Two-Stage Joint Model for Multivariate Longitudinal and Multistate Processes, with Application to Renal Transplantation Data

IF 1 Q3 STATISTICS & PROBABILITY Journal of Probability and Statistics Pub Date : 2021-04-09 DOI:10.1155/2021/6641602
Behnaz Alafchi, H. Mahjub, Leili Tapak, G. Roshanaei, M. Amirzargar
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Abstract

In longitudinal studies, clinicians usually collect longitudinal biomarkers’ measurements over time until an event such as recovery, disease relapse, or death occurs. Joint modeling approaches are increasingly used to study the association between one longitudinal and one survival outcome. However, in practice, a patient may experience multiple disease progression events successively. So instead of modeling of a single event, progression of the disease as a multistate process should be modeled. On the other hand, in such studies, multivariate longitudinal outcomes may be collected and their association with the survival process is of interest. In the present study, we applied a joint model of various longitudinal biomarkers and transitions between different health statuses in patients who underwent renal transplantation. The full joint likelihood approaches are faced with the complexities in computation of the likelihood. So, here, we have proposed two-stage modeling of multivariate longitudinal outcomes and multistate conditions to avoid these complexities. The proposed model showed reliable results compared to the joint model in case of joint modeling of univariate longitudinal biomarker and the multistate process.
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多元纵向和多状态过程的两阶段联合模型及其在肾移植数据中的应用
在纵向研究中,临床医生通常在一段时间内收集纵向生物标志物的测量结果,直到出现恢复、疾病复发或死亡等事件。联合建模方法越来越多地用于研究一个纵向和一个生存结果之间的关系。然而,在实践中,患者可能连续经历多个疾病进展事件。因此,与其对单一事件进行建模,不如将疾病的进展作为一个多状态过程进行建模。另一方面,在此类研究中,可能会收集多变量纵向结果,并且它们与生存过程的关联是有趣的。在本研究中,我们应用了肾移植患者的各种纵向生物标志物和不同健康状态之间转变的联合模型。全联合似然方法面临着似然计算的复杂性。因此,在这里,我们提出了多变量纵向结果和多状态条件的两阶段建模,以避免这些复杂性。在单变量纵向生物标志物和多状态过程联合建模的情况下,与联合模型相比,该模型显示出可靠的结果。
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
0.00%
发文量
14
审稿时长
18 weeks
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