Activity Number:
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49
- Recent Advances in Statistical Inference on Graphs
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Type:
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Topic-Contributed
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Date/Time:
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Sunday, August 8, 2021 : 3:30 PM to 5:20 PM
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Sponsor:
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Section on Statistical Learning and Data Science
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Abstract #317298
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Title:
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Bayesian Graphical Modeling of Microbial Community Composition
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Author(s):
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Kurtis Shuler* and Juhee Lee and Irene Chen and Samuel Verbanic
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Companies:
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UCSC and University of California, Santa Cruz and UCLA and UCLA
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Keywords:
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Microbiome;
Operational Taxonomic Unit;
High-throughput Sequencing;
Regression;
Bayesian;
Conditional Independence
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Abstract:
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Rapid advances in sequencing technology have led to increased interest in microbiome studies characterizing microbial communities and their environments. For many microbiome analyses a key research task is to understand the microbiome as a whole, whose structure and function can be heavily affected by microbe-microbe interactions and interactions with its environment. In this work we present a Bayesian regression model with a graph (BRM-G) for count data to provide a holistic understanding of complex microbial communities. We employ a directed acyclic graph (DAG) to represent microbe-microbe interactions. Inference is summarized through moralization of the DAG. A regression component is included to provide insights into how environmental factors and experimental conditions are related to taxa abundance. A simulation study shows that, compared to BRM-G, alternative methods based on simple marginal correlations or not incorporating the interactions between microbes perform poorly in uncovering the complex interplay among microbial taxa. We also apply the model to a microbiome dataset to identify groups of related taxa in chronic wounds and healthy skin in human subjects.
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Authors who are presenting talks have a * after their name.