Elishmereni Moran, Kheifetz Yuri, Shukrun Ilan, Bevan Graham H, Nandy Debashis, McKenzie Kyle M, Kohli Manish, Agur Zvia
Institute for Medical Biomathematics (IMBM), Bene Ataroth, Israel.
Optimata Ltd., Bene Ataroth, Israel.
Prostate. 2016 Jan;76(1):48-57. doi: 10.1002/pros.23099. Epub 2015 Sep 30.
Prostate cancer (PCa) is a leading cause of cancer death of men worldwide. In hormone-sensitive prostate cancer (HSPC), androgen deprivation therapy (ADT) is widely used, but an eventual failure on ADT heralds the passage to the castration-resistant prostate cancer (CRPC) stage. Because predicting time to failure on ADT would allow improved planning of personal treatment strategy, we aimed to develop a predictive personalization algorithm for ADT efficacy in HSPC patients.
A mathematical mechanistic model for HSPC progression and treatment was developed based on the underlying disease dynamics (represented by prostate-specific antigen; PSA) as affected by ADT. Following fine-tuning by a dataset of ADT-treated HSPC patients, the model was embedded in an algorithm, which predicts the patient's time to biochemical failure (BF) based on clinical metrics obtained before or early in-treatment.
The mechanistic model, including a tumor growth law with a dynamic power and an elaborate ADT-resistance mechanism, successfully retrieved individual time-courses of PSA (R(2) = 0.783). Using the personal Gleason score (GS) and PSA at diagnosis, as well as PSA dynamics from 6 months after ADT onset, and given the full ADT regimen, the personalization algorithm accurately predicted the individual time to BF of ADT in 90% of patients in the retrospective cohort (R(2) = 0.98).
The algorithm we have developed, predicting biochemical failure based on routine clinical tests, could be especially useful for patients destined for short-lived ADT responses and quick progression to CRPC. Prospective studies must validate the utility of the algorithm for clinical decision-making.
前列腺癌(PCa)是全球男性癌症死亡的主要原因。在激素敏感性前列腺癌(HSPC)中,雄激素剥夺疗法(ADT)被广泛应用,但ADT最终失效预示着进入去势抵抗性前列腺癌(CRPC)阶段。由于预测ADT失效时间有助于优化个人治疗策略的规划,我们旨在开发一种预测HSPC患者ADT疗效的个性化算法。
基于受ADT影响的潜在疾病动态(以前列腺特异性抗原;PSA表示),开发了HSPC进展和治疗的数学机制模型。通过ADT治疗的HSPC患者数据集进行微调后,该模型被嵌入到一种算法中,该算法根据治疗前或治疗早期获得的临床指标预测患者的生化失败(BF)时间。
该机制模型,包括具有动态幂的肿瘤生长规律和精细的ADT抵抗机制,成功地恢复了PSA的个体时间进程(R(2) = 0.783)。使用诊断时的个人Gleason评分(GS)和PSA,以及ADT开始后6个月的PSA动态,并给定完整的ADT方案,该个性化算法在回顾性队列中准确预测了90%患者的ADT个体BF时间(R(2) = 0.98)。
我们开发的基于常规临床检查预测生化失败的算法,对于ADT反应短暂且迅速进展为CRPC的患者可能特别有用。前瞻性研究必须验证该算法在临床决策中的实用性。