Pan Yu-zhuo, Xiao Xue-yuan, Zhao Dan, Zhang Ling, Ji Guo-yi, Li Yang, He Da-cheng, Zhao Xue-jian, Yang Bao-xue
Department of Pathophysiology, Basic Medical School, Jilin University, Changchun 130021, China.
Zhonghua Yi Xue Za Zhi. 2005 Nov 30;85(45):3172-5.
To identify the serum biomarkers of prostate cancer by using protein chip and bioinformatics.
Eighty three prostate cancer (PCA) patients and ninety five healthy people from mass screen in Changchun were detected by surface-enhanced laser desorption/ionization mass spectrometry (SELDI-MS). The data of spectra were analyzed by bioinformatics tools-Biomarker Wizard and Biomarker Pattern.
Compared with the spectra of healthy people, there were 18 potential markers detected in the spectra of the PCA patients, the protein expression was high in 4 of which and low in the 10 of which. The softwares Biomarkerwizard and Biomarker Pattern automatically, under given conditions, selected 8 biomarker proteins to be used to establish a five layer decision tree differentiate to diagnose PCA and differentiate PCA from healthy people with a specificity of 92.632% and a sensitivity of 96.386%.
New serum biomarkers of PCA have been identified, and this SELDI mass spectrometry coupled with decision tree classification algorithm will provide a highly accurate and innovative approach for the early diagnosis of PCA.
利用蛋白质芯片和生物信息学技术鉴定前列腺癌的血清生物标志物。
采用表面增强激光解吸/电离质谱(SELDI-MS)对长春市83例前列腺癌(PCA)患者和95例大规模筛查的健康人进行检测。利用生物信息学工具Biomarker Wizard和Biomarker Pattern对质谱数据进行分析。
与健康人的质谱图相比,PCA患者的质谱图中检测到18个潜在标志物,其中4个蛋白质表达上调,10个蛋白质表达下调。Biomarkerwizard和Biomarker Pattern软件在给定条件下自动选择8种生物标志物蛋白,用于建立五层决策树以鉴别诊断PCA,并区分PCA患者与健康人,特异性为92.632%,敏感性为96.386%。
已鉴定出PCA新的血清生物标志物,这种SELDI质谱联用决策树分类算法将为PCA的早期诊断提供一种高度准确且创新的方法。