Cals Froukje L J, Koljenović Senada, Hardillo José A, Baatenburg de Jong Robert J, Bakker Schut Tom C, Puppels Gerwin J
Department of Otorhinolaryngology and Head and Neck Surgery, Erasmus MC Cancer Institute, University Medical Center Rotterdam, 's Gravendijkwal 230, 3015 CE Rotterdam, The Netherlands; Center for Optical Diagnostics and Therapy, Department of Dermatology, Erasmus MC Cancer Institute, University Medical Center Rotterdam, Wytemaweg 80, 3015 CN Rotterdam, The Netherlands.
Department of Pathology, Erasmus MC Cancer Institute, University Medical Center Rotterdam, Wytemaweg 80, 3015 CN Rotterdam, The Netherlands.
Oral Oncol. 2016 Sep;60:41-7. doi: 10.1016/j.oraloncology.2016.06.012. Epub 2016 Jul 5.
Currently, up to 85% of the oral resection specimens have inadequate resection margins, of which the majority is located in the deeper soft tissue layers. The prognosis of patients with oral cavity squamous cell carcinoma (OCSCC) of the tongue is negatively affected by these inadequate surgical resections. Raman spectroscopy, an optical technique, can potentially be used for intra-operative evaluation of resection margins.
To develop in vitro Raman spectroscopy-based tissue classification models that discriminate OCSCC of the tongue from (subepithelial) non-tumorous tissue.
Tissue classification models were developed using Principal Components Analysis (PCA) followed by (hierarchical) Linear Discriminant Analysis ((h)LDA). The models were based on a training set of 720 histopathologically annotated Raman spectra, obtained from 25 tongue samples (11 OCSCC and 14 normal) of 10 patients, and were validated by means of an independent validation set of 367 spectra, obtained from 19 tongue samples (6 OCSCC and 13 normal) of 11 patients.
A PCA-LDA tissue classification model 'tumor' versus 'non-tumorous tissue' (i.e. surface squamous epithelium, connective tissue, muscle, adipose tissue, gland and nerve) showed an accuracy of 86% (sensitivity: 100%, specificity: 66%). A two-step PCA-hLDA tissue classification model 'tumor' versus 'non-tumorous tissue' showed an accuracy of 91% (sensitivity: 100%, specificity: 78%).
An accurate PCA-hLDA Raman spectroscopy-based tissue classification model for discrimination between OCSCC and (especially the subepithelial) non-tumorous tongue tissue was developed and validated. This model with high sensitivity and specificity may prove to be very helpful to detect tumor in the resection margins.
目前,高达85%的口腔切除标本切缘不充分,其中大部分位于较深的软组织层。这些手术切除不充分会对舌部口腔鳞状细胞癌(OCSCC)患者的预后产生负面影响。拉曼光谱作为一种光学技术,有可能用于术中切缘评估。
建立基于体外拉曼光谱的组织分类模型,以区分舌部OCSCC与(上皮下)非肿瘤组织。
使用主成分分析(PCA),随后进行(分层)线性判别分析((h)LDA)建立组织分类模型。这些模型基于从10例患者的25个舌部样本(11例OCSCC和14例正常样本)获得的720个经组织病理学注释的拉曼光谱训练集,并通过从11例患者的19个舌部样本(6例OCSCC和13例正常样本)获得的367个光谱的独立验证集进行验证。
一个PCA-LDA组织分类模型“肿瘤”与“非肿瘤组织”(即表面鳞状上皮、结缔组织、肌肉、脂肪组织、腺体和神经)的准确率为86%(敏感性:100%,特异性:66%)。一个两步PCA-hLDA组织分类模型“肿瘤”与“非肿瘤组织”的准确率为91%(敏感性:100%,特异性:78%)。
开发并验证了一种基于PCA-hLDA拉曼光谱的准确组织分类模型,用于区分OCSCC与(尤其是上皮下)非肿瘤性舌组织。该具有高敏感性和特异性的模型可能对检测切缘肿瘤非常有帮助。