Department of Urology, the Chao Hu Hospital of Anhui Medical University, Hefei, China.
Department of Urology, the First Affiliated Hospital of Anhui Medical University, Hefei, China.
Medicine (Baltimore). 2022 Jul 8;101(27):e29764. doi: 10.1097/MD.0000000000029764.
We aimed to construct and validate nomogram models that predict the incidence of lung metastasis (LM) in patients with renal cell carcinoma (RCC) and evaluate overall survival (OS) and cancer-specific survival (CSS) among RCC patients with LM. The Surveillance, Epidemiology, and End Results database was analyzed for RCC patients diagnosed between 2010 and 2015. The X-tile program was used to determine the best cutoff values for age at initial diagnosis and tumor size. Logistic regression analysis was performed to explore independent risk factors for LM, and COX regression analysis was used to identify prognostic indicators for OS and CSS in lung metastatic RCC patients. Subsequently, 3 nomograms were established, and receiver operating characteristic (ROC) curves and decision curve analysis (DCA) were utilized to validate their accuracy. We randomly assigned 10,929 patients with RCC to 2 groups with 1:1 allocation. Multivariate logistic analyses revealed that pathology, tumor (T) stage, nodes (N) stage, race, grade, surgery, metastatic sites, and tumor size were independent risk factors for LM. Multivariate Cox analyses showed that pathology, T stage, N stage, age, surgery, metastatic sites, and residence were independent prognostic factors for OS and CSS in patients with LM. Then, nomograms were developed based on the multivariate logistic and Cox regression analyses results. The ROC and DCA curves confirmed that these nomograms achieved satisfactory discriminative power. Three effective nomograms were constructed and validated that can be used to assist clinicians in predicting the incidence of LM and evaluating the prognosis of lung metastatic RCC.
我们旨在构建和验证预测肾细胞癌(RCC)患者发生肺转移(LM)的列线图模型,并评估 LM 患者的总体生存率(OS)和癌症特异性生存率(CSS)。我们对 2010 年至 2015 年间诊断为 RCC 的患者进行了 Surveillance,Epidemiology,and End Results 数据库分析。X-tile 程序用于确定初始诊断时年龄和肿瘤大小的最佳截断值。我们进行了逻辑回归分析,以探讨 LM 的独立危险因素,然后使用 COX 回归分析确定肺转移性 RCC 患者的 OS 和 CSS 的预后指标。随后,我们建立了 3 个列线图,并通过接收者操作特征(ROC)曲线和决策曲线分析(DCA)验证了它们的准确性。我们将 10929 例 RCC 患者随机分为 2 组,每组 1:1 分配。多变量逻辑分析显示,病理、肿瘤(T)分期、淋巴结(N)分期、种族、分级、手术、转移部位和肿瘤大小是 LM 的独立危险因素。多变量 Cox 分析显示,病理、T 分期、N 分期、年龄、手术、转移部位和居住地是 LM 患者 OS 和 CSS 的独立预后因素。然后,根据多变量逻辑和 Cox 回归分析结果制定了列线图。ROC 和 DCA 曲线证实这些列线图具有令人满意的区分能力。构建并验证了 3 个有效的列线图,可用于协助临床医生预测 LM 的发生并评估肺转移性 RCC 的预后。