Qian Jing-Yi, Mou Si-Hua, Liu Chi-Bo
Medical Services Section, Taizhou Municipal Hospital, Taizhou, Zhejiang, China.
Asian Pac J Cancer Prev. 2012;13(5):1911-5. doi: 10.7314/apjcp.2012.13.5.1911.
New technologies for the early detection of pancreatic cancer (PC) are urgently needed. The aim of the present study was to screen for the potential protein biomarkers in serum using proteomic fingerprint technology.
Magnetic beads combined with surface-enhanced laser desorption/ionization (SELDI) TOF MS were used to profile and compare the protein spectra of serum samples from 85 patients with pancreatic cancer, 50 patients with acute-on-chronic pancreatitis and 98 healthy blood donors. Proteomic patterns associated with pancreatic cancer were identified with Biomarker Patterns Software.
A total of 37 differential m/z peaks were identified that were related to PC (P<0.01). A tree model of biomarkers was constructed with the software based on the three biomarkers (7762 Da, 8560 Da, 11654 Da), this showing excellent separation between pancreatic cancer and non-cancer., with a sensitivity of 93.3% and a specificity of 95.6%. Blind test data showed a sensitivity of 88% and a specificity of 91.4%.
The results suggested that serum biomarkers for pancreatic cancer can be detected using SELDI-TOF-MS combined with magnetic beads. Application of combined biomarkers may provide a powerful and reliable diagnostic method for pancreatic cancer with a high sensitivity and specificity.
迫切需要用于早期检测胰腺癌(PC)的新技术。本研究的目的是使用蛋白质组指纹技术筛选血清中的潜在蛋白质生物标志物。
采用磁珠结合表面增强激光解吸/电离(SELDI)飞行时间质谱(TOF MS)对85例胰腺癌患者、50例慢性胰腺炎急性发作患者和98例健康献血者的血清样本进行蛋白质谱分析和比较。使用生物标志物模式软件识别与胰腺癌相关的蛋白质组模式。
共鉴定出37个与胰腺癌相关的差异m/z峰(P<0.01)。基于三种生物标志物(7762 Da、8560 Da、11654 Da)用该软件构建了生物标志物树模型,该模型显示胰腺癌与非癌之间有良好的区分,灵敏度为93.3%,特异性为95.6%。盲测数据显示灵敏度为88%,特异性为91.4%。
结果表明,使用SELDI-TOF-MS结合磁珠可检测出血清中胰腺癌生物标志物。联合生物标志物的应用可能为胰腺癌提供一种高灵敏度和特异性的强大而可靠的诊断方法。