Division of Urology, Maggiore della Carità Hospital, University of Eastern Piedmont, Corso Mazzini, 18, 28100, Novara, Italy.
World J Urol. 2010 Jun;28(3):319-27. doi: 10.1007/s00345-010-0540-8. Epub 2010 Apr 3.
Renal cell carcinoma (RCC) is a very heterogeneous disease with widely varying prognosis. An accurate knowledge of the individual risk of disease progression and mortality after treatment is essential to counsel patients, plan individualized surveillance protocols and select patients for adapted treatment schedules and new clinical trials.
A systematic review of the literature on prognostic factors of localized and metastatic RCC was performed.
Prognostic factors in RCC include anatomical (TNM classification, tumor size), histological (Fuhrman grade, histologic subtype), clinical (symptoms and performance status), and molecular features. All these features are not perfectly accurate when used alone. Therefore an increasing number of prognostic models or nomograms that include several combined prognostic features have been designed in order to improve predictive accuracy. UCLA Integrated Staging System (UISS) and the Mayo Clinic's SSIGN score are the two most used prognostic models for localized RCC. In the setting of metastatic RCC the classical anatomical and histological tumor features have little predictive value. However, accurate prognostic models have been designed to predict response to therapy, and progression-free and overall survival. The two most used tools to predict response to immunotherapy are the model designed by the French Group of Immunotherapy and the Motzer's model. The advent of tyrosine kinase inhibitors and antiangiogenic drugs have deeply changed the treatment of metastatic RCC. Predictive tools that are adapted to the modern targeted therapies are now needed.
There is increasing knowledge on prognostic factors of localized and metastatic RCC. Several predictive models have been developed by combining different prognostic features and are valuable tools for patient counseling, treatment decision-making and trial design. Further research is needed to assess whether the combination of classical prognostic factors with molecular features and information from gene and protein expression profiling can increase the predictive accuracy of the current prognostic models.
肾细胞癌(RCC)是一种异质性很强的疾病,预后差异很大。准确了解治疗后疾病进展和死亡的个体风险对于为患者提供咨询、制定个体化监测方案以及选择适合特定治疗方案和新临床试验的患者至关重要。
对局部和转移性 RCC 的预后因素的文献进行了系统回顾。
RCC 的预后因素包括解剖学(TNM 分类、肿瘤大小)、组织学(Fuhrman 分级、组织学亚型)、临床(症状和表现状态)和分子特征。所有这些特征单独使用时都不是非常准确。因此,为了提高预测准确性,已经设计了越来越多的包括几个联合预后特征的预后模型或列线图。加利福尼亚大学洛杉矶分校综合分期系统(UISS)和梅奥诊所的 SSIGN 评分是局部 RCC 最常用的两种预后模型。在转移性 RCC 中,经典的解剖学和组织学肿瘤特征几乎没有预测价值。然而,已经设计了准确的预后模型来预测对治疗的反应、无进展生存期和总生存期。预测免疫治疗反应最常用的两种工具是法国免疫治疗组设计的模型和 Motzer 的模型。酪氨酸激酶抑制剂和抗血管生成药物的出现极大地改变了转移性 RCC 的治疗方法。现在需要适应现代靶向治疗的预测工具。
局部和转移性 RCC 的预后因素的知识不断增加。已经通过结合不同的预后特征开发了几种预测模型,这些模型是患者咨询、治疗决策和临床试验设计的有价值的工具。需要进一步研究以评估将经典预后因素与分子特征以及来自基因和蛋白质表达谱的信息相结合是否可以提高当前预后模型的预测准确性。