| Literature DB >> 31142339 |
George E D Petrescu1,2, Alexandru A Sabo3, Ligia I Torsin4, George A Calin5,6, Mihnea P Dragomir7.
Abstract
BACKGROUND: Because of the complexity of the blood-brain barrier (BBB), brain tumors, especially the most common and aggressive primary malignant tumor type arising from the central nervous system (CNS), glioblastoma, remain an essential challenge regarding diagnostic and treatment. There are no approved circulating diagnostic or prognostic biomarkers, nor novel therapies like immune checkpoint inhibitors for glioblastoma, and chemotherapy brings only minimal survival benefits. The development of molecular biology led to the discovery of new potential diagnostic tools and therapeutic targets, offering the premise to detect patients at earlier stages and overcome the current poor prognosis. MAIN BODY: One potential diagnostic and therapeutic breakthrough might come from microRNAs (miRNAs). It is well-known that miRNAs play a role in the initiation and development of various types of cancer, including glioblastoma. The review aims to answer the following questions concerning the role of RNA theranostics for brain tumors: (1) which miRNAs are the best candidates to become early diagnostic and prognostic circulating biomarkers?; (2) how to deliver the therapeutic agents in the CNS to overcome the BBB?; (3) which are the best methods to restore/inhibit miRNAs?Entities:
Keywords: Antagomirs; Antisense oligonucleotides; Biomarkers; Glioblastoma; Glioma; Small molecule miRNA inhibitors; miRNA based drugs; miRNA masks; miRNA mimics; microRNA
Mesh:
Substances:
Year: 2019 PMID: 31142339 PMCID: PMC6542029 DOI: 10.1186/s13046-019-1180-5
Source DB: PubMed Journal: J Exp Clin Cancer Res ISSN: 0392-9078
Fig. 1MiRNA therapy for glioblastoma. MiRNA therapy can be classified into miRNA restoration therapy (i.e. restoring tumor suppressor miRNAs) and miRNA inhibition therapy (inhibiting oncomiRs). a The delivery of this potential therapy is hindered by the selective structure of the blood brain barrier (BBB). We can envision two possible delivery methods – locoregional (post-surgery) and systemic. Locoregional is invasive but the BBB is directly by-passed, the systemic delivery on the other hand is less invasive and can be repeated multiple times. The most suitable carriers of this therapy are nanoparticles, which can be synthetic or natural, by offering the advantage of a higher half-time for the therapeutic agent, at a lower dose and with fewer side effects. b The methods to achieve miRNA restoration therapies can be direct: delivery of miRNA mimics – single/double strand synthetic RNA molecules that mimic the function of endogenous miRNAs or indirect: reactivation of transcription by using hypomethilating drugs (Decitabine or 5-azacytidine); restoring the genomic locus of a miRNA using Crispr/CAS9 or vectors expressing the missing miRNA or inhibiting ceRNA molecules that sponge anti-tumorigenic miRNAs. c The inhibition of oncomiRs can be realized by AMOs (antisense oligonucleotides) that covalently bind mature miRNAs and induce their degradation; antagomirs or LNA anti-miRs which are chemically modified antisense RNA molecules, that have a higher stability and a lower degradation level compared to AMOs; small molecule miRNA inhibitors (SMIRs) which block the function of specific miRNAs by structure-based binding to the precursor or mature form of miRNA; and miRNA masks which block the miRNA response elements (MREs) on mRNAs so that miRNAs cannot achieve their inhibitory function
MiRNAs from blood derived products (Serum/Plasma/Blood cells) as brain tumor biomarkers
| miRNA | ↑/↓ | Study, Year, Ref. | Biological fluid and Analysis method | No. of pts. | Significance | Area under the Curve (AUC) Sensitivity (SS) Specificity (SP) |
|---|---|---|---|---|---|---|
| miR-21 | ↑ | Wang, 2012 [ | Plasma | 30 Glioma | Distinguishes between GBM and healthy controls | Glioma vs. healthy controls |
| qRT-PCR | (10 Gr II) | Expression levels cannot distinguish between glioma grades | AUC = 0.9300 (95% CI: 0.7940–1.066) | |||
| (10 Gr III) | Cannot distinguish between glioma and other brain tumors | SS = 90.0% | ||||
| (10 Gr IV) | SP = 100% | |||||
| 10 Meningioma | ||||||
| 10 Hyphophysoma | ||||||
| 10 Healthy controls | ||||||
| miR-29 | ↓ | Wu, 2015 [ | Serum | 83 Glioma | Distinguishes HGGa from healthy controls | AUC = 0.81 (95% CI, 0.73–0.89). |
| qRT-PCR | (36 Gr I-II) | Not a brain cancer specific marker | ||||
| (47 Gr III-IV) | ||||||
| 69 Healthy controls | ||||||
| miR-21 | ↑ | D’Urso, 2015 [ | Blood | 30 Glioma | Combined diagnostic tree using miR-15b and miR-21 can distinguish glioma from other conditions | Combined miR-15b and mir21 |
| miR-15b | ↑ | Microarray | (8 Gr II) | SS = 90% | ||
| miR-16 | ↓ | qRT-PCR | (6 Gr III) | Mir-16 levels could distinguish between grades of Glioma (lowest expression in GBM) | SP = 100% | |
| (16 Gr IV) | miR-16 to distinguish between Gr IV and II/III | |||||
| 30 Various neurological | AUC = 0.98 | |||||
| disorders | SS = 0.98% | |||||
| 36 PCNSLc | SP = 99% | |||||
| 16 Secondary brain | ||||||
| metastases | ||||||
| miR-21 | ↑ | Santangelo, 2018 | Serum | 100 Glioma | Higher serum levels of 3 miRNA panel in GBM and HGG compared to LGGb and healthy controls | Cumulative 3 miRNA panel; GBM vs healthy: |
| miR-222 | ↑ | [ | Exosomes | (2 Gr I) | Cumulative 3 miRNA panel distinguishes between GBM, HGG, LGG and healthy controls | AUC = 0.87 (95% CI 0.7885–0.9524, |
| miR-124-3p | ↑ | qRT-PCR | (13 Gr II) | High serum levels return to normal postoperatively | SS = 84% | |
| (16 Gr III) | SP = 77% | |||||
| (69 Gr IV) | ||||||
| 11 Brain metastases | ||||||
| 30 Healthy controls | ||||||
| miR-203 | ↓ | Chen, 2017 [ | Serum | 70 GBMd | Distinguishes between GBM and LGG, GBM and healthy controls | GBM vs LGG |
| qRT-PCR | 30 LGG | Lower serum level correlated with larger tumor size, lower KPSe score, lower OSf and lower PFSg | AUC = 0.814 | |||
| 30 Healthy controls | GBM vs healthy controls | |||||
| AUC = 0.862 | ||||||
| miR-137 | ↓ | Li, 2016 [ | Serum | 64 glioma | Downregulated levels in glioma compared to controls | NA |
| qRT-PCR | (35 Gr I/II) | Further downregulation in HGG | ||||
(29 Gr III/IV) 64 Controls | Low levels associated with lower OS of glioma patients | |||||
| miR-185 | ↓ | Tang, 2015 [ | Serum | 66 Glioma | Downregulation of mir-185 specifically associated with glioma patients compared to oncologic non-glioma patients | NA |
| qRT-PCR | (23-Gr I + II) | Lower serum mir-185 levels in Grade III-IV glioma compared to Grade I-II | ||||
| (43-Gr III + IV) | Lower mir-185 levels correlated with lower OS | |||||
| 11 Pituitary adenoma | Up-regulation of mir-185 levels after chemoradiation | |||||
| 32 Meningioma | ||||||
| 14 Acoustic neuroma | ||||||
| miR-210 | ↑ | Lai, 2015 [ | Serum | 136 Glioma | Upregulation of mir-210 can distinguish glioma from healthy controls | Overall glioma (Gr I-IV) vs healthy controls |
| qRT-PCR | (13 Gr I) | miR-210 levels associated with tumor grade | AUC value of 0.927 (95% CI1/40.889–0.964) | |||
| (35 Gr II) | NPV = 72.5% | |||||
| (46 Gr III) | High mir-210 levels associated with lower OS | PPV = 91.3% | ||||
| (32 Gr IV) | SS = 91.27% | |||||
| 50 Healthy controls | SP = 72.50% | |||||
| miR-205 | ↓ | Yue, 2016 [ | Serum | 64 Glioma | Significant downregulation of mir-205 in all grades glioma compared to healthy controls | Overall glioma (Gr I-IV) vs healthy controls |
| qRT-PCR | (7 Gr I) | Stepwise decrease in serum mir-205 levels with ascending pathological grades | AUC = 0.935 | |||
| (9 Gr II) | Significantly lower mir-205 levels in glioma versus other brain-tumors | PPV = 96.4%, | ||||
| (21 Gr III) | Downregulation of mir-205 correlated with KPS score and OS | NPV = 65.8%, | ||||
| (27 Gr IV) | SS = 86.3%, | |||||
| 45 Healthy controls | SP = 92.2%, | |||||
| 8 Meningioma | ||||||
| 6 PCNSL | ||||||
| 5 Pituitary adenoma | ||||||
| miR-221/222 Family | ↑ | Zhang, 2016 [ | Serum | 50 Glioma | Distinguishes glioma from healthy controls | miR-221: |
| qRT-PCR | 51 Healthy controls | AUC = 0.84 (95% CI: 0.74–0.93) | ||||
| miR-222: | ||||||
| AUC = 0.92 (95% CI 0.87–0.94) | ||||||
| miR-301a | ↑ | Lan, 2018 [ | Serum exosomes | 60 Glioma | Higher levels in glioma vs controls | NA |
| qRT-PCR | 43 Heallthy controls | Higher levels in glioma vs other types of cancers | ||||
| 9 Meningioma | Higher levels correlated with ascending pathological grades and lower KPS | |||||
| 7 PCNSL | Levels decrease postoperatively | |||||
| 10 Pituitary adenoma | Secondary increase may reflect local recurrence | |||||
| Serum levels in HGG are independently associated with longer OS | ||||||
| miR-397a | ↓ | Huang, 2017 [ | Serum | 100 Glioma | Distinguishes glioma from healthy controls | miR-376a: AUC = 0.872; SS = 81.0%; SP = 82.0% |
| miR-397b | ↓ | |||||
| miR-397c | ↓ | |||||
| qRT-PCR | (10 Gr I) | Decreased levels associated with advanced WHO grade and low KPS | miR-376b: AUC = 0.890; SS = 82.0% SP = 78.0%; | |||
| (20 Gr II) | Higher miRNA levels associated with better OS | miR-376c: AUC = 0.837; SS = 90.0%; SP = 70.0% | ||||
| (30 Gr III) | ||||||
| (40 Gr IV) | ||||||
| 150 Healthy controls | ||||||
| miR-122 | ↓ | Tang, 2017 [ | Plasma | 74 Glioma | Distinguishes between glioma and healthy controls | AUC = 0.939 |
| qRT-PCR | (14 Gr I) | Further downregulation of serum levels in higher grade gliomas | SS = 91.9% | |||
| (17 Gr II) | The miRNA level is an independent prognostic factor for OS | SP = 81.1% | ||||
| (20 Gr III) | ||||||
| (23 Gr IV) | ||||||
| 74 Healthy controls | ||||||
| miR-125b | ↓ | Regazzo, 2016 [ | Serum | 22 Glioma | Distinguishes between GBM and lower grade (II/III) gliomas | miR-125b: GBM vs lower grade glioma, AUC = 0.75 (95% |
| miR-497 | ↓ | |||||
| qRT-PCR | (12 Gr II/III) | CI = 0.533–0.967) | ||||
| (10 Gr IV) | miR-497: GBM vs lower grade glioma, AUC = 0.87 (95% | |||||
| 8 Meningioma | confidence interval (CI) = 0.712–1 | |||||
| 15 Healthy controls | ||||||
| miR-125b | ↓ | Wei, 2016 [ | Serum | 33 Glioma | Distinguishes between glioma and healthy controls | Glioma vs healthy controls |
| qRT-PCR | (11 Gr I) | AUC = 0.839 (95% CI: 0.743–0.935) | ||||
| (11 Gr II) | ||||||
| (11 Gr III/IV) | ||||||
| 33 Healthy controls | ||||||
| miR-182 | ↑ | Xiao, 2016 [ | Serum | 112 Glioma | Distinguishes between glioma and healthy controls | Glioma vs healthy controls |
| qRT-PCR | (18 Gr I) | The expression levels associated with KPS score and WHO grade and correlated with lower OS and DFS, | AUC = 0.778 | |||
| (23 Gr II) | The level is independent prognostic factor for OS | SS = 58.5% | ||||
| (32 Gr II) | SP = 85.2% | |||||
| (39 Gr IV) | ||||||
| 54 Healthy controls | ||||||
| miR-128 | ↓ | Sun, 2015 [ | Serum | 151 Glioma | Distinguishes between glioma and healthy controls and meningioma | Glioma vs healthy controls |
| qRT-PCR | (24 Gr I) | Distinguishes Gr II-IV from Gr I | AUC = 0.9095 | |||
| (23 Gr II) | Levels elevated after surgery and correlate with the pathological grade and KPS | Glioma vs Meningioma | ||||
| (43 Gr III) | AUC = 0.8283 | |||||
| (61 Gr IV) | Glioma II-IV vs I | |||||
| 59 Post-op glioma | AUC = 0.7362 | |||||
| 52 Meningioma | ||||||
| 53 Healthy controls | ||||||
| 30 Glioma | ||||||
| miR-128 | ↓ | Wang, 2012 [ | Plasma | (10 Gr II) | Can distinguish between GBM and healthy controls | AUC (miR-128 or miR-342-3p) = 1.000 (95% CI: 1.000–1.000) |
| miR-342-3p | ↓ | qRT-PCR | (10 Gr III) | Decreased levels correlated with glioma grade | SS = 90.0% | |
| (10 Gr IV) | Significant upregulation after operation and chemoradiation | SP = 100% | ||||
| 10 meningioma | ||||||
| 10 Hyphophysoma | ||||||
| 10 Healthy controls | ||||||
| miR-128 | ↑ | Roth, 2011 [ | Blood cells | 20 Glioblastoma | Distinguishes between GBM and healthy controls | GBM vs healthy controls |
| miR-342-3p | ↓ | Microarray | 20 Healthy Controls |
| miR-128: | |
| qRT-PCR | AUC = 0.828 | |||||
| miR-342-3p | ||||||
| AUC = 0.18 | ||||||
| 180 miRNA signature: | ||||||
| SS = 83% | ||||||
| SP = 79% | ||||||
| RNU6–1 | ↑ | Manterola, 2014 | Serum exosomes | Initial screening | 3 small non coding RNAs can distinguish between GBM and healthy controls | RNU6–1 |
| miR-320 | ↑ | [ | Low density array | 25 Glioblastoma | (machine learning algorithm) | AUC = 0.852 (95% CI, 0.74–0.96) |
| miR-574-3p | ↑ | qRT-PCR | 25 Healthy controls | SS = 73%; SP = 70% | ||
| Confirmation |
| miR-320 | ||||
| 50 Glioblastoma | AUC = 0.720 | |||||
| 30 Healthy controls | (95% CI, 0.56–0.87) | |||||
| SS = 65%; SP = 65% | ||||||
| miR-574-3p | ||||||
| AUC = 0.738 (95% CI, 0.58–0.89) | ||||||
| SS = 59%; SP = 59% | ||||||
| 3 sncRNA signature: | ||||||
| AUC = 0.926 (95%[CI], 0.84–1) | ||||||
| SS = 87%; SP = 86% | ||||||
| miR-454-3p | ↑ | Shao, 2015 [ | Plasma | 70 Glioma | Distinguishes between glioma and healthy controls | Glioma vs healthy controls |
| qRT-PCR | (8 Gr I) | Higher levels in higher WHO grades and the levels decrease significantly postoperatively | AUC = 0.9063 [95% (CI): 0.8487–0.9639)] | |||
| (15 Gr II) | Weak correlation between high levels and OS | SS = 99.05% | ||||
| (25 Gr III) | SP = 82.86% | |||||
| (22 Gr IV) | ||||||
| 70 Healthy controls | ||||||
| miR-451a | ↓ | Zhao, 2016 [ | Serum | 118 Glioma | Distinguishes between glioma and healthy controls | Glioma vs healthy controls |
| qRT-PCR | (27 Gr I) | Levels return to almost healthy control expression 7 days after surgery | AUC = 0.816 | |||
| (33 Gr II) | The expression level downregulation correlates with WHO grade and KPS | SS = 81.4% | ||||
| (33 Gr III) | SP = 79.7% | |||||
| (25 Gr IV) | ||||||
| 84 Healthy controls | ||||||
| miR-15b-5p | ↓ | Yang, 2013 [ | Serum | 148 Glioma | Significantly decreased in glioma (Gr I-IV) compared to healthy controls | SS = 88.00% |
| miR-23a | ↓ | |||||
| miR-133a | ↓ | |||||
| miR-150* | ↓ | |||||
| miR-197 | ↓ | Solexa sequencing | (15 Gr I) | Malignant astrocytoma prediction | SP = 97.87% | |
| miR- 497 | ↓ | |||||
| miR-548b-5p | ↓ | qRT-PCR | (55 Gr II) | Significant postoperative upregulation of aforementioned miRNAs | ||
| (45 Gr III) | ||||||
| (33 Gr IV) | ||||||
| 11 Astrogliosis | ||||||
| 80 Healthy controls | ||||||
| miR-15b-5p | ↑ | Zhi, 2015 [ | Serum | 90 Glioma | Combined 9 miRNA panel distinguishes glioma from healthy controls | AUC = 0.9722 (95% CI, 0.9501–0.9942) |
| miR-16-5p | ↑ | |||||
| miR-19a-3p | ↑ | |||||
| miR-19b-3p | ↑ | |||||
| miR-20a-5p | ↑ | TaqMan | (28 Gr II) | Levels decrease postoperatively | SS = 93.3% | |
| miR-106a-5p | ↑ | |||||
| miR-130a-3p | ↑ | Low density Array | (38 Gr III) |
| SP = 94.5% | |
| miR-181b-5p | ↑ | |||||
| miR-208a-3p | ↑ | |||||
| qRT-PCR | (24 Gr IV) |
| ||||
| 110 Healthy controls | ||||||
| miR-17 | ↑ | Xu, 2017 [ | Serum | 47 Glioma | Distinguishes between glioma and healthy controls | miR-17; AUC = 0.787 [95% (CI): 0.690–0.865)] SS = 89.3%; SP = 55.3% miR-130a AUC = 0.720 [95% (CI): 0.617–0.807)] SS = 70%; SP = 65.2% miR-10b AUC = 0.721 [95% (CI): 0.619–0.808)] SS = 44.6%; SP = 93.6% miR-Score (all three miRNA) AUC = 0.872 [95% (CI): 0.787–0.932)] SS = 72.3%; SP = 85.1% |
| miR-130a | ↑ | qRT-PCR | (16 Gr I-II) | Higher serum levels in HGG compared to LGG | ||
| miR-10b | ↑ | (31 Gr III-IV) | ||||
| 45 Healthy controls | ||||||
| miR-93 | ↑ | Goze, 2018 [ | Whole blood | 15 DLGGh | 3 miRNA signature tree distinguishes DLGG from healthy controls | miRNA-93; AUC = 0.83556 |
| miR-590-3p | ↑ | |||||
| miR-454 | ↑ | TaqMan OpenArray RT-qPCR platform | 15 Healthy controls | miRNA-590-3p; AUC = 0.8133 | ||
| miRNA-454; AUC = 0.75111 |
1HGG High grade glioma, 2LGG Low-grade glioma, 3PCNSL Primary central nervous system lymphoma, 4GBM Glioblastoma, 5KPS Karnofsky Performance Scale, 6OS Overall Survival, 7PFS Progression free survival, 8DLGGdiffuse large grade glioma
MiRNAs from CSF as brain tumor biomarkers
| miRNA | ↑/↓ | Study, Year, Ref. | Biological fluid and Analysis method | No. of pts. | Significance | Area under the Curve (AUC) SS/SP |
|---|---|---|---|---|---|---|
miR-21 miR-10b miR-200 | ↑ ↑ ↑ | Teplyuk, 2012 [ | CSF qRT-PCR | 19 GBM 118 other non glioma – metastases, neurologic conditions |
Increased in patients with GBM, brain metastases from breast and lung cancer compared to healthy controls Does not distinguish between primary glioma and brain metastases
Absent in controls Present in GBM, and brain metastases
Not present in normal brain tissue Very low levels in glioma High levels in other solid cancers Its presence in CSF distinguishes between glioma and brain metastases
| N/A |
| miR-21 | ↑ | Akers, 2013 [ | CSF qRT-PCR | 13 GBM 14 Non-cancer controls 24 GBM 5 Non-cancer controls | Distinguishes between GBM and non-oncologic controls | AUC = 0.91 SS = 87% SP = 93% |
miR-21 miR-15b | ↑ ↑ | Baraniskin, 2012 [ | CSF qRT-PCR | 10 Glioma 10 Neurologic diseased patients 23 PCNSL 7 Brain metastases |
Elevated in all glioma, PCNSL, metastases compared to non-neoplastic controls Lower CSF levels in glioma, compared to metastases and PCNSL
Elevated CSF levels in glioma compared to control, metastasis and PCNSL Distinguishes between glioma and non-glioma patients | miR-21 = N/A miR-15b: Glioma vs healthy controls AUC = 0.96 SS = 90% SP = 94% |
miR-451 miR-711 miR-935 miR-223 miR-125b | ↑ ↑/↓ ↓ ↑ ↑ | Drusco, 2015 [ | CSF Nano-String qRT-PCR | 9 Glioma 2 Ependimoma 4 Meningioma 4 Glioblastoma 3 Medulloblastoma 4 Lung cancer metastasis 5 BC9 metastasis 3 Lymhoma 14 Healthy Controls | Differential expression of aforementioned miRNAs Levels could distinguish between cancer patients and healthy controls | N/A |
miR-21-5p miR-218-5p miR-193b-3p miR-331-3p miR-374a-5p miR-548c-3p miR-520f-3p miR-27b-3p miR-130b-3p | ↑ ↑ ↑ ↑ ↑ ↓ ↓ ↓ ↓ | Akers, 2017 [ | CSF TaqMan OpenArray Real-Time PCR System |
10 GBM 12 Controls
18 GBM 20 Controls | MiRNA signature distinguishes GBM from healthy controls in cisternal and lumbar CSF specimens Lumbar CSF has low sensitivity | Cohort 4 – Cisternal CSF AUC = 0.75 (95% CI 0.53, 0.97) SS = 80%; SP = 67% Cohort 5 – Lumbar CSF AUC = 0.83 (95% CI: 0.69, 0.96). SS = 28%; SP = 95%. |
1HGG High grade glioma, 2LGG Low-grade glioma, 3PCNSL Primary central nervous system lymphoma, 4GBM Glioblastoma, 5KPS Karnofsky Performance Scale, 6OS Overall Survival, 7PFS Progression free survival, 8DLGG diffuse large grade glioma, BC breast cancer