4.5 Article

Multi-kingdom microbiota analyses identify bacterial-fungal interactions and biomarkers of colorectal cancer across cohorts

Journal

NATURE MICROBIOLOGY
Volume 7, Issue 2, Pages 238-+

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41564-021-01030-7

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Funding

  1. MOST Key R&D Program of China [2020YFA0907200, 2018YFC2000700, 2017YFC0907500]
  2. National Natural Science Foundation [82030099, 81630086, 31900129, 82073637, 81774152, 81770571, 82000536]
  3. Shanghai Public Health System Construction Three-Year Action Plan [GWV-10.1-XK15]
  4. Program for Young Eastern Scholar at the Shanghai Institutions of Higher Learning program [QD2018016]
  5. Innovative research team of high-level local universities in Shanghai, Medicine and Engineering Interdisciplinary Research Fund of Shanghai Jiao Tong University [YG2020YQ06, YG2020YQ19]
  6. Innovative research team of high-level local universities in Shanghai [SSMU-ZLCX20180302]
  7. Guangdong Province 'Pearl River Talent Plan' Innovation and Entrepreneurship Team Project [2019ZT08Y464]
  8. Shanghai Municipal Science and Technology [2017SHZDZX01]
  9. National Postdoctoral Program for Innovative Talents of China [BX20190393]
  10. China Postdoctoral Science Foundation [2019M651568, 2019M663252]

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Analysis of gut microbiome in patients with colorectal cancer revealed cross-kingdom interactions and identified multi-kingdom markers of the disease. Multi-kingdom markers, particularly fungal species, showed superior diagnostic accuracy compared to single-kingdom markers. Functional potential of the microbiota was also explored and revealed potential diagnostic value.
Analysis of bacterial, archaeal, fungal and viral species in the gut microbiome of patients with colorectal cancer identified cross-kingdom interactions and multi-kingdom markers of disease. Despite recent progress in our understanding of the association between the gut microbiome and colorectal cancer (CRC), multi-kingdom gut microbiome dysbiosis in CRC across cohorts is unexplored. We investigated four-kingdom microbiota alterations using CRC metagenomic datasets of 1,368 samples from 8 distinct geographical cohorts. Integrated analysis identified 20 archaeal, 27 bacterial, 20 fungal and 21 viral species for each single-kingdom diagnostic model. However, our data revealed superior diagnostic accuracy for models constructed with multi-kingdom markers, in particular the addition of fungal species. Specifically, 16 multi-kingdom markers including 11 bacterial, 4 fungal and 1 archaeal feature, achieved good performance in diagnosing patients with CRC (area under the receiver operating characteristic curve (AUROC) = 0.83) and maintained accuracy across 3 independent cohorts. Coabundance analysis of the ecological network revealed associations between bacterial and fungal species, such as Talaromyces islandicus and Clostridium saccharobutylicum. Using metagenome shotgun sequencing data, the predictive power of the microbial functional potential was explored and elevated D-amino acid metabolism and butanoate metabolism were observed in CRC. Interestingly, the diagnostic model based on functional EggNOG genes achieved high accuracy (AUROC = 0.86). Collectively, our findings uncovered CRC-associated microbiota common across cohorts and demonstrate the applicability of multi-kingdom and functional markers as CRC diagnostic tools and, potentially, as therapeutic targets for the treatment of CRC.

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