| Literature DB >> 31810497 |
Xu Zhang1, Leyuan Li1, James Butcher1, Alain Stintzi1, Daniel Figeys2.
Abstract
The gut microbiome has emerged as an important factor affecting human health and disease. The recent development of -omics approaches, including phylogenetic marker-based microbiome profiling, shotgun metagenomics, metatranscriptomics, metaproteomics, and metabolomics, has enabled efficient characterization of microbial communities. These techniques can provide strain-level taxonomic resolution of the taxa present in microbiomes, assess the potential functions encoded by the microbial community and quantify the metabolic activities occurring within a complex microbiome. The application of these meta-omics approaches to clinical samples has identified microbial species, metabolic pathways, and metabolites that are associated with the development and treatment of human diseases. These findings have further facilitated microbiome-targeted drug discovery and efforts to improve human health management. Recent in vitro and in vivo investigations have uncovered the presence of extensive drug-microbiome interactions. These interactions have also been shown to be important contributors to the disparate patient responses to treatment that are often observed during disease therapy. Therefore, developing techniques or frameworks that enable rapid screening, detailed evaluation, and accurate prediction of drug/host-microbiome interactions is critically important in the modern era of microbiome research and precision medicine. Here we review the current status of meta-omics techniques, including integrative multi-omics approaches, for characterizing the microbiome's functionality in the context of health and disease. We also summarize and discuss new frameworks for applying meta-omics approaches and microbiome assays to study drug-microbiome interactions. Lastly, we discuss and exemplify strategies for implementing microbiome-based precision medicines using these meta-omics approaches and high throughput microbiome assays.Entities:
Keywords: Drug-microbiome interactions; Host-microbiome interactions; Meta-omics; Microbiome; Microbiome assay; Multi-omics; Personalized medicine
Year: 2019 PMID: 31810497 PMCID: PMC6898977 DOI: 10.1186/s40168-019-0767-6
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Challenges for metatranscriptomics, metaproteomics, and metabolomics in microbiome studies
| Metatranscriptomics, metaproteomics, and metabolomics each have their own shortcomings. Metatranscriptomic experiments rely on obtaining sufficient high-quality RNA from the sample source; something which can be quite challenging due to the ubiquitous presence of RNases in host-derived samples. In addition, metatranscriptomic sequencing can often become saturated with reads from less-informative, but highly expressed transcripts (i.e., ribosomal proteins, translation factors, major outer membrane proteins) from the most abundant microbes present, obscuring the detection of functionally important, but less abundant transcripts/proteins. Therefore, the quality of RNA as well as the depth of measurement is important aspects that need to be evaluated or considered in metatranscriptomics. | |
| Compared to metagenomics and metatranscriptomics, metaproteomics has a lower depth of measurement and can only capture 10–20% of expressed proteins in human gut microbiomes [ | |
| The major challenge for metabolomics in microbiome studies is the difficulty to distinguish host- and microbiome-origin metabolites and directly link metabolites to specific taxa [ |
Fig. 1Meta-omics approaches for the study of host-associated microbiomes. Each meta-omics approach reveals different layers of information in the intestinal eco-systems
Fig. 2Framework of an ex vivo assay for screening drug-microbiome interactions. The individual’s microbiome is cultured and treated with drugs in anaerobic conditions simulating the in vivo environment. The cultured samples can then be analysed by 16S rRNA gene sequencing or single-shot metaproteomics to rapidly identify hit compounds taking advantage of well-established bioinformatic platforms. Detailed bidirectional drug-microbiome interactions for hit compounds can then be further evaluated with integrative multi-omics approaches
Fig. 3Introducing microbiomes into clinical practice for precision medicine. The profiles of individual patient microbiomes are analyzed with meta-omics, which allow for patients to be classified into sub-groups, i.e., responders vs. non-responders to treatments (a). The in vivo response of an individual’s microbiome to drugs can also be predicted with ex vivo microbiome assays, allowing the selection of the best drugs or adjuvant treatments for different patients (b). Finally, health and disease management could be carried out by precisely manipulating of the microbiome through supplementing commensal bacteria, engineered bacteria, microbiome-targeted drugs or bacteriophages (c)