Host traits and environmental factors shape infection heterogeneity in wild rat–protozoa networks

  • Matan Markfeld
  • , Itamar Talpaz
  • , Barry Biton
  • , Toky Maheriniaina Randriamoria
  • , Voahangy Soarimalala
  • , Steven Michael Goodman
  • , Charles L. Nunn
  • , Georgia Titcomb
  • , Shai Pilosof

Research output: Contribution to journalArticlepeer-review

Abstract

The occurrence of microbes in animal hosts is highly heterogeneous, shaped by interactions among host traits, environmental context, and microbial diversity. Understanding this heterogeneity is particularly critical for endoparasite infections, where some hosts harbor diverse, high-burden assemblages that elevate disease spread and spillover risk. Yet the mechanisms underlying such heterogeneity remain poorly understood in wild systems, especially at the individual-host level. We addressed this challenge by studying protozoan infections in introduced black rats (Rattus rattus) across environmental gradients in Madagascar. Using network-based stochastic block modeling, we identified three infection profiles capturing meaningful variation in protozoan richness and composition, providing a structured framework for understanding heterogeneity. To uncover the predictors of these profiles, we trained machine-learning models incorporating host traits with environmental variables. Our models consistently outperformed no-skill baselines, with host traits contributing ~40% more to predictions than environmental factors. Body mass and gut microbiome composition emerged as the strongest host predictors, while rat and other non-native species densities were the most influential environmental predictors. These results show that infection heterogeneity arises from the interplay of intrinsic host traits and extrinsic environmental conditions. Our approach illustrates how combining network analysis with predictive modeling can (i) uncover latent heterogeneity in host–microbe associations, (ii) identify the relative contribution of the factors driving this heterogeneity, and (iii) predict host infection profiles. Our framework advances microbial ecology by linking host traits, microbial communities, and environmental context, while also informing disease ecology at human–animal interfaces where zoonotic pathogens circulate.

Original languageEnglish
Article numberycag026
JournalISME Communications
Volume6
Issue number1
DOIs
StatePublished - 1 Jan 2026

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 15 - Life on Land
    SDG 15 Life on Land

Keywords

  • Host–microbe network
  • Infection heterogeneity
  • Land-use change
  • Machine Learning
  • Stochastic block modeling

ASJC Scopus subject areas

  • Microbiology

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