Ho David Wing Yuen, Yang Zhen Fan, Wong Birgitta Yee-Hang, Kwong Dora Lai-Wan, Sham Jonathan Shun-Tong, Wei William Ignace, Yuen Anthony Po Wing
Department of Surgery, University of Hong Kong, Pokfulam, Hong Kong, China.
Cancer. 2006 Jul 1;107(1):99-107. doi: 10.1002/cncr.21970.
Diagnosis of nasopharyngeal carcinoma (NPC) at an early disease stage is important for successful treatment and improving the outcome of patients. The use of serum protein profiles and a classification tree algorithm were explored to distinguish NPC from noncancer.
Serum samples were applied to metal affinity protein chips to generate mass spectra by surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF-MS). Protein peak identification and clustering were performed using the Biomarker Wizard software. Proteomic spectra of serum samples from 50 NPC patients and 54 noncancer controls were used as a training set and a classification tree with 6 distinct protein masses was generated by using Biomarker Pattern software. The validity of the classification tree was then challenged with a blind test set including another 20 NPC patients and 25 noncancer controls.
The software identified an average of 93 mass peaks/spectrum and 6 of the identified peaks were used to construct the classification tree. The classification tree correctly determined 83% (123 of 149) of the test samples with 83% (58 of 70) of the NPC samples and 82% (65 of 79) of the noncancer samples. In a combination of the serum protein profiles with Epstein-Barr (EBV) nuclear antigen 1 (EBNA1 IgA) test, the diagnostic sensitivity and specificity were increased to 99% and 96%, respectively.
The results suggest that SELDI-TOF-MS serum protein profiles could discriminate NPC from noncancer. The combination of serum protein profiles with an EBV antibody serology test could further improve the accuracy of NPC screening.
鼻咽癌(NPC)的早期诊断对于成功治疗及改善患者预后至关重要。本研究探索利用血清蛋白谱和分类树算法来区分鼻咽癌与非癌疾病。
将血清样本应用于金属亲和蛋白芯片,通过表面增强激光解吸/电离飞行时间质谱(SELDI-TOF-MS)生成质谱图。使用Biomarker Wizard软件进行蛋白峰识别和聚类分析。将50例鼻咽癌患者和54例非癌对照的血清样本蛋白质组谱作为训练集,利用Biomarker Pattern软件生成具有6个不同蛋白质量的分类树。然后用一个盲法测试集(包括另外20例鼻咽癌患者和25例非癌对照)对分类树的有效性进行验证。
该软件平均每个谱图识别出93个质量峰,其中6个识别出的峰用于构建分类树。分类树正确判定了83%(149例中的123例)的测试样本,其中鼻咽癌样本的判定正确率为83%(70例中的58例),非癌样本的判定正确率为82%(79例中的65例)。血清蛋白谱与爱泼斯坦-巴尔病毒(EBV)核抗原1(EBNA1 IgA)检测相结合时,诊断敏感性和特异性分别提高到99%和96%。
结果表明,SELDI-TOF-MS血清蛋白谱可区分鼻咽癌与非癌疾病。血清蛋白谱与EBV抗体血清学检测相结合可进一步提高鼻咽癌筛查的准确性。