Putter Hein, van der Hage Jos, de Bock Geertruida H, Elgalta Rachid, van de Velde Cornelis J H
Department of Medical Statistics and Bioinformatics, Leiden University Medical Center, The Netherlands.
Biom J. 2006 Jun;48(3):366-80. doi: 10.1002/bimj.200510218.
An important aim in clinical studies in oncology is to study how treatment and prognostic factors influence the course of disease of a patient. Typically in these trials, besides overall survival, also other endpoints such as locoregional recurrence or distant metastasis are of interest. Most commonly in these situations, Cox regression models are applied for each of these endpoints separately or to composite endpoints such as disease-free survival. These approaches however fail to give insight into what happens to a patient after a first event. We re-analyzed data of 2795 patients from a breast cancer trial (EORTC 10854) by applying a multi-state model, with local recurrence, distant metastasis, and both local recurrence and distant metastasis as transient states and death as absorbing state. We used an approach where the clock is reset on entry of a new state. The influence of prognostic factors on each of the transition rates is studied, as well as the influence of the time at which intermediate events occur. The estimated transition rates between the states in the model are used to obtain predictions for patients with a given history. Formulas are developed and illustrated for these prediction probabilities for the clock reset approach.
肿瘤学临床研究的一个重要目标是研究治疗和预后因素如何影响患者的疾病进程。在这些试验中,通常除了总生存期外,局部区域复发或远处转移等其他终点也备受关注。在这些情况下,最常见的是将Cox回归模型分别应用于每个终点,或应用于无病生存期等复合终点。然而,这些方法无法深入了解患者在首次事件发生后会发生什么。我们通过应用多状态模型,对一项乳腺癌试验(EORTC 10854)中2795名患者的数据进行了重新分析,将局部复发、远处转移以及局部复发和远处转移均作为瞬态状态,将死亡作为吸收状态。我们采用了一种在进入新状态时重置时钟的方法。研究了预后因素对每个转移率的影响,以及中间事件发生时间的影响。模型中各状态之间的估计转移率用于为具有给定病史的患者获得预测。针对时钟重置方法,推导并说明了这些预测概率的公式。