Personalized Treatment Selection for Multivariate Ordinal Scale Outcomes and Multiple Treatments

Bakeerathan Gunaratnam Co-Author
University of Louisville
 
K.B. Kulasekera Co-Author
University of Louisville
 
Chathura Siriwardhana First Author
University of Hawaii
 
Chathura Siriwardhana Presenting Author
University of Hawaii
 
Tuesday, Aug 6: 11:35 AM - 11:50 AM
2221 
Contributed Papers 
Oregon Convention Center 
We present an innovative approach for tailoring treatment selection on an individualized basis in the presence of correlated multiple responses, particularly those measured on ordinal scales, including binary responses. Our methodology involves the utilization of rank lists for treatments, generated from probabilities of observing responses of higher order than each level of the ordinal outcome, conditional on patient covariate measurements. We introduce a rank aggregation technique designed to amalgamate multiple lists of ranks, allowing for correlations both within these lists and among elements within each list. Our approach is versatile, accommodating any number of treatments and responses, and is applicable across a wide range of models. Our method offers flexibility by allowing the integration of response weights, enabling customization based on patient and clinician preferences on an individual case basis for optimal treatment decisions. To evaluate the performance of our proposed method in finite samples, we conducted a simulation study. Furthermore, we provide two illustrative examples using data from clinical trials on Cystic Fibrosis and Alzheimer's Disease.

Keywords

Personalized Treatments

Semiparametric Regression

Rank Aggregation

Ordinal Responses 

Main Sponsor

Biometrics Section