Lieber Chad A, Majumder Shovan K, Billheimer Dean, Ellis Darrel L, Mahadevan-Jansen Anita
Vanderbilt University, Department of Biomedical Engineering, Nashville, Tennessee 37235, USA.
J Biomed Opt. 2008 Mar-Apr;13(2):024013. doi: 10.1117/1.2899155.
We investigate the potential of near-infrared Raman microspectroscopy to differentiate between normal and malignant skin lesions. Thirty-nine skin tissue samples consisting of normal, basal cell carcinoma (BCC), squamous cell carcinoma (SCC), and melanoma from 39 patients were investigated. Raman spectra were recorded at the surface and at 20-microm intervals below the surface for each sample, down to a depth of at least 100 microm. Data reduction algorithms based on the nonlinear maximum representation and discrimination feature (MRDF) and discriminant algorithms using sparse multinomial logistic regression (SMLR) were developed for classification of the Raman spectra relative to histopathology. The tissue Raman spectra were classified into pathological states with a maximal overall sensitivity and specificity for disease of 100%. These results indicate the potential of using Raman microspectroscopy for skin cancer detection and provide a clear rationale for future clinical studies.
我们研究了近红外拉曼光谱显微镜区分正常和恶性皮肤病变的潜力。对来自39名患者的39个皮肤组织样本进行了研究,这些样本包括正常组织、基底细胞癌(BCC)、鳞状细胞癌(SCC)和黑色素瘤。对每个样本在表面以及表面以下每隔20微米处记录拉曼光谱,直至至少100微米的深度。开发了基于非线性最大表征和判别特征(MRDF)的数据约简算法以及使用稀疏多项逻辑回归(SMLR)的判别算法,用于根据组织病理学对拉曼光谱进行分类。组织拉曼光谱被分类为病理状态,对疾病的总体最大敏感性和特异性为100%。这些结果表明了使用拉曼光谱显微镜进行皮肤癌检测的潜力,并为未来的临床研究提供了明确的理论依据。