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Integrating pH into the metabolic theory of ecology to predict bacterial diversity in soil.

Lu LuanYuji JiangFrancisco Dini-AndreoteThomas W CrowtherPengfa LiMohammad BahramJie ZhengQinsong XuXue-Xian ZhangBo Sun
Published in: Proceedings of the National Academy of Sciences of the United States of America (2023)
Microorganisms play essential roles in soil ecosystem functioning and maintenance, but methods are currently lacking for quantitative assessments of the mechanisms underlying microbial diversity patterns observed across disparate systems and scales. Here we established a quantitative model to incorporate pH into metabolic theory to capture and explain some of the unexplained variation in the relationship between temperature and soil bacterial diversity. We then tested and validated our newly developed models across multiple scales of ecological organization. At the species level, we modeled the diversification rate of the model bacterium Pseudomonas fluorescens evolving under laboratory media gradients varying in temperature and pH. At the community level, we modeled patterns of bacterial communities in paddy soils across a continental scale, which included natural gradients of pH and temperature. Last, we further extended our model at a global scale by integrating a meta-analysis comprising 870 soils collected worldwide from a wide range of ecosystems. Our results were robust in consistently predicting the distributional patterns of bacterial diversity across soil temperature and pH gradients-with model variation explaining from 7 to 66% of the variation in bacterial diversity, depending on the scale and system complexity. Together, our study represents a nexus point for the integration of soil bacterial diversity and quantitative models with the potential to be used at distinct spatiotemporal scales. By mechanistically representing pH into metabolic theory, our study enhances our capacity to explain and predict the patterns of bacterial diversity and functioning under current or future climate change scenarios.
Keyphrases
  • climate change
  • human health
  • heavy metals
  • high resolution
  • healthcare
  • plant growth
  • risk assessment
  • mental health
  • microbial community
  • staphylococcus aureus
  • mass spectrometry