Department of Urology, Hallym University College of Medicine, Chuncheon, Korea.
BJU Int. 2014 May;113(5):754-61. doi: 10.1111/bju.12446. Epub 2013 Nov 27.
To evaluate whether assessing the anatomical characteristics of renal masses increases the accuracy of prediction of tumour pathology in small renal masses (SRMs).
We retrospectively reviewed 1129 consecutive patients who underwent extirpative surgeries for a clinical T1 renal mass, for which the preoperative aspects and dimensions used for an anatomical (PADUA) classification were available. Multivariate logistic regression analyses of demographic and anatomical characteristics were performed. Nomograms to predict malignancy and high grade pathology were constructed using a basic model (age, sex and tumour size), and an extended model (anatomical characteristics incorporated into the basic model), and the area under the curve (AUC) between models was compared.
Age, sex and tumour size were significantly associated with malignancy and high grade pathology in the T1 and T1a category (except sex for high grade pathology in T1a tumours). Exophytic rate (T1 and T1a) and renal sinus or urinary collecting system involvement (only T1a) were also significant predictors of high grade pathology. Nomograms using the extended model for malignancy showed an insignificant AUC increase compared with those using the basic model (T1, from 0.771 to 0.780, P = 0.149, and T1a, from 0.803 to 0.819, P = 0.055). For high grade pathology, the extended model achieved a significant AUC increase (from 0.595 to 0.643, P = 0.014) in the T1a category, but the AUC for both T1 and T1a tumours showed merely modest competence (0.654 and 0.643, respectively).
Age, sex and tumour size are the primary predictors of tumour pathology of SRMs, and incorporating other anatomical characteristics has only a limited positive effect on the accuracy of prediction of pathological outcomes.
评估评估肾肿块解剖特征是否会提高小肾肿块 (SRM) 肿瘤病理预测的准确性。
我们回顾性分析了 1129 例连续接受肾肿块切除术的患者,这些患者的术前表现和用于解剖 (PADUA) 分类的尺寸均可获得。对人口统计学和解剖特征进行了多变量逻辑回归分析。使用基本模型(年龄、性别和肿瘤大小)和扩展模型(将解剖特征纳入基本模型)构建预测恶性肿瘤和高级别病理的列线图,并比较模型之间的曲线下面积 (AUC)。
年龄、性别和肿瘤大小与 T1 和 T1a 肿瘤的恶性肿瘤和高级别病理显著相关(T1a 肿瘤的性别与高级别病理无关)。外生性率(T1 和 T1a)和肾窦或尿收集系统受累(仅 T1a)也是高级别病理的重要预测因素。使用扩展模型的恶性肿瘤列线图与使用基本模型的列线图相比,AUC 增加不显著(T1 从 0.771 增加到 0.780,P=0.149,T1a 从 0.803 增加到 0.819,P=0.055)。对于高级别病理,扩展模型在 T1a 类别中显著增加了 AUC(从 0.595 增加到 0.643,P=0.014),但 T1 和 T1a 肿瘤的 AUC 仅略有提高(分别为 0.654 和 0.643)。
年龄、性别和肿瘤大小是 SRM 肿瘤病理的主要预测因素,而纳入其他解剖特征对预测病理结果的准确性只有有限的积极影响。