Machine learning based gut microbiota pattern and response to fiber as a diagnostic tool for chronic inflammatory diseases

Miad Boodaghidizaji, Thaisa Jungles, Tingting Chen, Bin Zhang, Tianming Yao, Alan Landay, Ali Keshavarzian, Bruce Hamaker, Arezoo Ardekani

Research output: Contribution to journalArticlepeer-review

Abstract

Gut microbiota has been implicated in the pathogenesis of multiple gastrointestinal (GI) and systemic metabolic and inflammatory disorders where disrupted gut microbiota composition and function (dysbiosis) has been found in multiple studies. Thus, human microbiome data holds significant potential as a source of information for diagnosing and characterizing diseases—such as phenotypes, disease course, and therapeutic response—associated with dysbiotic microbiota communities. However, multiple attempts to leverage gut microbiota taxonomic data for diagnostic and disease characterization have failed due to significant inter-individual variability of microbiota community and overlap of disrupted microbiota communities among multiple diseases. One potential approach is to look at the microbiota community pattern and response to microbiota modifiers like dietary fiber in different disease states. This approach has become feasible with the advent of machine learning, which can uncover hidden patterns in human microbiome data and enable disease prediction. Accordingly, the aim of our study was to test the hypothesis that machine learning algorithms can distinguish stool microbiota patterns—and their responses to fiber—across diseases with previously reported overlapping dysbiotic microbiota profiles. Here, we applied machine learning algorithms to distinguish between Parkinson's disease, Crohn's disease (CD), ulcerative colitis (UC), human immune deficiency virus (HIV), and healthy control (HC) subjects in the presence and absence of fiber treatments. We demonstrated that machine learning algorithms can classify diseases with accuracy as high as 95%. Furthermore, applying machine learning to microbiome data to distinguish UC from CD yielded a prediction accuracy of up to 90%.

Original languageEnglish (US)
Article number353
JournalBMC Microbiology
Volume25
Issue number1
DOIs
StatePublished - Dec 2025
Externally publishedYes

Keywords

  • Crohn's disease
  • Fiber treatment
  • Machine learning
  • Microbiome data
  • Ulcerative colitis

ASJC Scopus subject areas

  • Microbiology
  • Microbiology (medical)

Fingerprint

Dive into the research topics of 'Machine learning based gut microbiota pattern and response to fiber as a diagnostic tool for chronic inflammatory diseases'. Together they form a unique fingerprint.

Cite this