15: Efficient Designs for Multivariate Crossover Trials

Siuli Mukhopadhyay Co-Author
Indian Institute of Technology Bombay
 
Shubham Sanjay Niphadkar First Author
 
Shubham Sanjay Niphadkar Presenting Author
 
Wednesday, Aug 6: 10:30 AM - 12:20 PM
1516 
Contributed Posters 
Music City Center 
This article aims to study efficient/trace optimal designs for crossover trials with multiple responses recorded from each subject in the time periods. A multivariate fixed effects model is proposed with direct and carryover effects corresponding to the multiple responses. The corresponding error dispersion matrix is chosen to be either proportional or the generalized Markov covariance type, permitting the existence of direct and cross-correlations within and between the multiple responses. The corresponding information matrices for direct effects under the two types of dispersions are used to determine efficient designs. The efficiency of orthogonal array designs of Type I and strength 2 is investigated for a wide choice of covariance functions, namely, Mat(0.5), Mat(1.5) and Mat(∞). To motivate these multivariate crossover designs, a gene expression dataset in a 3×3 framework is utilized.

Keywords

Completely symmetric

Correlated response

Markov-type covariance

Orthogonal arrays

Proportional covariance

Trace optimal 

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