TY - JOUR
T1 - Machine learning and deep learning applications in microbiome research
AU - Hernandez Medina, Ricardo
AU - Kutuzova, Svetlana
AU - Nielsen, Knud Nor
AU - Johansen, Joachim
AU - Hansen, Lars Hestbjerg
AU - Nielsen, Mads
AU - Rasmussen, Simon
PY - 2022
Y1 - 2022
N2 - The many microbial communities around us form interactive and dynamic ecosystems called microbiomes. Though concealed from the naked eye, microbiomes govern and influence macroscopic systems including human health, plant resilience, and biogeochemical cycling. Such feats have attracted interest from the scientific community, which has recently turned to machine learning and deep learning methods to interrogate the microbiome and elucidate the relationships between its composition and function. Here, we provide an overview of how the latest microbiome studies harness the inductive prowess of artificial intelligence methods. We start by highlighting that microbiome data – being compositional, sparse, and high-dimensional – necessitates special treatment. We then introduce traditional and novel methods and discuss their strengths and applications. Finally, we discuss the outlook of machine and deep learning pipelines, focusing on bottlenecks and considerations to address them.
AB - The many microbial communities around us form interactive and dynamic ecosystems called microbiomes. Though concealed from the naked eye, microbiomes govern and influence macroscopic systems including human health, plant resilience, and biogeochemical cycling. Such feats have attracted interest from the scientific community, which has recently turned to machine learning and deep learning methods to interrogate the microbiome and elucidate the relationships between its composition and function. Here, we provide an overview of how the latest microbiome studies harness the inductive prowess of artificial intelligence methods. We start by highlighting that microbiome data – being compositional, sparse, and high-dimensional – necessitates special treatment. We then introduce traditional and novel methods and discuss their strengths and applications. Finally, we discuss the outlook of machine and deep learning pipelines, focusing on bottlenecks and considerations to address them.
U2 - 10.1038/s43705-022-00182-9
DO - 10.1038/s43705-022-00182-9
M3 - Journal article
VL - 2
JO - ISME Communications
JF - ISME Communications
M1 - 98
ER -