| Literature DB >> 30934972 |
Edit Mikó1,2, Tünde Kovács3, Éva Sebő4, Judit Tóth5, Tamás Csonka6, Gyula Ujlaki7, Adrienn Sipos8, Judit Szabó9, Gábor Méhes10, Péter Bai11,12,13.
Abstract
Breast cancer is a leading cause of death among women worldwide. Dysbiosis, an aberrant composition of the microbiome, characterizes breast cancer. In this review we discuss the changes to the metabolism of breast cancer cells, as well as the composition of the breast and gut microbiome in breast cancer. The role of the breast microbiome in breast cancer is unresolved, nevertheless it seems that the gut microbiome does have a role in the pathology of the disease. The gut microbiome secretes bioactive metabolites (reactivated estrogens, short chain fatty acids, amino acid metabolites, or secondary bile acids) that modulate breast cancer. We highlight the bacterial species or taxonomical units that generate these metabolites, we show their mode of action, and discuss how the metabolites affect mitochondrial metabolism and other molecular events in breast cancer. These metabolites resemble human hormones, as they are produced in a "gland" (in this case, the microbiome) and they are subsequently transferred to distant sites of action through the circulation. These metabolites appear to be important constituents of the tumor microenvironment. Finally, we discuss how bacterial dysbiosis interferes with breast cancer treatment through interfering with chemotherapeutic drug metabolism and availability.Entities:
Keywords: FFAR; OXPHOS; TAAR; TGR5; breast cancer; cadaverine; estrogen deconjugation; lithocholic acid; microbiome; mitochondrial metabolism; secondary bile acids
Mesh:
Substances:
Year: 2019 PMID: 30934972 PMCID: PMC6523810 DOI: 10.3390/cells8040293
Source DB: PubMed Journal: Cells ISSN: 2073-4409 Impact factor: 6.600
Metabolic changes in the intrinsic subtypes of breast cancer. Empty squares stand for no data. Abbreviations: ASCT2/SLC1A5, amino acid transporter-2; ER, estrogen receptor; GDH/H6PD, glutamate dehydrogenase; GLS1, glutaminase 1; HER2, human epidermal growth factor 2 receptor; PgR, progesterone receptor; SLC, solute carrier transporters.
| Breast Cancer | Luminal A | Luminal B | HER2+ | TNBC (~Basal-like) | Ref. | ||
|---|---|---|---|---|---|---|---|
| HER2− | HER2+ | ||||||
| Receptor Status according to [ | N/A | ER+, HER2−, Ki67 low, PgR high Low-Risk Molecular Signature (If Available) | ER+, HER2−, either Ki67high or PgR low High-Risk Molecular Signature (If Available) | ER+, HER2+, any Ki67, any PgR | HER2+, ER−, and PgR− | HER2-, ER-, and PgR− | [ |
| Cholesterol and oxysterol metabolism | Lipid and cholesterol metabolism supports tamoxifen resistance. Increases in serum cholesterol is a risk factor for breast cancer. | 27-hydroxycholesterol supports the growth of ER+ breast cancer cells | 27-hydroxycholesterol supports the growth of ER+ breast cancer cells | 27-hydroxycholesterol supports the growth of ER+ breast cancer cells | [ | ||
| Glycolysis | upregulated | low | intermediate/low | intermediate/low | intermediate/low | high | [ |
| Pentose-phosphate pathway | upregulated | low | low | low | high | highest | [ |
| Glutamine-proline-glycine metabolism | upregulated to serve energy homeostasis and protein and nucleotide biosynthesis | SLC6A14, SLC7A11 upregulated | High expression of glutamine-proline enzymes in Mychigh tumors | High expression of glutamine-proline enzymes in Myc high tumors | highest expression of GLS1, GDH, ASCT, SLC7A5, SLC1A5 upregulated highest level of glutamine metabolism among the intrinsic types | SLC7A11, SLC1A5 upregulated increased glutamine uptake | [ |
| Protein translation | upregulated | highest | high | high | [ | ||
Studies investigating changes to the breast microbiome in breast cancer. Abbreviations: ER, estrogen receptor; CNB, Core needle biopsies; HER2, herceptin receptor/erbB receptor; NAF, Nipple aspirate fluid; PR, progesterone receptor; SEB, Surgical excision biopsies; TNBC, Triple negative breast cancer.
| Sample Type and Sample Size | Method | Observations | Changes to the Microbiome | Ref. |
|---|---|---|---|---|
| Breast tumor tissue and paired normal adjacent tissue from the same 20 patient (ER positive) | Pyrosequencing 16S V4 rDNA | The amount of bacteria, measured by the copy number of 16S rDNA, is not significantly different in paired normal tissue from breast cancer patients and healthy breast tissue from healthy individuals. | The most abundant phyla in breast tissue were | [ |
| Breast tissue from 81 women with and without breast cancer from Canada and Ireland. | Ion Torrent V6 16S rRNA sequencing and culture | Breast tissue contains a diverse population of bacteria. | [ | |
| Triple negative breast cancer (TNBC) samples ( | PathoChip array | There are unique microbial signatures in triple negative breast cancer. | Multiple viruses and other microorganisms were detected in triple negative breast cancer samples. | [ |
| Nipple aspirate fluid (NAF) from healthy women ( | 16S V4 rRNA gene sequencing | Microbiome composition of NAF from healthy control and breast cancer are significantly different. | The most abundant phyla in NAF were | [ |
| Breast tissues from patients with benign ( | 16S V3-V5 rDNA hypervariable taq sequencing | Breast tissue microbiome is different in women with malignant disease and in women with benign disease. | The most abundant phyla in breast tissue were | [ |
| Breast tissue from 58 women: benign ( | 16S V6 rRNA sequencing | Different microbiome profile exist between breast tissue from healthy women and women with breast cancer. | Breast cancer patients had higher relative abundances of | [ |
| Breast tissue from 39 breast cancer patients ( | 16S V3-V4 rRNA sequencing | Microbiome of tumor and paired normal tissues from the same breast cancer patient are similar. | Decreased relative abundance in the genus | [ |
| Breast tissue from tumor ( | 16S V3-V5 RNA sequencing data | The microbial composition is associated with alterations in the host expression profiles. | The most abundant phyla in breast tissues are | [ |
| Breast cancer tissues | PathoChip array | There are unique viral, bacterial, fungal and parasitic signatures in each breast cancer type. | Unique and common microbial signatures in the major breast cancer types are summarized in | [ |
| Fresh tissue samples of both cancer and paired healthy tissues from core needle biopsies (CNB; | hypervariable | More similarities than differences exist between tumors and adjacent normal tissues from CNB and SEB specimens. | In breast tissue | [ |
| Breast tissue from benign ( | 16S V1-V2 rRNA sequencing | Microbiome profile is different in benign and malignant diseases. | The enriched microbial biomarkers in malignant tissue included genus | [ |
Studies investigating changes to the gut microbiome in breast cancer. Abbreviations: AM, Akkermansia muciniphila; bai, bile acid inducible operon (wherein the baiH ORF codes for 7-HSDH, a key enzyme in lithocholic acid biosynthesis); BMI, body mass index; CadA, acid-inducible lysine decarboxylase; ER, estrogen receptor; HAM, high AM relative abundance; HER2, herceptin receptor/erbB receptor; LAM, low AM relative abundance; LdcC, constitutive lysine decarboxylase; PR, progesterone receptor.
| Sample Type and Sample Size | Method | Observations | Changes to the Microbiome | Ref. |
|---|---|---|---|---|
| Urine and fecal samples from men ( | Pyrosequencing of the V1-V2 region of 16S rRNA genes | The richness of the fecal microbiome was directly associated with systemic estrogens. | Non-ovarian systemic estrogens were significantly associated with fecal | [ |
| Urine and fecal samples from healthy postmenopausal women ( | Pyrosequencing of the V1-V2 region of 16S rRNA genes | Diversity of the gut microbiome were associated with patterns of estrogen metabolism. | Relative abundances of a number of taxa in the class | [ |
| Urine and fecal samples from postmenopausal women with breast cancer ( | Illumina sequencing and taxonomy | Postmenopausal women with breast cancer have altered fecal microbiota composition but estrogen-independent low diversity of gut microbiota. | Breast cancer patients had higher levels of | [ |
| Fecal samples from breast cancer patients ( | qPCR targeting 16S rRNA sequences | Microbiome composition in patients differ according to clinical characteristics and BMI. | In overweight patients, the number of total | [ |
| Urine and fecal samples from postmenopausal women with breast cancer ( | 16S V4 rRNA gene sequencing | Breast cancer patients have significant estrogen-independent associations with the IgA-positive and IgA-negative gut microbiota. | Breast cancer patients had significantly reduced alpha diversity and altered composition of both IgA-positive and IgA-negative fecal microbiota. | [ |
| Fecal samples from premenopausal breast cancer patients ( | Illumina sequencing | Composition of gut microbiome differ between postmenopausal breast cancer patients and healthy controls while did not differ significantly between premenopausal breast cancer patients and premenopausal controls. | Enriched species in postmenopausal breast cancer patients were | [ |
| Fecal DNA samples from postmenopausal women with breast cancer ( | qPCR (primers were designed for the known baiH ORF in different bacteria) | Abundance of baiH ORF in bacterial species was different in breast cancer patients compared to healthy control women. | The abundance of baiH of | [ |
| Fecal samples from women with stage 0 to II breast cancer ( | 16S V4 rRNA gene sequencing | Body composition of early stage breast cancer women is associated with Akkermansia muciniphila (AM), microbiome diversity and interleukin-6 level. | Relative abundance of AM was lower in women with higher body fat. Alpha diversity was higher in women with HAM. | [ |
| Fecal DNA samples from postmenopausal women with breast cancer ( | qPCR (primers were designed for known CadA and LdcC genes in different bacteria) | Abundance of the DNA coding LdcC and CadA in bacterial species was different in breast cancer patients compared to healthy control women. | The abundance of | [ |
Effects of the bioactive bacterial metabolites in breast cancer. Processes in green are upregulated by the metabolite, in red those, that are downregulated. Black text stands for ambiguous data. Abbreviations: ER–estrogen receptor; FFAR–free fatty acid receptor; TGR5/GPBAR1–G protein-coupled bile acid receptor 1; FXR–farnesyl X receptor; TAAR–trace amine-related receptor; OXPHOS–oxidative phosphorylation; EMT–epithelial-to-mesenchymal transition; HDAC–histone deacetylase; CSC–cancer stem cell; VEGF–vascular endothelial growth factor.
| Metabolite | Receptor | Bacteria | Ref. | Bacterial Enzyme | Neoplastic Processes | Ref. |
|---|---|---|---|---|---|---|
|
| ERα |
| [ | β-glucuronidase ( | OXPHOS | [ |
| FFARs | [ | diverse | OXPHOS (direct energy substrates) | [ | ||
| TGR5 |
| [ | 7α/β-hydroxysteroid dehydroxylase ( | apoptosis (in supraphyisiological conc.) | [ | |
| TAAR1, 2, 3, 5, 8, 9 |
| [ | Lysine decarboxylase ( | OXPHOS | [ |
Figure 1Schematic representation of the pathways elicited by bacterial metabolites that modulate mitochondrial metabolism in breast cancer.