| Literature DB >> 34680065 |
Thaís Borges Gally1, Milena Magalhães Aleluia2, Grasiely Faccin Borges3, Carla Martins Kaneto2.
Abstract
Osteosarcoma (OS) is a fast-progressing bone tumor with high incidence in children and adolescents. The main diagnostic methods for OS are imaging exams and biopsies. In spite of the several resources available for detecting the disease, establishing an early diagnosis is still difficult, resulting in worse prognosis and lower survival rates for patients with OS. The identification of novel biomarkers would be helpful, and recently, circulating microRNAs (miRNAs) have been pointed to as possible non-invasive biomarkers. In order to assess the effectiveness of miRNA research, we performed a systematic review to assess the potential role of circulating miRNAs as biomarkers for OS diagnosis. We performed a search in various databases-PubMed, LILACS (Literatura Latino-americana e do Caribe em Ciências da Saúde), VHL (Virtual Health Library), Elsevier, Web of Science, Gale Academic One File-using the terms: "Circulating microRNAs" OR "plasma microRNAs" OR "serum microRNAs" OR "blood microRNAs" OR "cell-free microRNAs" OR "exosome microRNAs" OR "extracellular vesicles microRNAs" OR "liquid biopsy" AND "osteosarcoma" AND "diagnostic". We found 35 eligible studies that were independently identified and had had their quality assessed according to Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) guidelines. Despite the useful number of publications on this subject and the fact that several microRNAs showed excellent diagnostic performance for OS, the lack of consistency in results suggests that additional prospective studies are needed to confirm the role of circulating miRNAs as non-invasive biomarkers in OS.Entities:
Keywords: circulating microRNAs; diagnostic; microRNAs; osteosarcoma
Mesh:
Substances:
Year: 2021 PMID: 34680065 PMCID: PMC8533382 DOI: 10.3390/biom11101432
Source DB: PubMed Journal: Biomolecules ISSN: 2218-273X
Figure 1Overview of the literature search and selection process.
MicroRNA candidate selection methods found in the included articles.
| Author | Year | Type of Global MicroRNA Expression Profiling | Were Samples Pooled? | If Yes, What Was the Number of Samples Per Pool? | If Samples Were Not Pooled, How Many Samples Per Group Were Analyzed in Large-Scale Analysis? | Were Candidate MicroRNAs Selected by Analysis of Public MicroRNAs Datasets? | Were Candidate MicroRNAs Selected by Literature Review? |
|---|---|---|---|---|---|---|---|
| Allen-Rhoades et al. [ | 2015 | MicroRNA PCR panel | Conducted using non-human samples | N/A | N/A | No | No |
| Cai et al. [ | 2015 | N/A | N/A | N/A | N/A | No | Yes |
| Hui et al. [ | 2015 | MicroRNA PCR panel | No | N/A | 3 per group | No | No |
| Lian et al. [ | 2015 | MicroRNA PCR panel | Yes | 2 pools with 10 samples each | N/A | No | Yes |
| Tang et al. [ | 2015 | N/A | N/A | N/A | N/A | No | Yes |
| Wang et al. [ | 2015 | N/A | N/A | N/A | N/A | No | Yes |
| Wang et al. [ | 2015 | N/A | N/A | N/A | N/A | No | Yes |
| Yang et al. [ | 2015 | N/A | N/A | N/A | N/A | No | Yes |
| Zhou et al. [ | 2015 | MicroRNA PCR panel | Yes | 3 pools with 10 samples each | N/A | No | No |
| Cao et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Li et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Niu et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Pang et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Sun et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Zhou et al. [ | 2016 | N/A | N/A | N/A | N/A | No | Yes |
| Fujiwara et al. [ | 2017 | Microarray | No | N/A | 10 per group | No | No |
| Liu et al. [ | 2017 | N/A | N/A | N/A | N/A | No | Yes |
| Wang et al. [ | 2017 | N/A | N/A | N/A | N/A | No | Yes |
| Xie et al. [ | 2017 | Sequencing | No | N/A | 3 OS and 10 control subjects | No | No |
| Cong et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Li, Song et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Liu, Zhao et al. [ | 2018 | N/A | N/A | N/A | N/A | No | No |
| Monterde-Cruz et al. [ | 2018 | MicroRNA PCR panel | Yes | 4 pools with 5 samples each | N/A | No | No |
| Tian et al. [ | 2018 | N/A | N/A | N/A | N/A | Yes | No |
| Xu et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Yao et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Zhao et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Zhou et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Zhou et al. [ | 2018 | N/A | N/A | N/A | N/A | No | Yes |
| Cuscino et al. [ | 2019 | Sequencing | Conducted using cell lineages samples | N/A | N/A | No | No |
| Huang et al. [ | 2019 | N/A | N/A | N/A | N/A | Yes | No |
| Huang, Sun et al. [ | 2019 | N/A | N/A | N/A | N/A | No | No |
| Zhu et al. [ | 2019 | N/A | N/A | N/A | N/A | No | Yes |
| Shi et al. [ | 2020 | N/A | N/A | N/A | N/A | No | Yes |
| Zhang et al. [ | 2020 | Sequencing | No | N/A | 1 per group | No | Yes |
Summary of included studies using circulating miRNAs as biomarkers of osteosarcoma.
| Control Group | Case Group | |||||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Author | Year | Ethnicity | N | Sex | Mean Age (y) | N | Sex | Mean Age (y) | Metast | Specim | Det Met | Normaliz. | Method for Expression Level Calculation | Differentially Expressed MicroRNAs | Up- or Downregulation Description Only | AUC | SEN | SPE |
| Allen-Rhoades et al. [ | 2015 | American | 30 | N/I | 18 | 40 | 2M 17F | 13.41 | 20 yes, 19 no | plasma | qPCR | miR-320a + miR-15a- | 2−ΔCt | miR-205-5p miR-214 | No | MiR- 205-5p: 0.70, | N/I | N/I |
| Cai et al. [ | 2015 | Asian | 60 | N/I | N/I | 166 | 96M 70F | <55:72 | 42 yes, 124 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-195 | No | 0.892 | 88.0% | 83.3% |
| Hui et al. [ | 2015 | Asian | 20 | 12M 8F | 14.3 | 20 | 13M 7F | 13 | 2 yes, 11 no | serum | qPCR | cel-miR-39 | 2−ΔΔCt | miR-106a-5p miR-16-5p miR-20a-5p miR-25-3p miR-425-5p miR-451a miR-139-5p | No | miR-106a-5p: 0.7255 miR-16-5p: 0.7686 miR-20a-5p: 0.8471 miR-25-3p: 0.7961 miR-425-5p: 0.7765 miR-451a: 0.7961 miR-139-5p: 0.7098 | N/I | N/I |
| Lian et al. [ | 2015 | Asian | 90 | 44M 46 F | 16.2 | 90 | 43M 47F | 15.8 | 18 yes, 72 no | plasma | qPCR |
comparison of |
comparison of | miR-195-5p miR-199a-3p miR-320a miR-374a-5p | No | miR-195–5p: 0.9029 miR-199a-3p: 0.9025 miR-320a: 0.9188 | 4-miRNAs: 91.1% | 4-miRNAs: 94.4% |
| Tang et al. [ | 2015 | Asian | 60 | N/I | N/I | 166 | 96M 70F | <55:72 | 42 yes, 124 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-27a | No | 0.867 | 70.01% | 98.30% |
| Wang et al. [ | 2015 | Asian | 20 | N/I | N/I | 80 | 40M 40F | ≤19:40 | 12 yes, 68 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-152 | No | 0.956 | 96.2% | 92.5% |
| Wang et al. [ | 2015 | Asian | 20 | N/I | N/I | 100 | 66M 34F | <20:69 | 42 yes, 58 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-191 | No | 0.858 | 74.00% | 100.0% |
| Yang et al. [ | 2015 | Asian | 50 | N/I | N/I | 108 | 78M 30F | <20:40 | 40 yes, 68 no | serum | qPCR | RNU6 | 2−ΔΔCt | MiR-221 | No | 0.844 | 65.7% | 100.0% |
| Zhou et al. [ | 2015 | Asian | 60 | 38M 22F | ≥20:23 | 60 | 38M 22F | ≥20:23 | 8 yes, 52 no | serum | qPCR |
comparison of |
comparison of | MiR-199a-5p | No | 0.8606 | 88.33% | 76.67% |
| Cao et al. [ | 2016 | Asian | 20 | N/I | N/I | 60 | 32M 28F | ≤18:37 | 9 yes, 51 no | serum | qPCR | RNU48 | 2−ΔΔCt | MiR-326 | No | 0.897 | 83.7% | 94.5% |
| Li et al. [ | 2016 | Asian | 46 | 27M 19F | 19.6 | 46 | 27M 19F | 19.6 | N/I | serum | qPCR | U6 | 2−ΔΔCt | MiR-17 | Yes | N/I | N/I | N/I |
| Niu et al. [ | 2016 | Asian | 133 | 71M 62F | ≤15:59 | 133 | 71M 62F | ≤15:59 | 68 yes, 65 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-95-3p | No | 0.863 | N/I | N/I |
| Pang et al. [ | 2016 | Asian | 130 | N/I | N/I | 185 | 110M 75F | <55:73 | 57 yes, 128 no | serum | qPCR | U6 | 2−ΔCt | MiR-497 | No | 0.848 | N/I | N/I |
| Sun et al. [ | 2016 | Asian | 62 | N/I | N/I | 62 | N/I | N/I | N/I | serum | qPCR | U6 | 2−ΔΔCt | MiR-24 | Yes | N/C | N/C | N/C |
| Zhou et al. [ | 2016 | Asian | 40 | N/I | N/I | 40 | 25M 15F | ≥15:27 | N/I | serum | qPCR | U6 | 2−ΔΔCt | MiR-421 | Yes | N/C | N/C | N/C |
| Fujiwara et al. [ | 2017 | Asian | 8 | 4M 4F | N/I | 14 | 7M 7F | 0–10:2 | 1 yes, 13 no | serum | qPCR | N/I | 2−ΔΔCt | miR-25-3p miR-17-3p | No | MiR-25-3p: 0.868 | MiR-25-3p: 71.4% MiR-17-3p: 64.3% | MiR-25-3p: 92.3%; MiR-17-3p: 84.6% |
| Liu et al. [ | 2017 | Asian | 10 | N/I | N/I | 20 | N/I | N/I | N/I | serum | qPCR | N/I | N/I | MiR-598 | Yes | N/C | N/C | N/C |
| Wang et al. [ | 2017 | Asian | 20 | 8M 12F | 24.5 | 102 | 54M | Low: 17.3 High: 16.4 | 36 yes, 66 no | serum | qPCR | RNU6B | N/I | MiR-491 | Yes | N/I | N/I | N/I |
| Xie et al. [ | 2017 | Asian | 3 | N/I | N/I | 3 | N/I | N/I | N/I | PBMC | qPCR | U6 | 2−ΔCt | hsa-miR-221-5p | Yes | N/C | N/C | N/C |
| Cong et al. [ | 2018 | Asian | 50 | N/I | N/I | 114 | 62M 52F | ≥18: 71 <18: 43 | 60 yes, 54 no | serum | qPCR | RNU6 | 2−ΔΔCt | MiR-124 | No | 0.846 | 79.8% | 86% |
| Li, Song et al. [ | 2018 | Asian | 76 | N/I | N/I | 76 | N/I | N/I | N/I | plasma | qPCR | U6 | 2−ΔΔCt | MiR-542-3p | No | 0.841 | 77.8% | 93.6% |
| Liu, Zhao et al. [ | 2018 | Asian | 95 | N/I | N/I | 95 | 63M 32F | <20: 69 ≥20: 26 | 37 yes, 58 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-375 | No | 0.89 | 82.1% | 74.7% |
| Monterde-Cruz et al. [ | 2018 | Mexican | 15 | 9M 6F | 20 | 15 | 9M6F | 20 | 13 yes, 2 no | serum | qPCR | RNU6 | 2−ΔΔCt | miR-215-5p miR-642a-5p | No | miR-215-5p: 0.8667, miR-642a-5p: 0.8413, 2-miRNAs: 0.8520 | N/I | N/I |
| Tian et al. [ | 2018 | Asian | 30 | N/I | N/I | 65 | 35M 30F | ≤12:35 | No | serum | qPCR | U6 | N/I | MiR-337-5p | No | 0.7761 | N/I | N/I |
| Xu et al. [ | 2018 | Asian | 30 | N/I | N/I | 30 | N/I | N/I | N/I | serum | qPCR | U6 | N/I | MiR-411 | Yes | N/C | N/C | N/C |
| Yao et al. [ | 2018 | Asian | 70 | N/I | N/I | 152 | 8M 65F | <55: 84 | 21 yes, 131 no | serum | qPCR | U6 | 2−ΔΔCt | MiR-101 | No | 0.850 | 78.95% | 82.86% |
| Zhao et al. [ | 2018 | Asian | N/I | N/I | N/I | N/I | N/I | N/I | N/I | serum | qPCR | N/I | N/I | MiR-95-3p | Yes | N/C | N/C | N/C |
| Zhou et al. [ | 2018 | Asian | 50 | N/I | N/I | 98 | 62M 36F | <19: 47 | 30 yes, 68 no | serum | qPCR | cel-MiR-39 | 2−ΔΔCt | MiR-139-5p | No | 0.846 | 76.5% | 80% |
| Zhou et al. [ | 2018 | Asian | 7 | 4M | N/I | 7 | 4M | N/I | N/I | serum | qPCR | U6 | 2−ΔΔCt | MiR-22 | Yes | N/C | N/C | N/C |
| Cuscino et al. [ | 2019 | Italian | 3 | N/I | N/I | 5 | M | 16.8 | 2 yes, 3 no | plasma | Digital PCR | U6 | 2−ΔCt | 5 new microRNA candidates | Yes | N/I | N/I | N/I |
| Huang et al. [ | 2019 | Asian | 30 | 22M 28F | ≤16: 26 | 50 | 22M 28F | ≤16: 26 | 18 yes, 32 no | serum | qPCR | U6 and cel-MiR-39 | ΔCt = CtmiRNA− CtmiR—39/U6 | MiR-487-a MiR-493-5p MiR-501-3p MiR-502-5p | No | miR-487a: 0.83, | N/I | N/I |
| Huang, Sun et al. [ | 2019 | Asian | 50 | 32M 18F | ≤14: 30 | 50 | 3M 14F | ≤14:31 >14: 19 | 11 yes, 39 no | plasma | qPCR | U6, cel-MiR-39 | ΔCt = CtmiRNA− CtmiR—39/U6; ΔCtCt = ΔCtpatient− Ctcontrol | MiR-663a | No | 0.86 | 67.35% | 89.8% |
| Zhu et al. [ | 2019 | Asian | 25 | N/I | N/I | 55 | N/I | N/I | N/I | serum | qPCR | GAPDH | 2−ΔΔCt | hsa_circ_0000885 | No | 0.783 | N/I | N/I |
| Shi et al. [ | 2020 | Asian | 60 | N/I | N/I | 124 | 79H e 45 M | <50:72 | 33 yes, 91 no | serum | qPCR | cel-miR-39 | 2−ΔΔCt | MiR-194 | No | 0.855 | 84.2% | 79.1% |
| Zhang et al. [ | 2020 | Asian | 20 | 12M 8F | 18.5 | 41 | 27M 14F | 16 | 14 yes, 27 no | Extrac. | qPCR | U6, Cel-mir-39 e let-7i-5p | 2−ΔΔCt | MiR-101 | No | 0.7957 | N/I | N/I |
Figure 2Risk of bias assessment using the QUADAS-2 tool.