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GRANT 分级与 Leibovich 评分对比预测局限性肾细胞癌患者生存:一项全国性研究。

GRade, Age, Nodes, and Tumor (GRANT) compared with Leibovich score to predict survival in localized renal cell carcinoma: A nationwide study.

机构信息

Department of Urology, Zealand University Hospital, Roskilde, Denmark.

Department of Oncology & Department of Regional Health Research, University of Southern Denmark, Odense, Denmark.

出版信息

Int J Urol. 2022 Jul;29(7):641-645. doi: 10.1111/iju.14859. Epub 2022 Apr 1.

Abstract

OBJECTIVE

To examine the performance of Leibovich score versus GRade, Age, Nodes, and Tumor score in predicting disease recurrence in renal cell carcinoma.

METHODS

In total, 7653 patients diagnosed with renal cell carcinoma from 2010 to 2018 were captured in the nationwide DaRenCa database; 2652 underwent radical or partial nephrectomy and had full datasets regarding the GRade, Age, Nodes, and Tumor score and Leibovich score. Discrimination was assessed with a Cox regression model. The results were evaluated with concordance index analysis.

RESULTS

Median follow-up was 40 months (interquartile range 24-56). Recurrence occurred in 17%, and 15% died. A significant proportion of patients (36%) had missing data for the calculation of the Leibovich score. Among 1957 clear cell renal cell carcinoma patients the distribution of GRade, Age, Nodes, and Tumor score of 0, 1, 2, or 3/4 was 21%, 56%, 21% and 1.4%, respectively, and for Leibovich score of low/intermediate/high this was 47%, 36% and 18%, respectively. A similar distribution was seen in 655 non-clear cell patients. Both Leibovich and GRade, Age, Nodes, and Tumor scores performed well in predicting outcomes for the favorable patient risk groups. The Leibovich score was better at predicting recurrence-free survival (concordance index 0.736 versus 0.643), but not overall survival (concordance index 0.657 versus 0.648). Similar results were obtained in non-clear cell renal cell carcinoma.

CONCLUSION

GRade, Age, Nodes, and Tumor and Leibovich scores were validated in clear cell and non-clear cell renal cell carcinoma. Leibovich score outperformed the GRade, Age, Nodes, and Tumor score in predicting recurrence-free survival and should remain the standard approach to risk stratify patients during follow-up when all data are available.

摘要

目的

探讨 Leibovich 评分与 GRade、Age、Nodes、Tumor 评分在预测肾细胞癌患者疾病复发中的表现。

方法

从全国性的 DaRenCa 数据库中纳入了 2010 年至 2018 年间诊断为肾细胞癌的 7653 例患者;其中 2652 例行根治性或部分肾切除术,且具有完整的 GRade、Age、Nodes、Tumor 评分和 Leibovich 评分数据。采用 Cox 回归模型评估鉴别能力,通过一致性指数分析评估结果。

结果

中位随访时间为 40 个月(四分位距 24-56 个月)。17%的患者出现复发,15%的患者死亡。由于 Leibovich 评分的计算存在 36%的缺失数据,导致相当一部分患者的评分缺失。在 1957 例透明细胞肾细胞癌患者中,GRade、Age、Nodes、Tumor 评分 0、1、2、3/4 分别占 21%、56%、21%和 1.4%,而 Leibovich 评分低/中/高分别占 47%、36%和 18%。655 例非透明细胞患者的分布情况相似。 Leibovich 评分和 GRade、Age、Nodes、Tumor 评分在预测预后良好的患者风险组方面表现良好。Leibovich 评分在预测无复发生存方面表现更好(一致性指数 0.736 比 0.643),但在预测总生存方面没有优势(一致性指数 0.657 比 0.648)。非透明细胞肾细胞癌患者也得到了类似的结果。

结论

GRade、Age、Nodes、Tumor 和 Leibovich 评分在透明细胞和非透明细胞肾细胞癌中得到了验证。Leibovich 评分在预测无复发生存方面优于 GRade、Age、Nodes、Tumor 评分,在有完整数据时,应作为随访期间风险分层患者的标准方法。

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