Nature-inspired Metaheuristics for finding Optimal Designs for the Continuation-Ratio Models

Jiaheng Qiu, W. Wong
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Abstract

The continuation-ratio (CR) model is frequently used in dose response studies to model a three-category outcome as the dose levels vary. Design issues for a CR model defined on an unrestricted dose interval have been discussed for estimating model parameters or a selected function of the model parameters. This paper uses metaheuristics to address design issues for a CR model defined on any compact dose interval when there are one or more objectives in the study and some are more important than others. Specifically, we use an exemplary nature-inspired metaheuristic algorithm called particle swarm optimization (PSO) to find locally optimal designs for estimating a few interesting functions of the model parameters, such as the most effective dose ($MED$), the maximum tolerated dose ($MTD$) and for estimating all parameters in a CR model. We demonstrate that PSO can efficiently find locally multiple-objective optimal designs for a CR model on various dose intervals and a small simulation study shows it tends to outperform the popular deterministic cocktail algorithm (CA) and another competitive metaheuristic algorithm called differential evolutionary (DE). We also discuss hybrid algorithms and their flexible applications to design early Phase 2 trials or tackle biomedical problems, such as different strategies for handling the recent pandemic.
寻找连续比模型最优设计的自然启发元启发式方法
在剂量反应研究中,持续比(CR)模型经常用于模拟随剂量水平变化的三类结果。讨论了在不受限制的剂量间隔上定义的CR模型的设计问题,以估计模型参数或模型参数的选定函数。当研究中有一个或多个目标,并且一些目标比其他目标更重要时,本文使用元启发式方法来解决在任何紧凑剂量间隔上定义的CR模型的设计问题。具体来说,我们使用了一种典型的自然启发的元启发式算法,称为粒子群优化(PSO)来寻找局部最优设计,以估计模型参数的一些有趣函数,如最有效剂量(MED$),最大耐受剂量(MTD$)和估计CR模型中的所有参数。我们证明了粒子群算法可以有效地为不同剂量间隔的CR模型找到局部多目标最优设计,并且小型模拟研究表明,它倾向于优于流行的确定性鸡尾酒算法(CA)和另一种称为差分进化(DE)的竞争性元启发式算法。我们还讨论了混合算法及其在设计早期第二阶段试验或解决生物医学问题(例如处理最近大流行的不同策略)方面的灵活应用。
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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