EAACI Guidelines on environmental science in allergic diseases and asthma - leveraging artificial intelligence and machine learning to develop a causality model in exposomics.
M H Mohamed ShamjiMarkus OllertIssssswan M AdcockOscar BennettAlberto FavaroRoudin SaramaCarmen RiggioniIsabella Annesi-MaesanoAdnan CustovicSara FontanellaClaudia Traidl-HoffmanKari Christine NadeauLorenzo CecchiMagdalena Zemelka-WiacekMübeccel AkdisMarek JutelIoana AgachePublished in: Allergy (2023)
Allergic diseases and asthma are intrinsically linked to the environment we live in and to patterns of exposure. The integrated approach to understanding the effects of exposures on the immune system includes the ongoing collection of large scale and complex data. This requires sophisticated methods to take full advantage of what this data can offer. Here we discuss the progress and further promise of applying artificial intelligence and machine learning approaches to help unlock the power of complex environmental datasets towards providing causality models of exposure and intervention. We discuss a range of relevant machine learning paradigms and models including the way such models are trained and validated together with examples of machine learning applied to allergic disease in the context of specific environmental exposures as well as attempts to tie these environmental data streams to the fully representative exposome. We also discuss the promise of artificial intelligence in the personalized medicine and the methodological approaches to healthcare with the final ai to improve the public health.
Keyphrases
- artificial intelligence
- big data
- machine learning
- public health
- allergic rhinitis
- deep learning
- healthcare
- human health
- chronic obstructive pulmonary disease
- life cycle
- lung function
- air pollution
- electronic health record
- randomized controlled trial
- rna seq
- cross sectional
- adverse drug
- single cell
- health information
- resistance training
- health insurance