的研究和分类

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To facilitate the enhanced reliability of Raman-based tumor detection and analytical methodologies, an ex vivo Raman spectral investigation was conducted to identify distinct compositional information of healthy (H), ductal carcinoma in situ (DCIS), and invasive ductal carcinoma (IDC). Then, principal component analysis-linear discriminant analysis (PCA-LDA) and principal component analysis-support vector machine (PCA-SVM) models were constructed for distinguishing spectral features among different tissue groups. Spectral analysis highlighted differences in levels of unsaturated and saturated lipids, carotenoids, protein, and nucleic acid between healthy and cancerous tissue and variations in the levels of nucleic acid, protein, and phenylalanine between DCIS and IDC. Both classification models were principal component analysis-linear discriminant analysis to be extremely efficient on discriminating tissue pathological types with 99% accuracy for PCA-LDA and 100%, 100%, and 96.7% for PCA-SVM analysis based on linear kernel, polynomial kernel, and radial basis function (RBF), respectively, while PCA-SVM algorithm greatly simplified the complexity of calculation without sacrificing performance. The present study demonstrates that Raman spectroscopy combined with multivariate analysis technology has considerable potential for improving the efficiency and performance of breast cancer diagnosis.
机译:为了促进基于拉曼的肿瘤检测和分析方法的增强可靠性,进行了exVivo拉曼光谱研究以确定健康(H),原位(DCIS),侵袭性导管癌(IDC)的不同组成信息。然后,构建主成分分析 - 线性判别分析(PCA-LDA)和主成分分析 - 支持向量机(PCA-SVM)模型以区分不同组织组的光谱特征。光谱分析突出了不饱和和饱和脂质,类胡萝卜素,蛋白质,核酸之间的差异,在健康和癌组织之间的核酸和核酸,蛋白质和DCIC和IDC之间的苯丙氨酸水平的变化。分类模型是主要成分分析 - 线性判别分析,以极为有效地辨别组织病理类型,基于线性内核,多项式内核的PCA-SVM分析为PCA-LDA的99%,100%,100%和96.7%,对PCA-SVM分析具有99%。和径向基函数(RBF)分别,而PCA-SVM算法大大简化了计算的复杂性而不会牺牲性能。本研究表明,拉曼光谱与多变量分析技术联合具有相当大的潜力,可以提高乳腺癌诊断的效率和性能。

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