| Literature DB >> 32023941 |
Shomeek Chowdhury1, Stephen S Fong2.
Abstract
The impact of microorganisms on human health has long been acknowledged and studied, but recent advances in research methodologies have enabled a new systems-level perspective on the collections of microorganisms associated with humans, the human microbiome. Large-scale collaborative efforts such as the NIH Human Microbiome Project have sought to kick-start research on the human microbiome by providing foundational information on microbial composition based upon specific sites across the human body. Here, we focus on the four main anatomical sites of the human microbiome: gut, oral, skin, and vaginal, and provide information on site-specific background, experimental data, and computational modeling. Each of the site-specific microbiomes has unique organisms and phenomena associated with them; there are also high-level commonalities. By providing an overview of different human microbiome sites, we hope to provide a perspective where detailed, site-specific research is needed to understand causal phenomena that impact human health, but there is equally a need for more generalized methodology improvements that would benefit all human microbiome research.Entities:
Keywords: DNA sequencing; genome scale modeling; human health; human microbiome
Year: 2020 PMID: 32023941 PMCID: PMC7074762 DOI: 10.3390/microorganisms8020197
Source DB: PubMed Journal: Microorganisms ISSN: 2076-2607
Figure 1Complete human microbiome research pipeline established over the years explaining the integration of experimental and computational methodologies to get the mechanistic understanding of the human microbiome.
Summative table of all the modeling studies performed on Gut, Oral, Skin and Vaginal microbiome during disease and non-disease scenarios.
| Non-Disease | Disease | Experimental Data | Modeling Approach | Reference |
|---|---|---|---|---|
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| Microbe–host–diet interplay | Meta-omics | Genome Scale Modeling | [ | |
| Virtual Metabolic Human Database | Experimental data from published articles (16S rRNA sequencing, Meta-omics etc.) | Genome Scale Modeling | [ | |
| Gut microbiome dynamics in infants and small children | Metagenomics | Genome Scale Modeling | [ | |
| Host–food–microbiome interplay | Omics data of various types | Genome Scale Modeling | [ | |
| Spatial distribution of metabolites at gut microbiome | Microbial culturing | Genome Scale Modeling | [ | |
| Microbe–microbe and host–microbe interactions | Metabolomics, Transcriptomics, Proteomics | Genome Scale Modeling | [ | |
| Gut microbiota dynamics | 16S rRNA sequencing, Metagenomics | Genome Scale Modeling | [ | |
| Gut host-microbe metabolism | Metagenomics | Genome Scale Modeling | [ | |
| Obesity | Metagenomics | Network Based Approach | [ | |
| Inflammatory bowel disease | Metagenomics | Network Based Approach | [ | |
| Diet’s influence on gut microbiome | Metabolomics | Community Metabolic Modeling | [ | |
| Gut microbiome dynamics | Omics and Meta-omics | Genome Scale Modeling | [ | |
| Gut microbiome dynamics | Single-cell genomics, Metagenomics, Metatranscriptomics | Genome Scale Modeling | [ | |
| Gut microbiome metabolism | Genomics, Proteomics, Metabolomics | Genome Scale Modeling | [ | |
| Host-microbe interactions | Omics data of various types | Genome Scale Modeling | [ | |
| Gut microbiota dynamics | Whole-genome sequencing, Transcriptomics, Proteomics | Genome Scale Modeling | [ | |
| Gut microbiome dynamics | Culturomics, Next-generation sequencing (NGS), Phenomics, Transcriptomics, Metabolomics, Proteomics | Genome Scale Modeling | [ | |
| Diet-microbe, microbe–microbe and host-microbe interactions | Meta-omics, Metabolomics | Genome Scale Modeling | [ | |
| Gut metabolome investigation | Metabolomics | Genome Scale Modeling | [ | |
| Deep sequencing/NGS | Genome Scale Modeling | [ | ||
| Malnutrition | Metabolic profiling/Metabolomics | Genome Scale Modeling | [ | |
| Spatial and temporal dynamics | Metagenomics | Agent Based Modeling | [ | |
| Autism | Metabolomics | Genome Scale Modeling | [ | |
| Colon cancer | Omics data of various types | Genome Scale Modeling | [ | |
| Colorectal cancer | Metabolomics | Genome Scale Modeling | [ | |
|
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| Periodontitis | Transcriptomics | Genome Scale Modeling | [ | |
| Periodontitis | Genomics | Genome Scale Modeling | [ | |
| Oral microbiota dynamics | Metabolomics | Network Based Approach | [ | |
| Metabolic Syndrome (MetS) | 16S rRNA sequencing | Network Based Approach | [ | |
|
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| Topographical dynamics at skin microbiome | 16S rRNA sequencing | Network Based Approach | [ | |
| Skin microbiome dynamics | Metagenomics | Genome Scale Modeling | [ | |
|
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| Community dynamics at vaginal microbiome | Bacterial vaginosis (BV) | Metabolomics | Community Genome Scale Metabolic Modeling | [ |
| Preterm birth | 16S rRNA sequencing, Metagenomics, Metatranscriptmics | Genome Scale Modeling | [ | |
| Vaginal microbiome dynamics during pregnancy | 16S rRNA sequencing, Metagenomics, Metatranscriptmics | Genome Scale Modeling | [ | |
Figure 2Phylogenetic tree for the all the human microbes present at the 4 antomical sites (gut, oral, skin, vagina). The disease caused by the resident human microbes is shown by a particular shape.