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Optical biopsy using fluorescence spectroscopy for prostate cancer diagnosis

机译:使用荧光光谱进行前列腺癌诊断的光学活组织检查

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摘要

Native fluorescence spectra are acquired from fresh normal and cancerous human prostate tissues. The fluorescence data are analyzed using a multivariate analysis algorithm such as non-negative matrix factorization. The nonnegative spectral components are retrieved and attributed to the native fluorophores such as collagen, reduced nicotinamide adenine dinucleotide (NADH), and flavin adenine dinucleotide (FAD) in tissue. The retrieved weights of the components, e.g. NADH and FAD are used to estimate the relative concentrations of the native fluorophores and the redox ratio. A machine learning algorithm such as support vector machine (SVM) is used for classification to distinguish normal and cancerous tissue samples based on either the relative concentrations of NADH and FAD or the redox ratio alone. The classification performance is shown based on statistical measures such as sensitivity, specificity, and accuracy, along with the area under receiver operating characteristic (ROC) curve. A cross validation method such as leave-one-out is used to evaluate the predictive performance of the SVM classifier to avoid bias due to overfitting.
机译:天然荧光光谱是从新鲜正常和癌人前列腺组织获取。荧光数据是使用多变量分析算法,如非负矩阵分解进行分析。非负频谱分量被检索并归因于天然荧光团如胶原,还原的烟酰胺腺嘌呤二核苷酸(NADH),黄素和在组织腺嘌呤二核苷酸(FAD)。的组分,例如所检索的权重NADH和FAD被用于估计天然荧光团和氧化还原比的相对浓度。机器学习算法,诸如支持向量机(SVM)是用于分类来区分基于任一NADH的相对浓度和FAD或单独的氧化还原比正常和癌组织样品。分类性能是基于统计测量,如灵敏度,特异性和准确性,与下接收器操作特性(ROC)曲线的区域一起显示。甲交叉验证方法如留一出用于评价的SVM分类器,以避免偏差的预测性能,因为过度拟合。

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