Banerjee Satarupa, Pal Mousumi, Chakrabarty Jitamanyu, Petibois Cyril, Paul Ranjan Rashmi, Giri Amita, Chatterjee Jyotirmoy
School of Medical Science and Technology, Indian Institute of Technology, Kharagpur, 721302, India.
Department of Oral and Maxillofacial Pathology, Guru Nanak Institute of Dental Science and Research, 157/F Nilganj Road, Panihati, Kolkata, 700 114, India.
Anal Bioanal Chem. 2015 Oct;407(26):7935-43. doi: 10.1007/s00216-015-8960-3. Epub 2015 Sep 5.
In search of specific label-free biomarkers for differentiation of two oral lesions, namely oral leukoplakia (OLK) and oral squamous-cell carcinoma (OSCC), Fourier-transform infrared (FTIR) spectroscopy was performed on paraffin-embedded tissue sections from 47 human subjects (eight normal (NOM), 16 OLK, and 23 OSCC). Difference between mean spectra (DBMS), Mann-Whitney's U test, and forward feature selection (FFS) techniques were used for optimising spectral-marker selection. Classification of diseases was performed with linear and quadratic support vector machine (SVM) at 10-fold cross-validation, using different combinations of spectral features. It was observed that six features obtained through FFS enabled differentiation of NOM and OSCC tissue (1782, 1713, 1665, 1545, 1409, and 1161 cm(-1)) and were most significant, able to classify OLK and OSCC with 81.3 % sensitivity, 95.7 % specificity, and 89.7 % overall accuracy. The 43 spectral markers extracted through Mann-Whitney's U Test were the least significant when quadratic SVM was used. Considering the high sensitivity and specificity of the FFS technique, extracting only six spectral biomarkers was thus most useful for diagnosis of OLK and OSCC, and to overcome inter and intra-observer variability experienced in diagnostic best-practice histopathological procedure. By considering the biochemical assignment of these six spectral signatures, this work also revealed altered glycogen and keratin content in histological sections which could able to discriminate OLK and OSCC. The method was validated through spectral selection by the DBMS technique. Thus this method has potential for diagnostic cost minimisation for oral lesions by label-free biomarker identification.
为寻找用于区分两种口腔病变即口腔白斑(OLK)和口腔鳞状细胞癌(OSCC)的特定无标记生物标志物,对47名人类受试者(8名正常(NOM)、16名OLK和23名OSCC)的石蜡包埋组织切片进行了傅里叶变换红外(FTIR)光谱分析。使用平均光谱差异(DBMS)、曼 - 惠特尼U检验和前向特征选择(FFS)技术来优化光谱标志物的选择。在10折交叉验证中,使用不同的光谱特征组合,通过线性和二次支持向量机(SVM)对疾病进行分类。结果发现,通过FFS获得的六个特征(1782、1713、1665、1545、1409和1161 cm⁻¹)能够区分NOM和OSCC组织,且最为显著,能够以81.3%的灵敏度、95.7%的特异性和89.7%的总体准确率对OLK和OSCC进行分类。当使用二次SVM时,通过曼 - 惠特尼U检验提取的43个光谱标志物最不显著。考虑到FFS技术的高灵敏度和特异性,仅提取六个光谱生物标志物对于OLK和OSCC的诊断最为有用,并且能够克服诊断最佳实践组织病理学程序中观察者间和观察者内的变异性。通过考虑这六个光谱特征的生化归属,这项工作还揭示了组织学切片中糖原和角蛋白含量的改变,这能够区分OLK和OSCC。该方法通过DBMS技术进行光谱选择得到了验证。因此,这种方法具有通过无标记生物标志物识别将口腔病变诊断成本降至最低的潜力。