Flammia Rocco Simone, Anceschi Umberto, Tuderti Gabriele, Di Maida Fabrizio, Grosso Antonio Andrea, Lambertini Luca, Mari Andrea, Mastroianni Riccardo, Bove Alfredo, Capitanio Umberto, Amparore Daniele, Lee Jennifer, Pandolfo Savio D, Fiori Cristian, Minervini Andrea, Porpiglia Francesco, Eun Daniel, Autorino Riccardo, Leonardo Costantino, Simone Giuseppe
Department of Urology, IRCCS "Regina Elena" National Cancer Institute, Rome, Italy.
Department of Experimental and Clinical Medicine, University of Florence, Florence, Italy.
Int Urol Nephrol. 2024 Mar;56(3):913-921. doi: 10.1007/s11255-023-03832-6. Epub 2023 Oct 17.
Aim of the present study was to develop and validate a nomogram to accurately predict the risk of chronic kidney disease (CKD) upstaging at 3 years in patients undergoing robot-assisted partial nephrectomy (RAPN).
A multi-institutional database was queried to identify patients treated with RAPN for localized renal tumor (cT1-cT2, cN0, cM0). Significant CKD upstaging (sCKD-upstaging) was defined as development of newly onset CKD stage 3a, 3b, and 4/5. Model accuracy was calculated according to Harrell C-index. Subsequently, internal validation using bootstrapping and calibration was performed. Then nomogram was depicted to graphically calculate the 3-year sCKD-upstaging risk. Finally, regression tree analysis identified potential cut-offs in nomogram-derived probability. Based on this cut-off, four risk classes were derived with Kaplan-Meier analysis tested this classification.
Overall, 965 patients were identified. At Kaplan-Meier analysis, 3-year sCKD-upstaging rate was 21.4%. The model included baseline (estimated glomerular filtration rate) eGFR, solitary kidney status, multiple lesions, R.E.N.A.L. nephrometry score, clamping technique, and postoperative acute kidney injury (AKI). The model accurately predicted 3-year sCKD-upstaging (C-index 84%). Based on identified nomogram cut-offs (7 vs 16 vs 26%), a statistically significant increase in sCKD-upstaging rates between low vs intermediate favorable vs intermediate unfavorable vs high-risk patients (1.3 vs 9.2 vs 22 vs 54.2%, respectively, p < 0.001) was observed.
Herein we introduce a novel nomogram that can accurately predict the risk of sCKD-upstaging at 3 years. Based on this nomogram, it is possible to identify four risk categories. If externally validated, this nomogram may represent a useful tool to improve patient counseling and management.
本研究旨在开发并验证一种列线图,以准确预测接受机器人辅助部分肾切除术(RAPN)的患者在3年内慢性肾脏病(CKD)病情进展的风险。
查询多机构数据库,以确定接受RAPN治疗局限性肾肿瘤(cT1 - cT2,cN0,cM0)的患者。显著CKD病情进展(sCKD进展)定义为新发CKD 3a期、3b期和4/5期。根据Harrell C指数计算模型准确性。随后,使用自抽样法和校准进行内部验证。然后绘制列线图以图形化计算3年sCKD进展风险。最后,回归树分析确定列线图得出的概率中的潜在临界值。基于此临界值,得出四个风险类别,并通过Kaplan - Meier分析对该分类进行检验。
总共确定了965例患者。在Kaplan - Meier分析中,3年sCKD进展率为21.4%。该模型包括基线(估计肾小球滤过率)eGFR、孤立肾状态、多发肿瘤、R.E.N.A.L.肾计量评分、阻断技术和术后急性肾损伤(AKI)。该模型准确预测了3年sCKD进展(C指数84%)。基于确定的列线图临界值(7%对16%对26%),观察到低风险、中度有利、中度不利和高风险患者之间的sCKD进展率有统计学显著增加(分别为1.3%对9.2%对22%对54.2%,p < 0.001)。
在此,我们引入了一种新型列线图,它可以准确预测3年时sCKD进展的风险。基于此列线图,可以确定四个风险类别。如果经过外部验证,该列线图可能是改善患者咨询和管理的有用工具。