Department of Medical Oncology, Kantonsspital St. Gallen, 9007St. Gallen, Switzerland.
Eur Urol. 2011 Dec;60(6):1235-43. doi: 10.1016/j.eururo.2011.06.038. Epub 2011 Jun 29.
Metastatic castration-resistant prostate cancer (mCRPC) is associated with a poor outcome. Prognostic information is useful and aids treatment decisions. However, current nomograms based on clinical parameters alone have weak prognostic accuracy. Therefore, the identification of new prognostic serum biomarkers could be useful.
To assess if quantitative analysis of the phosphatase and tensin homolog (Pten) conditional knockout mouse proteome reveals significant prognostic biomarkers in mCRPC and to compare the accuracy of these biomarkers with known prognostic factors.
DESIGN, SETTING, AND PARTICIPANTS: Fifty-seven patients with mCRPC were evaluated retrospectively. Prognostic factors used in clinical nomograms were assessed from the records. New candidate biomarkers in patients' sera were derived using a cancer genetics-guided model we recently described, screening the murine Pten-dependent glycoproteome.
Quantification in patients' sera was performed by either mass spectrometry-based targeted proteomics or enzyme-linked immunosorbent assays. Prognostic biomarkers for survival were identified based on Kaplan-Meier models. In a second step, random forest analysis was performed to identify a prognostic signature combined from the pooled data of known predictors and newly identified biomarkers.
With univariate analysis, 13 new significant prognostic factors for survival in the sera of mCRPC patients were found with a Bonferroni-corrected level of significance <5%. Random forest analysis revealed a five-factor predictor (thrombospondin 1; C-reactive protein; poliovirus receptor-related 1; ephrin-A5; and membrane metallo-endopeptidase) with an accuracy of 96% and 94% for 12- and 24-mo survival, respectively. This means that, in our dataset, the error was reduced by 15% compared to using the Halabi et al. nomogram. The retrospective nature of the work and absence of a validating dataset is the major limitation of this work.
Analysis of the serum proteome in mCRPC patients based on our Pten conditional knockout model, combined with known prognostic factors, potentially improves accuracy of prognostic nomograms. These newly identified markers have to be validated in prospective studies.
转移性去势抵抗性前列腺癌(mCRPC)预后不良。预后信息很有用,可以辅助治疗决策。然而,目前仅基于临床参数的列线图预测准确性较弱。因此,寻找新的预后血清生物标志物可能很有用。
评估定量分析磷酸酶和张力蛋白同系物(Pten)条件性敲除小鼠蛋白质组是否能揭示 mCRPC 中有意义的预后生物标志物,并比较这些生物标志物与已知预后因素的准确性。
设计、设置和参与者:回顾性评估了 57 例 mCRPC 患者。从记录中评估了临床列线图中使用的预后因素。我们最近描述了一种基于癌症遗传学的模型,用于筛选 Pten 依赖性糖蛋白组,从患者血清中提取新的候选生物标志物。
通过基于质谱的靶向蛋白质组学或酶联免疫吸附测定法在患者血清中进行定量。基于 Kaplan-Meier 模型确定生存的预后生物标志物。在第二步中,进行随机森林分析以确定一个预后特征,该特征结合了已知预测因子和新鉴定生物标志物的汇总数据。
单因素分析发现,mCRPC 患者血清中 13 个新的与生存相关的预后因素具有经 Bonferroni 校正的 <5%的显著性水平。随机森林分析显示,一个由 5 个因素组成的预测因子(血小板反应蛋白 1;C 反应蛋白;脊髓灰质炎病毒受体相关蛋白 1;ephrin-A5;和膜金属内肽酶)的准确性分别为 96%和 94%,用于 12 个月和 24 个月的生存。这意味着,在我们的数据集里,与使用 Halabi 等列线图相比,错误减少了 15%。该工作的主要局限性是回顾性和缺乏有效的验证数据集。
基于我们的 Pten 条件性敲除模型分析 mCRPC 患者的血清蛋白质组,结合已知的预后因素,可能会提高预后列线图的准确性。这些新鉴定的标志物需要在前瞻性研究中验证。