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Predicting time to prostate cancer recurrence based on joint models for non-linear longitudinal biomarkers and event time outcomes.

机译:基于非线性纵向生物标志物和事件时间结果的联合模型,预测前列腺癌的复发时间。

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Biological markers that are both sensitive and specific for tumour regrowth or metastasis are increasingly becoming available and routinely monitored during the regular follow-up of patients treated for cancer. Obtained by a simple blood test, these markers provide an inexpensive non-invasive means for the early detection of recurrence (or progression). Currently, the longitudinal behaviour of the marker is viewed as an indicator of early disease progression, and is applied by a physician in making clinical decisions. One marker that has been studied for use in both population screening for early disease and for detection of recurrence in prostate cancer patients is PSA. The elevation of PSA levels is known to precede clinically detectable recurrence by 2 to 5 years, and current clinical practice often relies partially on multiple recent rises in PSA to trigger a change in treatment. However, the longitudinal trajectory for individual markers is often non-linear; in many cases there is a decline immediately following radiation therapy or surgery, a plateau during remission, followed by an exponential rise following the recurrence of the cancer. The aim of this article is to determine the multiple aspects of the longitudinal PSA biomarker trajectory that can be most sensitive for predicting time to clinical recurrence. Joint Bayesian models for the longitudinal measures and event times are utilized based on non-linear hierarchical models, implied by unknown change-points, for the longitudinal trajectories, and a Cox proportional hazard model for progression times, with functionals of the longitudinal parameters as covariates in the Cox model. Using Markov chain Monte Carlo sampling schemes, the joint model is fit to longitudinal PSA measures from 676 patients treated at Massachusetts General Hospital between the years 1988 and 1995 with follow-up to 1999. Based on these data, predictive schemes for detecting cancer recurrence in new patients based on their longitudinal trajectory are derived.
机译:在对接受癌症治疗的患者进行定期随访期间,对肿瘤再生或转移既敏感又特异的生物标志物越来越多,并得到常规监测。通过简单的血液检查即可获得这些标记物,从而为早期检测复发(或进展)提供了一种廉价的非侵入性手段。当前,标记物的纵向行为被视为疾病早期进展的指标,并且被医师用于做出临床决定。 PSA是一种用于早期人群筛查和前列腺癌复发检测的标记物。已知PSA水平升高可在临床可检测到的复发之前2至5年,并且当前的临床实践通常部分依赖PSA近期的多次升高来触发治疗改变。但是,单个标记的纵向轨迹通常是非线性的。在许多情况下,放疗或手术后立即下降,缓解期达到平台期,随后癌症复发后呈指数上升。本文的目的是确定纵向PSA生物标志物轨迹的多个方面,这些方面对于预测临床复发时间最敏感。纵向测量和事件时间的联合贝叶斯模型基于非线性层次模型(由未知变化点隐含)用于纵向轨迹,而Cox比例风险模型用于进展时间,其中纵向参数的功能作为协变量在考克斯模型中。使用马尔可夫链蒙特卡洛采样方案,该联合模型适用于1988年至1995年间在马萨诸塞州总医院接受治疗的676例患者的纵向PSA测量,并随访至1999年。基于这些数据,用于检测癌症复发的预测方案根据他们的纵向轨迹得出新患者。

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