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Patterns of infant fecal metabolite concentrations and social behavioral development in toddlers.

Hannah E LaueJulia A BauerWimal PathmasiriSusan C J SumnerSusan McRitchieThomas J PalysAnne G HoenJuliette C MadanMargaret R Karagas
Published in: Pediatric research (2024)
Differences in host and microbial metabolism may explain variability in neurobehavioral phenotypes, but prior studies do not have consistent results. We applied three statistical techniques to explore fecal metabolite differences related to social behavior, including self-organizing maps (SOMs), a novel machine learning algorithm. A 1-year-old fecal metabolite pattern characterized by high lactate and low short-chain fatty acid concentrations, identified using SOMs, was associated with social behavior less indicative of autism spectrum disorder. Our findings suggest that social behavior may be related to metabolite profiles and that future studies may uncover novel findings by applying the SOM algorithm.
Keyphrases
  • machine learning
  • healthcare
  • mental health
  • autism spectrum disorder
  • fatty acid
  • deep learning
  • attention deficit hyperactivity disorder
  • current status
  • working memory
  • drug induced