Lymberopoulos, Eva and Gentili, Giorgia Isabella and Alomari, Muhannad and Sharma, Nikhil (2021) Topological Data Analysis Highlights Novel Geographical Signatures of the Human Gut Microbiome. Frontiers in Artificial Intelligence, 4. ISSN 2624-8212
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Abstract
Background: There is growing interest in the connection between the gut microbiome and human health and disease. Conventional approaches to analyse microbiome data typically entail dimensionality reduction and assume linearity of the observed relationships, however, the microbiome is a highly complex ecosystem marked by non-linear relationships. In this study, we use topological data analysis (TDA) to explore differences and similarities between the gut microbiome across several countries.
Methods: We used curated adult microbiome data at the genus level from the GMrepo database. The dataset contains OTU and demographical data of over 4,400 samples from 19 studies, spanning 12 countries. We analysed the data with tmap, an integrative framework for TDA specifically designed for stratification and enrichment analysis of population-based gut microbiome datasets.
Results: We find associations between specific microbial genera and groups of countries. Specifically, both the USA and UK were significantly co-enriched with the proinflammatory genera Lachnoclostridium and Ruminiclostridium, while France and New Zealand were co-enriched with other, butyrate-producing, taxa of the order Clostridiales.
Conclusion: The TDA approach demonstrates the overlap and distinctions of microbiome composition between and within countries. This yields unique insights into complex associations in the dataset, a finding not possible with conventional approaches. It highlights the potential utility of TDA as a complementary tool in microbiome research, particularly for large population-scale datasets, and suggests further analysis on the effects of diet and other regionally varying factors.
Item Type: | Article |
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Subjects: | EP Archives > Multidisciplinary |
Depositing User: | Managing Editor |
Date Deposited: | 09 Mar 2023 07:18 |
Last Modified: | 23 Mar 2024 04:13 |
URI: | http://research.send4journal.com/id/eprint/993 |