| Literature DB >> 30967773 |
Petra Jagust1, Beatriz de Luxán-Delgado1, Beatriz Parejo-Alonso2, Patricia Sancho1,2.
Abstract
Cancer heterogeneity constitutes the major source of disease progression and therapy failure. Tumors comprise functionally diverse subpopulations, with cancer stem cells (CSCs) as the source of this heterogeneity. Since these cells bear in vivo tumorigenicity and metastatic potential, survive chemotherapy and drive relapse, its elimination may be the only way to achieve long-term survival in patients. Thanks to the great advances in the field over the last few years, we know now that cellular metabolism and stemness are highly intertwined in normal development and cancer. Indeed, CSCs show distinct metabolic features as compared with their more differentiated progenies, though their dominant metabolic phenotype varies across tumor entities, patients and even subclones within a tumor. Following initial works focused on glucose metabolism, current studies have unveiled particularities of CSC metabolism in terms of redox state, lipid metabolism and use of alternative fuels, such as amino acids or ketone bodies. In this review, we describe the different metabolic phenotypes attributed to CSCs with special focus on metabolism-based therapeutic strategies tested in preclinical and clinical settings.Entities:
Keywords: cancer stem cells; lipid metabolism; metabolism; mitochondria; oxidative phosphorylation; redox regulation
Year: 2019 PMID: 30967773 PMCID: PMC6438930 DOI: 10.3389/fphar.2019.00203
Source DB: PubMed Journal: Front Pharmacol ISSN: 1663-9812 Impact factor: 5.810
Stem-like cells with glycolytic metabolism for various cancer types (in chronological order).
| METABOLIC PHENOTYPE: GLYCOLYSIS | ||||
|---|---|---|---|---|
| Cancer type | Model of study | CSCs/Tumor cells | Methods | References |
| Glioblastoma | Neurospheres | Clark-type oxygen electrode | ||
| Glioblastoma | Neurospheres | Gene expression analysis | ||
| Breast cancer | Bulk of tumoral cells | Isotope tracing and seahorse | ||
| Glioblastoma | Neurospheres | Clark-type oxygen electrode | ||
| Ovarian cancer | Spheres | Isotope tracing and seahorse | ||
| Breast cancer | Spheres | Proteomics and targeted metabolomics | ||
| Ovarian cancer | Spheres | Isotope tracing combined with spectrometry | ||
| Lung cancer | SP | Clark-type oxygen electrode | ||
| Colorectal cancer | SP | Clark-type oxygen electrode | ||
| Osteosarcoma | 3AB-OS CSC-like line | Seahorse | ||
| Teratocarcinomas | P19SCs | Clark-type oxygen electrode | ||
| Nasopharyngeal carcinoma | Sphere-derived cells | Seahorse | ||
| Hepatocellular carcinoma | CD133+cells | Seahorse | ||
| Lung cancer | Spheres | Glucose uptake, glutamine, glutamate and NAD+/NADH determination | ||
| Breast cancer | Spheres | Glucose uptake, glutamine, glutamate and NAD+/NADH determination | ||
| Brain cancer | Tumor cell lines with BTIC features | Seahorse | ||
Stem-like cells with OxPhos metabolism for various cancer types (in chronological order).
| METABOLIC PHENOTYPE: OxPhos | ||||
|---|---|---|---|---|
| Cancer type | Model of study | CSC/Tumor cells | Methods | References |
| Lung cancer | Secondary spheres | Clark-type oxygen electrode | ||
| Glioblastoma | Gliomaspheres | Seahorse | ||
| Leukemia stem cells | CD34+ cells | Seahorse | ||
| PDAC | Spheres | Isotope tracing, metabolomics and seahorse | ||
| Breast cancer | Spheres | Label-free quantitative proteomics | ||
| PDAC | CD133+ cells and spheres CD44+CD133+ | Seahorse | ||
| Ovarian cancer | Spheres | Metabolomics | ||
| Papillary Thyroid Carcinoma | Thyrospheres | GCMS | ||
Stem-like cells using alternative metabolism for various cancer types (in chronological order).
| METABOLIC PHENOTYPE: OTHERS | |||||
|---|---|---|---|---|---|
| Cancer type | Metabolic phenotype | Model of study | CSC/Tumor cells | Methods | References |
| Breast cancer | FAO | Detached tumor cells | Isotope tracing | ||
| Breast cancer | Ketone bodies | 3-OH-butirate effects on tumor growth, migration and angiogenesis | |||
| Hepatic cancer | Glutamine | Bulk of tumor cells | BD Oxygen Biosensor System | ||
| Leukemia-initiating cells | FAO | Bulk of tumor cells | Clark-type oxygen electrode | ||
| Hepatic cancer | Glutamine | Bulk of tumor cells | Glutathione, glutamate and glutamine | ||
| Breast cancer | FAO | Detached tumor cells | Isotope tracing | ||
| Leukemia-initiating cells | FAO | CD150+CD48-CD41-Flt3-CD34-KSL cells sorted from Pml+/+ or Pml-/-mice | Isotope tracing and seahorse | ||
| Glioblastoma | PPP | Gliomaspheres | Isotope tracing | ||
| Colorectal cancer | Glycolysis, TCA cycle, and cysteine/methionine metabolism | CD133+ cells | Metabolomics | ||
| Ovarian Cancer | OXPHOS and PPP | CD44+CD117+ cells | Flow cytometry | ||
| PDAC | Glutamine (non-canonical pathway of glutamine metabolism) | Spheres | Gene expression and enzymatic assays | ||
| Colorectal cancer | Lysine catabolism | CD110+ | Transcriptomics | ||
| Hepatocellular carcinoma | Glycolysis and FAO in sh-Nanog-TICs | CD133+CD49f+CD45- | Isotope tracing and metabolomics | ||
| Breast cancer | PPP | Mammospheres and ALDH+ cells | Glucose consumption, lactate, NADPH and G6P | ||
| Cervical cancer | TCA | Spheres | Metabolomics | ||
| Breast cancer | Mitochondrial biogenesis and FAO | Mammospheres | Seahorse and label-free semi-quantitative proteomics | ||
| Pancreatic cancer | Glutamine | ABCG2 high | ATP, NADP+/NADPH and glutathione | J | |
| Breast cancer | Ketone bodies | Mammospheres | Seahorse | ||
| Brain cancer | Purine metabolism | Brain TICs | Metabolomics | ||
FIGURE 1Therapeutic targeting of mitochondrial metabolism in CSCs. Different aspects of the mitochondrial metabolism can be approached to target CSCs: (1) oxidative phosphorylation (OxPhos) can be impaired by ETC inhibitors such as the antidiabetic drugs metformin or phenformin, the reactive oxygen species (ROS) inductor and complex I inhibitor menadione, or the anti-Parkinson compound selegiline; (2) Mitochondrial biogenesis and translation can be targeted by FDA-approved antibiotics such as doxycycline, tigecycline, bedaquiline among others, or non-antibiotic inhibitors; (3) Mitochondrial dynamics can be disrupted by the mitochondrial division inhibitor Mdivi-1; (4) The blockage of mitophagy, an essential mitochondrial quality control system, with nanomedicines such as 188Re-liposome or the inhibitor liensinine may affect CSCs functions; (5) The use of nanocarriers (lipophilic cations, peptides and nanoparticles) conjugated with chemotherapeutics and small drugs may be used for a selective delivery of drugs in mitochondria.
FIGURE 2Therapeutic targeting of glycolysis, lipid and redox metabolism in CSCs. Metabolic pathways such those involving glucose, lipids and redox balance are potentially targetable in CSCs. (1) Glycolysis. 2-DG represent the most promising therapeutic approach to neutralize highly glycolytic CSCs in combination treatments. (2) Lipid metabolism. 2M14NQ, SSO and the monoclonal antibodies FA6.152 and JC63.1 can block CD36 activity; substances like Etomoxir, Avocatin B or ST136 block fatty acid oxidation (FAO) in the mitochondria; FASN can be inhibited by drugs such as Cerulenin, C75, C93, EGCG, G28UCM, Orlistat, GSK2194069 or GSK837149A; while HMG-CoAR enzyme may be inhibited by either Statins or the combination of Brutieridin plus Melitidin; GTPase prenylation pathway in which mevalonate is involved can be targeted by both Zoledronic acid and GGTL-298; and different steps of the lipid-mediated cell signaling may be blocked with molecules such as S32826, PF8380, Celecoxib, ONOAE-208, Misoprostol, PGE1 and ω-3 PUFAs; finally, targeting of the main enzyme of lipid desaturation route, SCD-1, can be achieved by CAY10556, SC-26196, SSI-4, A939572 or MF-438. (3) Redox metabolism. Antioxidant features of CSCs may be inhibited at different levels including SOD and GPX proteins with Disulfiram and/or ATO, respectively; ROS-induced NRF2 activity can be neutralized by Disulfiram, ATRA, Brusatol, Apigenin and Trigonelline; finally, glutathione synthesis may be inhibited either directly or indirectly by blocking GS or GLS enzymes with BSO or a glutamine analog, and a mixture of Zaprinast with BPTES or 968 compounds, respectively. 2-DG – 2-deoxy-D-glucose, Pyr – pyruvate, LDs – lipid droplets, LPR – lipoprotein receptor, FAs – fatty acids, FASN – fatty acid synthetase, HMG-CoAR – 3-hydroxy-3-methyl-glutaryl-coenzyme A reductase, SCD-1 – stearoyl-CoA desaturase, MUFAs – monounsaturated fatty acids, PUFAs – polyunsaturated fatty acids, FAO – fatty acid oxidation, TCA – tricarbolxylic acid cycle, CPT1 – carnitine palmitoyltransferase I, GTPase – guanosin triphosphatase, I/Q/II/III/IV/V – complexes of the electron transport chain, O2- – superoxide anion, H2O2 – oxygen peroxide, SOD – superoxide dismutase, GPX – glutathione peroxidase, ROS – reactive oxygen species, NRF2 – nuclear factor erythroid 2–related factor 2, GSH – glutathione, Glu – glutamate, Gln – glutamine, GS – glutathione synthase, GLS – glutaminase, 2M14NQ – 2-methylthio-1,4-naphtoquinone, SSO – sulfosuccinimidyl oleate, mAb – monoclonal antibody, EGCG – epigallocatechin gallate, ATRA – all-trans retinoic acid, BSO – L-buthionine-S,R-sulfoximine, ATO – arsenic trioxide.
FIGURE 3Redox involvement in the different metabolic dependencies described for CSCs. CSCs bear diverse metabolic dependencies in a tumor and context-dependent manner: (1) Aerobic glycolysis, controlled by MYC; (2) OxPhos, fuelled by different microenvironmental substrates and controlled by Imp2 or PGC-1α; (3) Lipid metabolism, increasing either fatty acid synthesis and storage in lipid droplets (LDs) or utilization via mitochondrial FAO; (4) CSCs can be dependent on alternative substrates and pathways such as aminoacids, ketone bodies, PPP or purines. Interestingly, the metabolic phenotypes described for CSCs ensure the maintenance of cellular redox state. Keeping redox balance is crucial for CSCs in order to maintain their stemness characteristics, differentiation ability and resistance to chemo and radiotherapy, constituting one of the most important vulnerabilities independently of their origin or cellular context. ROS – reactive oxygen species, OxPhos – oxidative phosphorylation, LDs – lipid droplets, PPP – pentose phosphate pathway, FAO – fatty acid oxidation, TCA – tricarboxylic acid cycle.