Personalized Timing for Allogeneic Stem-Cell Transplantation in Hematologic Neoplasms: A Target Trial Emulation Approach Using Multistate Modeling and Microsimulation.

IF 3.3 Q2 ONCOLOGY JCO Clinical Cancer Informatics Pub Date : 2024-05-01 DOI:10.1200/CCI.23.00205
Caterina Gregorio, Marta Spreafico, Saverio D'Amico, Elisabetta Sauta, Gianluca Asti, Luca Lanino, Cristina Astrid Tentori, Uwe Platzbecker, Torsten Haferlach, Maria Diez-Campelo, Pierre Fenaux, Rami Komrokji, Matteo Giovanni Della Porta, Francesca Ieva
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Abstract

Purpose: Decision about the optimal timing of a treatment procedure in patients with hematologic neoplasms is critical, especially for cellular therapies (most including allogeneic hematopoietic stem-cell transplantation [HSCT]). In the absence of evidence from randomized trials, real-world observational data become beneficial to study the effect of the treatment timing. In this study, a framework to estimate the expected outcome after an intervention in a time-to-event scenario is developed, with the aim of optimizing the timing in a personalized manner.

Methods: Retrospective real-world data are leveraged to emulate a target trial for treatment timing using multistate modeling and microsimulation. This case study focuses on myelodysplastic syndromes, serving as a prototype for rare cancers characterized by a heterogeneous clinical course and complex genomic background. A cohort of 7,118 patients treated according to conventional available treatments/evidence across Europe and United States is analyzed. The primary clinical objective is to determine the ideal timing for HSCT, the only curative option for these patients.

Results: This analysis enabled us to identify the most appropriate time frames for HSCT on the basis of each patient's unique profile, defined by a combination relevant patients' characteristics.

Conclusion: The developed methodology offers a structured framework to address a relevant clinical issue in the field of hematology. It makes several valuable contributions: (1) novel insights into how to develop decision models to identify the most favorable HSCT timing, (2) evidence to inform clinical decisions in a real-world context, and (3) the incorporation of complex information into decision making. This framework can be applied to provide medical insights for clinical issues that cannot be adequately addressed through randomized clinical trials.

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血液肿瘤异基因干细胞移植的个性化时机选择:使用多州建模和微观模拟的目标试验仿真方法。
目的:决定血液肿瘤患者治疗程序的最佳时机至关重要,尤其是细胞疗法(包括异基因造血干细胞移植[HSCT])。在缺乏随机试验证据的情况下,真实世界的观察数据有利于研究治疗时机的影响。在本研究中,我们开发了一个框架,用于估算在时间到事件情景中进行干预后的预期结果,目的是以个性化的方式优化治疗时机:方法:利用回顾性真实世界数据,通过多态建模和微观模拟来模拟治疗时机的目标试验。本案例研究的重点是骨髓增生异常综合征,它是罕见癌症的原型,具有异质性的临床过程和复杂的基因组背景。研究分析了欧洲和美国 7118 名按照现有常规疗法/证据接受治疗的患者队列。主要临床目标是确定造血干细胞移植的理想时机,这是这些患者唯一的治愈选择:这项分析使我们能够根据每位患者的独特情况(由患者的相关特征组合而成)确定最合适的造血干细胞移植时间框架:结论:所开发的方法为解决血液学领域的相关临床问题提供了一个结构化框架。它做出了几项有价值的贡献:(1) 对如何开发决策模型以确定最有利的造血干细胞移植时机提出了新的见解;(2) 提供了在真实世界背景下为临床决策提供依据的证据;(3) 将复杂信息纳入决策。该框架可用于为无法通过随机临床试验充分解决的临床问题提供医学见解。
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4.80%
发文量
190
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