Huang Hengzhen, Liu Min-Qian, Tan Ming T, Fang Hong-Bin
College of Mathematics and Statistics, Guangxi Normal University, Guilin, China.
School of Statistics and Data Science, LPMC & KLMDASR, Nankai University, Tianjin, China.
Stat Med. 2023 Apr 30;42(9):1353-1367. doi: 10.1002/sim.9674. Epub 2023 Jan 25.
Combinations of drugs are now ubiquitous in treating complex diseases such as cancer and HIV due to their potential for enhanced efficacy and reduced side effects. The traditional combination experiments of drugs focus primarily on the dose effects of the constituent drugs. However, with the doses of drugs remaining unchanged, different sequences of drug administration may also affect the efficacy endpoint. Such drug effects shall be called as order effects. The common order-effect linear models are usually inadequate for analyzing combination experiments due to the nonlinear relationships and complex interactions among drugs. In this article, we propose a random field model for order-effect modeling. This model is flexible, allowing nonlinearities, and interaction effects to be incorporated with a small number of model parameters. Moreover, we propose a subtle experimental design that will collect good quality data for modeling the order effects of drugs with a reasonable run size. A real-data analysis and simulation studies are given to demonstrate that the proposed design and model are effective in predicting the optimal drug sequences in administration.
由于联合用药在提高疗效和减少副作用方面的潜力,目前在治疗癌症和艾滋病等复杂疾病时,联合用药已无处不在。传统的药物联合实验主要关注组成药物的剂量效应。然而,在药物剂量保持不变的情况下,不同的给药顺序也可能影响疗效终点。这种药物效应应称为顺序效应。由于药物之间存在非线性关系和复杂的相互作用,常用的顺序效应线性模型通常不足以分析联合实验。在本文中,我们提出了一种用于顺序效应建模的随机场模型。该模型具有灵活性,允许纳入非线性和相互作用效应,且只需少量模型参数。此外,我们提出了一种巧妙的实验设计,该设计将以合理的运行规模收集高质量数据,用于对药物的顺序效应进行建模。通过实际数据分析和模拟研究表明,所提出的设计和模型在预测给药的最佳药物顺序方面是有效的。