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Related Experiment Video

Updated: Jan 8, 2026

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MCSPACE: inferring microbiome spatiotemporal dynamics from high-throughput co-localization data.

Gurdip Uppal1,2, Guillaume Urtecho3, Miles Richardson3,4

  • 1Division of Computational Pathology, Brigham and Women's Hospital, Boston, MA, USA.

Microbiome
|December 13, 2025
PubMed
Summary
This summary is machine-generated.

We developed MCSPACE, a novel AI method to analyze complex gut microbiome co-localization data. MCSPACE reveals microbial community structure and dynamics, offering new insights into host-microbial ecosystems.

Keywords:
BiogeographyComputationalGenerative AILongitudinalMachine learningMicrobiomeSpatialSpatiotemporalTime-series

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Area of Science:

  • Microbiome research
  • Computational biology
  • Systems biology

Background:

  • High-throughput sequencing methods like SAMPL-seq enable large-scale characterization of gut microbiome biogeography.
  • Analyzing high-dimensional microbiome co-localization data presents significant computational challenges due to data complexity and noise.

Purpose of the Study:

  • To develop a probabilistic AI method, MCSPACE, for inferring microbial assemblages and their dynamics from co-localization data.
  • To address the complexity and noise inherent in high-dimensional microbiome data.

Main Methods:

  • Development of MCSPACE, a probabilistic AI tool for analyzing microbiome co-localization data.
  • Generation of a large longitudinal mouse gut microbiome co-localization dataset with dietary perturbations.
  • Validation using existing human longitudinal datasets.

Main Results:

  • MCSPACE successfully infers spatially coherent microbial assemblages, their temporal dynamics, and responses to perturbations.
  • Benchmarking demonstrated MCSPACE's superior performance compared to existing methods.
  • Identification of persistent and dynamic microbial assemblages in the human gut and diet-induced shifts in murine gut assemblages.

Conclusions:

  • MCSPACE is a valuable open-source tool for studying microbiome biogeography dynamics.
  • The method provides insights into the role of spatial relationships in host-microbial ecosystem function.
  • Elucidating microbiome spatial structuring is crucial for understanding host-microbial interactions.