Wang Lei, Fan Jin-hai, Guan Zhen-feng, Liu You, Zeng Jin, He Da-lin, Huang Li-qing, Wang Xin-yang, Gong Hui-ling
Department of Urology, No. 1 Affiliated Hospital of Xi' an Jiaotong University, Key Laboratory of Environment and Genes Related to Disease, Ministry of Education, Xi'an 710061, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2012 Jan;32(1):123-6.
The scope of this research lies in diagnosis of bladder cancer through Raman spectra. The spectra of bladder cancer and normal bladder were measured by using laser confocal Raman micro-spectroscopy. Principal component analysis/support vector machines was applied to the spectral dataset to construct diagnostic algorithms, then to detect the accuracy of these algorithms to determine histological diagnosis by leave-one-out cross validation from its Raman spectrum. It was showed that the peak intensity of nucleic acid (782, 1 583 cm(-1)) in bladder cancer and protein (1 061, 1 295, 2 849, 2 881 cm(-1)) in normal bladder increased significantly. Additionally, Principal component analysis (PCA) and support vector machines (SVM) provided an effective tool for differentiating the bladder cancer from normal bladder tissue. Excellent sensitivity (86.7%), specificity (87.5%), positive predictive value (92.9%), and negative predictive value (72. 8%) for the diagnosis of bladder cancer were obtained by leave-one-out cross validation. It was concluded that Raman spectroscopy can be used to accurately identify bladder cancer in vitro, and it suggests the promising potential application of PCA/SVM-based Raman spectroscopy for the diagnosis of bladder cancer.
本研究的范围在于通过拉曼光谱诊断膀胱癌。使用激光共聚焦拉曼显微光谱仪测量膀胱癌和正常膀胱的光谱。将主成分分析/支持向量机应用于光谱数据集以构建诊断算法,然后通过留一法交叉验证从其拉曼光谱检测这些算法确定组织学诊断的准确性。结果表明,膀胱癌中核酸(782、1583 cm⁻¹)的峰强度以及正常膀胱中蛋白质(1061、1295、2849、2881 cm⁻¹)的峰强度显著增加。此外,主成分分析(PCA)和支持向量机(SVM)为区分膀胱癌和正常膀胱组织提供了一种有效工具。通过留一法交叉验证获得了诊断膀胱癌的出色灵敏度(86.7%)、特异性(87.5%)、阳性预测值(92.9%)和阴性预测值(72.8%)。得出的结论是,拉曼光谱可用于在体外准确识别膀胱癌,这表明基于PCA/SVM的拉曼光谱在膀胱癌诊断方面具有广阔的潜在应用前景。