| Literature DB >> 29212284 |
Francesca Moretti1, Paola D'Antona2, Emanuele Finardi1, Marco Barbetta1, Lorenzo Dominioni3, Albino Poli1, Elisabetta Gini2, Douglas M Noonan2,4, Andrea Imperatori3, Nicola Rotolo3, Maria Cattoni3, Paola Campomenosi2,5.
Abstract
Selected circulating microRNAs (miRNAs) have been suggested for non-invasive screening of non-small cell lung cancer (NSCLC), however the numerous proposed miRNA signatures are inconsistent. Aiming to identify miRNAs suitable specifically for stage I-II NSCLC screening in serum/plasma samples, we searched the databases "Pubmed", "Medline", "Scopus", "Embase" and "WOS" and systematically reviewed the publications reporting quantitative data on the efficacy [sensitivity, specificity and/or area under the curve (AUC)] of circulating miRNAs as biomarkers of NSCLC stage I and/or II. The 20 studies fulfilling the search criteria included 1110 NSCLC patients and 1009 controls, and were of medium quality according to Quality Assessment of Diagnostic Accuracy Studies checklist. In these studies, the patient cohorts as well as the control groups were heterogeneous for demographics and clinicopathological characteristics; moreover, numerous pre-analytical and analytical variables likely influenced miRNA determinations, and potential bias of hemolysis was often underestimated. We identified four circulating miRNAs scarcely influenced by hemolysis, each featuring high sensitivity (> 80%) and AUC (> 0.80) as biomarkers of stage I-II NSCLC: miR-223, miR-20a, miR-448 and miR-145; four other miRNAs showed high specificity (> 90%): miR-628-3p, miR-29c, miR-210 and miR-1244. In a model of two-step screening for stage I-II NSCLC using first the above panel of serum miRNAs with high sensitivity and high AUC, and subsequently the panel with high specificity, the estimated overall sensitivity is 91.6% and overall specificity is 93.4%. These and other circulating miRNAs suggested for stage I-II NSCLC screening require validation in multiple independent studies before they can be proposed for clinical application.Entities:
Keywords: biomarkers; circulating; microRNA; non-small cell lung cancer; stage I-II NSCLC
Year: 2017 PMID: 29212284 PMCID: PMC5706930 DOI: 10.18632/oncotarget.21739
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1PRISMA flow diagram illustrating the study selection process
From the 1712 initially identified studies, duplicates were removed and records were screened by title, abstract, full text, leading to inclusion of 17 studies. Manual search of these papers led to inclusion of 3 further studies, for a total of 20 studies finally included in our review. aAmong completed studies, no protocol satisfying the inclusion criteria was retrieved. Protocols in the recruiting stage were excluded.
Sensitivity, specificity and AUC of the 27 individual miRNAs described in the selected studies
| miRNA | Reference | N | Sensitivity (%) | Specificity (%) | AUC |
|---|---|---|---|---|---|
| Geng et al., 2014 [ | 186 | 86.0 | |||
| Zhang et al, 2017 [ | 172 | 69.8 | 84.3 | 0.81 | |
| 486* | Li et al., 2015 [ | 22 | 91.0 | 82.0 | 0.93 |
| Geng et al., 2014 [ | 186 | 81.0 | |||
| Zhang et al, 2017 [ | 172 | 79.8 | 88.0 | 089 | |
| Powrozek et al., 2016 [ | 114 | 77.0 | |||
| 21* | Sun et al., 2016 [ | 82 | -- | -- | 0.88 |
| Zhang et al, 2017 [ | 172 | 77.5 | 85.5 | 0.84 | |
| Geng et al., 2014 [ | 186 | 67.0 | 68.0 | 0.77 | |
| 21-5p* | Ma et al., 2013 [ | 74 | -- | -- | 0.79 |
| Zhang et al, 2017 [ | 172 | 89.2 | |||
| Geng et al., 2014 [ | 186 | 70.0 | 68.0 | 0.77 | |
| 141 | Nadal et al., 2015 [ | 135 | -- | -- | 0.88 |
| 193b | Nadal et al., 2015 [ | 135 | -- | -- | 0.86 |
| 200b | Nadal et al., 2015 [ | 135 | -- | -- | 0.85 |
| 126* | Zhu et al., 2016 [ | 127 | 62.1 | 97.5 | 0.85 |
| 301 | Nadal et al., 2015 [ | 135 | -- | -- | 0.84 |
| 328 | Ulivi et al., 2013 [ | 78 | -- | -- | 0.82 |
| 4478 | Powrozek et al., 2016 [ | 114 | 75.0 | 68.4 | 0.82 |
| 125b | Shi et al., 2017 [ | 210 | 30.4 | 83.9$ | 0.81$ |
| Yuxia et al., 2012 [ | 186 | 96.1 | 38.2 | 0.66 | |
| Wang W et al., 2016 [ | 69 | 53.8 | 0.80 | ||
| 182 | Zhu et al., 2016 [ | 127 | 67.8 | 85.0 | 0.78 |
| 425-3p | Wang Y et al., 2016 [ | 173 | 67.1 | 68.1 | 0.73 |
| Wang Y et al., 2016 [ | 173 | 42.7 | 0.73 | ||
| Zhu et al., 2014 [ | 84 | 50.0 | 0.73 | ||
| 429 | Zhu et al., 2014 [ | 84 | 94.4 | 41.7 | 0.72 |
| 22 | Shi et al., 2017 [ | 210 | 43.5 | 86.3$ | 0.72$ |
| 335-3p | Ma et al., 2013 [ | 74 | -- | -- | 0.71 |
| 532 | Wang Y et al., 2016 [ | 173 | 53.7 | 80.2 | 0.66 |
| Zhu et al., 2016 [ | 127 | 35.6 | 0.65 | ||
| 183 | Zhu et al., 2016 [ | 127 | 41.4 | 82.5 | 0.64 |
| 15b* | Shi et al., 2017 [ | 210 | 41.3 | 82.4$ | 0.62$ |
N: sample size.
*asterisk denotes miRNA influenced by hemolysis; miRNA was considered hemolysis-influenced when documented in three or more relevant independent studies reporting hemolysis-induced miRNA dysregulation (see Supplementary Table 2).
miRNAs shown in bold are those uninfluenced by hemolysis (see Additional Table 2) and with high sensitivity (> 80%) and high AUC (> 0.80) reported in at least one study shown in Reference column.
miRNAs shown in are those uninfluenced by hemolysis (see Additional Table 2) and with high specificity (> 90%) reported in at least one study shown in Reference column.
$Data are calculated among the total sample, that includes advanced stages (III and IV).
Sensitivity (Se), specificity (Sp) and AUC of miRNA panels described in the selected studies
| miRNA Panel | Reference | Se(%) | Sp(%) | AUC | ||
|---|---|---|---|---|---|---|
| 1 | miR-141, miR-200b, miR-193b, miR-301 | Nadal et al., 2015 [ | 135 | N.R. | N.R. | 0,99 |
| 21 | 24 miRNAs* | Wozniak et al., 2015 [ | 121 | N.R. | N.R. | 0,98 |
| 2 bis2 | 24 miRNAs* | Wozniak et al., 2015 [ | 149 | N.R. | N.R. | 0,96 |
| 3 | miR-182 | Zhu et al., 2016 [ | 127 | 88,5 | 92,5 | 0,98 |
| 4 | miR-532 | Wang Y. et al. 2016 [ | 173 | 91,5 | 97,8 | 0,97 |
| | Powrozek et al., 2016 [ | 114 | 90 | 76.3 | 0,90 | |
| | Zhang et al., 2017 [ | 172 | 81,8 | 90,1 | 0,90 | |
| 7 | 34 miRNAs** | Bianchi et al., 2011 [ | 52 | 59 | 90 | 0,89 |
| 8 | miR-125b, miR-200b, miR-34b, miR-203, miR-205, miR-429 | Halvorsen et al., 2016 [ | 158 | 85 | 74 | 0,88 |
| 9 | Ma et al., 2013 [ | 74 | N.R. | N.R. | 0,86 | |
| 101 | 12 miRNAs*** | Sanfiorenzo et al., 2013 [ | 33 | N.R. | N.R. | 0,85 |
| 10 bis2 | 12 miRNAs*** | Sanfiorenzo et al., 2013 [ | 42 | N.R. | N.R. | 0,81 |
| 11 | miR-1254, miR-574-5p | Foss et al., 2011 [ | 53 | 73 | 71 | 0,75 |
| 122 | Shen et al., 2011 [ | 44 | 73,3 | 96,5 | N.R. | |
| 12 bis1 | Shen et al., 2011 [ | 44 | 86,7 | 96,5 | N.R. |
N: sample size.
N.R.: Not Reported.
Panels are listed in decreasing order of AUC value. The studies by Wozniak et al., Sanfiorenzo et al., Shen et al. [54, 29, 30], separately described findings in stage I2 and stage II1 non-small cell lung cancer.
*let-7c, miR-122, miR-182, miR193a-5p, miR-200c, miR-203, miR-218, miR-155, let-7b, miR-411, miR-450b-5p, miR-485-3p, miR-519a, miR-642, miR-517b, miR-520f, miR-206, miR-566, miR-661, miR-340, miR-1243, miR-720, miR-543, miR-1267.
**miR-92a, miR-484, miR-486-5p, miR-328, miR-191, miR-376a, miR-342-3p, miR-331-3p, miR-30c, miR-28-5p, miR-98, miR-17, miR-26b, miR-374a, miR-30b, miR-26a, miR-142-3p, miR-103, miR-126, let-7a, let-7d, let-7b, miR-32, miR-133b, miR-566, mir-432, miR-223, miR-29a, miR-148a, miR-142-5p, miR-22, miR-148b, miR-140-5p, miR-139-5p.
***miR-155-5p, miR-20a-5p, miR-25-3p, miR-296-5p, miR-191-5p, miR-126-3p, miR-223-3p, miR-152-3p, miR-145-5p, miR-199a-5p, miR-24-3p, and let-7f-5p.
miRNAs influenced by hemolysis are indicated in italics; miRNA was considered hemolysis-influenced if influence was documented in three or more relevant independent studies reporting hemolysis-induced miRNA dysregulation (see Supplementary Table 2).
miRNAs indicated in bold are also accurate individual predictors, included in Table 2.
miRNAs indicated as stage I-II NSCLC biomarkers in more than one of the selected studies
| miRNA | Number of studiesa | References |
|---|---|---|
| miR-21 | 4 | Sun et al., 2016 [ |
| 4 | Zhang et al., 2017 [ | |
| miR-126 | 4 | Zhu et al., 2016 [ |
| 3 | Zhang et al., 2017 [ | |
| 3 | Zhang et al., 2017 [ | |
| miR-125b | 3 | Shi et al., 2017 [ |
| miR-486 | 3 | Li et al., 2015 [ |
| miR-155 | 3 | Geng et al., 2014 [ |
| miR-200b | 2 | Halvorsen et al., 2016 [ |
| miR-328 | 2 | Ulivi et al., 2013 [ |
| miR-182 | 2 | Zhu et al., 2016 [ |
| miR-429 | 2 | Halvorsen et al., 2016 [ |
| 2 | Zhu et al., 2016 [ | |
| miR-22 | 2 | Shi et al., 2017 [ |
| miR-203 | 2 | Halvorsen et al., 2016 [ |
| let-7b | 2 | Wozniak et al., 2015 [ |
| miR-566 | 2 | Wozniak et al., 2015 [ |
| miR-191 | 2 | Sanfiorenzo et al., 2013 [ |
anumber of reviewed studies indicating the specified miRNA as stage I-II NSCLC biomarker.
*Asterisk denotes panel including the specified miRNA.
miRNAs indicated in bold are included in our two-step screening (Table 2).
Characteristics of the 11 included studies evaluating the performance of circulating miRNAs in distinguishing NSCLC subtypes
| Reference | Year | Sample ethnicity | Sample Sizea | NSCLCd Stage | miRNAs examined | AUCe in discriminating NSCLC subtype from controls for the examined miRNAs | Comments on miRNA performance | ||
|---|---|---|---|---|---|---|---|---|---|
| Ptb | Cc | ACf ( | SCCg ( | ||||||
| Caucasian | 22h | 30 | I | Panel of 34 miRNAs* | ( | ( | The panel distinguished better SCCs than ACs from controls; however, the SCCs were stage II-IV cases. Sample size was small. | ||
| Asian | 126 | 60 | I-II | 5 miRNAs: | ( | ( | All 5 miRNAs differentiated NSCLC from controls with greater accuracy in SCCs. 17 cases had histology other than AC or SCC. | ||
| Caucasian | 29i | 85 | I-II | 2 individual miRNAs: | ( | ( | Both miRNAs overexpressed in NSCLC plasma samples relative to control. miR-4478 expression was higher in SCC than in AC patients ( | ||
| NA | 35i | 20 | I-II | Panel of 12 miRNAs** | ( | ( | Panel distinguished NSCLC patients from controls (AUC=0.81). In SCC compared to AC, higher plasma levels of miR-20a-5p ( | ||
| African American, Caucasian | 30i | 29 | I-II | miR-21, | ( | ( | Diagnostic sensitivity of the composite panel in distinguishing stage I NSCLC from controls was 73.3%. Analysis of miRNA performance in diagnosing subtypes included 28 cases with stage >II and showed higher sensitivity for diagnosing ACs (91.7%) than SCCs (82.3%) ( | ||
| NA | 46i | 45 | I-II | miR-22, | ( | ( | Serum levels of the three miRNAs significantly altered in NSCLC cases compared to controls. Diagnostic sensitivity of miR-125b was significantly higher for ACs than SCCs ( | ||
| Caucasian | 54i | 24 | I-II | miR-328 | ( | ( | miR-328 discriminated well between stage I-II NSCLC and controls (AUC = 0.82). Analysis of miRNA performance for subtypes, conducted in 86 NSCLCs (63 ACs; 22 SCC; 1 sarcomatoid), 32 of which were in stage > II, indicated significantly higher expression of miR-423 in SCCs than in ACs. The miRNA analyses were performed in whole blood specimens. | ||
| Asian | 82 | 91 | I-II | miR-532, miR-628, miR-425-3p | ( | ( | Combination of the three miRNAs discriminated well NSCLC from control plasma samples (AUC = 0.97). Evaluation of miRNA performance was conducted in 40 ACs and 39 SCCs. Plasma levels of miR-425-3p ( | ||
| NA | 54i | 15 | I-II | miR-1244 | ( | ( | For miR-1244 the AUC was higher in SCC than AC. AUC was assessed on serum samples of 43 NSCLCs (26 ACs; 17 SCCs), 17 of which were in stage > II. | ||
| Caucasian | 70i | 100 | I-II | Panel of 24 miRNAs*** | (n, NA) | (n, NA) | Panel showed similar accuracy for distinguishing AC and SCC from controls. AUC for the panel was assessed in 70 NSCLCs [a sub-cohort of 100 NSCLCs (35 ACs; 65 SCCs), 30 of which were in stage >II]. | ||
| Asian | 36i | 48 | I | miR-29c, | ( | ( | The evaluation of 70 NSCLCs (34 ACs; 36 SCC), 34 of which were in stage II–IV, showed non-significant difference of serum miR-29c ( | ||
aThe sample refers to stage I and II NSCLC.
bPt=Patients; cC=Controls.
dNSCLC: non-small cell lung cancer.
eAUC=area under the curve.
fAC: adenocarcinoma.
gSCC=squamous cell carcinoma.
hSCCs were 12 additional cases with stage II-IV disease.
iAnalysis of miRNA performance included also cases with stage > II.
lNA: Not available.
*miR-92a, miR-484, miR-486-5p, miR-328, miR-191, miR-376a, miR-342-3p, miR-331-3p, miR-30c, miR-28-5p, miR-98, miR-17, miR-26b, miR-374a, miR-30b, miR-26a, miR-142-3p, miR-103, miR-126, let-7a, let-7d, let-7b, miR-32, miR-133b, miR-566.
**miR-155-5p, miR-20a-5p, miR-25-3p, miR-296-5p, miR-191-5p, miR-126-3p, miR-223-3p, miR-152-3p, miR-145-5p, miR-199a-5p, miR-24-3p, and let-7f-5p.
***let-7c, miR-122, miR-182, miR-193a-5p, miR-200c, miR-203, miR218, miR-155, let-7b, miR-411, miR-450b-5p, miR-485-3p, miR-519a, miR-642, miR-517b, miR-520f, miR-206, miR-566, miR-661, miR-340, miR-1241, miR-720, miR-543, miR-1267.
Factors potentially affecting circulating miRNA quantification in NSCLC patients
| Ethnicity | |
| Gender/age | |
| Smoking status | |
| Stage of disease (early/advanced) | |
| Type of sample (plasma/serum/whole blood) | |
| Hemolysis | |
| RNA extraction method | |
| Reverse transcription method | |
| miRNA quantification method | |
| Normalization |
NSCLC: non-small cell lung cancer.
a) miRNAs with sensitivity > 80% and AUC > 0.80
| miRNA | Sensitivity (%) | AUC | Specificity (%) | Reference |
|---|---|---|---|---|
| miR-223 | 87.0 | 0.94 | 86.0 | Geng et al., 2014 [ |
| miR-20a | 83.0 | 0.89 | 81.0 | Geng et al., 2014 [ |
| miR-448 | 85.0 | 0.89 | 77.0 | Powrozek et al., 2016 [ |
| miR-145 | 80.6 | 0.89 | 89.2 | Zhang et al., 2017 [ |
b) miRNAs with specificity > 90%
| miRNA | Sensitivity (%) | AUC | Specificity (%) | Reference |
|---|---|---|---|---|
| miR-628-3p | 42.7 | 0.73 | 91.2 | Wang Y et al., 2016 [ |
| miR-29c | 50.0 | 0.73 | 95.8 | Zhu et al., 2014 [ |
| miR-210 | 35.6 | 0.65 | 100.0 | Zhu et al., 2016 [ |
| miR-1244 | 53.8 | 0.80 | 100.0 | Wang W et al., 2016 [ |