Sperrin Matthew, Thygesen Helene, Su Ting-Li, Harbron Chris, Whitehead Anne
Health eResearch Centre, Farr Institute, University of Manchester, Manchester, UK.
Leeds Institute of Molecular Medicine, St James's University Hospital, Leeds, UK.
Pharm Stat. 2015 May-Jun;14(3):216-25. doi: 10.1002/pst.1676. Epub 2015 Mar 21.
The identification of synergistic interactions between combinations of drugs is an important area within drug discovery and development. Pre-clinically, large numbers of screening studies to identify synergistic pairs of compounds can often be ran, necessitating efficient and robust experimental designs. We consider experimental designs for detecting interaction between two drugs in a pre-clinical in vitro assay in the presence of uncertainty of the monotherapy response. The monotherapies are assumed to follow the Hill equation with common lower and upper asymptotes, and a common variance. The optimality criterion used is the variance of the interaction parameter. We focus on ray designs and investigate two algorithms for selecting the optimum set of dose combinations. The first is a forward algorithm in which design points are added sequentially. This is found to give useful solutions in simple cases but can lack robustness when knowledge about the monotherapy parameters is insufficient. The second algorithm is a more pragmatic approach where the design points are constrained to be distributed log-normally along the rays and monotherapy doses. We find that the pragmatic algorithm is more stable than the forward algorithm, and even when the forward algorithm has converged, the pragmatic algorithm can still out-perform it. Practically, we find that good designs for detecting an interaction have equal numbers of points on monotherapies and combination therapies, with those points typically placed in positions where a 50% response is expected. More uncertainty in monotherapy parameters leads to an optimal design with design points that are more spread out.
确定药物组合之间的协同相互作用是药物发现与开发中的一个重要领域。在临床前阶段,通常可以进行大量筛选研究以识别化合物的协同对,这就需要高效且稳健的实验设计。我们考虑在临床前体外试验中,在单一疗法反应存在不确定性的情况下,用于检测两种药物之间相互作用的实验设计。假设单一疗法遵循具有共同下限和上限渐近线以及共同方差的希尔方程。所使用的最优性标准是相互作用参数的方差。我们专注于射线设计,并研究两种用于选择最佳剂量组合集的算法。第一种是前向算法,其中设计点按顺序添加。发现在简单情况下这能给出有用的解决方案,但当关于单一疗法参数的知识不足时可能缺乏稳健性。第二种算法是一种更务实的方法,其中设计点被约束为沿射线和单一疗法剂量呈对数正态分布。我们发现务实算法比前向算法更稳定,并且即使前向算法已经收敛,务实算法仍然可以表现得更好。实际上,我们发现用于检测相互作用的良好设计在单一疗法和联合疗法上具有相等数量的点,这些点通常放置在预期有50%反应的位置。单一疗法参数中更多的不确定性会导致一种最优设计,其设计点分布得更分散。