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首页> 外文期刊>International journal of gynecological cancer: official journal of the International Gynecological Cancer Society >Identifying serum biomarkers for ovarian cancer by screening with surface-enhanced laser desorption/ionization mass spectrometry and the artificial neural network.
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Identifying serum biomarkers for ovarian cancer by screening with surface-enhanced laser desorption/ionization mass spectrometry and the artificial neural network.

机译:用表面增强的激光解吸/电离质谱和人工神经网络筛选卵巢癌血清生物标志物。

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摘要

The purpose of this study was to screen potential serum tumor biomarkers for the diagnosis of ovarian cancer.The study includes 3 sets. The first set of patients included 37 ovarian cancers and 31 healthy women (healthy controls). The second set included 42 ovarian cancers, 33 patients with benign ovarian tumor, and 29 healthy women (noncancer controls). The third set included 39 ovarian cancers and 35 patients with benign ovarian tumor (benign controls). Serum samples from ovarian cancers, healthy controls, noncancer controls, and benign controls were analyzed by surface-enhanced laser desorption/ionization time-of-flight mass spectrometry.A 3-peak model (peaks of mass-to-charge ratio values at 5766.379 d, 5912.586 d, and 11695.56 d) was established in the training set that discriminated cancer from noncancer with high sensitivity (10/11, 90.90%) and specificity (19/20, 95.00%). The peaks corresponding to 3 potential biomarkers increased significantly with the degree of malignancy.The proteins represented by these 3 peaks are biomarker candidates for ovarian cancer diagnosis and/or monitoring treatment response.
机译:本研究的目的是筛选潜在的血清肿瘤生物标志物,用于诊断卵巢癌。研究包括3套。第一组患者包括37例卵巢癌和31名健康女性(健康对照)。第二套包括42例卵巢癌,33例良性卵巢肿瘤,29例健康女性(非癌症控制)。第三组包括39例卵巢癌和35例良性卵巢肿瘤(良性控制)。通过表面增强的激光解吸/电离飞行时间质谱法分析来自卵巢癌,健康对照,非癌症对照和良性控制的血清样本。3峰型模型(5766.379的质量与电荷比值的峰值D,5912.586D和11695.56d)是在培训集中建立的,该培训集中建立,敏感患者的癌症高灵敏度(10/11,90.90%)和特异性(19/20,95.00%)。对应于3个潜在生物标志物的峰值随着恶性学的程度而显着增加。由此3峰表示的蛋白质是卵巢癌诊断和/或监测治疗反应的生物标志物候选。

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