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Clustering microbiome data using mixtures of logistic normal multinomial models

Yuan Fang, Sanjeena Subedi

2023Scientific Reports14 citationsDOIOpen Access PDF

Abstract

Discrete data such as counts of microbiome taxa resulting from next-generation sequencing are routinely encountered in bioinformatics. Taxa count data in microbiome studies are typically high-dimensional, over-dispersed, and can only reveal relative abundance therefore being treated as compositional. Analyzing compositional data presents many challenges because they are restricted to a simplex. In a logistic normal multinomial model, the relative abundance is mapped from a simplex to a latent variable that exists on the real Euclidean space using the additive log-ratio transformation. While a logistic normal multinomial approach brings flexibility for modeling the data, it comes with a heavy computational cost as the parameter estimation typically relies on Bayesian techniques. In this paper, we develop a novel mixture of logistic normal multinomial models for clustering microbiome data. Additionally, we utilize an efficient framework for parameter estimation using variational Gaussian approximations (VGA). Adopting a variational Gaussian approximation for the posterior of the latent variable reduces the computational overhead substantially. The proposed method is illustrated on simulated and real datasets.

Topics & Concepts

Mixture modelCluster analysisMultinomial distributionComputer scienceMicrobiomeCount dataSimplexBayesian probabilityLatent variableMultinomial logistic regressionData miningVariable (mathematics)StatisticsArtificial intelligenceMathematicsBiologyBioinformaticsMachine learningPoisson distributionGeometryMathematical analysisBayesian Methods and Mixture ModelsOral microbiology and periodontitis researchGut microbiota and health
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