| Literature DB >> 32372951 |
Nehal Adel Abdelsalam1, Ahmed Tarek Ramadan1, Marwa Tarek ElRakaiby1,2, Ramy Karam Aziz1,2.
Abstract
The harmful impact of xenobiotics on the environment and human health is being more widely recognized; yet, inter- and intraindividual genetic variations among humans modulate the extent of harm, mostly through modulating the outcome of xenobiotic metabolism and detoxification. As the Human Genome Project revealed that host genetic, epigenetic, and regulatory variations could not sufficiently explain the complexity of interindividual variability in xenobiotics metabolism, its sequel, the Human Microbiome Project, is investigating how this variability may be influenced by human-associated microbial communities. Xenobiotic-microbiome relationships are mutual and dynamic. Not only does the human microbiome have a direct metabolizing potential on xenobiotics, but it can also influence the expression of the host metabolizing genes and the activity of host enzymes. On the other hand, xenobiotics may alter the microbiome composition, leading to a state of dysbiosis, which is linked to multiple diseases and adverse health outcomes, including increased toxicity of some xenobiotics. Toxicomicrobiomics studies these mutual influences between the ever-changing microbiome cloud and xenobiotics of various origins, with emphasis on their fate and toxicity, as well the various classes of microbial xenobiotic-modifying enzymes. This review article discusses classic and recent findings in toxicomicrobiomics, with examples of interactions between gut, skin, urogenital, and oral microbiomes with pharmaceutical, food-derived, and environmental xenobiotics. The current state and future prospects of toxicomicrobiomic research are discussed, and the tools and strategies for performing such studies are thoroughly and critically compared.Entities:
Keywords: cytochromes; metabolism; microbiome; microbiota; pharmacomicrobiomics; secondary metabolism
Year: 2020 PMID: 32372951 PMCID: PMC7179069 DOI: 10.3389/fphar.2020.00390
Source DB: PubMed Journal: Front Pharmacol ISSN: 1663-9812 Impact factor: 5.810
Some gut bacterial enzyme families encoded in the microbiome and their impact on xenobiotics.
| Microbial Enzyme/Enzyme Family | Impact on Xenobiotics | Reference |
|---|---|---|
| Beta-glucosidases | Hydrolyze sugar moiety in plant glucosides | ( |
| Beta-glucuronidases | Hydrolyze glucuronic acid component from polysaccahrides and drug metabolites | ( |
| Sulfatases | Break sulfate esters of phase II host metabolism | ( |
| Azoreductases | Reduce azodyes | ( |
| Nitroreductases | Less polar metabolites resulting in more toxic or inactive metabolites | ( |
| Proteases | Hydrolyze polypeptide chains | ( |
| Glycosidases | Render molecules less polar | ( |
| C–S beta-lyases | Generate ammonia for bacterial growth | ( |
| Transferases | Transfer methyl or acyl groups | ( |
Adverse effects/toxicities resulting from xenobiotic-microbiome interactions (pharmaceutical toxicomicrobiomic interactions).
| Xenobiotic | Microbes | Effect | Reference |
|---|---|---|---|
| Carboplatin |
| In a rat model, carboplatin-induced intestinal mucositis was reduced after metronidazole treatment, which was intended to target the anaerobic | ( |
| Doxorubicin | Intestinal microbiota | The enteric microbiota was found to play a major role in doxorubicin-induced mucositis. Targeting the microbiota reduced damage. | ( |
| Irinotecan | Intestinal microbiota | Deconjugation of SN-38G (Irinotecan pharmacologically active derivative) in the gut by bacterial beta-glucuronidases resulted in gut toxicity. | ( |
| 5-Fluorouracil | Intestinal microbiota | Treatment with 5-FU was shown to cause significant changes in intestinal microbiota and mucin secretion in a rat model. These changes contributed to development of 5-FU-induced mucositis. | ( |
| Acetaminophen | Intestinal microbiota | Elevated levels of p-cresol (produced by some intestinal bacterial communities, which are not equally abundant in all individuals) compete with acetaminophen on the o-sulfonation metabolism, which results in increased acetaminophen toxicity. | ( |
| Sorivudine | Bacteroides | Sorivudine hydrolysis by intestinal anaerobic bacteria results in high blood concentration of 5-(E)-(2-bromovinyl)uracil increasing the level and toxicity of 5-fluorouracil during chemotherapy. | ( |
| Cycasin | Intestinal microbiota | Cycasin hydrolysis by the gut microbiota resulted in a hepatotoxic and carcinogenic methylazoxymethanol. | ( |
| Indomethacin | Luminal bacteria | Interaction of the oral NSAID, indomethacin, with gut microbes resulted in damage to the intestinal mucosa. | ( |
| Nitrazepam |
| Nitrazepam reduction by the clostridial nitroreductase enzyme was reported to caused teratogenic effects in pregnant women. | ( |
| Oxaliplatin | Intestinal microbiota | The gut microbiota is involved in oxaliplatin-induced mechanical hyperalgesia, which was shown to be reduced in germ-free mice and in mice pretreated with antibiotics. | ( |
| L−carnitine | Intestinal microbiota | L-carnitine is metabolized by the gut microbiota to trimethylamine (TMA) which is further metabolized in the liver to produce the toxic metabolite TMA-N-oxide (TMAO) that increases the risk of atherosclerosis and cardiovascular diseases. | ( |
Omics tools and technologies used in toxicomicrobiomic research.
| Method | Main strategy | Questions answered | Limitations |
|---|---|---|---|
|
| High-throughput sequencing of libraries of amplified taxonomic marker genes (16S or 18S rRNA subunit) to determine the microbiome composition by comparing sequencing read variants to taxonomic databases. | Who is there? |
Cannot conclusively provide information about functional potential, since many pathways are not correlated with taxonomy, and many genes are horizontally transferred or species- and strain-specific. No guarantee that the detected bacteria are alive. |
|
| Random sequencing of total DNA extracted from a microbial community/microbiome sample. The sequenced DNA includes fragments of different microbial and viral genomes, and possibly other soluble DNA, but the samples can be prefiltered or fractionated to separate cells from viral particles, or to get rid of soluble DNA prior to sequencing. | Who is there? |
Samples may contain host DNA that is hard to physically separate from microbial DNA, and that may even be hard to computationally remove. Like with amplicon sequencing data, the results cannot confirm that the detected taxa are living microbes. Additionally, genes detected are not necessarily expressed, and thus only provide information about functional |
|
| Random sequencing of total RNA extracted from a microbial community/microbiome sample with the purpose of identifying genes that are actively transcribed (at the time of sampling) and quantifying their transcripts through mapping the sequence reads to complete genome sequences or sequence scaffolds. | The data may provide information on the community composition (taxa, abundance, and diversity), but the main questions answered by this technology are: |
Like with all transcriptomic studies, not every RNA will be successfully translated into a protein, so the data may slightly overestimate gene expression. RNA is less stable than DNA, and different transcripts have different stability, thus there may be bias towards quantifying more stable transcripts. The method is highly sensitive to small changes that happen to the samples, from the time of collection till RNA extraction. This will thus lead to less reproducible results from similar or identical samples, and to spatially and temporally variable results within the same sample. |
|
| Determination of the sum of proteomes expressed by an entire microbial community at a given point of time and space using various mass spectrometric methods, most often coupled with chromatographic separation methods. | The method can provide information about the community composition (Who is there and how many)? and, in that regard, may be more accurate than gene-based methods as proteins may provide high-resolution strain identification. |
Metaproteomic data are harder to interpret than DNA and RNA-based data owing to the high complexity of proteins, and their higher chemical variability (in comparison to the rather homogeneous nature of nucleic acids). The method is highly sensitive to environmental contaminants and may thus have a considerable proportion of false-positive results. Like with metatranscriptomics, the sensitivity of the method may lead to lower reproducibility and higher spatio-temporal within-sample variability. |
|
| Metabonomics is a term coined from “metabolomics and (meta)genomics” and just refers to meta-metabolomic surveys, or the metabolites produced by the products of all genomes of a microbial community, as well as the host metabolites ( | Metabolomics is mostly concerned with the |
Differentiating host from microbial metabolites is challenging. Like metatranscriptomics and metaproteomics, this method is highly sensitive and consequently it may provide highly variable and less reproducible results because of the speed with which metabolites will change, and the spatial variations within a same sample (e.g., different parts of a stool samples will have highly variable metabolites). The sensitivity of the method also leads to noise and high vulnerability to minor contaminants, including those introduced during the process. |