Journal of Data Science,
Statistics, and Visualisation

An Efficient Way to Find Optimal Crossover Designs Using CVX for Precision Medicine

Optimal Crossover Designs via CVX

Authors

  • Yin Li Ontario Medical Association Toronto ON CANADA
  • Weng Kee Wong UCLA
  • Hua Zhou University of California-Los Angeles
  • Keumhee Chough Carriere University of Alberta

DOI:

https://doi.org/10.52933/jdssv.v4i3.83

Keywords:

convex optimization, dual-objective optimal design,, information matrix, N-of-1 trial, precision medicine, repeated measurement design

Abstract

Crossover designs play an increasingly important role in precision medicine. We show the search of an optimal crossover design can be formulated as a convex optimization problem and convex optimization tools, such as CVX, can be directly used to search for an optimal crossover design.  We first demonstrate how to transform crossover design problems into convex optimization problems and show CVX can effortlessly find optimal crossover designs that coincide with a few theoretical crossover optimal designs in the literature. The proposed approach is especially useful when it becomes problematic to construct optimal designs analytically for complicated models. We then apply CVX to find crossover designs for models with auto-correlated error structures or when the information matrices may be singular and analytical answers are unavailable. We also construct N-of-1 trials frequently used in precision medicine to estimate treatment effects on the individuals or to estimate average treatment effects, including finding dual-objective optimal crossover designs.

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Published

2024-06-04

How to Cite

Li, Y. ., Wong, W. K., Zhou, H., & Chough Carriere, K. (2024). An Efficient Way to Find Optimal Crossover Designs Using CVX for Precision Medicine: Optimal Crossover Designs via CVX. Journal of Data Science, Statistics, and Visualisation, 4(3). https://doi.org/10.52933/jdssv.v4i3.83

Issue

Section

Special Issue on Statistical Learning, Visual Analytics, and Beyond
Journal of Data Science,
Statistics, and Visualisation
Pages