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首页> 外文期刊>Journal of Zhejiang University. Science, B >An integrated approach utilizing proteomics and bioinformatics to detect ovarian cancer
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An integrated approach utilizing proteomics and bioinformatics to detect ovarian cancer

机译:利用蛋白质组学和生物信息学检测卵巢癌的综合方法

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Objective: To find new potential biomarkers and establish the patterns for the detection of ovarian cancer. Methods: Sixty one serum samples including 32 ovarian cancer patients and 29 healthy people were detected by surface-enhanced laser desorption/ionization mass spectrometry (SELDI-MS). The protein fingerprint data were analyzed by bioinformatics tools. Ten folds cross-validation support vector machine (SVM) was used to establish the diagnostic pattern. Results: Five potential biomarkers were found (2085 Da, 5881 Da, 7564 Da, 9422 Da, 6044 Da), combined with which the diagnostic pattern separated the ovarian cancer from the healthy samples with a sensitivity of 96.7%, a specificity of 96.7% and a positive predictive value of 96.7%. Conclusions: The combination of SELDI with bioinformatics tools could find new biomarkers and establish patterns with high sensitivity and specificity for the detection of ovarian cancer.
机译:目的:找到新的潜在生物标志物,并建立检测卵巢癌的模式。方法:通过表面增强的激光解吸/电离质谱(Seldi-MS)检测六十一血清样品,包括32例卵巢癌患者和29名健康人员。通过生物信息学工具分析蛋白质指纹数据。十倍折叠交叉验证支持向量机(SVM)用于建立诊断模式。结果:发现了五个潜在的生物标志物(2085Da,5881Da,7564Da,9422Da,6044Da),结合其诊断模式将卵巢癌与健康样品分开,灵敏度为96.7%,特异性为96.7%阳性预测值为96.7%。结论:Seldi与生物信息学工具的组合可以找到新的生物标志物,并建立具有高灵敏度和特异性的模式,用于检测卵巢癌。

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