Machine learning model to predict obesity using gut metabolite and brain microstructure data.
Vadim OsadchiyRoshan BalEmeran A MayerRama KunapuliTien S DongPriten VoraDanny PetrasekCathy LiuJean StainsArpana GuptaPublished in: Scientific reports (2023)
A growing body of preclinical and clinical literature suggests that brain-gut-microbiota interactions may contribute to obesity pathogenesis. In this study, we use a machine learning approach to leverage the enormous amount of microstructural neuroimaging and fecal metabolomic data to better understand key drivers of the obese compared to overweight phenotype. Our findings reveal that although gut-derived factors play a role in this distinction, it is primarily brain-directed changes that differentiate obese from overweight individuals. Of the key gut metabolites that emerged from our model, many are likely at least in part derived or influenced by the gut-microbiota, including some amino-acid derivatives. Remarkably, key regions outside of the central nervous system extended reward network emerged as important differentiators, suggesting a role for previously unexplored neural pathways in the pathogenesis of obesity.
Keyphrases
- weight loss
- white matter
- machine learning
- metabolic syndrome
- bariatric surgery
- weight gain
- type diabetes
- big data
- resting state
- insulin resistance
- multiple sclerosis
- high fat diet induced
- electronic health record
- adipose tissue
- amino acid
- systematic review
- artificial intelligence
- cerebral ischemia
- ms ms
- functional connectivity
- obese patients
- genome wide
- stem cells
- dna methylation
- single cell
- bone marrow
- gene expression
- deep learning
- cell therapy
- mesenchymal stem cells
- brain injury
- subarachnoid hemorrhage