4.8 Article

Metabolic modeling predicts specific gut bacteria as key determinants for Candida albicans colonization levels

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ISME JOURNAL
卷 15, 期 5, 页码 1257-1270

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SPRINGERNATURE
DOI: 10.1038/s41396-020-00848-z

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资金

  1. Deutsche Forschungsgemeinschaft (DFG) CRC/Transregio 124 Pathogenic fungi and their human host: Networks of interaction [210879364]
  2. Novo Nordisk Foundation under NFF [NNF10CC1016517]
  3. Novo Nordisk Foundation, Challenge programme, CaMiT [NNF17CO0028232]
  4. German Ministry for Education and Science in the program Unternehmen Region [BMBF 03Z22JN11]

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The study reconstructed a metabolic model of Candida albicans to investigate bacterial-fungal metabolic interactions in the gut, predicting key gut bacterial species modulating C. albicans colonization levels. The findings were confirmed through metagenomic sequencing and fungal growth experiments, demonstrating the potential impact of gut microbiome on harmful levels of C. albicans.
Candida albicans is a leading cause of life-threatening hospital-acquired infections and can lead to Candidemia with sepsis-like symptoms and high mortality rates. We reconstructed a genome-scale C. albicans metabolic model to investigate bacterial-fungal metabolic interactions in the gut as determinants of fungal abundance. We optimized the predictive capacity of our model using wild type and mutant C. albicans growth data and used it for in silico metabolic interaction predictions. Our analysis of more than 900 paired fungal-bacterial metabolic models predicted key gut bacterial species modulating C. albicans colonization levels. Among the studied microbes, Alistipes putredinis was predicted to negatively affect C. albicans levels. We confirmed these findings by metagenomic sequencing of stool samples from 24 human subjects and by fungal growth experiments in bacterial spent media. Furthermore, our pairwise simulations guided us to specific metabolites with promoting or inhibitory effect to the fungus when exposed in defined media under carbon and nitrogen limitation. Our study demonstrates that in silico metabolic prediction can lead to the identification of gut microbiome features that can significantly affect potentially harmful levels of C. albicans.

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