Analyzing the distribution of progression-free survival for combination therapies: A study of model-based translational predictive methods in oncology

IF 4.3 3区 医学 Q1 PHARMACOLOGY & PHARMACY
Marcus Baaz , Tim Cardilin , Mats Jirstrand
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引用次数: 0

Abstract

Progression-free survival (PFS) is an important clinical metric in oncology and is typically illustrated and evaluated using a survival function. The survival function is often estimated post-hoc using the Kaplan-Meier estimator but more sophisticated techniques, such as population modeling using the nonlinear mixed-effects framework, also exist and are used for predictions. However, depending on the choice of population model PFS will follow different distributions both quantitatively and qualitatively. Hence the choice of model will also affect the predictions of the survival curves.

In this paper, we analyze the distribution of PFS for a frequently used tumor growth inhibition model with and without drug-resistance and highlight the translational implications of this. Moreover, we explore and compare how the PFS distribution for combination therapy differs under the hypotheses of additive and independent-drug action.

Furthermore, we calibrate the model to preclinical data and use a previously calibrated clinical model to show that our analytical conclusions are applicable to real-world setting. Finally, we demonstrate that independent-drug action can effectively describe the tumor dynamics of patient-derived xenografts (PDXs) given certain drug combinations.

Abstract Image

分析联合疗法的无进展生存期分布:基于模型的肿瘤转化预测方法研究
无进展生存期(PFS)是肿瘤学中一项重要的临床指标,通常使用生存函数进行说明和评估。生存期函数通常使用 Kaplan-Meier 估计器进行事后估计,但也有更复杂的技术,如使用非线性混合效应框架进行群体建模,并用于预测。然而,根据人群模型的选择,PFS 在定量和定性方面都将遵循不同的分布。因此,模型的选择也会影响生存曲线的预测。在本文中,我们分析了有耐药性和无耐药性的常用肿瘤生长抑制模型的 PFS 分布,并强调了其转化意义。此外,我们还探讨并比较了在相加作用和独立药物作用假设下,联合疗法的 PFS 分布有何不同。此外,我们还根据临床前数据对模型进行了校准,并使用先前校准过的临床模型来证明我们的分析结论适用于真实世界环境。最后,我们证明了独立药物作用可以有效地描述特定药物组合下患者衍生异种移植物(PDX)的肿瘤动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.60
自引率
2.20%
发文量
248
审稿时长
50 days
期刊介绍: The journal publishes research articles, review articles and scientific commentaries on all aspects of the pharmaceutical sciences with emphasis on conceptual novelty and scientific quality. The Editors welcome articles in this multidisciplinary field, with a focus on topics relevant for drug discovery and development. More specifically, the Journal publishes reports on medicinal chemistry, pharmacology, drug absorption and metabolism, pharmacokinetics and pharmacodynamics, pharmaceutical and biomedical analysis, drug delivery (including gene delivery), drug targeting, pharmaceutical technology, pharmaceutical biotechnology and clinical drug evaluation. The journal will typically not give priority to manuscripts focusing primarily on organic synthesis, natural products, adaptation of analytical approaches, or discussions pertaining to drug policy making. Scientific commentaries and review articles are generally by invitation only or by consent of the Editors. Proceedings of scientific meetings may be published as special issues or supplements to the Journal.
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