Using Explainable Artificial Intelligence to Discover Interactions in an Ecological Model for Obesity.
Ben AllenMorgan LaneElizabeth Anderson SteevesHollie RaynorPublished in: International journal of environmental research and public health (2022)
Ecological theories suggest that environmental, social, and individual factors interact to cause obesity. Yet, many analytic techniques, such as multilevel modeling, require manual specification of interacting factors, making them inept in their ability to search for interactions. This paper shows evidence that an explainable artificial intelligence approach, commonly employed in genomics research, can address this problem. The method entails using random intersection trees to decode interactions learned by random forest models. Here, this approach is used to extract interactions between features of a multi-level environment from random forest models of waist-to-height ratios using 11,112 participants from the Adolescent Brain Cognitive Development study. This study shows that methods used to discover interactions between genes can also discover interacting features of the environment that impact obesity. This new approach to modeling ecosystems may help shine a spotlight on combinations of environmental features that are important to obesity, as well as other health outcomes.
Keyphrases
- artificial intelligence
- insulin resistance
- climate change
- metabolic syndrome
- weight loss
- machine learning
- big data
- type diabetes
- high fat diet induced
- deep learning
- weight gain
- body mass index
- human health
- mental health
- healthcare
- oxidative stress
- adipose tissue
- young adults
- multiple sclerosis
- genome wide
- gene expression
- single cell
- brain injury
- physical activity
- blood brain barrier
- transcription factor
- cerebral ischemia