Norwich Medical School, University of East Anglia, Norwich Research Park, Norwich, UK.
School of Biology and Environmental Science, University College Dublin, Dublin, Ireland.
Prostate. 2020 May;80(7):547-558. doi: 10.1002/pros.23968. Epub 2020 Mar 9.
Prostate cancer exhibits severe clinical heterogeneity and there is a critical need for clinically implementable tools able to precisely and noninvasively identify patients that can either be safely removed from treatment pathways or those requiring further follow up. Our objectives were to develop a multivariable risk prediction model through the integration of clinical, urine-derived cell-free messenger RNA (cf-RNA) and urine cell DNA methylation data capable of noninvasively detecting significant prostate cancer in biopsy naïve patients.
Post-digital rectal examination urine samples previously analyzed separately for both cellular methylation and cf-RNA expression within the Movember GAP1 urine biomarker cohort were selected for a fully integrated analysis (n = 207). A robust feature selection framework, based on bootstrap resampling and permutation, was utilized to find the optimal combination of clinical and urinary markers in a random forest model, deemed ExoMeth. Out-of-bag predictions from ExoMeth were used for diagnostic evaluation in men with a clinical suspicion of prostate cancer (PSA ≥ 4 ng/mL, adverse digital rectal examination, age, or lower urinary tract symptoms).
As ExoMeth risk score (range, 0-1) increased, the likelihood of high-grade disease being detected on biopsy was significantly greater (odds ratio = 2.04 per 0.1 ExoMeth increase, 95% confidence interval [CI]: 1.78-2.35). On an initial TRUS biopsy, ExoMeth accurately predicted the presence of Gleason score ≥3 + 4, area under the receiver-operator characteristic curve (AUC) = 0.89 (95% CI: 0.84-0.93) and was additionally capable of detecting any cancer on biopsy, AUC = 0.91 (95% CI: 0.87-0.95). Application of ExoMeth provided a net benefit over current standards of care and has the potential to reduce unnecessary biopsies by 66% when a risk threshold of 0.25 is accepted.
Integration of urinary biomarkers across multiple assay methods has greater diagnostic ability than either method in isolation, providing superior predictive ability of biopsy outcomes. ExoMeth represents a more holistic view of urinary biomarkers and has the potential to result in substantial changes to how patients suspected of harboring prostate cancer are diagnosed.
前列腺癌表现出严重的临床异质性,因此迫切需要能够精确、非侵入性地识别患者的临床可实施工具,这些患者可以安全地从治疗途径中移除,或者需要进一步随访。我们的目标是通过整合临床、尿液衍生的无细胞信使 RNA(cf-RNA)和尿液细胞 DNA 甲基化数据,开发一种多变量风险预测模型,从而非侵入性地检测初诊时无活检的患者中是否存在显著的前列腺癌。
从 Movember GAP1 尿液生物标志物队列中分别分析细胞甲基化和 cf-RNA 表达的数字直肠检查后尿液样本中选择了用于完全整合分析的样本(n=207)。使用基于 bootstrap 重采样和置换的稳健特征选择框架,在随机森林模型中找到了临床和尿液标记物的最佳组合,称为 ExoMeth。ExoMeth 的袋外预测用于诊断具有前列腺癌临床怀疑(PSA≥4ng/ml、直肠指检异常、年龄或下尿路症状)的男性。
随着 ExoMeth 风险评分(范围为 0-1)的增加,活检中检测到高级别疾病的可能性显著增加(比值比=每增加 0.1ExoMeth 风险评分增加 2.04,95%置信区间[CI]:1.78-2.35)。在初次经直肠超声引导活检中,ExoMeth 准确预测了 Gleason 评分≥3+4 的存在,受试者工作特征曲线下面积(AUC)为 0.89(95%CI:0.84-0.93),并且还能够检测到活检中的任何癌症,AUC 为 0.91(95%CI:0.87-0.95)。应用 ExoMeth 比当前的护理标准具有更高的净收益,当接受 0.25 的风险阈值时,有潜力减少 66%的不必要活检。
整合多种检测方法的尿液生物标志物比任何单一方法具有更大的诊断能力,提供了对活检结果的更好的预测能力。ExoMeth 代表了对尿液生物标志物的更全面的看法,有可能对诊断怀疑患有前列腺癌的患者产生重大影响。