| Literature DB >> 27655698 |
Yun Gao1, Meiyu Dai1, Haihua Liu1, Wangjiao He1, Shengzhang Lin1, Tianzhu Yuan2, Hong Chen3, Shengming Dai1.
Abstract
MiR-21 has been identified as one of the most common proto-oncogenes. It is hypothesized that up-regulated miR-21 could be served as a potential biomarker for human cancer diagnosis. However, inconsistencies or discrepancies about diagnostic accuracy of circulating miR-21 still remain. In this sense, miR-21's diagnostic value needs to be fully validated. In this study, we performed an update meta-analysis to estimate the diagnostic value of circulating miR-21 in various human cancers. Additionally, we conducted a validation test on 50 endometrial cancer patients, 50 benign lesion patients and 50 healthy controls. A systematical literature search for relevant articles was performed in Pubmed, Embase and Cochrane Library. A total of 48 studies from 39 articles, involving 3,568 cancer patients and 2,248 controls, were included in this meta-analysis. The overall sensitivity, specificity, positive likelihood ratio (PLR), negative likelihood ratio (NLR), diagnostic odds ratio (DOR) and area under the curve (AUC) were 0.76 (0.71-0.80), 0.82 (0.79-0.85), 4.3 (3.6-5.1), 0.29 (0.24-0.35), 15 (11-20) and 0.86 (0.83-0.89), respectively. In the validation test, the expression levels of serum miR-21 were significantly higher in benign lesion patients (p = 0.003) and endometrial cancer patients (p = 0.000) compared with that of healthy controls. Endometrial cancer patients showed higher miR-21 expression levels (p = 0.000) compared with benign lesion patients. In conclusion, the meta-analysis shows that circulating miR-21 has excellent performance on the diagnosis for various cancers and the validation test demonstrates that serum miR-21 could be served as a novel biomarker for endometrial carcinoma.Entities:
Keywords: cancers; diagnosis; endometrial carcinoma; meta-analysis; miR-21
Mesh:
Substances:
Year: 2016 PMID: 27655698 PMCID: PMC5356598 DOI: 10.18632/oncotarget.12028
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Flow diagram of study selection process based on inclusion and exclusion criteria
Characteristics and quality assessment of 48 studies included in meta-analysis
| First author | Year | Country | Ethnicity | Patients | Cancer | Sample | method | ECon | Sen | Spe | Tp | Fp | Fn | Tn | AUC |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Wei J[ | 2011 | China | Asian | 77(36) | LC | Plasma | SYBR | miR-16 | 61.04 | 83.33 | 47 | 6 | 30 | 30 | 0.729 |
| Shen J[ | 2011 | USA | Caucasian African | 58(29) | LC | Plasma | SYBR | miR-16 | 79.31 | 65.52 | 46 | 10 | 12 | 19 | 0.816 |
| Li Y[ | 2011 | China | Asian | 20(10) | LC | Serum | SYBR | mimics | 78.80 | 100.00 | 16 | 0 | 4 | 10 | 0.912 |
| Le HB[ | 2012 | China | Asian | 82(50) | LC | Serum | Taqman | miR-16 | 46.30 | 92.00 | 38 | 4 | 44 | 46 | 0.686 |
| Wang B[ | 2012 | China | Asian | 31(39) | LC | Serum | SYBR | miR-16 | 87.10 | 74.40 | 27 | 10 | 4 | 29 | 0.880 |
| Tang D[ | 2013 | China | Asian | 62(60) | LC | Plasma | Taqman | RNU6 | 48.40 | 78.30 | 30 | 13 | 32 | 47 | 0.715 |
| Tang D[ | 2013 | China | Asian | 34(32) | LC | Plasma | Taqman | RNU6 | 52.90 | 71.90 | 18 | 9 | 16 | 23 | 0.709 |
| Abd-EI-Fattah AA[ | 2013 | Egypt | African | 65(37) | LC | Serum | SYBR | RNU48 | 85.70 | 86.50 | 56 | 5 | 9 | 32 | 0.850 |
| Mozzoni P[ | 2013 | Italy | Caucasian | 54(46) | LC | Plasma | Taqman | miR-16 | 50.00 | 92.30 | 27 | 4 | 27 | 42 | 0.740 |
| Yang JS[ | 2014 | China | Asian | 300(152) | LC | Serum | Taqman | RNU6 | 69.00 | 71.00 | 207 | 45 | 93 | 107 | 0.810 |
| Kanaan Z[ | 2012 | USA | Caucasian | 50(50) | CC | Plasma | Taqman | RNU6 | 90.00 | 90.00 | 45 | 5 | 5 | 45 | 0.820 |
| Wang B[ | 2012 | China | Asian | 32(39) | CC | Serum | SYBR | miR-16 | 87.50 | 74.40 | 28 | 10 | 4 | 29 | 0.850 |
| Toiyama Y[ | 2013 | Japan | Asian | 186(53) | CC | Serum | Taqman | cel-miR-39 | 82.80 | 90.60 | 154 | 5 | 32 | 48 | 0.919 |
| Liu GH[ | 2013 | China | Asian | 200(80) | CC | Serum | Taqman | miR-16 | 65.00 | 85.00 | 130 | 12 | 70 | 68 | 0.802 |
| Luo X[ | 2013 | Germany | Caucasian | 80(144) | CC | Plasma | Taqman | miR-16 | 51.70 | 80.70 | 41 | 28 | 39 | 116 | 0.653 |
| Basati G[ | 2014 | Iran | Caucasian | 40(40) | CC | Serum | SYBR | RNU6 | 77.00 | 78.00 | 31 | 9 | 9 | 31 | 0.870 |
| Ogata-kawata H[ | 2014 | Japan | Asian | 88(11) | CC | Serum | Taqman | miR-451 | 61.40 | 90.90 | 54 | 1 | 34 | 10 | 0.798 |
| Tsujiura M[ | 2010 | Japan | Asian | 69(30) | GC | Plasma | Taqman | RNU6 | 60.90 | 63.33 | 42 | 11 | 27 | 19 | 0.673 |
| Zheng Y[ | 2011 | China | Asian | 53(20) | GC | Plasma | SYBR | RNU6 | 83.77 | 80.53 | 44 | 4 | 9 | 16 | 0.853 |
| Li BS[ | 2012 | China | Asian | 60(60) | GC | Plasma | Taqman | cel-miR-39 | 74.29 | 75.71 | 45 | 15 | 15 | 45 | 0.794 |
| Wang B[ | 2012 | China | Asian | 30(39) | GC | Serum | SYBR | miR-16 | 56.70 | 94.90 | 17 | 2 | 13 | 37 | 0.810 |
| Shiotani A[ | 2013 | Japan | Asian | 64(64) | GC | Serum | Taqman | miR-16 | 58.60 | 86.10 | 38 | 9 | 26 | 55 | 0.720 |
| Wu J[ | 2015 | China | Asian | 50(50) | GC | Serum | SYBR | RNU6 | 83.77 | 79.60 | 44 | 10 | 6 | 40 | 0.912 |
| Wu J[ | 2015 | China | Asian | 50(50) | GC | PBMC | SYBR | RNU6 | 74.29 | 73.40 | 41 | 13 | 9 | 37 | 0.898 |
| Xu J[ | 2011 | China | Asian | 101(89) | HCC | Serum | SYBR | miR-181 | 56.70 | 73.50 | 85 | 24 | 16 | 65 | 0.870 |
| Tomimaru Y[ | 2012 | Japan | Asian | 126(50) | HCC | Plasma | Taqman | miR-16 | 87.30 | 92.00 | 110 | 4 | 16 | 46 | 0.953 |
| Tomimaru Y[ | 2012 | Japan | Asian | 126(30) | HCC | Plasma | Taqman | miR-16 | 61.10 | 83.30 | 77 | 5 | 49 | 25 | 0.773 |
| Liu AM[ | 2012 | China | Asian | 57(59) | HCC | Serum | Taqman | NA | 89.47 | 71.19 | 51 | 17 | 6 | 42 | 0.865 |
| Amr KS[ | 2015 | Egypt | African | 23(17) | HCC | Serum | Taqman | RNU48 | 100.00 | 81.20 | 23 | 3 | 0 | 14 | 0.943 |
| Zhuang C[ | 2015 | China | Asian | 52(43) | HCC | Serum | SYBR | cel-miR-39 | 67.40 | 55.80 | 35 | 19 | 17 | 24 | 0.621 |
| Asaga S[ | 2011 | USA | Caucasian | 79(20) | BC | Serum | SYBR | miR-16 | 67.00 | 75.00 | 53 | 5 | 26 | 15 | 0.721 |
| Wang B[ | 2012 | China | Asian | 50(39) | BC | Serum | SYBR | miR-16 | 80.00 | 87.70 | 40 | 5 | 10 | 34 | 0.880 |
| Mar-Aguilar F[ | 2013 | Mexico | Caucasian | 60(10) | BC | Serum | Taqman | 18s RNA | 94.40 | 80.00 | 57 | 2 | 3 | 8 | 0.950 |
| Gao J[ | 2013 | China | Asian | 89(55) | BC | Serum | SYBR | miR-16 | 87.60 | 87.30 | 78 | 7 | 11 | 48 | 0.929 |
| Toraih EA[ | 2015 | Egypt | African | 30(60) | BC | Serum | Taqman | RNU6 | 66.70 | 86.70 | 20 | 8 | 10 | 52 | 0.800 |
| Motawi TM[ | 2016 | Egypt | African | 50(25) | BC | Serum | SYBR | RNU48 | 96.00 | 92.00 | 48 | 2 | 2 | 23 | 0.984 |
| Motawi TM[ | 2016 | Egypt | African | 50(25) | BC | Serum | SYBR | RNU48 | 82.00 | 76.00 | 41 | 6 | 9 | 19 | 0.855 |
| Kurashige J[ | 2012 | Japan | Asian | 71(39) | EC | Serum | Taqman | miR-16 | 46.50 | 100.00 | 33 | 0 | 38 | 39 | NA |
| Wang B[ | 2012 | China | Asian | 31(39) | EC | Serum | SYBR | miR-16 | 71.00 | 69.20 | 22 | 12 | 9 | 27 | 0.740 |
| Wang J[ | 2009 | USA | Caucasian | 49(36) | PC | Plasma | Taqman | miR-16 | 46.00 | 89.00 | 23 | 4 | 26 | 32 | 0.620 |
| Hsu CM[ | 2012 | China | Asian | 50(36) | HNSCC | Plasma | Taqman | cel-miR-39 | 83.30 | 51.10 | 42 | 18 | 8 | 18 | 0.741 |
| Liu X[ | 2013 | China | Asian | 217(73) | NPC | Plasma | SYBR | RNU6 | 76.00 | 69.90 | 165 | 22 | 52 | 51 | 0.792 |
| Kishimoto T[ | 2013 | Japan | Asian | 94(50) | BTC | Plasma | Taqman | miR-16 | 85.10 | 100.00 | 80 | 0 | 14 | 50 | 0.930 |
| Kishimoto T[ | 2013 | Japan | Asian | 94(23) | BTC | Plasma | Taqman | miR-16 | 72.30 | 91.30 | 68 | 2 | 26 | 21 | 0.830 |
| Jones K[ | 2014 | Australia | Caucasian | 42(20) | Lym | Plasma | SYBR | cel-miR-39 | 95.00 | 86.00 | 40 | 3 | 2 | 17 | 0.920 |
| Wang J[ | 2014 | China | Asian | 52(49) | LSCC | Serum | SYBR | RNU6 | 69.20 | 81.60 | 36 | 9 | 16 | 40 | 0.801 |
| Huang W[ | 2015 | China | Asian | 75(75) | PCa | PBMC | Taqman | RNU6 | 87.50 | 85.70 | 66 | 11 | 9 | 64 | 0.833 |
| Liu SS[ | 2014 | China | Asian | 65(65) | RB | Plasma | SYBR | RNU6 | 46.00 | 72.00 | 30 | 18 | 35 | 47 | 0.548 |
Sen: sensitivity, Spe: specificity, Econ: endogenous control, Tp: true positive, Fp: false positive, Fn: false negative, Tn: true negative, AUC: area under ROC curve, LC: lung cancer, CC: colorectal cancer, GC: gastric cancer, HHC: hepatocellular cancer, BC: breast cancer, EC: esophageal cancer, PC: pancreatic cancer, HNSCC: head and neck squamous cell cancer, NPC: nasopharyngeal cancer, BTC: biliary tract cancer, Lym: Lymphoma, LSCC: laryngeal squamous cell cancer, PCa: prostate cancer, RB: retinoblastoma, PBMC: peripheral blood mononuclear cell, NA: not available
QUADAS assessment for the studies included in meta-analysis for diagnosis
| First author | Item 1 | Item 2 | Item 3 | Item 4 | Item 5 | Item 6 | Item 7 | Item 8 | Item 9 | Item 10 | Item 11 | Item 12 | Item 13 | Item 14 | Q |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Wei J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Shen J[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Li Y[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Le HB[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Wang B[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Tang D[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Abd-EI-Fattah AA[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Mozzoni P[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Yang JS[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Kanaan Z[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Toiyama Y[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Liu GH[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Luo X[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Basati G[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Ogata-kawata H[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Tsujiura M[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Zheng Y[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Li BS[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Shiotani A[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Wu J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Xu J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Tomimaru Y[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Liu AM[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Amr KS[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Asaga S[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Mar-Aguilar F[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Gao J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Toraih EA[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Kurashige J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Wang J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Hsu CM[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Liu X[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Kishimoto T[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Jones K[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Wang J[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Huang W[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Liu SS[ | N | Y | Y | U | Y | U | Y | Y | Y | U | Y | Y | Y | Y | 10 |
| Zhuang C[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
| Motawi TM[ | N | Y | Y | U | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | 11 |
Item 1: Was the spectrum of patients representative of the patients? Item 2: Were selection criteria clearly described? Item 3: Is the reference standard likely to classify the target condition? Item 4: Is the time period between reference standard and index test short enough? Item 5: Did the whole sample use a reference standard of diagnosis? Item 6: Did patients receive the same reference standard regardless of the index test result? Item 7: Was the reference standard independent of the index test? Item 8: Was the index test described in sufficient detail? Item 9: Was the reference standard described in sufficient detail? Item 10: Were the index test results interpreted without knowledge of the results of the reference standard? Item 11: Were the reference standard results interpreted without knowledge of the results of the index test? Item 12: Were the same clinical data available when test results were interpreted as would be available when the test is used in practice? Item 13: Were uninterpretable/intermediate test results reported? Item 14: Were withdrawals from the study explained? [60] N: No, Y: Yes, N: unclear, Q: quadas
Figure 2Forest plots for miR-21 in various cancers
A. The pooled sensitivity. B. The pooled specificity.
Summary results for diagnostic accuracy and their 95% confidence interval
| Subgroup | Studies | Sensitivity (95%CI) | Specificity (95%CI) | PLR (95%CI) | NLR(95%CI) | DOR (95%CI) | AUC(95%CI) |
|---|---|---|---|---|---|---|---|
| Ethnicity | |||||||
| Asian | 34 | 0.74(0.68-0.78) | 0.82(0.77-0.86) | 4.1(3.2-5.2) | 0.32(0.27-0.39) | 13(9-18) | 0.85(0.81-0.88) |
| Caucasian | 8 | 0.77(0.59-0.89) | 0.84(0.79-0.88) | 4.8(3.3-6.8) | 0.28(0.14-0.53) | 17(7-44) | 0.85(0.81-0.88) |
| African | 5 | 0.89(0.75-0.96) | 0.86(0.79-0.90) | 6.2(4.0-9.5) | 0.13(0.05-0.32) | 49(15-154) | 0.87(0.84-0.90) |
| Sample | |||||||
| Serum | 27 | 0.78(0.72-0.83) | 0.83(0.78-0.86) | 4.5(3.6-5.7) | 0.26(0.21-0.34) | 17(12-25) | 0.88(0.84-0.90) |
| Plasma | 19 | 0.71(0.63-0.78) | 0.82(0.75-0.87) | 3.9(2.8-5.5) | 0.35(0.26-0.47) | 11(6-20) | 0.84(0.80-0.87) |
| Cancer | |||||||
| LC | 10 | 0.67(0.56-0.76) | 0.81(0.74-0.86) | 3.5(2.5-4.8) | 0.41(0.31-0.55) | 9(5-14) | 0.82(0.79-0.85) |
| CC | 7 | 0.75(0.63-0.83) | 0.84(0.79-0.87) | 4.6(3.4-6.3) | 0.30(0.20-0.46) | 15(8-30) | 0.86(0.83-0.89) |
| GC | 7 | 0.73(0.63-0.81) | 0.80(0.73-0.86) | 3.7(2.7-5.0) | 0.33(0.24-0.46) | 11(6-19) | 0.84(0.80-0.87) |
| HCC | 6 | 0.83(0.70-0.92) | 0.77(0.66-0.86) | 3.7(2.3-6.0) | 0.21(0.11-0.42) | 17(6-50) | 0.87(0.83-0.89) |
| BC | 7 | 0.85(0.75-0.91) | 0.85(0.80-0.90) | 5.8(4.0-8.5) | 0.18(0.10-0.31) | 33(14-76) | 0.89(0.86-0.91) |
| Others | 11 | 0.74(0.62-0.83) | 0.86(0.74-0.93) | 5.2(2.7-10.3) | 0.31(0.21-0.45) | 17(7-42) | 0.86(0.83-0.89) |
| Method | |||||||
| SYBR | 23 | 0.80(0.74-0.84) | 0.79(0.74-0.82) | 3.7(3.0-4.6) | 0.26(0.20-0.34) | 14(9-22) | 0.85(0.82-0.88) |
| Taqman | 25 | 0.72(0.64-0.79) | 0.85(0.80-0.89) | 4.8(3.6-6.6) | 0.33(0.25-0.42) | 15(9-24) | 0.87(0.84-0.90) |
| Endogenous control | |||||||
| MiR-16 | 20 | 0.69(0.62-0.76) | 0.87(0.82-0.91) | 5.3(3.9-7.2) | 0.35(0.28-0.44) | 15(10-23) | 0.87(0.83-0.89) |
| RNU6 | 14 | 0.74(0.65-0.81) | 0.78(0.73-0.81) | 3.3(2.6-4.2) | 0.34(0.25-0.47) | 10(6-17) | 0.82(0.78-0.85) |
| cel-miR-39 | 4 | 0.84(0.676-0.89) | 0.78(0.59-0.90) | 3.8(1.9-7.7) | 0.21(0.13-0.34) | 18(6-52) | 0.87(0.84-0.90) |
| Overall | 48 | 0.76(0.71-0.80) | 0.82(0.79-0.85) | 4.3(3.6-5.1) | 0.29(0.24-0.35) | 15(11-20) | 0.86(0.83-0.89) |
CI: confidence interval, PLR: positive likelihood ratio, NLR: negative likelihood ratio, DOR: diagnostic odds ratio, AUC: area under ROC curve
Figure 3SROC curve of miR-21 for diagnostic value in various cancers
Figure 4The Deek's test plot of the diagnostic meta-analysis
Figure 5Relative fold change of serum miR-21 in endometrial cancer patients (n = 50), benign lesion patients (n = 50) and healthy controls (n = 50)
Benign lesion patients vs. healthy controls, p = 0.003; endometrial cancer patients vs. healthy controls, p = 0.000 and benign lesion patients vs. endometrial cancer patients, p = 0.000.
Figure 6ROC curve analysis for evaluating serum miR-21 diagnostic performance
A. The performance in differentiating benign lesion patients from healthy controls. B. The performance in differentiating endometrial cancer patients from healthy controls. C. The performance in differentiating benign lesion patients from endometrial cancer patients.