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Diagnosis of pancreatic adenocarcinoma using protein chip technology.

机译:使用蛋白质芯片技术诊断胰腺腺癌。

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摘要

BACKGROUND: To develop a serum-specific protein fingerprint which is capable of differentiating samples from patients with pancreatic cancer and those with other pancreatic conditions. METHODS: We used SELDI-TOF-MS coupled with CM10 chips and bioinformatics tools to analyze a total of 118 serum samples in this study; 78 serum samples were analyzed to establish the diagnostic models and the other 40 samples were analyzed on the second day as an independent test set. RESULTS: The analysis of this independent test set yielded a specificity of 91.6% and a sensitivity of 91.6% for pattern 1, which distinguished pancreatic adenocarcinoma (PC) from healthy individuals and a specificity of 80.0% and a sensitivity of 90.9% for pattern 2, which distinguished PC from chronic pancreatitis. CONCLUSION: This study indicated that the SELDI-TOF-MS technique can facilitate the discovery of better serum tumor biomarkers and a combination of specific models is more accurate than a single model in diagnosis of PC.
机译:背景:开发一种血清特异性蛋白指纹图谱,该指纹图谱能够区分胰腺癌患者和其他胰腺疾病患者的样品。方法:本研究使用SELDI-TOF-MS结合CM10芯片和生物信息学工具分析了118份血清样本。分析78份血清样品以建立诊断模型,并在第二天将另外40份样品分析为独立的测试集。结果:对该独立测试集的分析得出,模式1的特异性为91.6%,灵敏度为91.6%,从而将胰腺腺癌(PC)与健康个体区分开来,模式2的特异性为80.0%,灵敏度为90.9%。 ,将PC与慢性胰腺炎区分开来。结论:这项研究表明,SELDI-TOF-MS技术可以促进发现更好的血清肿瘤生物标志物,并且特定模型的组合比单一模型对PC诊断的准确性更高。

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