Journal article
Looking at the full picture, using topic modeling to observe microbiome communities associated with disease
Gut microbes reports, Vol.1(1), pp.1-11
01/01/2024
DOI: 10.1080/29933935.2024.2378067
PMCID: PMC11340690
PMID: 39183943
Abstract
The microbiome, a complex micro-ecosystem, helps the host with various vital physiological processes. Alterations of the microbiome (dysbiosis) have been linked with several diseases, and generally, differential abundance testing between the healthy and patient groups is performed to identify important bacteria. However, providing a singular species of bacteria to an individual as treatment has not been as successful as fecal microbiota transplant therapy, where the entire microbiome of a healthy individual is transferred. These observations suggest that a combination of bacteria might be crucial for the beneficial effects. Here we provide the framework to utilize topic modeling, an unsupervised machine learning approach, to identify a community of bacteria related to health or disease. Specifically, we used our previously published gut microbiome data of patients with multiple sclerosis (MS), a neurodegenerative disease linked to a dysbiotic gut microbiome. We identified communities of bacteria associated with MS, including genera previously discovered, but also others that would have been overlooked by differential abundance testing. This method can be a useful tool for analyzing the microbiome, and it should be considered along with the commonly utilized differential abundance tests to better understand the role of the gut microbiome in health and disease.The microbiome, a complex micro-ecosystem, helps the host with various vital physiological processes. Alterations of the microbiome (dysbiosis) have been linked with several diseases, and generally, differential abundance testing between the healthy and patient groups is performed to identify important bacteria. However, providing a singular species of bacteria to an individual as treatment has not been as successful as fecal microbiota transplant therapy, where the entire microbiome of a healthy individual is transferred. These observations suggest that a combination of bacteria might be crucial for the beneficial effects. Here we provide the framework to utilize topic modeling, an unsupervised machine learning approach, to identify a community of bacteria related to health or disease. Specifically, we used our previously published gut microbiome data of patients with multiple sclerosis (MS), a neurodegenerative disease linked to a dysbiotic gut microbiome. We identified communities of bacteria associated with MS, including genera previously discovered, but also others that would have been overlooked by differential abundance testing. This method can be a useful tool for analyzing the microbiome, and it should be considered along with the commonly utilized differential abundance tests to better understand the role of the gut microbiome in health and disease.
Details
- Title: Subtitle
- Looking at the full picture, using topic modeling to observe microbiome communities associated with disease
- Creators
- Rachel L FitzjerrellsNicholas J Ollberding - Cincinnati Children's Hospital Medical CenterAshutosh K Mangalam - University of Iowa
- Resource Type
- Journal article
- Publication Details
- Gut microbes reports, Vol.1(1), pp.1-11
- DOI
- 10.1080/29933935.2024.2378067
- PMID
- 39183943
- PMCID
- PMC11340690
- ISSN
- 2993-3935
- eISSN
- 2993-3935
- Language
- English
- Date published
- 01/01/2024
- Academic Unit
- Pathology; Iowa Neuroscience Institute
- Record Identifier
- 9984699053702771
Metrics
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