前列腺体积是选择低危前列腺患者进行主动监测的独立预测因素

I. Yusim, E. Mazor, Nimer Elsaraya, R. Gat, V. Novack, N. Mabjeesh
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Disease reclassification was defined as upgrading biopsy: GS ≥ 3 + 4 = 7 or ISUP GG ≥ 2, more than two positive cores, MCCI > 50%, or changes in serum PSA > 10 ng/ml. Uni- and multivariate Cox proportional hazards regression models, receiver performance curves (ROC), and Kaplan-Meier analysis were performed to characterize AS criteria and identify variables that predict disease reclassification. Finally, decision curve analysis (DCA) was performed to evaluate the net benefit of using PV in addition to standard variables to predict disease reclassification. Results PCa was diagnosed by systematic transrectal ultrasound-guided prostate biopsy (TRUS-Bx). The mean (range) follow-up was 32.7 (12-126) months. Disease reclassification occurred in 46 patients (40%). On univariate statistical analysis prostate specific antigen (PSA) (p = 0.05), prostate volume (PV) (p = 0.022), PSA density (PSAD) (p < 0.001) and number of positive cores (p = 0.021) were significant factors for disease reclassification. On the multivariate analysis, PSAD (p < 0.001) and PV (p = 0.003) were the only statistically significant independent variables to predict disease reclassification. A PSAD cut-off of 0.16 ng/ml² and a PV cut-off of 44 ml gave a maximal area under the curve, 0.69 and 0.63, respectively. Kaplan-Meier analysis showed that the median survival free from disease reclassification during AS was almost doubled in patients with PSAD < 0.16 ng/ml2 or PV > 44 ml. DCA showed a positive net benefit and clinical usefulness of the model, including PV, to predict disease reclassification between threshold probabilities of 20-50%. Conclusions PV and PSAD significantly predicted failure from AS in our patients. 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引用次数: 0

摘要

目的本研究的结果是确定诊断时可用的变量,这些变量能够预测积极监测(AS)中前列腺癌症(PCa)患者的疾病重新分类。材料与方法2014年1月至2018年12月,114例低风险前列腺癌患者按照入选标准纳入AS方案:PSA≤10ng/ml,Gleason评分(GS)≤6或国际泌尿病理学会(ISUP)Gleason分级组(GG)1,癌症最大核心长度(MCCI)<50%,活检阳性核心≤2。患者接受了确认性和每年一次的前列腺活检,每半年进行一次前列腺特异性抗原(PSA)和直肠指检(DRE)。疾病重新分类定义为升级活检:GS≥3+4=7或ISUP GG≥2,两个以上阳性核心,MCCI>50%,或血清PSA变化>10ng/ml。采用单因素和多因素Cox比例风险回归模型、受试者表现曲线(ROC)和Kaplan-Meier分析来表征AS标准,并确定预测疾病重新分类的变量。最后,进行决策曲线分析(DCA),以评估除标准变量外使用PV预测疾病重新分类的净效益。结果系统经直肠超声引导前列腺活检(TRUS-Bx)诊断为前列腺癌。平均(范围)随访时间为32.7(12-126)个月。46名患者(40%)进行了疾病重新分类。在单变量统计分析中,前列腺特异性抗原(PSA)(p=0.05)、前列腺体积(PV)(p=0.022)、PSA密度(PSAD)(p<0.001)和阳性核心数(p=0.021)是疾病重新分类的重要因素。在多变量分析中,PSAD(p<0.001)和PV(p=0.003)是预测疾病重新分类的唯一具有统计学意义的自变量。PSAD截止值为0.16 ng/ml²,PV截止值为44 ml,曲线下面积最大,分别为0.69和0.63。Kaplan-Meier分析显示,PSAD<0.16 ng/ml2或PV>44 ml的患者在AS期间无疾病重新分类的中位生存率几乎翻了一番。DCA显示出该模型(包括PV)在预测20-50%阈值概率之间的疾病重新分类方面的正净效益和临床有用性。结论PV和PSAD可显著预测AS患者的失败。基线PV小于44 ml的患者更有可能进行疾病重新分类,不适合接受AS方案。因此,我们认为PV可能有助于选择前列腺癌患者进行AS治疗,尤其是在mpMRI使用有限的人群中。
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Prostate volume is an independent predictive factor in selecting low-risk prostate patients for active surveillance
Purpose The outcome of the present study is to determine variables available at the time of diagnosis able to predict disease reclassification in prostate cancer (PCa) patients on active surveillance (AS). Materials and methods From January 2014 to December 2018, 114 consecutive low-risk PCa patients were enrolled in AS protocol according to inclusion criteria: PSA ≤ 10 ng/ml, Gleason score (GS) ≤ 6 or International Society of Urological Pathology (ISUP) Gleason grade group (GG) 1, maximum cancer core length (MCCI) < 50%, and ≤ 2 positive cores on biopsy. Patients were followed with confirmatory and yearly prostate biopsy, semi-annually with prostate-specific antigen (PSA), and digital rectal examination (DRE). Disease reclassification was defined as upgrading biopsy: GS ≥ 3 + 4 = 7 or ISUP GG ≥ 2, more than two positive cores, MCCI > 50%, or changes in serum PSA > 10 ng/ml. Uni- and multivariate Cox proportional hazards regression models, receiver performance curves (ROC), and Kaplan-Meier analysis were performed to characterize AS criteria and identify variables that predict disease reclassification. Finally, decision curve analysis (DCA) was performed to evaluate the net benefit of using PV in addition to standard variables to predict disease reclassification. Results PCa was diagnosed by systematic transrectal ultrasound-guided prostate biopsy (TRUS-Bx). The mean (range) follow-up was 32.7 (12-126) months. Disease reclassification occurred in 46 patients (40%). On univariate statistical analysis prostate specific antigen (PSA) (p = 0.05), prostate volume (PV) (p = 0.022), PSA density (PSAD) (p < 0.001) and number of positive cores (p = 0.021) were significant factors for disease reclassification. On the multivariate analysis, PSAD (p < 0.001) and PV (p = 0.003) were the only statistically significant independent variables to predict disease reclassification. A PSAD cut-off of 0.16 ng/ml² and a PV cut-off of 44 ml gave a maximal area under the curve, 0.69 and 0.63, respectively. Kaplan-Meier analysis showed that the median survival free from disease reclassification during AS was almost doubled in patients with PSAD < 0.16 ng/ml2 or PV > 44 ml. DCA showed a positive net benefit and clinical usefulness of the model, including PV, to predict disease reclassification between threshold probabilities of 20-50%. Conclusions PV and PSAD significantly predicted failure from AS in our patients. Patients with a baseline PV of fewer than 44 ml would be more likely to have disease reclassification and unsuitable for acceptable AS protocols. Therefore, we believe that PV may help to select PCa patients for AS, especially in populations where the use of mpMRI is limited.
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