| Literature DB >> 31207938 |
Veronica Mollica1, Vincenzo Di Nunno2, Lidia Gatto3, Matteo Santoni4, Marina Scarpelli5, Alessia Cimadamore6, Antonio Lopez-Beltran7, Liang Cheng8, Nicola Battelli9, Rodolfo Montironi10, Francesco Massari11.
Abstract
The development of new systemic agents has led us into a "golden era" of management of metastatic renal cell carcinoma (RCC). Certainly, the approval of immune-checkpoint inhibitors and the combination of these with targeted compounds has irreversibly changed clinical scenarios. A deeper knowledge of the molecular mechanisms that correlate with tumor development and progression has made this revolution possible. In this amazing era, novel challenges are awaiting us in the clinical management of metastatic RCC. Of these, the development of reliable criteria which are able to predict tumor response to treatment or primary and acquired resistance to systemic treatments still remain an unmet clinical need. Thanks to the availability of data provided by studies evaluating genomic assessments of the disease, this goal may no longer be out of reach. In this review, we summarize current knowledge about genomic alterations related to primary and secondary resistance to target therapy and immune-checkpoint inhibitors in RCC.Entities:
Keywords: PD-1/PD-L1; VEGF; VEGFR; acquired resistance; immune-checkpoint inhibitors; mTOR; predictive markers; primary resistance; renal cell carcinoma; target therapy
Year: 2019 PMID: 31207938 PMCID: PMC6627706 DOI: 10.3390/cancers11060830
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Summary of the suggested mechanisms of acquired/primary resistance to angiogenesis inhibitors, mTOR inhibitors and immune-checkpoint inhibitors.
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| Missed expression of targets | Tumors with wild type VHL alleles without HIF-α [ |
| Cellular intake of target agents | Alteration in cell-surface proteins responsible of drugs intake [ |
| Apoptosis inhibition | Increased expression of (Bcl-2/XL) [ |
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| Acquisition of novel pathways promoting angiogenesis | - PDGFR [ |
| Interactions with immune-system | - IL-8 promotes VEGF mRNA transcription and VEGFR-2 activation [ |
| Angiogenesis induction by interleukin | - IL-1α and IL-1β induce angiogenesis. IL-1β may stimulate production of HIF-1α and VEGF [ |
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| Reactive oxygen species | - Increased levels of ROS may activate AKT pathways [ |
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| Increased AKT activation mediated by mTORC1 inhibition. | - Inhibition of mTORC1 leads to reduced mTORC2 phosphorylation. Increased activity of mTORC 2 resulting from reduced phosphorylation leads to AKT activation [ |
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| Reduced response to INFγ | - Continuous INFγ exposure may lead to downregulation or mutations on pathways related to INFγ response (for example Janus kinases JAK1/2, STATs) [ |
| Reduced expression of INFγ and other genes related to immune-response | - PTEN loss may leads to INFγ or Granzyme B reduced expression [ |
| Reduced T-Cells activity | - Activation of MAPK pathways leads to increased levels of VEGF and IL-8. This last interleukin has an inhibitory function on T-Cell activity [ |
| Reduced antigen production | - Mediated by sub-clones selection and epigenetic modification [ |
| Balance between cells promoting and inhibiting immune-response | - Increased proportion of Tregs leads to the production of molecules inhibiting immune-response [ |
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| Mechanisms involved in primary resistance | - Reduced response to INFγ |
| Reduced MHC expression | - reduced expression of beta-2-microglobulin [ |
| Interaction of other immune-checkpoints | - LAG3 [ |
AKT = Protein Kinase B, BcL 2 = B-cell lymphoma 2, FGFR = Fibroblast Growth Receptor, ERK/MAPK = extracellular signal–regulated kinases, GRB10 = Growth Factor Receptor Bound Protein 10, JAK1/2 = Janus kinases, HIF-α = Hypoxia-inducible factor 1-alpha, LAG3 = Lymphocyte-activation gene 3, MET = mesenchymal–epithelial transition RECEPTOR, mTOR = mammalian target of rapamycin, PDGFR = Platelet-derived growth factor receptor, PTEN = phosphatase and tensin homolog, ROS = Reactive oxygen species, STAT3 = signal transducer and activator of transcription 3, S6K1 = Ribosomal protein S6 kinase beta-1, TIM-3 = T cell immunoglobulin and mucin-domain containing-3, VEGF = Vascular Endothelial Growth Factor, VEGFR = Vascular Endothelial Growth Factor Receptor.
Figure 1Resistance to anti-angiogenic therapies and mTOR inhibitors: VEGF or PDGF bind to a tyrosine kinase receptor and activate the PI3K and RAS pathways. PI3K activates the serine/threonine kinases AKT and mTOR. RAS activates MEK, which, in turn, activates ERK. ERK activates MNK, which, in turn, phosphorylates and activates eIF-4E. ERK and mTORC1 activate p70 S6K which, in turn, phosphorylates 4E-BP1, preventing it from binding to eIF-4E (which would cause the inactivation of the latter). The PI3K and RAS pathways result in the translation and accumulation of HIF-1α, that translocates to the nucleus and dimerizes with the constitutively-expressed HIF-1β. This complex binds to hypoxia response elements in the promoters of target genes, resulting in the transcription of genes that regulate cell growth, angiogenesis, cell survival and cell proliferation. Other pathways that may be implicated in resistance to anti-angiogenic therapies are those which are regulated by MET and FGFR. MET is activated by the binding of HGF, while FGFR is activated by FGF; this results in the activation of the RAS–MAPK and PI3K–AKT pathways, leading to the transcription of genes regulating cell proliferation, cell survival, neoangiogenesis and cell migration. Sunitinib, Sorafenib, Pazopanib, Axitinib, Cabozanitinib, Lenvatinib inhibit multiple tyrosine kinase receptors, such as VEGFR and PDGFR. Cabozanitinib inhibits MET. Lenvatinib inhibits FGFR. Everolimus inhibits mTOR. The lightning signs indicate some of the points at which resistance to therapies could arise. Cut lines indicate inhibition, and arrows indicate either. activation or induction. VEGF: Vascular endothelial growth factor; PDGF: platelet-derived growth factor; PI3K: phosphatidylinositol 3-kinase; mTOR: mammalian target of rapamycin; MEK: MAP/ERK kinase; ERK: extracellular signal-regulated kinase; MNK: MAPK-interacting protein kinase; MAPK: mitogen-activated protein kinase; eIF-4E: eukaryotic translation initiation factor 4E; S6K: S6 kinase; 4E-BP1: eIF-4E binding protein; HIF: Hypoxia-inducible factors; FGFR: fibroblast growth factor receptor; FGF: fibroblast growth factor; HGF: hepatocyte growth factor; VHL: Von Hippel-Lindau.
Figure 2Resistance to immune-checkpoint inhibitors: Anti-PD-1 binds to PD-1 in the activated T cell, while anti-PD-L1 binds to PD-L1 in the tumor cell, thus impeding the inactivation of the immune response that would have been promoted by the tumor cell through the binding of PD-L1 to the PD-1. Anti-CTLA-4 binds to CTLA-4 in the T cell, thus impeding the downregulation of the immune system that would have originated from the binding of CTLA-4 and its ligands (B7-1 and B7-2). IFN-γ released by activated T cells binds IFNGR1/2 on tumors, activating JAK–STAT signaling that results in the activation of IFN response genes, including IRF1, which induces the transcription of other genes, leading to an increased surface expression of PD-L1 and MHC molecules. Tim-3 and LAG-3 are co-inhibitory receptors that downregulate immune response. The lightning signs indicate some of points at which a resistance to therapies could arise. Arrows indicate either activation or induction. CTLA-4: Cytotoxic T lymphocyte antigen-4; PD-1: programmed cell death-1; PD-L1: programmed death receptor ligand 1; MHC: major histocompatibility complex; TIM-3: T cell immunoglobulin and mucin-domain containing-3; LAG-3: lymphocyte-activation gene; IRF1: interferon regulatory factor 1; JAK: Janus kinase; IFN-γ: interferon-γ; IFNGR: interferon-γ receptor; Treg: regulatory T cells.
Summary table reporting percentage of patients experiencing response and progressive disease (primary refractory patients) in first and second line of treatment.
| Study/First Author | Year | Experimental/Comparator Arm | ORR |
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| NCT00098657 | 2007 | Sunitinib vs. Interferon | ORR = 31% |
| NCT00130897 | 2009 | Sunitinib | ORR = 17% |
| COMPARZ | 2013 | Sunitinib vs. Pazopanib | ORR (S) = 25% |
| CHECKMATE 214 | 2018 | Nivolumab + Ipilimumab vs. Sunitinib | ORR (N + I) = 42% |
| KEYNOTE 426 | 2019 | Pembrolizumab + Axitinib vs. Sunitinib | ORR (P + A) = 59% |
| JAVELIN RENAL 101 | 2019 | Avelumab + Axitinib vs. Sunitinib | ORR (A + A) = 51% |
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| METEOR | 2015 | Cabozantinib vs. Everolimus | ORR (C) = 21% |
| CHECKMATE 025 | 2015 | Nivolumab vs. Everolimus | ORR (N) = 25% |
| NCT00678392 | 2013 | Axitinib vs. Sorafenib | ORR (A) = 23 |
* Intermediate-Poor Risk patients according to IMDC. (E) = Everolimus, (S) = Sunitinib, (P) = Pazopanib, (So) = Sorafenib, (C) = Cabozantinib, (N) = Nivolumab, (A + A) = Avelumab-Axitinib, (P + A) = Pembrolizumab-Axitinib, (N + I) = Nivolumab-Ipilimumab, ORR = Objective Response Rate, PD = Progressive Disease.