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A Bayesian Multivariate Spatial Point Pattern Model: Application to Oral Microbiome FISH Image Data.

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    New methods using multivariate point process models quantify spatial cell organization in biofilms. Specific bacterial pairs on the tongue show strong positive or negative spatial correlations, revealing inter-taxon relationships.

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    Area of Science:

    • Microbiology
    • Computational Biology
    • Biostatistics

    Background:

    • Cellular imaging, particularly fluorescence in situ hybridization (FISH), enables detailed visualization of cell spatial organization.
    • Quantifying this organization is vital for understanding tissue and biofilm function, impacting human health and disease.
    • Existing methods lack comprehensive approaches for quantifying complex multi-cell spatial interactions.

    Purpose of the Study:

    • To develop a flexible multivariate point process model for characterizing and estimating spatial interactions among multiple cell types.
    • To provide a Bayesian framework for unified estimation and direct quantification of uncertainty in spatial relationships.
    • To enable robust model selection and hierarchical inference for integrated analysis of image data.

    Main Methods:

    • Proposed a flexible multivariate point process model within a Bayesian framework.
    • Incorporated shrinkage priors for stable and interpretable estimation of latent processes.
    • Utilized a deviance information criterion for model selection and comparison with latent variables.
    • Developed a hierarchical modeling approach to integrate multiple image-specific estimates.

    Main Results:

    • Identified strong positive spatial correlations between specific bacterial pairs in human tongue biofilms (e.g., Streptococcus mitis-Streptococcus salivarius).
    • Observed negative spatial correlations for other pairs (e.g., Actinomyces-Rothia).
    • Demonstrated that inter-taxon relationships significantly contribute to the spatial variance for most taxa.

    Conclusions:

    • The proposed multivariate point process model effectively quantifies complex spatial interactions in microbial communities.
    • The findings reveal specific spatial relationships among oral bacteria, offering insights into biofilm structure and function.
    • This quantitative approach has implications for understanding host-microbe interactions and developing targeted interventions.