He Hong, Sun Gang, Ping Feiyun
Department of Stomatology, Second Affiliated Hospital, School of Medicine, Zhejiang University, Hangzhou, China.
Artif Cells Blood Substit Immobil Biotechnol. 2009;37(5):208-13. doi: 10.1080/10731190903199028. Epub 2009 Sep 4.
To find new biomarkers and establish histopathology protein fingerprint models for early detection of oral squamous cell carcinoma (OSCC), laser capture microdissection (LCM) technology was utilized in 21 OSCC tissues and 7 oral leukoplaque (OLK) tissues as well as their adjacent normal tissues. Each sample was then detected by SELDI-TOF-MS technology and CM10 protein chip as well as bioinformatics tools. Three proteomic biomarker patterns were identified. Pattern 1 distinguishes patients with OLK from healthy individuals. Pattern 2 distinguishes patients with OSCC from healthy individuals. Pattern 3 distinguishes patients with OSCC from patients with OLK. The analysis yielded both a specificity and a sensitivity of 90.48% for pattern 1, a specificity of 100.00% and a sensitivity of 85.71% for pattern 2, and a specificity of 100.00% and a sensitivity of 85.71% for pattern 3. Proteome mass/charge 3714, 3515, and 4944 built the distinguished protein peaks between the OSCC tumor and adjacent normal tissues. The accuracy of the blind prediction was 90.48% (38/42). M/Z 15122 and 7569 built the distinguished protein peaks between the OLK and adjacent normal tissues. M/Z 3738 and 11366 built the distinguished protein peaks between the OSCC and the OLK. By employing LCM technology combined with SELDI-TOF-MS technology and bioinformatics approaches, histopathology would not only facilitate the discovery of better biomarkers for OSCC and OLK, but also provide a useful tool for molecular diagnosis by potential biomarker.
为了寻找新的生物标志物并建立用于早期检测口腔鳞状细胞癌(OSCC)的组织病理学蛋白质指纹模型,我们利用激光捕获显微切割(LCM)技术,对21例OSCC组织、7例口腔白斑(OLK)组织及其相邻正常组织进行了研究。然后,使用表面增强激光解吸电离飞行时间质谱(SELDI-TOF-MS)技术、CM10蛋白质芯片以及生物信息学工具对每个样本进行检测。我们识别出了三种蛋白质组生物标志物模式。模式1可区分OLK患者与健康个体。模式2可区分OSCC患者与健康个体。模式3可区分OSCC患者与OLK患者。模式1的分析结果显示,其特异性和敏感性均为90.48%;模式2的特异性为100.00%,敏感性为85.71%;模式3的特异性为100.00%,敏感性为85.71%。蛋白质组质荷比3714、3515和4944构成了OSCC肿瘤组织与其相邻正常组织之间的特征性蛋白峰。盲法预测的准确率为90.48%(38/42)。质荷比15122和7569构成了OLK组织与其相邻正常组织之间的特征性蛋白峰。质荷比3738和11366构成了OSCC组织与OLK组织之间的特征性蛋白峰。通过将LCM技术与SELDI-TOF-MS技术及生物信息学方法相结合,组织病理学不仅有助于发现更好的OSCC和OLK生物标志物,还可为基于潜在生物标志物的分子诊断提供有用的工具。