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Machine learning-based meta-analysis reveals gut microbiome alterations associated with Parkinson’s disease

Author

Listed:
  • Stefano Romano

    (Norwich Research Park
    European Molecular Biology Laboratory)

  • Jakob Wirbel

    (European Molecular Biology Laboratory)

  • Rebecca Ansorge

    (Norwich Research Park
    Norwich Research Park)

  • Christian Schudoma

    (European Molecular Biology Laboratory)

  • Quinten Raymond Ducarmon

    (European Molecular Biology Laboratory)

  • Arjan Narbad

    (Norwich Research Park)

  • Georg Zeller

    (European Molecular Biology Laboratory
    Leiden University Medical Center
    Leiden University Medical Center)

Abstract

There is strong interest in using the gut microbiome for Parkinson’s disease (PD) diagnosis and treatment. However, a consensus on PD-associated microbiome features and a multi-study assessment of their diagnostic value is lacking. Here, we present a machine learning meta-analysis of PD microbiome studies of unprecedented scale (4489 samples). Within most studies, microbiome-based machine learning models accurately classify PD patients (average AUC 71.9%). However, these models are study-specific and do not generalise well across other studies (average AUC 61%). Training models on multiple datasets improves their generalizability (average LOSO AUC 68%) and disease specificity as assessed against microbiomes from other neurodegenerative diseases. Moreover, meta-analysis of shotgun metagenomes delineates PD-associated microbial pathways potentially contributing to gut health deterioration and favouring the translocation of pathogenic molecules along the gut-brain axis. Strikingly, microbial pathways for solvent and pesticide biotransformation are enriched in PD. These results align with epidemiological evidence that exposure to these molecules increases PD risk and raise the question of whether gut microbes modulate their toxicity. Here, we offer the most comprehensive overview to date about the PD gut microbiome and provide future reference for its diagnostic and functional potential.

Suggested Citation

  • Stefano Romano & Jakob Wirbel & Rebecca Ansorge & Christian Schudoma & Quinten Raymond Ducarmon & Arjan Narbad & Georg Zeller, 2025. "Machine learning-based meta-analysis reveals gut microbiome alterations associated with Parkinson’s disease," Nature Communications, Nature, vol. 16(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-56829-3
    DOI: 10.1038/s41467-025-56829-3
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    References listed on IDEAS

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