Zhai Wei, Xiang Yu-Hong, Dai Yin-Mei, Zhang Jia-Jin, Zhang Zhuo-Yong
Department of Chemistry, Capital Normal University, Beijing 100048, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2011 Apr;31(4):932-6.
Near-infrared spectroscopy combined with chemometrics methods for diagnosis of cancer has been reported in literatures. In our study, the NIR spectra of 77 specimens of different physiological stages of endometrium were collected. Spectral data were pretreated firstly by multiplicative scatter correction (MSC), orthogonal signal correction (OSC), and both of them, respectively, and then by SG smoothing. Latin partition method was used to select 3/4 samples as a training set, and the other 1/4 samples for test set. Support vector machine (SVM) model was built for classification, and the classification results was compared with that of partial least squares (PLS) model based on the same pretreatment methods. Samples of malignant, hyperplasia and normal endometrium were classified better by SVM (classification accuracy was 92%) than PLS (classification accuracy was 90%). The results suggested that classification accuracy was affected by pretreatment methods and models. SVM combined with endometrial tissue near infrared spectroscopy is expected to develop into a new approach to tumor diagnosis.
文献报道了近红外光谱结合化学计量学方法用于癌症诊断。在我们的研究中,收集了77份处于不同生理阶段的子宫内膜标本的近红外光谱。光谱数据首先分别通过多元散射校正(MSC)、正交信号校正(OSC)以及二者结合进行预处理,然后进行Savitzky-Golay平滑处理。采用拉丁划分法选取3/4的样本作为训练集,另外1/4的样本作为测试集。构建支持向量机(SVM)模型进行分类,并将分类结果与基于相同预处理方法的偏最小二乘法(PLS)模型的结果进行比较。与PLS(分类准确率为90%)相比,SVM对恶性、增生和正常子宫内膜样本的分类效果更好(分类准确率为92%)。结果表明,分类准确率受预处理方法和模型的影响。支持向量机结合子宫内膜组织近红外光谱有望发展成为一种肿瘤诊断的新方法。