Application of kriging models for a drug combination experiment on lung cancer |
| |
Authors: | Qian Xiao Lin Wang Hongquan Xu |
| |
Affiliation: | 1. Department of Statistics, University of Georgia, Athens 30602, Georgia;2. Department of Statistics, University of California, Los Angeles 90095, California |
| |
Abstract: | Combinatorial drugs have been widely applied in disease treatment, especially chemotherapy for cancer, due to its improved efficacy and reduced toxicity compared with individual drugs. The study of combinatorial drugs requires efficient experimental designs and proper follow-up statistical modeling techniques. Linear and nonlinear models are often used in the response surface modeling for such experiments. We propose the use of kriging models to better depict the response surfaces of combinatorial drugs. We illustrate our method via a drug combination experiment on lung cancer and further show how proper experimental designs can reduce the necessary run size. We demonstrate that only 27 runs are needed to predict all 512 runs in the original experiment and achieve better precision than existing analyses. |
| |
Keywords: | combinatorial drug experimental design Hill-based model neural network response surface model |
|
|