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Cancer genetics-guided discovery of serum biomarker signatures for diagnosis and prognosis of prostate cancer

机译:癌症遗传学指导的血清生物标志物特征的发现,用于前列腺癌的诊断和预后

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摘要

A key barrier to the realization of personalized medicine for cancer is the identification of biomarkers. Here we describe a two-stage strategy for the discovery of serum biomarker signatures corresponding to specific cancer-causing mutations and its application to prostate cancer (PCa) in the context of the commonly occurring phosphatase and tensin homolog (PTEN) tumor-suppressor gene inactivation. In the first stage of our approach, we identified 775 N-linked glycoproteins from sera and prostate tissue of wild-type and Pten-null mice. Using label-free quantitative proteomics, we showed that Pten inactivation leads to measurable perturbations in the murine prostate and serum glycoproteome. Following bioinformatic prioritization, in a second stage we applied targeted proteomics to detect and quantify 39 human ortholog candidate biomarkers in the sera of PCa patients and control individuals. The resulting proteomic profiles were analyzed by machine learning to build predictive regression models for tissue PTEN status and diagnosis and grading of PCa. Our approach suggests a general path to rational cancer biomarker discovery and initial validation guided by cancer genetics and based on the integration of experimental mouse models, proteomics-based technologies, and computational modeling.
机译:实现癌症个性化药物的关键障碍是生物标记物的鉴定。在这里,我们描述了一种发现与特定致癌突变相对应的血清生物标志物特征的发现及其在常见的磷酸酶和张力蛋白同源物(PTEN)肿瘤抑制基因失活的背景下应用于前列腺癌(PCa)的两阶段策略。在我们方法的第一阶段,我们从野生型和Pten-null小鼠的血清和前列腺组织中鉴定了775种N-连接的糖蛋白。使用无标记的定量蛋白质组学,我们表明Pten失活导致鼠前列腺和血清糖蛋白组中的可测量的扰动。根据生物信息学的优先顺序,在第二阶段中,我们应用了靶向蛋白质组学技术来检测和量化PCa患者和对照个体血清中的39种人类直系同源候选生物标记。通过机器学习对所得的蛋白质组学图谱进行分析,以建立组织PTEN状态以及PCa的诊断和分级的预测回归模型。我们的方法提出了一条通向合理的癌症生物标记物发现途径的初步途径,并以癌症遗传学为指导,并基于实验小鼠模型,基于蛋白质组学的技术和计算模型的集成。

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