A Preoperative Prognostic Model Predicting Recurrence-free Survival for Patients With Kidney Cancer

医学 肾切除术 比例危险模型 肾癌 多元分析 列线图 一致性 单变量分析 外科 预后变量 阶段(地层学) 癌症 生存分析 单变量 回顾性队列研究 内科学 多元统计 古生物学 统计 数学 生物
作者
Özgür Yaycıoğlu,S. Eskicorapci,Erdem Karabulut,B. Soyupak,Çağatay Göğüş,Taner Divrik,Levent Türkeri,Sertaç Yazıcı,Hasan Özen
出处
期刊:Japanese Journal of Clinical Oncology [Oxford University Press]
卷期号:43 (1): 63-68 被引量:17
标识
DOI:10.1093/jjco/hys192
摘要

To develop a preoperative prognostic model in order to predict recurrence-free survival in patients with nonmetastatic kidney cancer. A multi-institutional data base of 1889 patients who underwent surgical resection between 1987 and 2007 for kidney cancer was retrospectively analyzed. Preoperative variables were defined as age, gender, presentation, size, presence of radiological lymph nodes and clinical stage. Univariate and multivariate analyses of the variables were performed using the Cox proportional hazards regression model. A model was developed with preoperative variables as predictors of recurrence after nephrectomy. Internal validation was performed by Harrell's concordance index. The median follow-up was 23.6 months (1–222 months). During the follow-up, 258 patients (13.7%) developed cancer recurrence. The median follow-up for patients who did not develop recurrence was 25 months. The median time from surgery to recurrence was 13 months. The 5-year freedom from recurrence probability was 78.6%. All variables except age were associated with freedom from recurrence in multivariate analyses (P < 0.05). Age was marginally significant in the univariate analysis. All variables were included in the predictive model. The calculated c-index was 0.747. This preoperative model utilizes easy to obtain clinical variables and predicts the likelihood of development of recurrent disease in patients with kidney tumors.

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