Briganti Alberto, Chun Felix K-H, Hutterer Georg C, Gallina Andrea, Shariat Shahrokh F, Salonia Andrea, Scattoni Vincenzo, Valiquette Luc, Montorsi Francesco, Rigatti Patrizio, Graefen Markus, Huland Hartwig, Karakiewicz Pierre I
Department of Urology, Vita-Salute University San Raffaele, Milan, Italy.
Eur Urol. 2007 Sep;52(3):733-43. doi: 10.1016/j.eururo.2007.02.054. Epub 2007 Mar 6.
We hypothesized that the number and/or percentage of positive cores, proxies of tumor volume, could improve the ability to predict pathologic stages and/or biochemical recurrence (BCR). To test this hypothesis, we examined radical retropubic prostatectomy (RRP) data from three centers on two continents.
Clinical data from men undergoing RRP at three different institutions were used to predict pathologic stages and BCR. Univariable and multivariable logistic analyses and Cox regression analyses were used. Predictive accuracy (PA) was assessed with the area under the receiver operating characteristics curve estimates, which were subjected to 200 bootstraps to reduce overfit bias. The statistical significance of PA gains was assessed with the Mantel-Haenszel test.
The number and the percentage of positive cores were independent predictors of virtually all pathologic stage outcomes and of BCR. In PA analyses, the percentage of positive cores improved the PA of pathologic stage predictions and of BCR predictions between 0.06% and 1.49%. Conversely, the number of positive cores improved the PA of pathologic stage predictions and of BCR predictions between 0.36% and 1.14%.
The information derived from biopsy cores is important and can improve the ability to predict pathologic stage and BCR. It appears that the percentage of cores is most helpful in stage predictions. Conversely, the number of cores appears to improve mostly BCR predictions. Consideration of both variables might not be helpful because of the similarity of information they encode.
我们假设阳性癌灶的数量和/或百分比作为肿瘤体积的替代指标,能够提高预测病理分期和/或生化复发(BCR)的能力。为验证这一假设,我们研究了来自两大洲三个中心的耻骨后根治性前列腺切除术(RRP)数据。
来自三个不同机构接受RRP手术的男性患者的临床数据用于预测病理分期和BCR。采用单变量和多变量逻辑分析以及Cox回归分析。通过受试者操作特征曲线下面积估计来评估预测准确性(PA),并进行200次自抽样以减少过度拟合偏差。用Mantel-Haenszel检验评估PA增益的统计学意义。
阳性癌灶的数量和百分比实际上是所有病理分期结果和BCR的独立预测因素。在PA分析中,阳性癌灶百分比使病理分期预测和BCR预测的PA提高了0.06%至1.49%。相反,阳性癌灶数量使病理分期预测和BCR预测的PA提高了0.36%至1.14%。
活检样本得出的信息很重要,能够提高预测病理分期和BCR的能力。似乎癌灶百分比对分期预测最有帮助。相反,癌灶数量似乎主要提高BCR预测能力。由于它们编码的信息相似,同时考虑这两个变量可能并无帮助。