首页> 外文期刊>Annals of oncology: official journal of the European Society for Medical Oncology >Two-protein signature of novel serological markers apolipoprotein-A2 and serum amyloid alpha predicts prognosis in patients with metastatic renal cell cancer and improves the currently used prognostic survival models.
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Two-protein signature of novel serological markers apolipoprotein-A2 and serum amyloid alpha predicts prognosis in patients with metastatic renal cell cancer and improves the currently used prognostic survival models.

机译:新型血清标志物载脂蛋白-A2和血清淀粉样蛋白α的两种蛋白标记可预测转移性肾细胞癌患者的预后,并改善目前使用的预后生存模型。

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BACKGROUND: In metastatic renal cell cancer (mRCC), the Memorial Sloan-Kettering Cancer Center (MSKCC) risk model is widely used for clinical trial design and patient management. To improve prognostication, we applied proteomics to identify novel serological proteins associated with overall survival (OS). PATIENTS AND METHODS: Sera from 114 mRCC patients were screened by surface-enhanced laser desorption ionization time-of-flight mass spectrometry (SELDI-TOF MS). Identified proteins were related to OS. Three proteins were subsequently validated with enzyme-linked immunosorbent assays and immunoturbidimetry. Prognostic models were statistically bootstrapped to correct for overestimation. RESULTS: SELDI-TOF MS detected 10 proteins associated with OS. Of these, apolipoprotein A2 (ApoA2), serum amyloid alpha (SAA) and transthyretin were validated for their association with OS (P = 5.5 x 10(-9), P = 1.1 x 10(-7) and P = 0.0004, respectively). Combining ApoA2 and SAA yielded a prognostic two-protein signature [Akaike's Information Criteria (AIC) = 732, P = 5.2 x 10(-7)]. Including previously identified prognostic factors, multivariable Cox regression analysis revealed ApoA2, SAA, lactate dehydrogenase, performance status and number of metastasis sites as independent factors for survival. Using these five factors, categorization of patients into three risk groups generated a novel protein-based model predicting patient prognosis (AIC = 713, P = 4.3 x 10(-11)) more robustly than the MSKCC model (AIC = 729, P = 1.3 x 10(-7)). Applying this protein-based model instead of the MSKCC model would have changed the risk group in 38% of the patients. CONCLUSIONS: Proteomics and subsequent validation yielded two novel prognostic markers and survival models which improved prediction of OS in mRCC patients over commonly used risk models. Implementation of these models has the potential to improve current risk stratification, although prospective validation will still be necessary.
机译:背景:在转移性肾细胞癌(mRCC)中,纪念斯隆-凯特琳癌症中心(MSKCC)风险模型被广泛用于临床试验设计和患者管理。为了改善预后,我们应用蛋白质组学来鉴定与总生存期(OS)相关的新型血清蛋白。患者和方法:通过表面增强激光解吸电离飞行时间质谱(SELDI-TOF MS)筛选了114例mRCC患者的血清。鉴定出的蛋白质与OS有关。随后用酶联免疫吸附测定和免疫比浊法验证了三种蛋白质。从统计学上引导预后模型以纠正高估。结果:SELDI-TOF MS检测到10种与OS相关的蛋白。其中,载脂蛋白A2(ApoA2),血清淀粉样蛋白α(SAA)和运甲状腺素蛋白与OS相关性得到验证(分别为P = 5.5 x 10(-9),P = 1.1 x 10(-7)和P = 0.0004 )。将ApoA2和SAA结合使用可产生预后的两种蛋白特征[Akaike信息标准(AIC)= 732,P = 5.2 x 10(-7)]。包括先前确定的预后因素,多变量Cox回归分析显示ApoA2,SAA,乳酸脱氢酶,生产状况和转移部位数目是生存的独立因素。使用这五个因素,将患者分类为三个风险组,产生了一种新的基于蛋白质的模型来预测患者的预后(AIC = 713,P = 4.3 x 10(-11)),比MSKCC模型(AIC = 729,P = 1.3 x 10(-7))。应用这种基于蛋白质的模型代替MSKCC模型将改变38%的患者的风险组。结论:蛋白质组学和随后的验证产生了两种新颖的预后标志物和生存模型,与常用的风险模型相比,它们改善了mRCC患者OS的预测。尽管仍然有必要进行前瞻性验证,但实施这些模型有可能改善当前的风险分层。

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