Söderdahl Fabian, Xu Li-Di, Bring Johan, Häggman Michael
Statisticon AB, Uppsala, Sweden.
Prostatype Genomics AB, Stockholm, Sweden.
Res Rep Urol. 2022 May 11;14:203-217. doi: 10.2147/RRU.S358169. eCollection 2022.
To develop and validate a risk score (P-score) algorithm which includes previously described three-gene signature and clinicopathological parameters to predict the risk of death from prostate cancer (PCa) in a retrospective cohort.
A total of 591 PCa patients diagnosed between 2003 and 2008 in Stockholm, Sweden, with a median clinical follow-up time of 7.6 years (1-11 years) were included in this study. Expression of a three-gene signature (IGFBP3, F3, VGLL3) was measured in formalin-fixed paraffin-embedded material from diagnostic core needle biopsies (CNB) of these patients. A point-based scoring system based on a Fine-Gray competing risk model was used to establish the P-score based on the three-gene signature combined with PSA value, Gleason score and tumor stage at diagnosis. The endpoint was PCa-specific mortality, while other causes of death were treated as a competing risk. Out of the 591 patients, 315 patients (estimation cohort) were selected to develop the P-score. The P-score was subsequently validated in an independent validation cohort of 276 patients.
The P-score was established ranging from the integers 0 to 15. Each one-unit increase was associated with a hazard ratio of 1.39 (95% confidence interval: 1.27-1.51, p < 0.001). The P-score was validated and performed better in predicting PCa-specific mortality than both D'Amico (0.76 vs 0.70) and NCCN (0.76 vs 0.71) by using the concordance index for competing risk. Similar improvement patterns are shown by time-dependent area under the curve. As demonstrated by cumulative incidence function, both P-score and gene signature stratified PCa patients into significantly different risk groups.
We developed the P-score, a risk stratification system for newly diagnosed PCa patients by integrating a three-gene signature measured in CNB tissue. The P-score could provide valuable decision support to distinguish PCa patients with favorable and unfavorable outcomes and hence improve treatment decisions.
开发并验证一种风险评分(P评分)算法,该算法纳入先前描述的三基因特征及临床病理参数,用于在回顾性队列中预测前列腺癌(PCa)患者的死亡风险。
本研究纳入了2003年至2008年期间在瑞典斯德哥尔摩诊断的591例PCa患者,临床随访时间中位数为7.6年(1 - 11年)。在这些患者诊断性粗针穿刺活检(CNB)的福尔马林固定石蜡包埋材料中检测三基因特征(IGFBP3、F3、VGLL3)的表达。基于Fine - Gray竞争风险模型的计分系统用于根据三基因特征结合诊断时的PSA值、Gleason评分和肿瘤分期建立P评分。终点为PCa特异性死亡率,其他死亡原因视为竞争风险。在591例患者中,315例患者(估计队列)被选用于开发P评分。随后在276例患者的独立验证队列中对P评分进行验证。
P评分范围为0至15的整数。每增加一个单位,风险比为1.39(95%置信区间:1.27 - 1.51,p < 0.001)。通过竞争风险一致性指数验证,P评分在预测PCa特异性死亡率方面比D'Amico(0.76对0.70)和NCCN(0.76对0.71)表现更好。时间依赖性曲线下面积显示出类似的改善模式。累积发病率函数表明,P评分和基因特征均将PCa患者分层为显著不同的风险组。
我们开发了P评分,这是一种通过整合CNB组织中测量的三基因特征对新诊断PCa患者进行风险分层的系统。P评分可为区分预后良好和不良的PCa患者提供有价值的决策支持,从而改善治疗决策。