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A0589
Title: A Bayesian longitudinal trend analysis of count data with Gaussian processes Authors:  Samantha VanSchalkwyk - University of California, Riverside (United States) [presenting]
Daniel Jeske - University of California, Riverside (United States)
Abstract: The context of comparing two different groups of subjects that are measured repeatedly over time is considered. Our specific focus is on highly variable count data, which have a non-negligible frequency of zeros and have time trends that are difficult to characterize. These challenges are often present when analyzing bacteria or gene expression data sets. Traditional longitudinal data analysis methods, including Generalized Estimating Equations, can be challenged by the features present in these types of data sets. We propose a Bayesian methodology that effectively confronts these challenges. A key feature of the methodology is the use of Gaussian Processes to model the time trends flexibly. Inference procedures based on both sharp and interval null hypotheses are discussed, including the important hypotheses that test for group differences at individual time points. The proposed methodology is illustrated with next-generation sequencing data sets corresponding to two different experimental conditions. In particular, the method is applied to a case study containing bacteria counts of mice with chronic and non-chronic wounds to identify potential wound-healing probiotics. The methodology can be applied to similar next-generation sequencing data sets comparing two groups of subjects.