Department of Mathematics, University of Surrey, Guildford, United Kingdom.
Oncology R&D, AstraZeneca, Cambridge, United Kingdom.
Cancer Res Commun. 2022 Aug 2;2(8):754-761. doi: 10.1158/2767-9764.CRC-22-0032. eCollection 2022 Aug.
Mathematical models used in preclinical drug discovery tend to be empirical growth laws. Such models are well suited to fitting the data available, mostly longitudinal studies of tumor volume; however, they typically have little connection with the underlying physiologic processes. This lack of a mechanistic underpinning restricts their flexibility and potentially inhibits their translation across studies including from animal to human. Here we present a mathematical model describing tumor growth for the evaluation of single-agent cytotoxic compounds that is based on mechanistic principles. The model can predict spatial distributions of cell subpopulations and account for spatial drug distribution effects within tumors. Importantly, we demonstrate that the model can be reduced to a growth law similar in form to the ones currently implemented in pharmaceutical drug development for preclinical trials so that it can integrated into the current workflow. We validate this approach for both cell-derived xenograft and patient-derived xenograft (PDX) data. This shows that our theoretical model fits as well as the best performing and most widely used models. However, in addition, the model is also able to accurately predict the observed growing fraction of tumours. Our work opens up current preclinical modeling studies to also incorporating spatially resolved and multimodal data without significant added complexity and creates the opportunity to improve translation and tumor response predictions.
This theoretical model has the same mathematical structure as that currently used for drug development. However, its mechanistic basis enables prediction of growing fraction and spatial variations in drug distribution.
在临床前药物发现中使用的数学模型往往是经验性的生长规律。此类模型非常适合拟合现有数据,主要是肿瘤体积的纵向研究;然而,它们通常与潜在的生理过程联系甚少。这种缺乏机械基础的情况限制了它们的灵活性,并可能阻碍它们在包括从动物到人类的研究中的转化。在这里,我们提出了一个描述用于评估单剂细胞毒性化合物的肿瘤生长的数学模型,该模型基于机械原理。该模型可以预测细胞亚群的空间分布,并解释肿瘤内的空间药物分布效应。重要的是,我们证明该模型可以简化为一种与目前在临床前试验中用于药物开发的形式相似的生长规律,以便可以将其集成到当前的工作流程中。我们使用细胞源性异种移植和患者源性异种移植(PDX)数据验证了这种方法。这表明我们的理论模型与表现最好和最广泛使用的模型一样拟合。然而,除此之外,该模型还能够准确地预测观察到的肿瘤生长部分。我们的工作使当前的临床前建模研究能够在不增加显著复杂性的情况下也纳入空间分辨率和多模态数据,并为提高转化和肿瘤反应预测创造了机会。
这个理论模型具有与当前用于药物开发相同的数学结构。然而,其机械基础使预测生长部分和药物分布的空间变化成为可能。