Makarov Danil V, Marlow Cameron, Epstein Jonathan I, Miller M Craig, Landis Patricia, Partin Alan W, Carter H Ballentine, Veltri Robert W
Department of Urology, The James Buchanan Brady Urological Institute, The Johns Hopkins Medical Institutions, Baltimore, Maryland 21287, USA.
Prostate. 2008 Feb 1;68(2):183-9. doi: 10.1002/pros.20679.
We assessed the use of quantitative clinical and pathologic information to predict which patients would eventually require treatment for prostate cancer (CaP) in an expectant management (EM) cohort.
We identified 75 men having prostate cancer with favorable initial biopsy characteristics; 30 developed an unfavorable biopsy (Gleason grade >6, >2 cores with cancer, >50% of a core with cancer, or a palpable nodule) requiring treatment and 45 maintained favorable biopsies throughout a median follow-up of 2.7 years. Demographic, clinical data and quantitative tissue histomorphometry determined by digital image analysis were analyzed.
Logistic regression (LR) modeling generated a quantitative nuclear grade (QNG) signature based on the enrollment biopsy for differentiation of Favorable and Unfavorable groups using a variable LR selection criteria of P(z)<0.05. The QNG signature utilized 12 nuclear morphometric descriptors (NMDs) and had an area under the receiver operator characteristic curve (ROC-AUC) of 87% with a sensitivity of 82%, specificity of 70% and accuracy of 75%. A multivariable LR model combining QNG signature with clinical and pathological variables yielded an AUC-ROC of 88% and a sensitivity of 81%, specificity of 78% and accuracy of 79%. A LR model using prostate volume, PSA density, and number of pre-diagnosis biopsies resulted in an AUC-ROC of 68% and a sensitivity of 85%, specificity of 37% and accuracy of 56%.
QNG using EM prostate biopsies improves the predictive accuracy of LR models based on traditional clinicopathologic variables in determining which patients will ultimately develop an unfavorable biopsy. Our QNG-based model must be rigorously, prospectively validated prior to use in the clinical arena.
我们评估了利用定量临床和病理信息来预测哪些接受观察等待管理(EM)的前列腺癌(CaP)患者最终需要接受治疗。
我们确定了75名具有良好初始活检特征的前列腺癌男性患者;其中30名患者活检结果变差(Gleason分级>6、癌症累及>2个核心、一个核心中癌症累及>50%或可触及结节)需要治疗,45名患者在中位随访2.7年期间活检结果一直良好。对人口统计学、临床数据以及通过数字图像分析确定的定量组织形态计量学进行了分析。
逻辑回归(LR)建模基于入组活检生成了定量核分级(QNG)特征,使用P(z)<0.05的可变LR选择标准来区分良好组和不良组。QNG特征利用了12个核形态计量描述符(NMD),受试者操作特征曲线下面积(ROC-AUC)为87%,灵敏度为82%,特异性为70%,准确率为75%。将QNG特征与临床和病理变量相结合的多变量LR模型的AUC-ROC为88%,灵敏度为81%,特异性为78%,准确率为79%。使用前列腺体积、PSA密度和诊断前活检次数的LR模型的AUC-ROC为68%,灵敏度为85%,特异性为37%,准确率为56%。
使用EM前列腺活检的QNG提高了基于传统临床病理变量的LR模型在确定哪些患者最终活检结果会变差方面的预测准确性。我们基于QNG的模型在临床应用前必须进行严格的前瞻性验证。