| Literature DB >> 35889831 |
Itai Sharon1,2, Narciso Martín Quijada3,4, Edoardo Pasolli5,6, Marco Fabbrini7,8, Francesco Vitali9, Valeria Agamennone10, Andreas Dötsch11, Evelyne Selberherr3, José Horacio Grau12,13, Martin Meixner12, Karsten Liere12, Danilo Ercolini5,6, Carlotta de Filippo9, Giovanna Caderni14, Patrizia Brigidi8, Silvia Turroni7.
Abstract
The core microbiome, which refers to a set of consistent microbial features across populations, is of major interest in microbiome research and has been addressed by numerous studies. Understanding the core microbiome can help identify elements that lead to dysbiosis, and lead to treatments for microbiome-related health states. However, defining the core microbiome is a complex task at several levels. In this review, we consider the current state of core human microbiome research. We consider the knowledge that has been gained, the factors limiting our ability to achieve a reliable description of the core human microbiome, and the fields most likely to improve that ability. DNA sequencing technologies and the methods for analyzing metagenomics and amplicon data will most likely facilitate higher accuracy and resolution in describing the microbiome. However, more effort should be invested in characterizing the microbiome's interactions with its human host, including the immune system and nutrition. Other components of this holobiontic system should also be emphasized, such as fungi, protists, lower eukaryotes, viruses, and phages. Most importantly, a collaborative effort of experts in microbiology, nutrition, immunology, medicine, systems biology, bioinformatics, and machine learning is probably required to identify the traits of the core human microbiome.Entities:
Keywords: NGS sequencing; core microbiome; diet; eukaryotes; gut; healthy microbiome; immune system; omics; prokaryotes; virome
Mesh:
Year: 2022 PMID: 35889831 PMCID: PMC9323970 DOI: 10.3390/nu14142872
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 6.706
Approaches for defining the core human microbiome.
| Approach | Pros | Cons | Examples |
|---|---|---|---|
| Relatively simple to implement; can be applied to amplicon studies | Common taxa are usually identified at high taxonomic levels only | [ | |
| Captures the contribution of the core human microbiome to the host and the community | It is difficult to distinguish between human-specific and broad core functions | [ | |
| Can capture complex patterns in community structure; may be more realistic than community composition alone | Less clear which patterns should be considered; no standard methods and programs are available | [ | |
| Stability is a critical characteristic of the core microbiome that is not captured through community composition alone | Definition is vague; there are no widely accepted methods for evaluating stability and resilience | [ |
Figure 1Community profiling of nine cohorts: HMP phases 1 (n = 138), 2 (n = 91), and 3 (n = 42); healthy individuals from Denmark (n = 64); individuals with IBD from Spain (n = 16); hunter-gatherers and traditional agriculturalists (n = 19); gorillas (n = 15); mice (n = 141); and chickens (n = 121). (a) The fraction of samples that contain each species, for species detected in at least 70% of the samples in at least one cohort (a total of 107 species). Refer to Supplementary Table S3 for a complete list of all the detected species in all cohorts. (b) The first two components of an unweighted UniFrac-based MDS analysis considering all samples. (c) The number of species detected in at least 90% of the samples of each cohort. Only one species (F. prausnitzii) was detected in 90% or more of the samples across all healthy human Western (n = 4) and all human (n = 6) datasets. (d) The number of pathways detected in >90% of the samples in all healthy Western human datasets (n = 4); all human datasets (n = 6); human and gorilla datasets (n = 7); human, gorilla, and mouse datasets (n = 8); and all datasets, including chickens (n = 9). See also Supplementary Tables S4 and S5.
A summary of the challenges that affect our ability to characterize the core human microbiome.
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| Technology | Hundreds of thousands of human-associated 16S and metagenomics samples. Only thousands of other meta-omics samples |
| Population | Mostly Westerners. Agricultural and traditional populations are significantly underrepresented |
| Body part | Mostly fecal samples. The gut environment consists of multiple niches, each may have its own core microbiome |
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| 16S rRNA surveys | Hundreds of thousands of public 16S samples are available. The method is inexpensive with established lab procedures and bioinformatics pipelines. The data provides only low taxonomic-resolution community composition and no functional information |
| Metagenomics bioinformatics | Tens of thousands of public human-associated metagenomes available. The data can provide strain-level and functional information. Bioinformatics analysis is complex, reference databases still lack a significant portion of human-associated microbial species. |
| Difficult to mine public databases | Available metadata is typically partial, performing meta-analysis requires significant manual effort |
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| Diet | Both diet and the immune system shape the gut microbiome and are related to the functions it provides. Small amounts of data are available for both, with no high-throughput methods available for data collection |
| Microbiome–immune system interactions | |
| Non-prokaryotic members of the microbiome | Eukaryotes and viruses may be either part of the core human microbiome or related to the functions it provides. Both groups are invisible in 16S studies, current metagenomics bioinformatics mostly ignores them |