A digital twin of the infant microbiome to predict neurodevelopmental deficits.
Nicholas SizemoreKaitlyn OliphantRuolin ZhengCamilia R MartinErika C ClaudIshanu ChattopadhyayPublished in: Science advances (2024)
Despite the recognized gut-brain axis link, natural variations in microbial profiles between patients hinder definition of normal abundance ranges, confounding the impact of dysbiosis on infant neurodevelopment. We infer a digital twin of the infant microbiome, forecasting ecosystem trajectories from a few initial observations. Using 16 S ribosomal RNA profiles from 88 preterm infants (398 fecal samples and 32,942 abundance estimates for 91 microbial classes), the model (Q-net) predicts abundance dynamics with R 2 = 0.69. Contrasting the fit to Q-nets of typical versus suboptimal development, we can reliably estimate individual deficit risk ( M δ ) and identify infants achieving poor future head circumference growth with ≈76% area under the receiver operator characteristic curve, 95% ± 1.8% positive predictive value at 98% specificity at 30 weeks postmenstrual age. We find that early transplantation might mitigate risk for ≈45.2% of the cohort, with potentially negative effects from incorrect supplementation. Q-nets are generative artificial intelligence models for ecosystem dynamics, with broad potential applications.
Keyphrases
- artificial intelligence
- preterm infants
- antibiotic resistance genes
- end stage renal disease
- microbial community
- human health
- machine learning
- climate change
- big data
- deep learning
- chronic kidney disease
- ejection fraction
- newly diagnosed
- traumatic brain injury
- prognostic factors
- body mass index
- peritoneal dialysis
- low birth weight
- depressive symptoms
- risk assessment
- stem cells
- white matter
- patient reported outcomes
- mesenchymal stem cells
- body weight
- congenital heart disease
- brain injury
- preterm birth