Fraunhofer-Chalmers Centre, Chalmers Science Park, Gothenburg, Sweden.
Department of Mathematical Sciences, Chalmers University of Technology and University of Gothenburg, Gothenburg, Sweden.
J Pharmacokinet Pharmacodyn. 2022 Apr;49(2):167-178. doi: 10.1007/s10928-021-09784-7. Epub 2021 Oct 8.
A central question in drug discovery is how to select drug candidates from a large number of available compounds. This analysis presents a model-based approach for comparing and ranking combinations of radiation and radiosensitizers. The approach is quantitative and based on the previously-derived Tumor Static Exposure (TSE) concept. Combinations of radiation and radiosensitizers are evaluated based on their ability to induce tumor regression relative to toxicity and other potential costs. The approach is presented in the form of a case study where the objective is to find the most promising candidate out of three radiosensitizing agents. Data from a xenograft study is described using a nonlinear mixed-effects modeling approach and a previously-published tumor model for radiation and radiosensitizing agents. First, the most promising candidate is chosen under the assumption that all compounds are equally toxic. The impact of toxicity in compound selection is then illustrated by assuming that one compound is more toxic than the others, leading to a different choice of candidate.
药物发现中的一个核心问题是如何从大量可用化合物中选择候选药物。本分析提出了一种基于模型的方法,用于比较和排序辐射与放射增敏剂的组合。该方法是定量的,基于先前推导的肿瘤静态暴露(TSE)概念。根据诱导肿瘤消退的能力相对于毒性和其他潜在成本来评估辐射与放射增敏剂的组合。该方法以一个案例研究的形式呈现,其目的是从三种放射增敏剂中找到最有前途的候选药物。使用非线性混合效应建模方法和先前发表的辐射和放射增敏剂的肿瘤模型来描述异种移植研究的数据。首先,在假设所有化合物毒性相同的情况下,选择最有前途的候选药物。然后通过假设一种化合物比其他化合物毒性更大来说明毒性对化合物选择的影响,从而导致候选药物的不同选择。