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Review

An Epidemiological Systematic Review with Meta-Analysis on Biomarker Role of Circulating MicroRNAs in Breast Cancer Incidence

1
Unit of Cancer Epidemiology, Città della Salute e della Scienza University-Hospital and Center for Cancer Prevention (CPO), Via Santena 7, 10126 Turin, Italy
2
Centre for Biostatistics, Epidemiology and Public Health (C-BEPH), Department of Clinical and Biological Sciences, University of Turin, 10043 Orbassano, Italy
3
Unit of Cancer Epidemiology, Department of Medical Sciences, University of Turin, 10126 Turin, Italy
4
Institute for Cancer Research, Prevention and Clinical Network (ISPRO), 50139 Florence, Italy
5
Epidemiology and Prevention Unit, Fondazione IRCCS Istituto Nazionale dei Tumori, 20133 Milan, Italy
6
Unit of Epidemiology, Regional Health Service ASL TO3, 10095 Grugliasco, Italy
*
Author to whom correspondence should be addressed.
These authors equally contributed to this work.
Int. J. Mol. Sci. 2023, 24(4), 3910; https://doi.org/10.3390/ijms24043910
Submission received: 30 December 2022 / Revised: 6 February 2023 / Accepted: 9 February 2023 / Published: 15 February 2023
(This article belongs to the Special Issue mRNAs in Biology)

Abstract

:
Breast cancer (BC) is a multifactorial disease caused by an interaction between genetic predisposition and environmental exposures. MicroRNAs are a group of small non-coding RNA molecules, which seem to have a role either as tumor suppressor genes or oncogenes and seem to be related to cancer risk factors. We conducted a systematic review and meta-analysis to identify circulating microRNAs related to BC diagnosis, paying special attention to methodological problems in this research field. A meta-analysis was performed for microRNAs analyzed in at least three independent studies where sufficient data to make analysis were presented. Seventy-five studies were included in the systematic review. A meta-analysis was performed for microRNAs analyzed in at least three independent studies where sufficient data to make analysis were presented. Seven studies were included in the MIR21 and MIR155 meta-analysis, while four studies were included in the MIR10b metanalysis. The pooled sensitivity and specificity of MIR21 for BC diagnosis were 0.86 (95%CI 0.76–0.93) and 0.84 (95%CI 0.71–0.92), 0.83 (95%CI 0.72–0.91) and 0.90 (95%CI 0.69–0.97) for MIR155, and 0.56 (95%CI 0.32–0.71) and 0.95 (95%CI 0.88–0.98) for MIR10b, respectively. Several other microRNAs were found to be dysregulated, distinguishing BC patients from healthy controls. However, there was little consistency between included studies, making it difficult to identify specific microRNAs useful for diagnosis.

1. Introduction

Breast cancer (BC) is the most frequently diagnosed cancer in Europe, accounting for 13% of all new cancer cases [1].
BC is a multifactorial disease caused by the interaction between genetic predisposition and environmental exposures [2]. The environmental exposures include several modifiable risk factors such as overweight or obesity (post-menopausal), use of menopausal hormone therapy, a low level of physical activity, consumption of alcohol, cigarette smoking, shift work, and some reproductive factors [2]. A genetic predisposition or family history account for about 10%, with some geographical variations [2]. The most common are germline mutations, such as BRCA1, BRCA2, PALB2, ATM, and TP53 genes, among others [3,4].
MicroRNA are a group of short noncoding regulatory RNAs that modulate gene expression at the post transcriptional level [5]. The dysregulation of microRNAs is linked to many human diseases, including cancer. Cell-free circulating microRNAs probably released from cells in lipid vescicles, microvescicles, or exosomes have been detected in peripheral blood circulation [6].
Due to the stability and resistance to the endogenous RNase activity, microRNAs have been investigated as diagnostic biomarkers of BC. Accessing circulating BC biomarkers from peripheral blood (through the so-called liquid biopsy) is a promising non-invasive and cost-effective procedure [7]. In fact, dysregulated microRNAs have both oncogenic and tumour-suppressing actions, depending on their targets [7]. This is a complex matter because some dysregulations of microRNAs seem to be common in most cancers, possibly due to their role in cancer-associated biological processes and not in aetiology targets [7].
Circulating microRNA may reflect the response of the organism to environmental exposures, as well as early signs of disease.
This review aims to report the potential use of altered circulating microRNA levels in the diagnosing of BC, paying special attention to methodological problems in this research field.

2. Materials and Methods

The protocol of this review was registered in the international database of prospective registered systematic reviews (PROSPERO 2022; CRD42022354439). The workflow and methodology were based on the guidelines of Preferred Reporting Items for Systematic Reviews and Meta-Analyses of Diagnostic Test Accuracy (PRISMA-DTA) [8].

2.1. Publication Search

We conducted a comprehensive literature search in PubMed, Cochrane Library, EMBASE, Google Scholar, and NCBI PubMed Central until 31 August 2022 to identify relevant studies. The article search was performed using the following search strategy:
((Circulating) AND (microRNA OR miRNA) AND (breast AND Cancer)) NOT (cells) NOT (tissue) AND ((English[Filter]) AND (Humans[Filter]) AND (“31 August 2022”[Date—Publication]))
Furthermore, other relevant studies were identified by manually searching for references of eligible publications.

2.2. Inclusion and Exclusion Criteria

Studies were considered eligible for the systematic review if they met the following criteria: (1) The study includes patients with BC and healthy controls; (2) The levels of one or more microRNAs were measured in blood, serum, or plasma; (3) They presented sufficient data to collect the number of patients and a measure of diagnostic performance (e.g., sensibility and sensitivity, or fold change) or a measure of association (e.g., Odds Ratio or Relative Risk).
Studies were included in the meta-analysis if there were at least three studies focused on the same microRNA, they met criteria (1), (2), and (3), and the frequencies of true positives (TP), false positives (FP), true negatives (TN), and false negatives (FN) could be directly or indirectly extracted.
Studies were excluded if they were reviews, meta-analysis, letters, commentaries, or abstracts presented in conferences; lacking sufficient data; duplication of previous publications; or languages other than English.

2.3. Data Extraction

After the selection of studies was made, other relevant studies were searched from the references in the articles. According to inclusion criteria, data were extracted by two independent authors (LP and CS). Disagreements were solved through face-to-face discussion and consensus. Extracted data form included: first author’s name and reference, country, sample size, biological sample (plasma, serum, or blood), microRNA, cut-off value, AUC value (95% CI), sensitivity (95% CI), specificity (95% CI), fold change (95% CI), p-value, microRNA source (candidate or discovery if found in a screening phase), and expression (upregulation or downregulation). Diagnostic performance data were extracted or calculated for the studies included in the meta-analysis (FP, FN, TP, TN).

2.4. Quality Assessment

We estimated the quality of each study using the revised Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) by two independent authors (LP and CS) [9].

2.5. Statistical Analysis

The STATA17.0 software was used to realize the statistical analyses.
Descriptive statistics on directions of microRNA expression are displayed in a pyramidal graph by type of specimen. Direction of microRNA expression was defined as the direction of the ratio between the microRNA concentration in breast cancer cases and the microRNA concentration in breast cancer controls.
For each study included in the meta-analysis, we built a contingency table to be used to carry out the meta-analysis. After selecting suitable studies, forest plot, and summary receiver operating characteristic curve (SROC), with the pooled sensitivity and specificity, were built for each microRNA [10,11]. We analyzed the heterogeneity between studies using the I2 statistics. Funnel plots were used to evaluate publication bias [12].
The analyses were repeated on subgroups as sensitivity analysis. Subgroups analyses were based on specimen type, ethnicity, and quality of the study (by QUADAS-2 score).

3. Results

In total, 149 eligible studies were obtained from online database searching after automation screening. After a manual check of titles and abstracts, 47 papers were excluded because of the type of study (review, prognostic studies) or they were out of topic. After screening full texts, 24 publications were excluded because they did not satisfy the inclusion criteria. Finally, 75 publications were considered in this review [13,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77,78,79,80,81,82,83,84,85,86,87]. The flow-chart of the excluded papers is presented in Figure 1. The main characteristics of the studies were summarized in Table 1.
The publications involved a total of 6380 BC cases and 4517 health controls. Studies with two different approaches were included in this review: (I) The validation phase of studies where investigated microRNA were selected on the basis of a previous discovery phase (N = 26); (II) Candidate studies where microRNA were selected based on a priori knowledge (N = 50).
The studies with a number of BC cases ≥ 100 were only 20/75 (≈26%). The studies were conducted in China (N = 19), Germany (N = 9), Egypt (N = 6), USA (N = 6), Iran (N = 4), Ireland (N = 4), Spain (N = 3), Belgium (N = 2), Czech Republic (N = 2), India (N = 2), Indonesia (N = 2), Mexico (N = 2), Singapore (N = 2), and others (N = 12). Notably, the majority of studies were conducted in the Eastern Asian population (N = 29), while the majority of the others were conducted among European or white U.S. populations. Black and Hispanic populations are very little represented in microRNA and breast cancer studies.
Some studies were performed in serum (N = 44), while others were performed in plasma (n = 21), whole blood (N = 7), plasma and serum (N = 2), or blood, serum, and plasma (N = 1).
Among the 75 studies included in the review, 53 studies conducted multiple microRNA assays, while the other 22 studies focused on single microRNA assay (covering in total 141 microRNAs).
In the Supplementary Table S1, the clinical information on cases is presented for each study.
The results of the studies included in the review are presented in Table 2. The microRNAs that were proposed as a biomarker of BC in at least two independent clinical studies in the same biological specimen (serum, plasma, or whole blood) were: MIR17, MIR21, MIR24, MIR145, MIR155, MIR195, MIR202, MIR222, MIR335, MIR373, MIR425, MIR652, MIR10b, MIR29b, MIR34a, MIR92a, MIR148b, MIR181a, MIR199, and MIR1246. The direction of the ratio of microRNA concentrations in breast cancer cases versus controls was generally coherent for MIR21 (12 up versus 1 down), MIR155 (14 up versus 1 down), MIR10b (5 up, only serum), MIR373 (3 up, only serum), MIR652 (3 down, only serum), MIR425 (2 down, only serum), MIR29a (2 up, only serum), and MIR148b (2 down, only serum). The direction was not coherent for MIR145 (5 up versus 4 down), MIR17, MIR24, MIR195, MIR202, MIR222, MIR335, MIR451, MIR1246, MIR34a, MIR92a, MIR181a, and MIR199a (Figure 2).
Not all the studies presented data on AUC and/or sensitivity and specificity or fold change (N = 26 articles did not report sensitivity/specificity or AUC measures; N = 48 not reported fold change measure for single miRNAs).
A meta-analysis was performed only for microRNAs analysed in at least three independent studies where sufficient data to make an analysis were presented.
The results of the meta-analysis on MIR21 (upregulated), showed an overall sensitivity of 0.86 (95%CI 0.76–0.93) and a specificity of 0.84 (95%CI 0.71–0.92) (Figure 3).
The pooled sensitivity and specificity of MIR155 (upregulated) were respectively 0.83 (95%CI 0.72–0.91) and 0.90 (95%CI 0.69–0.97) (Figure 4).
The meta-analysis results on the accuracy of MIR10b demonstrated a very low sensitivity (0.56 95%CI 0.32–0.71) and a high specificity (0.95 95%CI 0.88–0.98) (Figure 5).
Meta-analysis results for MIR34a and MIR195 were presented in the supplementary figure (Supplementary Figures S1 and S2).
The shape of the funnel plot showed asymmetry in the analyses of MIR21, MIR155, and the overall microRNAs included in the meta-analysis, implying the presence of a publication bias in the analysis of the remaining circulating microRNAs (Figure 6).
In general, a quality assessment with QUADAS detected a low quality of the studies because of an inadequate sample size and a low attention to the study design, the choice of controls, and the possible confounders (Figure 7 and Supplementary Table S2).

4. Discussion

In the present study, we systematically reviewed clinical studies on microRNA for the diagnosis of BC, exploring possible links of most associated microRNA with hallmarks of BC.
Increasing evidence has demonstrated that microRNA may function as either a tumor suppressor or a promoter in a variety of cancers. The association of obesity and inflammation with microRNA has also been proposed [88,89]. The identification of microRNAs that could simultaneously be associated to BC and other hallmarks of cancer could be considered a meet-in-the-middle biomarker, which is useful to disentangle the role of involved factors and to hypothesize a biological pathway from exposures to disease [90].
Only few microRNAs were analyzed in more than two independent studies that presented in the results the essential data to be included in this meta-analysis. Among them, the most interesting microRNAs in terms of coherence among studies in the regulation direction and of results of diagnostic accuracy were two upregulated microRNAs: MIR21 and MIR155.
The MIR21 is an onco-microRNA that inhibits several tumor-suppressor genes (such as PTEN) and promotes cell growth invasion, apoptosis, and immune dysregulation [91]. A significant interaction between obesity and the expression of MIR21 and MIR155 consisting of obesity reducing the expression of these microRNAs in control women was described [89]. MIR155 is another oncogenic microRNA that regulates several signaling pathways related to cell growth [92], and it is also known to target BRCA1 [93]. It has also an important role in reducing inflammation, observed both in vitro and in vivo [94].
We observed little consistency with respect to the circulating microRNAs identified by different studies. This could be due also because of the different method used in the choice of microRNAs, lack of standardization of techniques (different sample retrieval and conservation, laboratory techniques, microRNAs measurements and normalization, cut-off), inconsistent selection of patients, low abundance, small samples size, and inadequate statistical analysis.
The majority of studies analyzed microRNA concentration in serum, but others used plasma or whole blood. Most of the microRNAs in the serum showed higher concentrations than the corresponding plasma samples [95], and some of the discrepancies in the direction of microRNAs presented in Table 1 could be due to the different types of samples.
Furthermore, the most frequent method used to quantify circulating candidate microRNAs, or to validate microRNAs, is the quantitative reverse transcription (PCR RT-qPCR); only two studies have introduced the use of the digital droplet [46,76]. All these techniques have a high sensitivity in detecting a large number of microRNAs at the same time. However, a poor agreement among different microRNA measurement platforms has been reported [96].
For microRNA measurement, data normalization is still a challenge, and this could be another source of variability in the results [95]. Furthermore, the cut-off values of considered microRNAs to calculate sensibility and specificity based on different ROC curves were not uniform, which may contribute to the observed heterogeneity.
The sample sizes in most studies are relatively small, and very few studies included an adequate group of controls that were collected from the same population, rather than cases, and matched at least for age.
In the reviewed articles, two categories of studies on microRNA and BC diagnosis were present: (i) Studies with an agnostic approach based on microRNA profiling (using different array platforms), usually followed by a validation phase in a different population with a more sensitive technique of most promising selected microRNA; (ii) Studies with a Bayesian approach based on microRNAs candidates, selected on the basis of previous biological knowledge, positive results in other studies, or in studies on other cancers.
In the present review, both the categories of studies were included, but only the validation phase of the microRNA profiling studies was described.
Finally, due to genetic heterogeneity, a difference in identified microRNA may be present among different ethnicities.
The result is a high number of microRNA identified as possibly related to BC status, but very few of them were replicated in other studies and other populations.
This review is a very comprehensive collection of studies on circulating microRNA and breast cancer. However, it presents several limitations. In fact, in all the studies, the origin of microRNAs has not been verified, and the contribution of breast cancer tissue has not been verified. There was a high heterogeneity among studies, probably due to different ethnic populations, small sample sizes, different types of sample and laboratory techniques, different statistical analysis, and different cut-offs.

5. Conclusions

The effort of this review has been devoted to exploring the most important microRNA involved in BC pathogenesis.
We found a list of microRNAs possibly involved in the breast cancer pathogenic pathway. Anyway, an effort must be done to try to standardize the microRNA research, with more robust study design, analytical strategies, and a better reporting of results in the published articles. New studies nested in population cohorts are needed to analyze microRNA in pre-diagnostic blood samples in order to strengthen the evidence of the association with breast cancer.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ijms24043910/s1.

Author Contributions

Conceptualization, C.S., L.D.M. and F.R.; methodology, L.D., V.F., P.V., S.C., C.A., F.R. and C.S.; validation, C.S., L.D.M. and F.R.; formal analysis, L.P., L.D., L.M. (Lorenzo Milani) and L.M. (Luca Manfredi); data curation, L.P., L.D., L.M. (Lorenzo Milani), L.M. (Luca Manfredi) and C.S.; writing—original draft preparation, C.S. and L.P.; writing—review and editing, All authors; supervision, All authors; funding acquisition, C.S. and L.D.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Italian Ministry of Health (project n. RF 2018 12366921).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The flow chart of identification, screening, and eligibility of the included studies [8].
Figure 1. The flow chart of identification, screening, and eligibility of the included studies [8].
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Figure 2. Pyramidal graph of the direction of miRNA expression (microRNA concentration in breast cancer cases versus controls) by type of specimens (only microRNAs that were analysed in two or more independent studies). (A) = whole blood, (B) = plasma; (C) = all specimens; (D) = serum.
Figure 2. Pyramidal graph of the direction of miRNA expression (microRNA concentration in breast cancer cases versus controls) by type of specimens (only microRNAs that were analysed in two or more independent studies). (A) = whole blood, (B) = plasma; (C) = all specimens; (D) = serum.
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Figure 3. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR21 in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [17,38,54,56,72,77,78].
Figure 3. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR21 in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [17,38,54,56,72,77,78].
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Figure 4. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR155 in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [21,27,38,48,71,78,85].
Figure 4. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR155 in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [21,27,38,48,71,78,85].
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Figure 5. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR10b in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [27,38,72,85].
Figure 5. Forest plot of included studies assessing the sensitivity and specificity by type of specimen and summary receiver operating characteristic curve (SROC) of MIR10b in breast cancer diagnosis (squares shows sensitivity and specificity, respectively; red diamonds show pooled effect; error bars represents 95% confidence interval) [27,38,72,85].
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Figure 6. Evaluation of publication bias of all reported microRNAs presented as funnel plots.
Figure 6. Evaluation of publication bias of all reported microRNAs presented as funnel plots.
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Figure 7. Quality assessment with the QUADAS-2 tool [9].
Figure 7. Quality assessment with the QUADAS-2 tool [9].
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Table 1. General characteristics of the studies included in systematic review on the role of microRNA in breast cancer diagnosis.
Table 1. General characteristics of the studies included in systematic review on the role of microRNA in breast cancer diagnosis.
First Author, YearCountryTypeSpecimen SourceCases SizeControls SizeMIRInternal
Reference
Zhu W, 2009 [13]USACandidateSerum13816MIR18
145
155
Heneghan H, 2010 [14]IrelandCandidateBlood834421MIR16
145
155
195
10b
Let-7a
Roth C, 2010 [15]GermanyCandidateSerum5929141MIR16
155
10b
34a
Wang F, 2010 [16]ChinaCandidateSerum684021MIR16
126
155
335
106a
199a
Asaga S, 2011 [17]USAValidationSerum621021MIR16
Guo LJ, 2012 [18]ChinaCandidateSerum15275181aMIR16
Schrauder MG, 2012 [19]GermanyValidationSerum2424202MIR16
718
Schwarzenbach H, 2012 [20]GermanyCandidateSerum345321MIR16
214
19a
20a
Sun Y, 2012 [21]ChinaCandidateSerum10355155MIR39
van Schooneveld E, 2012 [22]BelgiumCandidateSerum7520215
299
411
452
Wu Q, 2012 [23]ChinaValidationSerum5050222
Zhao FL, 2012 [24]ChinaCandidateSerum1225910bMIR16
Chan M, 2013 [25]SingaporeValidationSerum1321011MIR103, MIR191
133a
133b
92a
Cuk K, 2013 [26]GermanyValidationPlasma12780409MIR39
801
148b
376c
Eichelser C, 2013 [27]GermanyCandidateSerum404017MIR16
93
155
373
10b
34a
Godfrey AC, 2013 [28]USAValidationSerum55222MIR1825
181a
18a
Kumar S, 2013 [29]IndiaCandidatePlasma14821MIR16
146a
Ng EKO, 2013 [30]ChinaValidationPlasma17010016RNU6B
21
145
451
Si H, 2013 [31]ChinaValidationSerum1002021MIR16
92a
Wang PY, 2013 [32]ChinaCandidateSerum46581825S rRNA
Zeng RC, 2013 [33]ChinaCandidatePlasma1006430aMIR16
Eichelser C, 2014 [34]GermanyCandidateSerum16828101MIR16, MIR 484
372
373
Hamdi K, 2014 [35]TunisiaCandidateSerum202024RNU48
320
335
337
451
486
548
15a
29a
30b
342-3p
342-5p
Joosse SA, 2014 [36]GermanyCandidateSerum10237202MIR16
Let-7b
Kodahl AR, 2014 [37]DenmarkValidationSerum6051107
139
143
145
365
425
133a
15a
18a
Mar-Aguilar F, 2014 [38]MexicoValidationSerum611021MIR18S
145
155
191
382
10b
125b
McDermott AM, 2014 [39]IrelandValidationSerum4446223MIR16
652
181a
29a
Shen J, 2014 [40]USAValidationPlasma5050409MIR93
133a
148b
Sochor M, 2014 [41]Chez RepublicCandidateSerum632124Let-7a
155
181b
19a
Zearo S, 2014 [42]AustraliaValidationSerum9825484
Zhao FL, 2014 [43]ChinaCandidateSerum210102195MIR16
Antolin S, 2015 [44]SpainCandidateBlood, serum and plasma57201415S, U6 sn
200c
Li XX, 2015 [45]ChinaCandidateSerum9064Let-7c5SrRNA
Mangolini A (A), 2015 [46]ItalyCandidateSerum2827145MIR39
425
652
10b
148b
Mangolini A (B), 2015 [46]USACandidateSerum5935145MIR39
425
652
10b
148b
Matamala N, 2015 [47]SpainValidationPlasma11411621MIR103a
96
505
125b
Shaker O, 2015 [48]EgyptCandidateSerum10030155SNORD
197
205
29b
Zhang L, 2015 [49]ChinaValidationSerum7652424MIR132
199a
29c
Frères P, 2016 [50]BelgiumValidationPlasma1088816Median of 50 mirna
22
103
107
148a
19b
Let-7d
Let-7i
Fu L, 2016 [51]ChinaCandidateSerum10040184
382
598
1246
Hamam R, 2016 [52]Saudi ArabiaValidationSerum and Plasma4650188MIR21
1202
1207
1225
1290
3141
4270
4281
642b
Hannafon BN, 2016 [53]USACandidatePlasma164221MIR54
122
1246
Let-7a
Motawi TM, 2016 [54]EgyptCandidateSerum502521REF SNORD 62
221
Shimomura A, 2016 [55]JapanValidationSerum120613431246MIR149
1307
4634
6861
6875
Thakur S, 2016 [56]IndiaCandidateSerum858521Sn U6
145
195
210
221
Let-7a
Gao S, 2017 [57]USAValidationPlasma7550155RNU6B
Zhang K, 2017 [58]ChinaValidationBlood151396MIR16
182
942
30b
374b
Heydari N, 2018 [59]IranCandidateSerum4040140MIR16
Zaleski M, 2018 [60]GermanyValidationPlasma552821MIR16
92
155
222
34a
Let-7c
Kaharam M, 2019 [61]GermanyValidationBlood2121101-3pRNU48
126-3p
126-5p
144-3p
144-5p
301a
664b
McAnena P, 2019 [62]IrelandValidationBlood3134195MIR16, MIR425
331
181a
Peña-Cano MI, 2019 [63]MexicoCandidateSerum505017MIR26b
195
221
Raheem AR, 2019 [64]IraqCandidateSerum303034aMIRU6
Soleimanpour E, 2019 [65]IranCandidatePlasma302521MIR5s
155
Anwar SL, 2020 [66]IndonesiaCandidatePlasma10215155Sp6
Arabkari V, 2020 [67]IrelandValidationBlood382016MIR1, MIR16
21
145
155
195
486
181a
451a
Ashirbekov Y, 2020 [68]KazakhstanCandidatePlasma353316MIR222
21
29
145
191
210
222
Guo H, 2020 [69]ChinaValidationPlasma394021cel-39
1273g
Holubekova V, 2020 [70]SlovakiaValidationPlasma6534484MIR16, MIR103a
1260a
130a
99a
Hosseini Mojahed FH, 2020 [71]IranCandidateSerum3636155
Ibrahim AM, 2020 [72]EgyptCandidatePlasma302021MIR16
145
10b
181a
Let-7
Jang JY, 2020 [73]KoreaValidationPlasma805621
24
202
206
223
373
1246
6875
219b
Kim J, 2020 [74]South KoreaCandidatePlasma3030202
Pastor-Navarro B, 2020 [75]SpainCandidateSerum451621MIR16, MIR1228
155
205
Bakr NM, 2021 [76]EgyptValidationBlood19649373
Diansyah MN, 2021 [77]IndonesiaCandidatePlasma261621MIR16
Itani MM, 2021 [78]LebanonCandidatePlasma413221
139
145
155
425
451
130a
23a
Mohmmed EA, 2021 [79]EgyptCandidateSerum and Plasma5030106a
Nashtahosseini Z, 2021 [80]IranCandidateSerum4040210MIR16
660
Zhang K, 2021 [81]ChinaValidationBlood6813185
362
106b
142-3p
142-5p
26b
Zhao T, 2021 [82]ChinaCandidateSerum884025MIR39
Li X, 2022 [83]ChinaCandidateSerum49499MIR16
17
148a
Liu H, 2022 [84]ChinaCandidateSerum11259103aU6 sn
Mohamed AA, 2022 [85]EgyptCandidateSerum9940155RNU6
373
10b
34a
Zavesky L, 2022 [86]Czech RepublicValidationPlasma5246451aMIR590, MIR19a, MIR222
548b
Zou R, 2022 [87]MixValidationSerum17719724MIR128, MIR652, MIR106b
324
377
497
125b
133a
19b
374c
Table 2. Summary of the results of the studies included in the systematic review on the role of microRNA in breast cancer diagnosis.
Table 2. Summary of the results of the studies included in the systematic review on the role of microRNA in breast cancer diagnosis.
First Author, YearSpecimen SourceMiRDirectionCut_Off
(ng/mL)
AUCSensSpecFold Change
Zhu W, 2009 [13]Serum16Up
145Up
155Down
Heneghan H, 2010 [14]Blood21Up
145Up
155Up
195Up 0.94
(0.91–0.97)
87.7091.0025.00
10bDown
Let-7aUp
Roth C, 2010 [15]Serum141
155Up 1.60
10b
34a
Wang F, 2010 [16]Serum21Up 2.50
126Down 2.00
155Up 3.50
335Up 2.00
106aUp 1.90
199aDown 2.00
Asaga S, 2011 [17]Serum21Up3.300.7275.0067.00
Guo LJ, 2012 [18]Serum181aDown0.740.67
(0.60–0.74)
70.7059.900.36
Schrauder MG, 2012 [19]Serum202Up 0.68 19.38
718Down 0.77 5.44
Schwarzenbach H, 2012 [20]Serum21 0.85
(0.78–0.91)
214 0.92
(0.88–0.97)
19a
20a 0.68
(0.59–0.77)
Sun Y, 2012 [21]Serum155Up1.910.80
(0.65–0.82)
65.0081.802.94
van Schooneveld E, 2012 [22]Serum215Up
299Down
411Down
452Down
Wu Q, 2012 [23]Serum222Up0.010.67
(0.57–0.78)
74.0060.00
Zhao FL, 2012 [24]Serum10bUp
Chan M, 2013 [25]Serum1Up 2.67
133aUp 2.62
133bUp 2.41
92aUp 1.32
Cuk K, 2013 [26]Plasma409Up 0.66
(0.59–0.74)
801Up 0.64
(0.56–0.72)
148bUp 0.65
(0.58–0.73)
376cUp 0.66
(0.59–0.74)
Eichelser C, 2013 [27]Serum17Down 0.6818.80100.00
93Up 0.7044.90100.00
155Up 0.7870.6042.70
373Up 0.8876.60100.00
10bUp 21.8092.10
34aUp 0.6459.8076.00
Godfrey AC, 2013 [28]Serum222Down
181aUp
18aUp
Kumar S, 2013 [29]Plasma21Up
146aUp
Ng EKO, 2013 [30]Plasma16Up 0.91
(0.87–0.95)
21Up 0.81
(0.74–0.88)
145Down 0.63
(0.52–0.74)
451Up 0.94
(0.91–1.00)
Si H, 2013 [31]Serum21Up 0.93
(0.89–0.92)
92aDown 0.92
(0.87–0.97)
Wang PY, 2013 [32]Serum182Up
Zeng RC, 2013 [33]Plasma30aDown0.010.76
(0.68–0.83)
74.0065.60
Eichelser C, 2014 [34]Serum101Up
372Up
373Up
Hamdi K, 2014 [35]Serum24Down
320Down
335Down
337Down
451Down 15.80
486Down
548Down
15aDown
29aDown
30bDown
342-3pDown
342-5pDown
Joosse SA, 2014 [36]Serum202Up
Let-7bUp
Kodahl AR, 2014 [37]Serum107 0.66
139 1.44
143 1.65
145 1.56
365 1.88
425 0.84
133a 1.68
15a 1.84
18a 0.65
Mar-Aguilar F, 2014 [38]Serum21 6.480.95
(0.91–0.99)
94.4080.00
145 15.930.98
(0.95–1.00)
94.40100.00
155 7.920.99
(0.99–1.00)
94.40100.00
191 4.850.79
(0.71–0.88)
72.2090.00
382 0.97
(0.94–1.00)
94.4090.00
10b 59.220.95
(0.91–0.99)
83.30100.00
125b 8.460.95
(0.91–0.99)
88.9080.00
McDermott AM, 2014 [39]Serum223Down
652Down
181aDown
29aDown
Shen J, 2014 [40]Plasma409
133a 8.30
148b 5.10
Sochor M, 2014 [41]Serum24Up
155Up
181bUp
19aUp
Zearo S, 2014 [42]Serum484 1.60
Zhao FL, 2014 [43]Serum195Down0.500.86
(0.82–0.90)
69.0089.202.38
Antolin S, 2015 [44]Blood, serum and plasma141
200cDown 0.7990.0070.20
Li XX, 2015 [45]SerumLet-7cDown 0.85
(0.79–0.91)
87.5078.90
Mangolini A (A), 2015 [46]Serum145Down
425Down
652Down 0.83
(0.73–0.93)
10bUp
148bDown 0.74
(0.62–0.86)
Mangolini A (B), 2015 [46]Serum145Down
425Down
652Down 0.69
(0.58–0.80)
10bUp
148bDown 0.66
(0.51–0.80)
Matamala N, 2015 [47]Plasma21Up 0.61
(0.53–0.68)
96Up 0.72
(0.65–0.78)
73.0066.00
505Up 0.72
(0.66–0.79)
75.0060.00
125bUp 0.64
(0.56–0.71)
Shaker O, 2015 [48]Serum155Up39.570.99
(0.99–1.00)
94.10100.0039.57
197Up29.800.98
(0.95–1.00)
95.30100.0029.80
205Up27.480.99
(0.98–1.00)
98.80100.0027.48
29bUp41.940.99
(0.98–1.00)
98.80100.0041.94
Zhang L, 2015 [49]Serum424Up 0.75
(0.67–0.84)
1.77
199aUp 0.92
(0.87–0.96)
2.65
29cUp 0.72
(0.64–0.81)
1.97
Frères P, 2016 [50]Plasma16 1.70
22 1.00
103 0.80
107 0.80
148a 1.40
19b 1.20
Let-7d 0.90
Let-7i 0.70
Fu L, 2016 [51]Serum184Down0.480.74
(0.66–0.82)
87.5071.00
382Up1.320.90
(0.85–0.96)
93.0075.00
598Down1.610.74
(0.66–0.82)
52.0092.50
1246Up0.550.94
(0.90–0.98)
95.0085.00
Hamam R, 2016 [52]Serum and Plasma188Up
1202Up
1207Up
1225Up
1290Up
3141Up
4270Up
4281Up
642bUp
Hannafon BN, 2016 [53]Plasma21Up 0.69
(0.49–0.89)
122Up
1246Up 0.69
(0.50–0.88)
Let-7aUp
Motawi TM, 2016 [54]Serum21 1.140.98
(0.96–1.00)
96.0094.002.20
221 1.210.97
(0.94–1.00)
92.0088.002.09
Shimomura A, 2016 [55]Serum1246 88.3093.40
1307 100.0053.10
4634 3.4073.60
6861 99.8079.40
6875 14.7076.80
Thakur S, 2016 [56]Serum21Up 0.79
(0.71–0.86)
88.0065.00
145Down 0.73
(0.66–0.81)
74.0056.00
195Down 0.80
(0.74–0.87)
77.0071.00
210 0.64
(0.55–0.72)
78.0061.00
221 0.63
(0.54–0.71)
65.0057.00
Let-7a 0.76
(0.69–0.83)
71.0067.00
Gao S, 2017 [57]Plasma155Up 0.77
(0.68–0.86)
Zhang K, 2017 [58]Blood96Up2.730.7753.00100.00
182Up1.010.7653.0092.00
942Up1.040.8167.00100.00
30bUp2.040.9380.00100.00
374bUp1.520.8287.0069.00
Heydari N, 2018 [59]Serum140Up0.130.67
(0.55–0.79)
70.0050.00
Zaleski M, 2018 [60]Plasma21 0.58
(0.46–0.71)
92 0.46
(0.33–0.60)
155 0.53
(0.36–0.69)
222 0.53
(0.40–0.67)
34a 0.72
(0.61–0.84)
Let-7c 0.51
(0.38–0.64)
Kaharam M, 2019 [61]Blood101-3p
126-3p
126-5p
144-3p
144-5p
301a
664b
McAnena P, 2019 [62]Blood195 0.73
331 2.94
181a 1.19
Peña-Cano MI, 2019 [63]Serum17Up 0.50
195Up0.040.88
(0.78–0.98)
83.3078.304.33
221Down 0.70
Raheem AR, 2019 [64]Serum34aDown5.050.67
(0.53–0.81)
60.0063.00
Soleimanpour E, 2019 [65]Plasma21Up 0.92
155Up 0.99
Anwar SL, 2020 [66]Plasma155Up
Arabkari V, 2020 [67]Blood16Up 0.61
(0.47–0.76)
21Up 0.65
(0.51–0.79)
1.35
145Up 0.83
(0.72–0.94)
1.61
155Up 0.76
(0.66–0.89)
1.63
195Down 0.81
(0.69–0.92)
0.14
486Up 0.90
(0.81–0.97)
2.25
181a 1.52
451aUp 0.73
(0.61–0.86)
1.62
Ashirbekov Y, 2020 [68]Plasma16 0.69
21 1.35
29 0.98
145 2.36
191 1.87
210 0.69
222 0.98
Guo H, 2020 [69]Plasma21 0.66
(0.53–0.78)
1273g 0.63
(0.51–0.76)
Holubekova V, 2020 [70]Plasma484Up 1.10
1260aUp 1.22
130aUp 1.20
99aUp 1.33
Hosseini Mojahed FH, 2020 [71]Serum155Up1.400.8977.8088.891.00
Ibrahim AM, 2020 [72]Plasma21 4.940.7863.30100.00
145 0.780.7045.0083.30
10b 2.520.7353.30100.00
181a 1.510.7050.0080.00
Let-7 0.520.7250.0093.30
Jang JY, 2020 [73]Plasma21Down 0.92
24Down 0.9665.0096.00
202Down 0.86
206Down 0.9479.0096.00
223Down 0.81
373Down 0.96
1246Down 0.9353.0095.00
6875Down 0.9686.0096.00
219bDown 0.88
Kim J, 2020 [74]Plasma202Up2.100.95
(0.88–1.02)
90.0093.309.60
Pastor-Navarro B, 2020 [75]Serum21 0.77
(0.68–0.87)
155 0.32
(0.68–0.87)
205 0.65
(0.68–0.87)
Bakr NM, 2021 [76]Blood373 360.000.98
(0.95–0.99)
90.8098.40
Diansyah MN, 2021 [77]Plasma21 1.660.92
(0.83–1)
92.3081.204.36
Itani MM, 2021 [78]Plasma21Up4.460.76
(0.64–0.88)
73.0081.00
139Up11.690.74
(0.62–0.87)
78.0075.00
145Up10.180.78
(0.66–0.90)
83.0078.00
155Up8.540.83
(0.71–0.95)
76.0096.00
425Up9.090.81
(0.69–0.93)
78.0091.00
451Down10.540.70
(0.57–0.83)
78.0075.00
130aUp7.960.83
(0.72–0.94)
70.00100.00
23aUp2.500.73
(0.61–0.85)
73.0072.00
Mohmmed EA, 2021 [79]Serum and Plasma106aUp 0.9583.00100.003.63
Nashtahosseini Z, 2021 [80]Serum210Up0.820.72
(0.60–0.83)
68.0051.002.72
660Up0.770.77
(0.66–0.88)
79.0061.002.71
Zhang K, 2021 [81]Blood185Up1.080.91
(0.83–0.99)
91.1876.924.00
362Up1.530.93
(0.88–0.99)
83.82100.002.97
106bUp1.260.82
(0.68–0.95)
79.4176.921.89
142-3pUp6.870.85
(0.76–0.98)
97.0661.543.18
142-5pUp1.600.85
(0.71–0.99)
85.2976.922.46
26bUp1.340.89
(0.81–0.97)
83.8284.623.32
Zhao T, 2021 [82]Serum25Up 0.75
(0.66–0.84)
57.1095.00
Li X, 2022 [83]Serum9Up
17
148aUp
Liu H, 2022 [84]Serum103aUp3.400.70
(0.62–0.78)
78.2074.70
Mohamed AA, 2022 [85]Serum155Up7.500.94
(0.89–0.98)
86.9090.00
373Up10.000.95
(0.90–0.98)
85.00100.00
10bUp9.500.77
(0.69–0.84)
60.0093.00
34aDown10.500.89
(0.82–0.94)
91.0075.00
Zavesky L, 2022 [86]Plasma451aDown 1.39
548bUp 3.60
Zou R, 2022 [87]Serum24Up 0.76 0.62
324Down 0.52 0.31
377Down 0.73 0.67
497Up 0.56 0.15
125bUp 0.58 0.13
133aUp 0.63 0.41
19bDown 0.63 0.26
374cDown 0.71 0.99
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Padroni, L.; De Marco, L.; Dansero, L.; Fiano, V.; Milani, L.; Vasapolli, P.; Manfredi, L.; Caini, S.; Agnoli, C.; Ricceri, F.; et al. An Epidemiological Systematic Review with Meta-Analysis on Biomarker Role of Circulating MicroRNAs in Breast Cancer Incidence. Int. J. Mol. Sci. 2023, 24, 3910. https://doi.org/10.3390/ijms24043910

AMA Style

Padroni L, De Marco L, Dansero L, Fiano V, Milani L, Vasapolli P, Manfredi L, Caini S, Agnoli C, Ricceri F, et al. An Epidemiological Systematic Review with Meta-Analysis on Biomarker Role of Circulating MicroRNAs in Breast Cancer Incidence. International Journal of Molecular Sciences. 2023; 24(4):3910. https://doi.org/10.3390/ijms24043910

Chicago/Turabian Style

Padroni, Lisa, Laura De Marco, Lucia Dansero, Valentina Fiano, Lorenzo Milani, Paolo Vasapolli, Luca Manfredi, Saverio Caini, Claudia Agnoli, Fulvio Ricceri, and et al. 2023. "An Epidemiological Systematic Review with Meta-Analysis on Biomarker Role of Circulating MicroRNAs in Breast Cancer Incidence" International Journal of Molecular Sciences 24, no. 4: 3910. https://doi.org/10.3390/ijms24043910

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Padroni, L., De Marco, L., Dansero, L., Fiano, V., Milani, L., Vasapolli, P., Manfredi, L., Caini, S., Agnoli, C., Ricceri, F., & Sacerdote, C. (2023). An Epidemiological Systematic Review with Meta-Analysis on Biomarker Role of Circulating MicroRNAs in Breast Cancer Incidence. International Journal of Molecular Sciences, 24(4), 3910. https://doi.org/10.3390/ijms24043910

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