Literature DB >> 25759599

Critical analysis of the potential for microRNA biomarkers in breast cancer management.

Carrie R Graveel1, Heather M Calderone2, Jennifer J Westerhuis2, Mary E Winn3, Lorenzo F Sempere2.   

Abstract

Breast cancer is a complex and heterogeneous disease. Signaling by estrogen receptor (ER), progesterone receptor (PR), and/or human EGF-like receptor 2 (HER2) is a main driver in the development and progression of a large majority of breast tumors. Molecular characterization of primary tumors has identified major subtypes that correlate with ER/PR/HER2 status, and also subgroup divisions that indicate other molecular and cellular features of the tumors. While some of these research findings have been incorporated into clinical practice, several challenges remain to improve breast cancer management and patient survival, for which the integration of novel biomarkers into current practice should be beneficial. microRNAs (miRNAs) are a class of short non-coding regulatory RNAs with an etiological contribution to breast carcinogenesis. miRNA-based diagnostic and therapeutic applications are rapidly emerging as novel potential approaches to manage and treat breast cancer. Rapid technological development enables specific and sensitive detection of individual miRNAs or the entire miRNome in tissues, blood, and other biological specimens from breast cancer patients. This review focuses on recent miRNA research and its potential to address unmet clinical needs and challenges. The four sections presented discuss miRNA findings in the context of the following clinical challenges: biomarkers for early detection; prognostic and predictive biomarkers for treatment decisions using targeted therapies against ER and HER2; diagnostic and prognostic biomarkers for subgrouping of triple-negative breast cancer, for which there are currently no targeted therapies; and biomarkers for monitoring and characterization of metastatic breast cancer. The review concludes with a critical analysis of the current state of miRNA breast cancer research and the need for further studies using large patient cohorts under well-controlled conditions before considering the clinical implementation of miRNA biomarkers.

Entities:  

Keywords:  blood; diagnostics FFPE tissues; formalin-fixed paraffin-embedded tissues; miR; miRNA

Year:  2015        PMID: 25759599      PMCID: PMC4346363          DOI: 10.2147/BCTT.S43799

Source DB:  PubMed          Journal:  Breast Cancer (Dove Med Press)        ISSN: 1179-1314


Introduction

Breast cancer is a highly heterogeneous disease that has multiple subtypes with distinct clinical outcomes. Clinically, breast cancers are classified by hormone receptor status, including estrogen receptor (ER), progesterone receptor (PR), and human EGF-like receptor 2 (HER2) receptor expression, as well as by tumor grade. In the last decade, gene expression analyses have given us a more thorough understanding of the molecular heterogeneity of breast cancer. Breast cancer is currently classified into six molecular intrinsic subtypes: luminal A, luminal B, HER2+, normal-like, basal, and claudin-low.1,2 Luminal cancers are commonly dependent on hormone (ER and/or PR) signaling and have the best outcome. Basal and claudin-low cancers significantly overlap with the immunohistological subtype referred to as triple-negative breast cancer (TNBC), which lacks ER, PR, and HER2 expression. Basal/TNBC cancers have the worst outcome and there are currently no approved targeted therapies for these patients.3,4 Breast cancer is a forerunner in the use of targeted therapeutic approaches. Endocrine therapy is standard treatment for ER+ breast cancers. The development of trastuzumab (Herceptin®) treatment for HER2+ breast cancers provides clear evidence for the value in combining prognostic biomarkers with targeted therapies. Even though early detection and targeted therapies have significantly lowered breast cancer-related mortality rates, there are still hurdles that need to be overcome. The most significant of these are: 1) improved detection of neoplastic lesions and identification of high-risk individuals (Tables 1 and 2); 2) the development of predictive biomarkers for carcinomas that will develop resistance to hormone therapy (Table 3) or trastuzumab treatment (Table 4); 3) the development of clinical biomarkers to distinguish TNBC subtypes (Table 5); and 4) the lack of effective monitoring methods and treatments for metastatic breast cancer (MBC; Table 6). In order to make advances in these areas, we must understand the heterogeneous landscape of individual tumors, develop predictive and prognostic biomarkers that can be affordably used at the clinical level, and identify unique therapeutic targets. In this review, we discuss recent findings on microRNAs (miRNAs) research aimed at addressing these challenges.
Table 1

miRNA signatures in blood for early detection of BC

miRNA(s)Patient cohortSampleMethodologyClinical observationReference
let-7b102 BC cases, 26 benign breast disease cases, and 37 healthy controlsSerum (pre- and post-surgery [34 only])TaqMan qRT-PCR (Thermo Fisher Scientific)Higher levels of let-7 separate BC from benign disease and normal breast.125
miR-1, miR-92a, miR-133a, miR-133bTraining set: 32 BC cases and 22 healthy controlsValidation set: 132 BC cases and 101 healthy controlsSerum (and matched frozen tissue)SYBR green qRT-PCR (Exiqon)Changes in these miRNAs are the most significant out of 20 miRNA found to be informative for early disease detection.126
miR-10b, miR-21, miR-125b, miR-145, miR-155, miR-191, miR-38261 BC cases (Stage I–II [44.3%] vs Stage III [55.7%]) and ten healthy controlsSerumTaqMan qRT-PCR (Thermo Fisher Scientific)miRNA changes separate BC cases from controls.127
miR-15a, miR-18a, miR-107, miR-133a, miR-139-5p, miR-143, miR-145, miR-365, miR-425Training set: 48 early-stage ER+ cases (LN [50%] vs LN+ [50%]) and 24 age-matched healthy controlsValidation set: 60 early-stage ER+ cases (LN [50%] vs LN+ [50%]) and 51 healthy controlsSerumSYBR green qRT-PCR (Exiqon)miRNA changes separate BC cases from controls.128
miR-18a, miR-19a, miR-20a, miR-30a, miR-103b, miR-126, miR-126,* miR-192, miR-128720 BC cases and 30 healthy controlsSerum (samples were pooled)SOLiD sequencingmiRNA changes separate BC cases from controls.129
miR-18a, miR-181a, miR-222Training set: 410 participants in sister study (205 eventually developed BC and 205 stayed cancer-free)Validation set: five BC cases and five healthy controlsSerumAffymetrix arrays (Discovery study); SYBR green qRT-PCR (Qiagen NV)miRNAs with highest changes between participants that developed cancer and those who stayed cancer-free. Signature did not validate in independent cohort.130
miR-19a, miR-24, miR-155, miR-181b63 early-stage BC cases and 21 healthy controlsSerum (pre- and post-surgery, and after first cycle of adjuvant treatment)TaqMan qRT-PCR (Thermo Fisher Scientific)miRNA changes separate BC cases from controls.29
miR-2189 BC cases (ER+ [77.6%] vs ER [22.4%]; Stage I–II [55%] vs Stage III–IV [45%]) and 55 healthy controlsSerumSYBR green qRT-PCR assay (Hoffman-La Roche Ltd)Increased circulating levels of miR-21 in BC cases.131
miR-21, miR-92a100 primary BC patients and 20 healthy controlsSerum (and matching tissue)SYBR green qRT-PCR assay (Takara Bio Inc.)miRNA changes separate BC cases from controls.132
miR-27a, miR-30b, miR-148a, miR-451129 BC cases and 29 healthy controlsSerumTaqMan qRT-PCR (Thermo Fisher Scientific)miRNA changes separate BC cases from controls.133
miR-30a100 BC cases (ER+ [77%] vs ER [23%]; LN [69%] vs LN+ [31%]; Stage I–II [77%] vs Stage III–IV[17%]) and 64 age-matched healthy controlsPlasma (pre- and post-surgery)TaqMan qRT-PCR (Thermo Fisher Scientific)Decreased circulating levels of miR-30a in BC cases.134
miR-92b,* miR-568, miR-708*20 BC cases before surgery (ER+ [60%] vs ER [40%]; Stage I–II [85%] vs Stage III–IV [15%]), 20 BC cases after surgery (ER+ [75%] vs ER [25%]; Stage I–II [95%] vs Stage III–IV [5%]), ten cases with other cancer types and 20 healthy controlsPlasmaIllumina miRNA arraysmiRNA changes separate BC cases specifically (not present in other cancer types) from controls.26
miR-107, miR-148a, miR-223, miR-338-3p24 ER+ early-stage BC patients (LN [50%] vs LN+ [50%]) and 24 age-matched healthy controlsSerum (pre- and post-surgery)SYBR green qRT-PCR (Exiqon)miRNA changes separate ER+ BC cases from controls.28
miR-127-3p, miR-148b, miR-376a, miR-376c, miR-409-3p, miR-652, miR-801Training set: 127 BC cases (ER+ [81.1%] vs ER [19.1%]; LN [59%] vs LN+ [41%]; Stage I–II [75.5%] vs Stage III–IV [24.5%]) and 80 healthy controlsValidation set: 120 BC cases (ER+ [82.5%] vs ER [17.5%]; LN [59.1%] vs LN+ [40.9%]; Stage I–II [78.3%] vs Stage III–IV [21.7%]), 30 benign breast disease cases, and 60 healthy controlsPlasmaTaqMan qRT-PCR (Thermo Fisher Scientific)miRNA signature separates BC cases from healthy controls. Only changes in miR-127-3p, miR-376a, miR-376c, and miR-409-3p separate BC cases from benign breast disease.135
miR-133a, miR-148bTraining set: 52 early-stage BC cases, 35 DCIS cases and 35 healthy controlsValidation set: 50 early-stage patients and 50 healthy controlsPlasmaSYBR green qRT-PCR (Exiqon)miRNA changes separate BC cases from controls.27
miR-13883 BC cases (ER+ [50.6%] vs ER [48.4%]; Stage I–II [85.5%] vs Stage III [14.5%]) and 83 healthy controlsBloodTaqMan qRT-PCR (Thermo Fisher Scientific)Higher circulating levels of miR-138 separate ER+ BC cases (but not ER cases) from controls.136
miR-148b, miR-376c, miR-409-3p, miR-801127 BC cases (ER+ [77.1%] vs ER [15.7%]; LN [58.2%] vs LN+ [34.6%]; Stage I–II [76.3%] vs Stage III–IV [7.8%]) and 80 healthy controlsPlasmaTaqMan qRT-PCR (Thermo Fisher Scientific)miRNA changes separate BC cases from controls.137
miR-155, miR-20520 BC cases (ER+ [65%] vs ER [35%]; Stage I–II [65%] vs Stage III [35%]) and ten healthy controlsPlasmaTaqMan qRT-PCR (Thermo Fisher Scientific)miRNA changes separate BC cases from controls.138
miR-18246 BC patients (ER+ [63%] vs ER [37%]) and 58 healthy controlsSerumSYBR green qRT-PCR (Qiagen)Increased circulating levels of miR-182 in BC cases.139
miR-484Training set: 39 early-stage BC cases (ER+ [71.8%] vs ER [28.2%]; LN [48.7%] vs LN+ [51.3%]) and ten healthy controlsValidation set: 98 early-stage BC cases (ER+ [44.9%] vs ER [55.1%]; LN [44.9%] vs LN+ [55.1%]) and 25 healthy controlsSerumTaqMan qRT-PCR (Thermo Fisher Scientific)Increased circulating levels of miR-484 in BC cases.140

Notes: This is a representative sample of 20 recent studies found on a PubMed query (breast cancer blood miRNA miR) that describe individual miRNAs or miRNA signatures having potential application for early disease detection. Studies with fewer than 20 BC cases were excluded. While these signatures mainly reflect higher amounts of circulating miRNAs, some miRNAs are detected at lower levels in blood samples of BC patients. Blood collection was performed before surgery unless otherwise indicated. miRNAs shown in bold indicate a recurrent presence in at least three independent studies.

Abbreviations: BC, breast cancer; DCIS, ductal carcinoma in situ; ER, estrogen receptor; LN, lymph node status; miRNA, microRNA; qRT-PCR, quantitative real-time polymerase chain reaction.

Table 2

miRNA-related risk loci associated with BC

Gene locusSNPCommentsPopulationClinical observationReference
MIR27Ars895919 *CAsiansNo risk association141
CaucasiansProtective
Jewish BRCA2 carriersIncreased risk142
rs895819 A/Gpre-miRNACaucasianDecreased risk143
pre-miRNAAsiansNo risk association144
CaucasiansDecreased risk
pre-miRNAChinese (young)Decreased risk35
pre-miRNAChineseDecreased risk34
AsiansNo risk association31
CaucasiansNo risk association
MIR34B clusterrs4938723 T/CAfrican AmericansIncreased survival145
MIR100rs1834306 G/AAfrican AmericansNo risk association33
European AmericansDecreased overall risk
MIR101-2rs1053872 C/GPrimary transcriptChineseIncreased risk38
rs462480 A/CPrimary transcriptChineseIncreased risk38
MIR106Brs1527423 A/GAfrican AmericansNo risk association33
European AmericansIncreased overall risk
MIR122Ars17669 A/GAfrican AmericansDecreased risk of ER+ BC33
European AmericansNo risk association
MIR146Ars2910164 G/CItalianEarlier age of onset146
CaucasiansNo risk association147
ChineseNo risk association83
AsiansNo risk association38
CaucasiansNo risk association
AsiansDecreased risk (C allele)144
AsiansNo risk association31
CaucasiansNo risk association
ChineseNo risk association36
MIR149rs2292832 T/GAsiansNo risk association38
CaucasiansNo risk association
ChineseNo risk association36
AsiansNo risk association31
CaucasiansNo risk association
MIR185rs2008591 C/TAfrican AmericansReduced risk145
rs887205 A/GAfrican AmericansReduced risk145
MIR196A-2rs11614913 T/CKoreanSurvival of HER2+ cases148
Italian and GermanNo risk association37
AsiansDecreased risk141
CaucasiansNo risk association
BrazilianDecreased risk149
CaucasianDecreased risk147
Chinese and KoreanDecreased risk32
ChineseIncreased risk36
ChineseIncreased risk83
African AmericansNo risk association33
European AmericansNo risk association
AsiansNo risk association31
CaucasiansNo risk association
MIR204rs7861254 GAfrican AmericansDecreased risk of ER BC33
European AmericansNo risk association
MIR206rs6920648 A/GAfrican AmericansIncreased survival145
MIR219rs107822 G/AAfrican AmericansIncreased risk of ER BC33
European AmericansNo risk association
MIR331rs11107973 A/GAfrican AmericansNo risk association33
European AmericansIncreased overall risk
MIR373rs12983273 T/CAsiansNo risk association38
CaucasiansNo risk association
MIR423rs6505162 A/Cpre-miRNACaucasianReduced risk150
Jewish BRCA2 carriersLater age of onset142
AsiansNo risk association38
CaucasiansNo risk association
MIR455rs2060133 C/GAfrican AmericansNo risk association33
European AmericansDecreased risk of ER+ BC
MIR487rs1951032 G/AAfrican AmericansNo risk association33
European AmericansIncreased overall risk
MIR495rs2281611 C/AAfrican AmericansNo risk association33
European AmericansIncreased risk of ER BC
MIR499rs3746444 A/GChineseIncreased risk36
AsiansIncreased risk151
CaucasiansNo risk association
AsiansIncreased risk152
CaucasiansNo risk association
ChineseIncreased risk32
CaucasiansNo risk association147
rs3746444 T/CAsiansIncreased risk153
CaucasiansNo risk association
AsiansIncreased risk31
CaucasiansNo risk association
AsiansDecreased risk141
CaucasiansNo risk association
MIR513A-2rs2018562 A/GAfrican AmericansIncreased overall risk33
European AmericansNo risk association
MIR544rs10144193 A/TAfrican AmericansNo risk association33
European AmericansIncreased overall risk
MIR548A-2rs878175 A/GAfrican AmericansNo risk association33
European AmericansDecreased risk of ER+ BC
MIR595rs4909238 A/GAfrican AmericansIncreased risk of ER BC33
European AmericansNo risk association
MIR605rs2043556 *AAsiansDecreased risk141
CaucasiansNo risk association
MIR606rs12266981 G/AAfrican AmericansIncreased risk of ER+33
European AmericansNo risk association
MIR608rs4919510 C/GAfrican AmericansNo risk association33
European AmericansDecreased risk of ER BC
MIR628rs8041885 A/GAfrican AmericansDecreased risk of ER+ BC33
European AmericansNo risk association
rs8041044 C/AAfrican AmericansDecreased risk of ER+33
European AmericansNo risk association
MIR659rs5750504 T/AAfrican AmericansNo risk association33
European AmericansIncreased overall risk
MIR758rs12586258 G/AAfrican AmericansDecreased overall risk33
European AmericansNo risk association
rs7141987 A/GAfrican AmericansNo risk association33
European AmericansIncreased risk of ER BC
ATF1 3′ UTRrs11169571 C/TmiR-320 MREJewish BRCA2 carriersIncreased risk142
BMPR1B 3′ UTRrs1434536 C/TmiR-125b MRECaucasianIncreased risk43
BRCA1 3′ UTRrs799917 C/TmiR-638 MREItalianIncreased risk154
HPGD 3′ UTRrs8752 G/AmiR-485-5p MREChineseIncreased risk in ER+155
IGF-1R 3′ UTRrs28674628 A/GmiR-515-5p MREJewish BRCA1 carriersEarlier age of onset156
IL23R 3′ UTRrs10889677 A/Clet-7 MREChineseIncreased risk (A allele)157
Earlier age of onset (C allele)
Decreased risk158
IQGAP1 3′ UTRrs1042538 A/TmiR-124 MREChineseDecreased risk159
ITGB4 3′ UTRrs743554 A/GmiR-34a MREpredictedSwedishIncreased risk160
Reduced survival
KRAS 3′ UTRrs61764370 T/Glet-7 MRECaucasianIncreased frequency in BRCA140
carriers/no risk association
Increased risk of TNBC39
RAD52 3′ UTRrs7963551 A/Clet-7 MREChineseDecreased risk42
RYR3 3′ UTRrs1044129 A/GmiR-367 MREChineseIncreased risk and poor survival161
SET8 3′ UTRrs16917496 C/TmiR-502 MREAsianEarlier age of onset162
TGFBR1 3′ UTRrs334348 A/GmiR-628-5p MREItalianIncreased risk154
TGFB1 Exonicrs1982073 C/TmiR-187 MREItalianIncreased risk154
XRCC1 Exonicrs1799782 T/CmiR-138 MREItalianDecreased risk154
AGO4rs7354931 C/AmiRNA RISC-loading,African AmericansDecreased overall risk33
miRNA–RISC activityEuropean AmericansNo risk association
rs16822342 A/GAfrican AmericansDecreased risk of ER+ BC33
European AmericansNo risk association
rs3820276 G/CAfrican AmericansIncreased risk of ER+ BC33
European AmericansNo risk association
DGCR8rs417309 G/APre-miRNAChineseIncreased risk42
rs9606241 A/GprocessingAfrican AmericansNo risk association33
European AmericansIncreased risk of ER+ BC
PACTrs2059691 G/AmiRNA–RISC activityAfrican AmericansNo risk association33
European AmericansIncreased overall risk
XPO5rs11077 A/CPre-miRNAAfrican AmericansDecreased risk of ER+ BC33
nuclear exportEuropean AmericansNo risk association

Abbreviations: BC, breast cancer; ER, estrogen receptor; HER2, human EGF-like receptor 2; miRNA, microRNA; MRE, microRNA recognition element (ie, binding site); RISC, RNA-induced silencing complex; UTR, untranslated region.

Table 3

miRNA signatures for prognosis and treatment response in ER+ breast cancer subtypes

miRNA(s)Patient cohortSampleMethodologyClinical observation(s)Reference
let-7b2,033 cases (ER+ [84%] vs ER [16%])FFPE tissue coresIn situ hybridizationHigher levels of let-7b correlate with better outcome in ER+ cases.163
miR-7, miR-128a, miR-210, miR-516-3p147 early-stage ER+ cases with LN-FFPE tissueTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter time to distant metastasis.65
miR-10a, miR-126Training set: 12 early-stage ER+ cases (LN [83.3%] vs LN+ [16.7]) Validation set: 81 ER+ cases (Stage I–II [77.5%] vs Stage III [23.5%], LN [46.9%] vs LN+ [51.8%]) treated with tamoxifen monotherapyFFPE tissueTaqMan qRT-PCR (Thermo Fisher Scientific)Predicts response to tamoxifen and correlates with longer recurrence-free survival.60
miR-19a, miR-20568 luminal Aa cases (Stage II [16.2%] vs Stage III [83.8%]) treated with neoadjuvant epirubicin + paclitaxelSerumSYBR-based qRT-PCR (Quantobio Technology)Predicts response to epirubicin + paclitaxel.118
miR-30c246 advanced-stage ER+ cases (local recurrence [13%] vs distant recurrence [87%]) treated with tamoxifenFFPE tissueTaqMan qRT-PCR (Thermo Fisher Scientific)Predicts response to tamoxifen and correlates with longer progression-free survival.61
miR-21089 early-stage ER+ cases (LN [56%] vs LN+ [38%]) treated with adjuvant tamoxifen monotherapyFFPE tissueTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter recurrence-free survival.62
miR-519a50 ER+ casesFFPE tissueTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter recurrence-free survival.63

Notes:

Luminal A subtype was defined by expression of ER and/or PR, absence of HER2 expression, and less than 14% of cells positive for Ki-67.

Abbreviations: ER, estrogen receptor; FFPE, formalin-fixed paraffin-embedded; LN, lymph node status; miRNA, microRNA; PR, progesterone receptor; HER2, human EGF-like receptor 2; qRT-PCR, quantitative real-time polymerase chain reaction.

Table 4

miRNA signatures for prognosis and treatment response in HER+ breast cancer subtypes

miRNA(s)Patient cohortSampleMethodologyClinical observation(s)Reference
miR-2132 Stage III HER2+ cases (ER+ [56.2%] vs ER [43.8%])Frozen tissues (pre- and post-neoadjuvant treatment)TaqMan qRT-PCR (Thermo Fisher Scientific)Higher levels correlate with poor treatment response.79
miR-21, miR-210, miR-373127 HER2+ cases (ER+ [56%] vs ER [44%]; LN [40%] vs LN+ [60%]; M0 [84%] vs M1 [16%]) with neoadjuvant treatment (trastuzumab [50%] vs lapatinib [50%])Serum (pre- and post-neoadjuvant treatment)TaqMan qRT-PCR (Thermo Fisher Scientific)No correlation with pathologic complete response. High levels of miR-21 correlate with overall survival.120
miR-21029 HER2+ cases (ER+ [44.8%] vs ER [55.2%]; LN [34.4%] vs LN+ [65.6%]; with neoadjuvant treatment (trastuzumab + chemotherapy)Plasma (pre- and post-neoadjuvant treatment)TaqMan qRT-PCR (Thermo Fisher Scientific)Higher circulating levels correlate with pathologic complete response, tumor presence, and LN+ status.119

Abbreviations: ER, estrogen receptor; HER2, human EGF-like receptor 2; miRNA, microRNA; LN, lymph node status; qRT-PCR, quantitative real-time polymerase chain reaction.

Table 5

miRNA signatures for prognosis and treatment response in TNBC subtype

miRNA(s)Patient cohortSampleMethodologyClinical observation(s)Reference
miR-10b, miR-21, miR-122a, miR-145, miR-205, miR-21049 TNBC casesFFPE tissuesSYBR green qRT-PCR (Qiagen NV)Correlates with shorter disease-free and overall survival.164
miR-10b-5p, miR-21-3p, miR-31-5p, miR-125b-5p, miR-130a-3p, miR-155-5p, miR-181a-5p, miR-181b-5p, miR-183-5p, miR-195-5p, miR-451a15 TNBC casesFresh tissuesSYBR green qRT-PCR (Takara Bio Inc.)Separates TNBC tissues from normal breast tissue. Signature enriched for miRNAs involved in chemoresistance.86
miR-16, miR-125b, miR-155, miR-374a173 TNBC cases (LN [35.8%] vs LN+ [64.2%])FFPE tissuesNanoString nCounterCorrelates with shorter overall survival.165
miR-2172 TNBC cases (Stage I–II [45.8%] vs Stage III–IV [54.2%]; LN [51.3%] vs LN+ [48.6%])Frozen tissuesSYBR green qRT-PCR (Thermo Fisher Scientific)Correlates with shorter recurrence-free survival.166
105 early-stage TNBC cases (Stage I [48.5%] vs Stage II [51.5%]; LN [67.6%] vs LN+ [32.4%])FFPE tissue coresIn situ hybridizationHigh levels in stroma compartment correlate with shorter recurrence-free and breast cancer–specific survival.97
miR-27a, miR-30e, miR-155, miR-493173 TNBC cases (LN [35.8%] vs LN+ [64.2%])FFPE tissuesNanoString nCounterDivides cases into risk subgroups.84
miR-27b, miR-150, miR-34237 TNBC casesFrozen tissuesIllumina miRNA arraysCorrelates with shorter recurrence-free survival.67
miR-190a, miR-200b-3p, miR-512-5pEleven TNBC cases (Stage I–II [36.3%] vs Stage III–IV [63.7%]; LN [27.2%] vs LN+ [72.8%]) treated with different neoadjuvant chemotherapy regimensTissue core biopsiesSYBR green qRT-PCR (Exiqon)Predicts response to treatment.85
miR-34b39 TNBC cases (Stage I–II [80%] vs Stage III–IV [20%]; LN [44%] vs LN+ [56%])FFPE tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter disease-free and overall survival.167
miR-200c, miR-20532 TNBC cases (LN [50%] vs LN+ [50%])FFPE tissuesSYBR green qRT-PCR (Qiagen NV)Lower levels correlate with LN+ status.168
miR-210114 early-stage ER cases with LN statusFFPE tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter time to distant metastasis.65
58 TNBC cases (LN [68.9%] vs LN+ [29.3%])Frozen tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter disease- free and overall survival.66
miR-376b, miR-381, miR-409-5p, miR-410, miR-766114 TNBC casesFrozen tissuesmiRNA arrays (Agilent Technologies)Correlates with shorter distant metastasis-free and breast cancer–specific survival.169

Note: microRNAs in bold show a recurrent presence in at least three independent studies.

Abbreviations: FFPE, formalin-fixed paraffin-embedded; LN, lymph node status; TNBC, triple-negative breast cancer; miRNA, microRNA; qRT-PCR, quantitative real-time polymerase chain reaction.

Table 6

miRNA signatures for detection, monitoring, and characterization of MBC

microRNA(s)Patient cohortSampleMethodologyClinical observationReference
miR-10b23 cases (M0 [21.7%] vs M1 [78.3%])FFPE tissuesSYBR green qRT-PCR (Thermo Fisher Scientific)Higher levels in MBC cases.100
101 cases (ER+ [62.4%] vs ER cases [37.6%]; LN [33.7%] vs LN+ [66.3%]; Stage I–II [59.4%] vs Stage III–IV [40.6%])FFPE tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Higher levels in MBC cases; higher levels correlate with shorter progression-free and overall survival in metastasis-free cases.102
84 early-stage cases (ER+ [53.6%] vs ER cases [41.1%]; LN [24.1%] vs LN+ [75.9%])FFPE tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)No correlation with disease progression, metastasis, or clinical outcome.106
219 cases (LN [58%] vs LN+ [42%])Frozen tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)No correlation with formation of distant metastasis or clinical outcome.107
122 cases (M0 [82%] vs M1 [18%]) and 59 age-matched healthy controlsSerumSYBR green qRT-PCR (Thermo Fisher Scientific)Higher levels in MBC cases with bone metastases.104
152 cases (M0 [78.9%] vs M1 [21.1%]) and 40 healthy controlsSerum (post- surgery for M0 cases)TaqMan qRT-PCR (Thermo Fisher Scientific)No change in levels change between non-MBC and MBC cases.170
miR-10b, miR-37360 cases (ER+ [60%] vs ER cases [40%]; LN [41.7%] vs LN+ [58.3%]; Stage I–II [%])PlasmaTaqMan qRT-PCR (Thermo Fisher Scientific)Higher levels in cases with LN+.103
miR-17, miR-155152 cases (M0 [78.9%] vs M1 [21.1%]) and 40 healthy controlsSerumTaqMan qRT-PCR (Thermo Fisher Scientific)Levels change between non-MBC and MBC cases.170
miR-19b113 cases (HER2 [42.4%] vs HER2+ [57.5%]; M0 [31%] vs M1 [69%]) and 30 age-matched healthy controlsSerumTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with longer overall survival in HER2+ MBC cases with inflammatory disease.105
miR-21, miR-20584 early-stage cases (ER+ [53.6%] vs ER cases [41.1%]; LN [24.1%] vs LN+ [75.9%])FFPE tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Correlates with shorter recurrence-free survival. Only lower levels of miR-205 correlate with shorter overall survival.106
miR-210219 cases (LN [58%] vs LN+ [42%])Frozen tissuesTaqMan qRT-PCR (Thermo Fisher Scientific)Higher levels correlate with shorter recurrence-free survival.107
miR-1258166 BC cases (M0 [48.7%] vs M1 [51.3%]), 62 cases with benign breast disease and 54 healthy controlsSerum (post- surgery but before treatment)SYBR green qRT-PCR (Shanghai Novland Co. Ltd)Lower circulating levels in BMC cases compared to non-BMC cases and healthy controls. Higher circulating levels correlate with good clinical outcome.171

Note: microRNAs in bold show a recurrent presence in at least three independent studies.

Abbreviations: BC, breast cancer; ER, estrogen receptor; FFPE, formalin-fixed paraffin-embedded; LN, lymph node status; MBC, metastatic breast cancer; miRNA, microRNA; HER2, human EGF-like receptor 2; qRT-PCR, quantitative real-time polymerase chain reaction.

Numerous in vitro and in vivo models have demonstrated that dysregulation of individual miRNAs influences signaling networks involved in breast cancer progression. These studies suggest potential applications for miRNAs as both disease biomarkers and therapeutic targets for clinical intervention. Here, we provide a brief overview of miRNA biogenesis and detection methods with implications for breast cancer management. We also discuss the potential clinical applications for miRNAs in early disease detection, for prognostic indications and treatment selection, as well as diagnostic opportunities in TNBC and metastatic disease.

miRNA biogenesis and regulatory mechanisms of gene control

miRNAs are short non-coding regulatory RNAs that generally regulate gene expression at the post-transcriptional level.5 The main molecular mechanism for this regulatory mode consists of mature miRNA (18–24 nt) binding to partially complementary sites on the 3′-UTR (untranslated region) of target mRNAs.5,6 The mature miRNA is associated with the Argonaute-containing multi-protein RNA-induced silencing complex (miRISC). miRNA interaction with a target RNA brings the miRISC into close proximity to the mRNA, causing mRNA degradation and/or translational repression. Due to the low specificity of binding, a single miRNA can interact with hundreds of mRNAs and coordinately modulate expression of the corresponding proteins. The extent of miRNA-mediated regulation of different target genes varies and is influenced by the context and cell type expressing the miRNA.5

Methods for miRNA detection in blood and tissues

Most miRNAs are transcribed by RNA polymerase II as part of a host gene transcript or as individual or polycistronic miRNA transcripts.5,7 As such, miRNA expression can be regulated at epigenetic and transcriptional levels.8,9 5′ capped and polyadenylated primary miRNA transcripts are short-lived in the nucleus where the microprocessor multi-protein complex recognizes and cleaves the miRNA precursor hairpin (pre-miRNA; about 70 nt).5,10 pre-miRNA is exported out of the nucleus via the XPO5 pathway.5,10 In the cytoplasm, the RNase type III Dicer cleaves mature miRNA (19–24 nt) from pre-miRNA. In most cases, one of the pre-miRNA arms is preferentially processed and stabilized as mature miRNA (miR-#), while the other arm is not as efficiently processed or is quickly degraded (miR-#*). In some cases, both arms can be processed at similar rates and accumulate in similar amounts. The initial nomenclature captured these differences in mature miRNA levels as ‘miR-#/miR-#*’ and ‘miR-#-5p/miR-#-3p’, respectively. More recently, the nomenclature has been unified to ‘miR-#-5p/miR-#-3p’ and simply reflects the hairpin location from which each RNA arm is processed, since they may each produce functional miRNAs that associate with RISC11 (note that in this review we present miRNA names as originally published, so those names may not adhere to the newer guidelines). Molecular aberrations that interfere with miRNA processing, export, and/or maturation affect mature miRNA levels and biological activity. Accordingly, most miRNA detection methods focus on the analysis of mature miRNA as it most closely correlates with miRNA activity, is more long-lived, and more resistant to nuclease degradation than a primary miRNA transcript, a pre-miRNA hairpin, or mRNAs. While the short length of mature miRNA presents advantages as a robust bioanalyte, it also presents challenges for specific and sensitive detection. Capture-probe microarray and bead platforms were major breakthroughs that have enabled high-throughput characterization of miRNA expression in cancer tissues. Typically, these platforms require a large amount of sample, making direct studies of blood or other biological fluids having low miRNA content difficult. Stem-loop primer reverse transcription polymerase chain reaction (RT-PCR) analysis provides an alternative platform that can detect a much lower number of miRNA copies. Such analysis was initially used as an independent validation tool for array-based expression profiling findings and is the current gold standard practice for technical validation of altered miRNA expression. High-throughput RT-PCR multiplexing platforms have enabled characterization of miRNA expression in blood. More recently, NanoString and RNA-Seq analyses have added new high-throughput tools with single molecule detection capabilities. All of these detection methods, each with unique advantages and limitations, have been applied to expression profiling of miRNAs in breast cancer tissues and blood samples from breast cancer patients.12–15

miRNA biomarkers for early disease detection

The prognosis for breast cancer patients is strongly influenced by the stage of the disease. For instance, the 5-year survival rate is 99% for localized disease, 84% for regional disease, and 24% for distant-stage disease.16 Larger tumor size also correlates with poorer prognosis. Therefore, it is essential that breast cancer lesions are diagnosed at the earliest stages. Mammography, ultrasound, magnetic resonance, and nuclear medicine are used to identify breast lesions at their earliest stages.17 Mammography is the current gold standard for breast cancer detection for women over the age of 39 years. However, its limitations include high false-positive rates (12.1%–65.8%)18 that lead to additional imaging and biopsies,19 and low success rates in the detection of neoplastic tissue within dense breast tissue. A combination of mammography with magnetic resonance or other imaging platforms can enhance tumor detection, but this additional imaging is costly and is not a routine screening procedure.20 Consequently, more sensitive and more specific detection assays are needed that avoid unnecessary additional imaging and surgery from initial false-positive mammographic results. miRNA analysis of blood or other body fluids offers an inexpensive and noninvasive screening approach to more thoroughly examine high-risk individuals, either those with genetic predispositions or post-treatment patients at risk of recurrence.

miRNA biomarkers in blood

miRNAs are promising blood biomarkers because cell-free miRNA molecules that are circulating unaccompanied, associated with protein complexes, or encapsulated in membrane-bound vesicles (eg, exosome and microvesicles) are very stable in blood.21,22 However, circulating miRNAs may emanate from different cell types in the primary tumor lesion or systemically, and reflect: 1) the number of lysed cancer cells or other cells in the tumor microenvironment, 2) the number of cells expressing and secreting those particular miRNAs, and/or 3) the number of cells mounting an inflammatory or other physiological response against diseased tissue. Ideally for analysis, circulating miRNAs would reflect the number of cancer cells or other cell types specific to breast cancer in the primary tumor. Many studies have compared changes in miRNA levels in blood between breast cancer cases and age-matched healthy controls in order to identify miRNA biomarkers (Table 1). Unfortunately, there is significant variability among studies in the patient characteristics, experimental design, sample preparation, and detection methodology that complicates the interpretation of these studies: Patient characteristics: Clinical and pathological characteristics of patients and their tumor tissues differ broadly. Age, ethnicity, stage, histology, molecular subtype, and treatment history are variables that can affect miRNA expression.23 Experimental design: Sample size and the inclusion of training and validation sets vary. Some studies analyzed changes in miRNA levels between fewer than 30 breast cancer and 30 control samples in a single patient cohort, whereas others analyzed these changes in much larger patient cohorts and validated miRNA signatures using independent cohorts. Such differences affect the statistical power of analysis. The miRNA field must be aware of the pitfalls associated with small sample sizes, poor experimental design, and statistical choices.24 Sample preparation: Whole blood, serum, and plasma have been used as sample material for miRNA detection. Whole blood contains various cell types (white cells, red cells, and platelets) that contribute their miRNA content to the sample being analyzed, confounding interpretation of results. For this reason, serum or plasma are preferred sources of circulating miRNAs. Serum is obtained after blood coagulation and contains the liquid portion of blood with its proteins and other soluble molecules, but without cells or clotting factors. Plasma is obtained from uncoagulated blood; it contains the liquid portion of blood with clotting factors, proteins, and molecules not present in serum, but it also retains some cells. Additionally, different anticoagulants can be used to prepare plasma (eg, heparin and ethylenediaminetetraacetic acid [EDTA]), and these can have different effects on plasma composition and downstream molecular assays. The lysis of red blood cells or other cell types (hemolysis) during blood separation procedures can contaminate the miRNA content in serum and plasma preparations. Several miRNAs are known to be expressed at high levels in specific blood cell types, and these miRNAs are typically excluded from analysis to avoid confusion. Moreover, it appears that miRNA concentration in serum is higher than in plasma, hindering direct comparison of studies using these different starting materials.25 Detection methodology: The miRCURY LNA Universal RT miRNA and PCR assay, and the TaqMan Low Density Array RT-PCR assay are among the most frequently used high-throughput RT-PCR platforms for miRNA detection. Each uses a different strategy to reverse transcribe mature miRNA molecules and to PCR-amplify the cDNA, which results in different detection biases. Data analysis: One of the biggest challenges to date is the normalization of circulating miRNA levels. Since there is not a unique cellular source or mechanism by which miRNAs reach circulation, choosing a reference miRNA (eg, miR-16, miR-26a) or other non-coding RNA (eg, U6 snRNA, snoRNA RNU43) is not straightforward. Spiking samples with RNA controls and/or normalization of miRNA levels to volume are some of the strategies used to standardize analysis. In addition, various studies apply different statistical methods and criteria for normalization, background or control reference subtraction, and significance cutoff values.12 Due to this variability in assay methods and analysis, it is not surprising that the reported signatures present little overlap. If one focuses on common trends, there are some miRNAs that might be useful for early detection of all types of breast cancer, whereas others might be useful for specific subtypes, histologies, or disease stages (Table 1). We briefly describe recent studies that used previous works to inform their experimental approach and analysis. Leidner et al drew and harmonized miRNA data from 15 previous studies and compared circulating miRNA signatures.26 They found very few miRNAs whose changes in circulating levels between breast cancer and control samples were consistent even when using similar detection methods (mainly quantitative real-time polymerase chain reaction [qRT-PCR] assays). There was no consistency at all between circulating miRNA signatures generated using different genome-wide detection platforms after filtering out contaminating miRNAs from cellular sources in the blood. The authors then performed their own study that included plasma samples from 20 breast cancer patients before surgery, 20 age- and race-matched healthy controls, an independent set of 20 breast cancer patients after surgery, and ten patients with lung or colorectal cancer. Forty-six circulating miRNAs showed significant changes between pre-surgery breast cancer patients and healthy controls. Using other reference groups in the study, the authors could assign miRNA changes to different categories. The change in the circulating amount of 13 of these miRNAs was similar between post-surgery breast cancer cases and healthy controls, suggesting that the changes in these miRNAs in pre-surgery patients reflected the presence of a primary breast cancer tumor.26 However, ten of the 13 miRNAs also showed altered plasma levels in patients with other cancer types, suggesting that they may more generally reflect a tumor presence or tumor burden. After these analyses, only three miRNAs (miR-92b*, miR-568, and miR-708*) were identified as breast cancer–specific circulating miRNAs. These miRNAs had not been identified in previous studies. More recently, Shen et al found 43 miRNAs that were detected at significantly different levels in plasma samples from a training set of 52 patients with invasive breast cancer, 35 with noninvasive ductal carcinoma in situ (DCIS), and 35 healthy controls;27 all study subjects were Caucasian. miR-33a, miR-136, and miR-199-a5-p were among those with the highest fold change between invasive carcinoma cases and healthy controls or DCIS cases. These changes in circulating miRNA levels may reflect advanced malignancy events. Twenty-three miRNAs exhibited consistent changes between invasive carcinoma and DCIS cases relative to healthy controls, which may reflect early malignancy changes. Interestingly, only three of these 43 miRNAs overlapped with miRNAs in previously reported signatures. These three, miR-133a, miR-148b, and miR-409-3p, were all part of the early malignancy signature and their fold changes were relatively modest, less than four-fold. Nonetheless, the authors validated the changes of miR-133a and miR-148b in plasma samples from an independent cohort of 50 patients with stage I and II breast cancer and 50 healthy controls. Moreover, miR-133a and miR-148b were detected in culture media of MCF-7 and MDA-MB-231 cells, suggesting that they are secreted by the cancer cells. The authors did not investigate the mechanism of miRNA secretion. Some studies have also compared changes in the amount of circulating miRNAs in blood samples obtained before or after surgery (Table 1). A four-miRNA signature (miR-107, miR-148a, miR-223, and miR-338-3p) was identified in a patient cohort of 24 ER+ breast cancers.28 Circulating serum levels of miR-148a, miR-223, and miR-338-3p decreased, while that of miR-107 increased after surgery.28 Normalization of circulating miRNA levels after surgery could be useful in detecting disease recurrence if the changes are also observed in blood samples collected during follow-up visits. In another study, circulating levels of miR-19a, miR-24, miR-155, and miR-181b were monitored longitudinally in serum samples from a cohort of 63 breast cancer patients collected 1 day before surgery, 2–4 weeks after surgery, and 2–4 weeks after the first cycle of adjuvant treatment.29 Levels of miR-24, miR-155, and miR-181b decreased after surgery, while the level of miR-19a only significantly decreased after adjuvant treatment.29 The authors noted that three patients relapsed during the study follow-up. This limited number did not allow the authors to determine whether the altered levels of these miRNAs could be useful for detecting disease recurrence.29 The lack of consensus about circulating miRNA signatures for early detection of primary or recurrent breast tumor requires careful and thoughtful examination. Does this mainly indicate technical difficulties in preanalytic sample preparation, miRNA detection, and/or statistical analysis? Or does it more deeply question the validity of miRNAs as biomarkers for detecting a wide array of heterogeneous presentations of breast cancer? Longitudinal studies that collect blood from breast cancer patients, ideally before diagnosis (healthy baseline), at diagnosis, before surgery, and after surgery, that also consistently process and analyze miRNA changes should be considered to address these questions. High-risk individuals, such as BRCA gene mutation carriers, those with other genetic predispositions to breast cancer, or breast cancer survivors at high risk of recurrence, could provide cohorts of appropriate size for such longitudinal studies. Finally, detection of miRNAs within isolated exosomes or microvesicles is a potential new biomarker assay to consider.21,22 Enrichment of miRNAs in these membrane-bound particles may more directly reflect the secretory phenotype of cancer cells or other cells in the tumor microenvironment, than circulating miRNAs in whole blood samples. Such miRNAs may be less subject to noise and inter-patient variability, and thus may be a more appropriate material for analysis in longitudinal studies.

Risk alleles of miRNA or target genes associated with breast cancer

By mining the genome for allele variants of miRNA genes or their known target genes, miRNA research has shown some promise in helping identify individuals at risk of developing breast cancer. Single nucleotide polymorphisms (SNPs) in the miRNA precursor hairpin can affect its stability, miRNA processing, and/or altered miRNA–target mRNA binding interactions if the SNPs are within the functional sequence of mature miRNAs. Similarly, SNPs in the 3′-UTR of mRNAs can decrease or increase binding interactions with miRNA, altering protein expression. In addition, SNPs in coding sequences of proteins involved in miRNA processing (eg, DROSHA), export (eg, XPO5), and maturation (eg, Dicer) can also affect the expression levels and activity of miRNAs (Table 2). Depending on the tumor suppressive or oncogenic functions of a protein, disruption of miRNA-mediated regulation can increase or decrease cancer risk. According to the miRdSNP database, there are currently 14 unique genes experimentally confirmed as miRNA targets with breast cancer-associated SNPs in their 3′-UTRs (APC, BMPR1B, BRCA1, CCND1, CXCL12, CYP1B1, ESR1, IGF1, IGF1R, IRS2, PTGS2, SLC4A7, TGFBR1, and VEGFA).30 Table 2 provides a comprehensive summary of miRNA-related SNPs linked to breast cancer; some well-studied SNPs are highlighted below. SNPs in the precursors of five miRNAs (miR-27a, miR-146a, miR-149, miR-196, and miR-499) have been associated with increased risk of developing certain types of cancer, including breast cancer.31 Race, ethnicity, and molecular subtype can influence the relative risk associated with SNPs.32,33 The rare [G] allele of rs895819 is located in the loop of pre-miR-27; it interferes with miR-27 processing and is associated with a lower risk of developing familial breast cancer.34 The same allele was associated with lower risk of sporadic breast cancer in a patient cohort of young Chinese women,35 but the allele had no prognostic value in individuals with breast cancer in this cohort.35 The [C] allele of rs11614913 in the pre-miR-196 and [G] allele of rs3746444 in the pre-miR-499 were associated with increased risk of developing breast cancer in a case–control study of Chinese women (1,009 breast cancer patients and 1,093 healthy controls).36 In contrast, the same variant alleles were not associated with increased breast cancer risk in a case–control study of Italian and German women (1,894 breast cancer cases and 2,760 healthy controls).37 The [C] allele of rs462480 and [G] allele of rs1053872, within 61 bp and 10 kb of pre-miR-101, were associated with increased breast cancer risk in a case– control study of Chinese women (1,064 breast cancer cases and 1,073 healthy controls).38 The authors suggest that these SNPs may interfere with stability or processing of primary miRNA transcripts.38 The [G] allele of rs61764370 in the 3′-UTR of KRAS, which disrupts a binding site for let-7 family members, is associated with an increased risk of developing certain types of cancer, including breast cancer. The [G] allele of rs61764370 was associated with the TNBC subtype in younger women in case–control studies from Connecticut, US cohort with 415 breast cancer cases and 475 healthy controls, as well as from an Irish cohort with 690 breast cancer cases and 360 healthy controls.39 This allele was also associated with familial BRCA1 breast cancer in a case– control study with 268 mutated BRCA1 families, 89 mutated BRCA2 families, 685 non-mutated BRCA1/2 families, and 797 geographically matched healthy controls.40 However, there was no association between ER status and this allele in this study cohort.40 No association between this allele and the TNBC subtype or BRCA1 mutation status was found in an independent case–control study with 530 sporadic postmenopausal breast cancer cases, 165 familial breast cancer cases (regardless of BRCA status), and 270 postmenopausal healthy controls.41 Interestingly, the [C] allele of rs7963551 in the 3′-UTR of RAD52 also disrupts a binding site for let-7. This allele is associated with decreased breast cancer risk in two independent case–control studies of Chinese women with 878 and 914 breast cancer cases and 900 and 967 healthy controls, respectively.42 The authors suggest that relief of let-7-mediated regulation may contribute to higher baseline levels of this DNA repair protein, which could be protective against cancer development. The [T] allele of rs1434536 in the 3′-UTR of the bone morphogenic receptor type 1B (BMPR1B) disrupts a binding site for miR-125b.43 This variant allele was associated with increased breast cancer risk in a case–control study with 428 breast cancer cases and 1,064 healthy controls.43

Prognostic and predictive miRNA biomarkers in breast cancer subtypes with targeted therapies

ER+ breast cancers account for 70% of all cases and have the best clinical outcome. For ER+ cancers, several targeted therapies exist to block hormone signaling, including tamoxifen, aromatase inhibitors, and fulvestrant. However, as many as half of these patients are resistant to endocrine therapy intrinsically (de novo) or will develop resistance over time (acquired).44 Thus, there is a clinical need for prognostic and predictive biomarkers that can indicate which ER+ patients can be effectively treated with hormone therapies alone and which tumors have innate (or will develop) resistance to hormone therapy, thereby requiring more aggressive treatment. For HER2+ breast cancers, treatment with the targeted inhibitor trastuzumab is the standard course.45,46 Even though trastuzumab is effective, almost half of the breast cancer patients that overexpress HER2 are either nonresponsive to trastuzumab or develop resistance.47–49 There have been numerous mechanisms identified for trastuzumab resistance, yet there is no clinical assay available to determine which patients will respond to trastuzumab. Profiling of miRNA expression in clinical tissue specimens and/or in breast cancer cell line models of drug resistance has linked individual miRNAs or miRNA signatures to drug resistance and disease outcome (Tables 3 and 4). Functional characterization of some of the highlighted miRNAs in cell line models has provided mechanistic insights on their role in resistance.50,51 Some miRNAs can directly control expression levels of ER and HER2 via interaction with complementary binding sites on the 3′-UTRs of mRNAs.50,51 Other miRNAs can affect output of ER and HER2 signaling by controlling expression levels of downstream effectors and signaling factors.50,51

miRNAs in ER signaling and endocrine resistance

miR-22, miR-27a, miR-206, miR-221/222, and miR-302c have been shown to regulate ER expression in breast cancer cell line models and, in some instances, miRNA overexpression is sufficient to promote resistance to endocrine therapies.52–55 In some studies (but not others), these miRNAs have been detected at lower levels in ER+ tumor tissues relative to ERtumor tissues.55,56 Expression of the miR-191~miR-425 gene cluster and of miR-342 is driven by ER signaling in breast cancer cell lines and their expression correlates with ER status in breast tumor tissues.56–59 Several clinical studies have identified individual miRNAs or miRNA signatures that correlate with response to adjuvant tamoxifen treatment.60–64 These signatures do not include any of the above-mentioned miRNAs that have a mechanistic link to ER regulation or signaling. A ten-miRNA signature (miR-139-3p, miR-190b, miR-204, miR-339-5p, miR-363, miR-365, miR-502-5p, miR-520c-3p, miR-520g/h, and miRPlus-E1130) was associated with clinical outcome in a patient cohort of 52 ER+ cases treated with tamoxifen, but this signature could not be validated in two independent patient cohorts.64 Individual expression changes in miR-30c, miR-210, and miR-519 correlated with clinical outcome in independent patient cohorts treated with tamoxifen.60–63 High miR-210 correlated with shorter recurrence-free survival in a cohort of 89 patients with early-stage ER+ breast tumors.62 The prognostic performance of miR-210 was comparable to that of mRNA signatures, including the 21-mRNA recurrence score from which US Food and Drug Administration (FDA)-cleared Oncotype Dx is derived. High miR-210 expression was also associated with poor outcome in other patient cohorts of either all comers or ER− cases.65–69 The expression of miR-210 was also upregulated under hypoxic conditions.70 Thus, miR-210-based prognostic information may not be specific or limited to ER signaling or ER+ breast tumors.

miRNAs in HER signaling and trastuzumab resistance

miR-125b, miR-134, miR-193a-5p, miR-199b-5p, miR-331-3p, miR-342-5p, and miR-744* have been shown to regulate expression of HER2 via binding to sites on the 3′-UTR of its mRNA in HER2+ breast cancer cell lines (eg, BT-474, MDA-MB-453, and SK-BR-3).71–73 miR-125b and miR-205 also indirectly affect HER2 signaling via inhibition of HER3 in SK-BR-3 and MCF-7 cells.71,74 Expression of other miRNAs, including miR-26, miR-30b, and miR-194, is upregulated upon trastuzumab treatment in BT-474 and SK-BR-3 cells.75,76 Altered expression of these miRNAs has been associated with breast cancer, but for most of them, there is not a clear, exclusive link to the HER2+ tumor subtype. miR-21, miR-302f, miR-337, miR-376b, miR-520d, and miR-4728 have been reported by some studies (but not others) to be overexpressed in HER2+ breast cancer tissues.56,77,78 Indeed, miR-4728 is cotranscribed with the HER2 primary transcript and is processed out from an intronic sequence.78 High levels of miR-21 interfere with trastuzumab treatment in BT-474, MDA-MB-453, and SK-BR-3 cells via inhibition of PTEN (phosphatase and tensin homolog).79 High levels of miR-21 in HER2+ tumor tissues before and after neoadjuvant treatment with trastuzumab are associated with poor response to treatment.79 miR-221 can also confer resistance to trastuzumab treatment via PTEN in SK-BR-3 cells.80 High levels of miR-221 correlate with lymph node involvement and distant metastasis as well as HER2 overexpression,81 though other studies observed lower levels of miR-221 in HER2+ cases.82 While these mechanistic interactions are sound and there are supportive data with clinical specimens, the prognostic value and potential clinical applications of these miRNAs are not clear. Future studies should investigate whether any of these miRNAs can inform disease outcome or treatment response within a more homogenous cohort of HER2+ cases.

miRNA biomarkers and therapeutic opportunities in TNBC without targeted therapies

TNBC is a highly heterogeneous disease whose clinical features include a peak risk of recurrence within the first 3 years, a peak of cancer-related deaths in the first 5 years, and a weak relationship between tumor size and lymph node metastasis.4 At the molecular level, TNBC has significant overlap with the basal-like subtype, with approximately 80% of TNBCs being classified as basal-like.3 A comprehensive gene expression analysis (mRNA signatures) of 587 TNBC cases revealed extensive molecular heterogeneity within TNBC as well as six distinct molecular TNBC subtypes.83 The molecular heterogeneity increases the difficulty of developing targeted therapeutics that will be effective in unstratified TNBC patients. It would be highly beneficial to be able to identify these molecular subtypes with simplified biomarkers or signatures. miRNA expression profiling on frozen and fixed tissues using various detection methods have identified miRNA signatures or individual miRNA changes that correlate with clinical outcome in TNBC cases (Table 5). A four-miRNA signature (miR-16, miR-125b, miR-155, and miR-374a) correlated with shorter overall survival in a patient cohort of 173 TNBC cases. Reanalysis of this cohort by dividing cases into core basal (basal CK5/6- and/or epidermal growth factor receptor [EGFR]-positive) and 5NP (negative for all five markers) subgroups identified a different four-miRNA signature (miR-27a, miR-30e, miR-155, and miR-493) that correlated with the subgroup classification based on ER/PR/HER2/basal cytokeratins/EGFR status.84 Accordingly, this four-miRNA signature can separate low- and high-risk cases – in some instances, even more accurately than core basal and 5NP subgroup stratification.84 Other miRNA signatures could be useful to inform treatment response to specific chemotherapy regimens (Table 5). A three-miRNA signature (miR-190a, miR-200b-3p, and miR-512-5p) obtained from tissue core biopsies before treatment correlated with complete pathological response in a limited patient cohort of eleven TNBC cases treated with different chemotherapy regimens.85 An eleven-miRNA signature (miR-10b, miR-21, miR-31, miR-125b, miR-130a-3p, miR-155, miR-181a, miR-181b, miR-183, miR-195, and miR-451a) separated TNBC tumors from normal breast tissue.86 The authors noted that several of these miRNAs are linked to pathways involved in chemoresistance.86 Categorizing TNBC subgroups by gene expression (mRNA) signatures indicates the influence and contribution of stromal elements in driving and defining specific subgroups.83 Immunomodulatory, mesenchymal-like, and mesenchymal stem-like subtypes are characterized by signaling pathways typically carried out, respectively, by immune cells and stromal cells, including tumor-associated fibroblasts. miR-10b, miR-21, and miR-155 are among the few miRNAs that are represented in multiple signatures found to be associated with poor outcome in TNBC. These miRNAs are known to be expressed in cell types other than breast cancer cells,87–91 and thus, their altered expression may reflect aberrant processes in the tumor microenvironment.92 In situ hybridization (ISH) assays are a powerful tool to determine altered miRNA expression at single-cell resolution and to assess the contribution of reactive stroma and immune response.13,93 In breast phyllodes tumors,94 as well as in colorectal95 and pancreatic cancer,96 upregulation of miR-21 expression promotes myofibrogenesis and regulates antimetastatic and proapoptotic target genes, including RECK (reversion-inducing cysteine-rich protein with kazal motifs), SPRY1/2 (Sprouty homolog 1/2 of Drosophila gene), PDCD-4 (programed cell death 4), and PTEN. We have recently shown that high levels of miR-21 expression in the stromal compartment in a cohort of 105 early-stage TNBC cases correlated with shorter recurrence-free and breast cancer–specific survival.97 While ISH-based miRNA detection is not as sensitive as that of a qRT-PCR assay, it provides an independent validation tool to determine the predominant cell type(s) that express miRNAs associated with TNBC or other breast cancer subtypes.

miRNA biomarkers for monitoring and characterization of metastatic disease

Although significant progress has been made in detecting and treating primary breast cancer, advances in the treatment of MBC have been marginal. Does molecular analysis of the primary tumor tissues reflect the evolution of metastatic lesions? Are we treating the wrong disease(s)? In the clinic, computed tomography (CT), positron emission tomography (PET)/CT, and magnetic resonance imaging (MRI) are conventional methods for monitoring MBC patients and evaluating therapeutic efficacy. However, these technologies are limited in their ability to detect microscopic lesions and immediate changes in disease progression. Because it is not currently standard practice to biopsy metastatic lesions to inform new treatment plans at distant sites, circulating tumor cells (CTCs) have been effectively used to evaluate disease progression and treatment response. CTCs represent the molecular composition of the disease and can be used as prognostic or predictive biomarkers to guide treatment options. Further advances have been made in evaluating tumor progression and response using circulating RNA and DNA in blood samples. miRNAs are promising markers that can be identified in primary and metastatic tumor lesions, as well as in CTCs and patient blood samples. Several miRNAs, differentially expressed in primary tumor tissues, have been mechanistically linked to metastatic processes in cell line and mouse models.22,98 Most of these miRNAs are thought to exert their regulatory roles within the epithelial cell compartment (eg, miR-10b, miR-31, miR-141, miR-200b, miR-205, and miR-335), but others can predominantly act in other compartments of the tumor microenvironment, including tumor-associated fibroblasts (eg, miR-21 and miR-26b) and the tumor-associated vasculature (eg, miR-126). miR-10b has been more extensively studied than other miRNAs in the context of MBC (Table 6). We briefly describe below some of the studies that have analyzed miR-10b in primary tumor tissues, as well as in blood from breast cancer cases with concurrent metastatic disease, either regional (lymph node involvement) or distant (brain, bone, lung). miR-10b promotes invasion and metastatic programs in human breast cancer cell lines and mouse models via HoxD10 inhibition, which derepresses expression of the prometastatic gene RhoC.99,100 In the original study, higher levels of miR-10b in primary tumor tissues correlated with concurrent metastasis in a patient cohort of five breast cancer cases without metastasis and 18 MBC cases.100 Higher levels of miR-10b in the primary tumors correlated with concurrent brain metastasis in a cohort of 20 MBC cases with brain metastasis and ten breast cancer cases without brain metastasis.101 In another study, miR-10b levels were higher in the primary tumors of MBC cases.102 Higher amounts of circulating miR-10b were also associated with cases having concurrent regional lymph node metastasis.103–105 However, another study on primary tumor tissues did not find an association between miR-10b levels and disease progression or clinical outcome in a cohort of 84 early-stage breast cancer patients106 or in another cohort of 219 breast cancer patients,107 both with long-term (.10 years) clinical follow-up information. We are not aware of any study that has compared miRNA expression between matched primary and metastatic tissues in a large cohort. This could provide information about cancer cell evolution, as well as the tumor microenvironment niche at distant sites. With smaller cohorts, higher levels of miR-9, miR-200 family members (miR-141, miR-200a, miR-200b, miR-200c), and miR-219-5p have been detected in distant metastatic lesions compared with matched primary tumors by RT-PCR and ISH assays.108 A recent ISH-based study in a limited number of breast cancer cases reported that expression of miR-708 was markedly downregulated in regional lymph node and distant lung metastases.109 miR-708 modulates intracellular calcium levels via inhibition of neuronatin.109 miR-708 expression is transcriptionally repressed epigenetically by polycomb repressor complex 2 in metastatic lesions, which leads to higher calcium bioavailability for activation of extracellular signal-regulated kinase (ERK) and focal adhesion kinase (FAK), and cell migration.109 Recent mechanistic studies have revealed antimetastatic functions of miR-7,110 miR-18a,111 and miR-29b,112 as well as conflicting antimetastatic functions of miR-23b113 and prometastatic functions of the miR-23 cluster (miR-23, miR-24, and miR-27b)114 in breast cancer. The prognostic value of these miRNAs needs to be investigated. miRNA expression profiling in CTCs could be useful for assigning CTC status and for interrogating molecular aberrations in individual CTCs during the course of MBC.115 However, only one study has analyzed miRNA expression in CTC-enriched blood samples after positive selection of epithelial cells with anti-EpCAM antibody binding.116 The authors used a cutoff of 5 CTCs per 7.5 mL of blood to consider a sample positive for CTCs, which is within the range of previous clinical studies. A ten-miRNA signature (miR-31, miR-183, miR-184, miR-200c, miR-205, miR-210, miR-379, miR-424, miR-452, and miR-565) can separate CTC-positive samples of MBC cases from healthy control samples after epithelial cell enrichment.116 However, only miR-183 is detected in statistically significantly different amounts between CTC-positive and CTC-negative samples of MBC cases.116 Another study took a different approach and correlated changes in circulating miRNAs with the presence or absence of CTCs in MBC cases. Higher circulating amounts of seven miRNAs (miR-141, miR-200a, miR-200b, miR-200c, miR-203, miR-210, and miR-375) and lower amounts of miR-768-3p were detected in plasma samples from CTC-positive MBC cases.117 miR-210 was the only overlapping miRNA between these two studies; epithelial cell-expressed miRNAs (miR-141, miR-200a, miR-200b, and miR-200c) did not reach statistical significance in the other study. Changes in amounts of circulating miRNAs have been reported in various studies of blood samples collected before and after neoadjuvant treatment. Such changes could be useful in monitoring treatment response at an earlier time than current imaging technologies allow. However, there is no evidence at this time that circulating miRNA signatures would contain enough information to dissect molecular aberrations in individual metastatic lesions, which could be many and heterogeneous within the same patient. The amount of circulating miR-19a and miR-205 in serum before treatment correlated with response to neoadjuvant epirubicin + paclitaxel chemotherapy regimen in Stage II and III patients with luminal A breast tumors.118 Relatively lower levels of circulating miR-210 in plasma samples before treatment correlated with complete pathologic response to neoadjuvant trastuzumab treatment in patients with HER2+ breast tumors.119 At 24 weeks after surgery, the miR-210 in plasma samples of patients with residual disease (as assessed by pathological response) was reduced to the level of patients with complete pathological response.119 While circulating levels of miR-21, miR-29a, and miR-126 were relatively higher in plasma samples from breast cancer patients relative to those of healthy controls, there were no significant changes of these miRNAs between pre-surgery and post-surgery plasma samples.119 Another study found no correlation between the circulating amount of miR-21, miR-210, or miR-373 in serum samples before treatment and the response to neoadjuvant trastuzumab (or lapatinib) treatment in patients with HER2+ breast tumors.120 In this study, however, relatively higher levels of circulating miR-21 in pre-surgery or post-surgery serum samples correlated with shorter overall survival.120 More studies are needed that carefully address the technical and biological reproducibility, as we discussed above for miRNA-based early-disease detection assays.

Conclusion

Breast cancer has been widely studied and characterized at the molecular level. Various molecular tools have already been incorporated into the clinic for diagnostic and prognostic applications based on gene (mRNA) and protein expression, but there are still unmet clinical needs for novel biomarkers that can improve diagnosis, management, and treatment. In this review, we provided a general look at the state of miRNA research on breast cancer. We limited our discussion to studies that associated miRNA changes with one of these focused challenges: early disease detection (Tables 1 and 2), management of a specific breast cancer subtype (Tables 3–5), or new opportunities to monitor and characterize MBC (Table 6). There are more studies that have linked altered expression of specific miRNAs with clinical outcome, but we did not review those that did not analyze their findings within the context of specific subtypes based on ER/PR/HER2 status. The promise of miRNA biomarkers generates great enthusiasm. Their chemical stability in tissues, blood, and other body fluids, as well as their regulatory capacity to modulate target networks, are technically and biologically appealing. miRNA-based diagnostics have already reached the clinic in laboratory-developed tests that use qRT-PCR-based detection of miRNAs for differential diagnosis of pancreatic cancer, subtyping of lung and kidney cancers, and identification of the cell of origin for cancers having an unknown primary.121,122 For breast cancer applications, there is little agreement on the reported individual miRNAs and miRNA signatures among studies from either tissues or blood samples. We considered in detail parameters that may contribute to these discrepancies in blood samples. Most of these concerns also apply to tissue studies, namely, patient characteristics, experimental design, sample size, methodology, and analysis tools. Another limitation of most expression-profiling studies in whole-tissue specimens is that they measure collective levels of RNA from a mixture of different cell types. Intratumoral and intertumoral heterogeneity at the cellular and molecular levels are confounding factors in interpreting altered miRNA expression. This may explain in part the low overlap of reported miRNA signatures in tissues. We discussed the influence of altered miRNA expression in the stroma in the context of TNBC. Stromal features are known to influence cancer cell characteristics.123,124 Therefore, it is likely that miRNA-mediated regulation in other cellular compartments of the tumor microenvironment also influences cancer cells. Detection methods that incorporate the context of altered expression, such as multiplex ISH/immunohistochemistry assays, may provide additional validation tools for altered miRNA expression.13,93 In conclusion, it is premature to make specific recommendations for clinical implementation of miRNA biomarkers in managing breast cancer. More research is needed that includes multi-institutional participation and longitudinal studies of large patient cohorts, with well-annotated pathologic and clinical characteristics to validate the clinical value of miRNAs in breast cancer.
  166 in total

1.  A genetic variant located in miR-423 is associated with reduced breast cancer risk.

Authors:  Robert A Smith; Dominik J Jedlinski; Plamena N Gabrovska; Stephen R Weinstein; Larisa Haupt; Lyn R Griffiths
Journal:  Cancer Genomics Proteomics       Date:  2012 May-Jun       Impact factor: 4.069

2.  Clinical significance of serum miR-21 in breast cancer compared with CA153 and CEA.

Authors:  Jianjian Gao; Qingyun Zhang; Jianjun Xu; Lijuan Guo; Xuefeng Li
Journal:  Chin J Cancer Res       Date:  2013-12       Impact factor: 5.087

3.  Identification of circulating microRNA signatures for breast cancer detection.

Authors:  Maurice Chan; Chiew Suan Liaw; Shen Mo Ji; Hwee Huang Tan; Chow Yin Wong; Aye Aye Thike; Puay Hoon Tan; Gay Hui Ho; Ann Siew-Gek Lee
Journal:  Clin Cancer Res       Date:  2013-06-24       Impact factor: 12.531

4.  Stromal gene expression predicts clinical outcome in breast cancer.

Authors:  Greg Finak; Nicholas Bertos; Francois Pepin; Svetlana Sadekova; Margarita Souleimanova; Hong Zhao; Haiying Chen; Gulbeyaz Omeroglu; Sarkis Meterissian; Atilla Omeroglu; Michael Hallett; Morag Park
Journal:  Nat Med       Date:  2008-04-27       Impact factor: 53.440

5.  Common genetic variants in pre-microRNAs were associated with increased risk of breast cancer in Chinese women.

Authors:  Zhibin Hu; Jie Liang; Zhanwei Wang; Tian Tian; Xiaoyi Zhou; Jiaping Chen; Ruifen Miao; Yan Wang; Xinru Wang; Hongbing Shen
Journal:  Hum Mutat       Date:  2009-01       Impact factor: 4.878

6.  Prognostic significance of metastasis-related microRNAs in early breast cancer patients with a long follow-up.

Authors:  Athina Markou; George M Yousef; Efstathios Stathopoulos; Vassilis Georgoulias; Evi Lianidou
Journal:  Clin Chem       Date:  2013-10-16       Impact factor: 8.327

7.  Prognostic Implications of MicroRNA-21 Overexpression in Invasive Ductal Carcinomas of the Breast.

Authors:  Jung Ah Lee; Hye Yoon Lee; Eun Sook Lee; Insun Kim; Jeoung Won Bae
Journal:  J Breast Cancer       Date:  2011-12-27       Impact factor: 3.588

8.  MicroRNA-519a is a novel oncomir conferring tamoxifen resistance by targeting a network of tumour-suppressor genes in ER+ breast cancer.

Authors:  Aoife Ward; Kirti Shukla; Aleksandra Balwierz; Zita Soons; Rainer König; Ozgür Sahin; Stefan Wiemann
Journal:  J Pathol       Date:  2014-06-02       Impact factor: 7.996

9.  Biological and prognostic associations of miR-205 and let-7b in breast cancer revealed by in situ hybridization analysis of micro-RNA expression in arrays of archival tumour tissue.

Authors:  John Le Quesne; Julia Jones; Joanna Warren; Sarah-Jane Dawson; H Raza Ali; Helen Bardwell; Fiona Blows; Paul Pharoah; Carlos Caldas
Journal:  J Pathol       Date:  2012-05-08       Impact factor: 7.996

10.  Endocrine resistance in breast cancer: Current status and a perspective on the roles of miRNAs (Review).

Authors:  Jichun Zhou; Rongyue Teng; Qinchuan Wang; Chenpu Xu; Jufeng Guo; Chao Yuan; Jianguo Shen; Wenxian Hu; Linbo Wang; Shuduo Xie
Journal:  Oncol Lett       Date:  2013-06-17       Impact factor: 2.967

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  39 in total

Review 1.  Recent trends in microRNA research into breast cancer with particular focus on the associations between microRNAs and intrinsic subtypes.

Authors:  Sasagu Kurozumi; Yuri Yamaguchi; Masafumi Kurosumi; Miki Ohira; Hiroshi Matsumoto; Jun Horiguchi
Journal:  J Hum Genet       Date:  2016-07-21       Impact factor: 3.172

2.  Pigmy MicroRNA: surveillance cops in Therapies kingdom.

Authors:  Utpal Bhadra; Pradipta Patra; Jagamohan Chhatai; Manika Pal-Bhadra
Journal:  Mol Med       Date:  2016-09-28       Impact factor: 6.354

3.  Pilot Study of Serum MicroRNA-21 as a Diagnostic and Prognostic Biomarker in Egyptian Breast Cancer Patients.

Authors:  Eman A Toraih; Eman A Mohammed; Sherif Farrag; Nevene Ramsis; Somaya Hosny
Journal:  Mol Diagn Ther       Date:  2015-06       Impact factor: 4.074

4.  Positive expression of miR-361-5p indicates better prognosis for breast cancer patients.

Authors:  Zhi-Gang Cao; Yan-Ni Huang; Ling Yao; Yi-Rong Liu; Xin Hu; Yi-Feng Hou; Zhi-Min Shao
Journal:  J Thorac Dis       Date:  2016-07       Impact factor: 2.895

5.  Data mining of micrornas in breast carcinogenesis which may be a potential target for cancer prevention.

Authors:  Jin-Wook Kang; Min-Ji Kim; Hyun-Ah Baek; Jeong-Sang Lee
Journal:  Food Sci Biotechnol       Date:  2016-03-31       Impact factor: 2.391

6.  Exosome-encapsulated microRNA-223-3p as a minimally invasive biomarker for the early detection of invasive breast cancer.

Authors:  Mio Yoshikawa; Hisae Iinuma; Yasuko Umemoto; Takako Yanagisawa; Akiko Matsumoto; Hiromitsu Jinno
Journal:  Oncol Lett       Date:  2018-04-10       Impact factor: 2.967

7.  A novel panel of blood-based microRNAs capable of discrimination between benign breast disease and breast cancer at early stages.

Authors:  Hanieh Sadeghi; Aryan Kamal; Marzieh Ahmadi; Hadi Najafi; Ali Sharifi Zarchi; Peyman Haddad; Bahareh Shayestehpour; Leila Kamkar; Masoumeh Salamati; Loabat Geranpayeh; Marzieh Lashkari; Mehdi Totonchi
Journal:  RNA Biol       Date:  2021-11-18       Impact factor: 4.652

Review 8.  Emergence of Circulating MicroRNAs in Breast Cancer as Diagnostic and Therapeutic Efficacy Biomarkers.

Authors:  Vaishali Aggarwal; Kumari Priyanka; Hardeep Singh Tuli
Journal:  Mol Diagn Ther       Date:  2020-04       Impact factor: 4.074

9.  Diversification of the CRISPR Toolbox: Applications of CRISPR-Cas Systems Beyond Genome Editing.

Authors:  Sarah Balderston; Gabrielle Clouse; Juan-José Ripoll; Grace K Pratt; Giedrius Gasiunas; Jens-Ole Bock; Eric Paul Bennett; Kiana Aran
Journal:  CRISPR J       Date:  2021-06

Review 10.  microRNA-based diagnostic and therapeutic applications in cancer medicine.

Authors:  Lorenzo F Sempere; Asfar S Azmi; Anna Moore
Journal:  Wiley Interdiscip Rev RNA       Date:  2021-05-17       Impact factor: 9.957

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