Department of Epidemiology and Biostatistics, Memorial Sloan-Kettering Cancer Center, New York, NY 10021, USA.
Clin Cancer Res. 2010 Jun 15;16(12):3232-9. doi: 10.1158/1078-0432.CCR-10-0122. Epub 2010 Apr 16.
We have developed a statistical prediction model for prostate cancer based on four kallikrein markers in blood: total, free, and intact prostate-specific antigen (PSA), and kallikrein-related peptidase 2 (hK2). Although this model accurately predicts the result of biopsy in unscreened men, its properties for men with a history of PSA screening have not been fully characterized.
A total of 1,501 previously screened men with elevated PSA underwent initial biopsy during rounds 2 and 3 of the European Randomized Study of Screening for Prostate Cancer, Rotterdam, with 388 cancers diagnosed. Biomarker levels were measured in serum samples taken before biopsy. The prediction model developed on the unscreened cohort was then applied and predictions compared with biopsy outcome.
The previously developed four-kallikrein prediction model had much higher predictive accuracy than PSA and age alone (area under the curve of 0.711 versus 0.585, and 0.713 versus 0.557 with and without digital rectal exam, respectively; both P < 0.001). Similar statistically significant enhancements were seen for high-grade cancer. Applying the model with a cutoff of 20% cancer risk as the criterion for biopsy would reduce the biopsy rate by 362 for every 1,000 men with elevated PSA. Although diagnosis would be delayed for 47 cancers, these would be predominately low-stage and low-grade (83% Gleason 6 T(1c)).
A panel of four kallikreins can help predict the result of initial biopsy in previously screened men with elevated PSA. Use of a statistical model based on the panel would substantially decrease rates of unnecessary biopsy.
我们基于四项血液激肽释放酶标志物(总前列腺特异抗原、游离前列腺特异抗原、完整前列腺特异抗原和激肽释放酶相关肽 2)开发了一种前列腺癌统计预测模型。该模型能够准确预测未经筛查男性的活检结果,但尚未充分描述其在有 PSA 筛查史男性中的性能。
在鹿特丹欧洲前列腺癌筛查随机研究的第 2 轮和第 3 轮中,共有 1501 名之前接受过 PSA 筛查且 PSA 升高的男性接受了初始活检,共诊断出 388 例癌症。在活检前采集血清样本以测量生物标志物水平。然后将在未筛查队列中开发的四激肽预测模型应用于此,并将预测结果与活检结果进行比较。
与 PSA 和年龄单独相比,之前开发的四激肽预测模型具有更高的预测准确性(曲线下面积分别为 0.711 与 0.585,以及 0.713 与 0.557,包括和不包括直肠指检;均 P < 0.001)。对于高级别癌症,也观察到了类似的统计学显著增强。应用模型,以 20%的癌症风险作为活检标准,可使每 1000 名 PSA 升高的男性中减少 362 次活检。尽管会延迟诊断 47 例癌症,但这些癌症主要为低分期和低级别(83%为 Gleason 6 T(1c))。
四项激肽组成的标志物组可帮助预测之前接受过 PSA 筛查且 PSA 升高的男性的初始活检结果。使用基于该标志物组的统计模型将大大降低不必要活检的比例。