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Seminar: Fernando Quintana

Fernando Quintana Seminar Series
September 19, 2019
All Day
209 W Eighteenth Ave (EA), Room 170

Title

Discovering Interactions Using Dependent Random Partition Models

Speaker

Fernando Quintana, Department of Statistics, Pontificia Universitdad Catolica de Chile

Abstract

Combination chemotherapy treatment regimens created for patients diagnosed with childhood acute lymphoblastic leukemia have had great success in improving cure rates. Unfortunately, patients prescribed these types of treatment regimens have displayed susceptibility to the onset of osteonecrosis. Some have suggested that this is due to pharmacokinetic interaction between two agents in the treatment regimen (asparaginase and dexamethasone) and other physiological variables. Determining which physiological variables to consider when searching for interactions in scenarios like these, minus a priori guidance, has proved to be a challenging problem, particularly if interactions influence the response distribution in ways beyond shifts in expectation or dispersion only. In this paper we propose an exploratory technique that is able to discover associations between covariates and  responses  in a general way. The procedure connects covariates to responses flexibly through dependent random partition prior distributions, and then employs machine learning techniques to highlight potential associations found in each cluster. We provide a simulation study to show utility and apply the method to data produced from a study dedicated to learning which physiological predictors influence severity of osteonecrosis multiplicatively.
 

Note: Seminars are free and open to the public. Reception to follow.