Article Synopsis

  • The incidence of early-onset colorectal cancer (eoCRC) is increasing, yet its causes remain unclear, leading researchers to explore machine learning techniques to uncover differences between eoCRC and average-onset CRC (aoCRC).
  • Researchers analyzed data from 64 individuals with colorectal cancer, using advanced technologies like plasma metabolomics and microbiome sequencing, and found that a machine-learning model based on metabolomics outperformed the microbiome-based model in identifying unique features associated with eoCRC.
  • Key findings included specific metabolites that correlated with different microbial communities, suggesting that multi-omics approaches not only reveal distinct biological patterns for eoCRC but also hint at potential therapeutic targets for treatment.

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Article Abstract

The incidence of early-onset colorectal cancer (eoCRC) is rising, and its pathogenesis is not completely understood. We hypothesized that machine learning utilizing paired tissue microbiome and plasma metabolome features could uncover distinct host-microbiome associations between eoCRC and average-onset CRC (aoCRC). Individuals with stages I-IV CRC (n = 64) were categorized as eoCRC (age ≤ 50, n = 20) or aoCRC (age ≥ 60, n = 44). Untargeted plasma metabolomics and 16S rRNA amplicon sequencing (microbiome analysis) of tumor tissue were performed. We fit DIABLO (Data Integration Analysis for Biomarker Discovery using Latent variable approaches for Omics studies) to construct a supervised machine-learning classifier using paired multi-omics (microbiome and metabolomics) data and identify associations unique to eoCRC. A differential association network analysis was also performed. Distinct clustering patterns emerged in multi-omic dimension reduction analysis. The metabolomics classifier achieved an AUC of 0.98, compared to AUC 0.61 for microbiome-based classifier. Circular correlation technique highlighted several key associations. Metabolites glycerol and pseudouridine (higher abundance in individuals with aoCRC) had negative correlations with Parasutterella, and Ruminococcaceae (higher abundance in individuals with eoCRC). Cholesterol and xylitol correlated negatively with Erysipelatoclostridium and Eubacterium, and showed a positive correlation with Acidovorax with higher abundance in individuals with eoCRC. Network analysis revealed different clustering patterns and associations for several metabolites e.g.: urea cycle metabolites and microbes such as Akkermansia. We show that multi-omics analysis can be utilized to study host-microbiome correlations in eoCRC and demonstrates promising biomarker potential of a metabolomics classifier. The distinct host-microbiome correlations for urea cycle in eoCRC may offer opportunities for therapeutic interventions.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11255257PMC
http://dx.doi.org/10.1038/s41698-024-00647-1DOI Listing

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