Michael J G Milevskiy1,2, Gurveen K Sandhu1, Anna Wronski1,3, Darren Korbie4, Brooke L Brewster1, Annette Shewan1, Stacey L Edwards1,5, Juliet D French1,5, Melissa A Brown1. 1. School of Chemistry and Molecular Biosciences, University of Queensland, St Lucia, Queensland, Australia. 2. Present Address: ACRF Stem Cells and Cancer Division, The Walter and Eliza Hall Institute of Medical Research, Parkville, Victoria, Australia. 3. Present Address: Department of Developmental, Molecular and Chemical Biology, School of Medicine and Molecular Oncology Research Institute, Tufts University, Boston, Massachusetts, USA. 4. Australian Institute of Biotechnology and Nanotechnology, University of Queensland, St Lucia, Queensland, Australia. 5. QIMR Berghofer Medical Research Institute, Brisbane, Queensland, Australia.
Abstract
Depletion of BRCA1 protein in mouse mammary glands results in defects in lactational development and increased susceptibility to mammary cancer. Extensive work has focussed on the role of BRCA1 in the normal breast and in the development of breast cancer, the cell of origin for BRCA1 tumours and the protein-coding genes altered in BRCA1 deficient cells. However, the role of non-coding RNAs in BRCA1-deficient cells is poorly understood. To evaluate miRNA expression in BRCA1 deficient mammary cells, RNA sequencing was performed on the mammary glands of Brca1 knockout mice. We identified 140 differentially expressed miRNAs, 9 of which were also differentially expressed in human BRCA1 breast tumours or familial non-BRCA1 patients and during normal gland development. We show that BRCA1 binds to putative cis-elements in promoter regions of the miRNAs with the potential to regulate their expression, and that four miRNAs (miR-29b-1-5p, miR-664, miR-16-2 and miR-744) significantly stratified the overall survival of basal-like tumours. Importantly the prognostic value of miR-29b-1-5p was higher in significance than several commonly used clinical biomarkers. These results emphasise the role of Brca1 in modulating expression of miRNAs and highlights the potential for BRCA1 regulated miRNAs to be informative biomarkers associated with BRCA1 loss and survival in breast cancer.
Depletion of BRCA1 protein in mouse mammary glands results in defects in lactational development and increased susceptibility to mammary cancer. Extensive work has focussed on the role of BRCA1 in the normal breast and in the development of breast cancer, the cell of origin for BRCA1 tumours and the protein-coding genes altered in BRCA1 deficient cells. However, the role of non-coding RNAs in BRCA1-deficient cells is poorly understood. To evaluate miRNA expression in BRCA1 deficient mammary cells, RNA sequencing was performed on the mammary glands of Brca1 knockout mice. We identified 140 differentially expressed miRNAs, 9 of which were also differentially expressed in humanBRCA1 breast tumours or familial non-BRCA1patients and during normal gland development. We show that BRCA1 binds to putative cis-elements in promoter regions of the miRNAs with the potential to regulate their expression, and that four miRNAs (miR-29b-1-5p, miR-664, miR-16-2 and miR-744) significantly stratified the overall survival of basal-like tumours. Importantly the prognostic value of miR-29b-1-5p was higher in significance than several commonly used clinical biomarkers. These results emphasise the role of Brca1 in modulating expression of miRNAs and highlights the potential for BRCA1 regulated miRNAs to be informative biomarkers associated with BRCA1 loss and survival in breast cancer.
Germline mutations in the breast cancer susceptibility gene, BRCA1, confer a high risk of developing neoplastic lesions. To understand how BRCA1-deficient cells give rise to BRCA1 breast tumours, extensive research has been performed to analyse and dissect the molecular expression profiles, cell of origin and genetic pathways linked to BRCA1 [1-5]. BRCA1-deficient breast tumours often present as difficult to treat triple negative breast cancers (TNBC) not dissimilar to the basal-like molecular subtype of breast cancer, which lack expression of hormone receptors and easy to target growth signals. Whilst significant discoveries have been made on the contribution of the coding genome, the role of non-coding RNAs, such as microRNAs (miRNAs), in BRCA1-associated tumourigenesis remains unclear.MiRNAs are small non-coding RNA molecules that predominantly inhibit gene expression, post-transcriptionally [6]. MiRNAs function through two distinct mechanisms, perfect complementary binding or imperfect binding to mRNA 3′ untranslated regions (UTRs) leading to mRNA degradation or inhibition of translation, respectively. MiRNAs have key roles in tumourigenesis and development of breast cancer with widespread affects across all hallmarks of cancer [7, 8].BRCA1 is essential for DNA repair via homologous recombination, but is also a direct effector of gene expression. Recent ChIP-Seq data has shown that BRCA1 binds to promoters of numerous genes in human breast cell lines mediating downstream effects of NF-κB, TNF-α and retinoic acid (RA) growth signals [9]. RA growth suppression was further reduced in BRCA1-knockdown cells and the mutant cell line HCC1937, which expresses a truncated protein incapable of binding to DNA [9]. BRCA1 has also been shown to bind to and regulate miR-155 expression, in breast cancer [10]. BRCA1R1699Q, a point mutation found in non-familial breast cancerpatients, results in the failure of BRCA1 to recruit HDAC2 to the miR-155 promoter leading to histone acetylation and a subsequent increase in miR-155 expression contributing to breast tumourigenesis [10].Knockout of Brca1 in murine mammary glands leads to defective development, which is most evident during lactation where aberrant growth of the lobular alveolar compartment is observed [11, 12]. Tumours arsing in Brca1 knockout mice share many morphological characteristics with their human counterparts including abnormal nuclei and high mitotic index [13]. These tumours also share many fundamental characteristics including aberrant DNA damage, reminiscent of a defective Brca1 pathway, and gene expression signatures of basal-like breast tumours [14, 15], therefore, we reasoned that this represents a robust model for investigation of miRNAs dysregulated in Brca1-associated breast tumours.We have previously identified a number of microRNAs deregulated following conditional loss of Brca1 in the mouse mammary gland [16]. To further our studies, we performed microRNA-seq (miR-Seq) on Brca1 deficient murine mammary glands to evaluate the changes in miRNA expression. Our findings will facilitate a better understanding of basal-like and BRCA1-associated tumours and provide tools for greater patient prognostication.
RESULTS
miRNAs are differentially expressed in Brca1 knockout murine mammary glands
To identify miRNAs differentially expressed in Brca1 knockout murine mammary glands, miRNA-seq analysis was performed using RNA extracted from mammary glands at day 1 of lactation. 140 miRNAs were differentially expressed, of which 39 were down-regulated and 101 were up-regulated in MMTV-Cre/Brca1fl/fl glands compared to Brca1fl/fl controls (Figure 1A, Supplementary Table 1). Notably, six miRNAs, previously identified using a candidate approach, were differentially expressed (miR-205, miR-31, miR-148a, miR-181c, miR-200b and miR-210), confirming the validity of our approach.
Figure 1
Brca1 deregulates miRNA expression in the mammary gland
(A) summary of miRNA-seq data from mammary glands at day 1 of lactation in Brca1fl/fl (n = 5) and MMTV-Cre/Brca1fl/fl glands (n = 6), mouse number indicated on the right of heat map. (B) expression of miRNAs with an identical trend of expression between murine Brca1 deficient mammary tissue and human BRCA1 mutant tumours. Nine out of 140 miRNAs were significantly conserved in expression between murine Brca1 deficient tissue and human BRCA1 mutant tumours. Statistical significance was measured by Students’ t-Test, p-values listed in Supplementary Table 1. (*P ≤ 0.05, **P ≤ 0.01, ***P ≤ 0.001).
Brca1 deregulates miRNA expression in the mammary gland
(A) summary of miRNA-seq data from mammary glands at day 1 of lactation in Brca1fl/fl (n = 5) and MMTV-Cre/Brca1fl/fl glands (n = 6), mouse number indicated on the right of heat map. (B) expression of miRNAs with an identical trend of expression between murineBrca1 deficient mammary tissue and humanBRCA1 mutant tumours. Nine out of 140 miRNAs were significantly conserved in expression between murineBrca1 deficient tissue and humanBRCA1 mutant tumours. Statistical significance was measured by Students’ t-Test, p-values listed in Supplementary Table 1. (*P ≤ 0.05, **P ≤ 0.01, ***P ≤ 0.001).
Differentially expressed miRNAs are deregulated in BRCA1-associated tumours
Mechanisms of transcriptional regulation can often be conserved between developmental processes and cancer. To explore this, we examined the expression of miRNAs differentially expressed in Brca1 deficient murine mammary glands with those miRNAs altered in 13 breast tumours of humanBRCA1 mutation carriers (Published cohort [17]). Nine miRNAs were identified, four that displayed increased expression (miR-34b-5p, miR-744-p, miR-485-3p, miR-542-3p) in both Brca1 knockout murine mammary glands and humanBRCA1 breast tumours and five were decreased (miR-664-3p, miR-221-3p, miR-16-5p, miR-29b-1-5p and miR-30b-5p) in both datasets (Figure 1B, Supplementary Table 2).
Differentially expressed miRNAs are deregulated in the murine mammary gland
Brca1 is important for the development of the mammary gland, particularly for the maintenance of the luminal cell progenitor pool and proper gene expression during lactation [1, 12]. Using published Illumina expression array data, we evaluated five of the nine differentially expressed miRNAs present on the array in murine mammary glands from 12 days of age through pregnancy and the final stages of involution from 2–3 mice per age group. Each miRNA demonstrated differential expression throughout the developmental stages of the mammary gland (Figure 2A). Interestingly, four miRNAs (miR-34b-5p, miR-221-3p, miR-29b-1-5p and miR-30b-5p) display decreased expression at lactation day 5 compared to the final stages of gestation suggesting that loss of these miRNAs may be required for milk production and the final involution stage of the mammary gland. MiR-221 and miR-29b-1 positively correlated with Brca1 expression supporting the finding that these miRNAs decrease following Brca1 knockout in the mouse and humanpatients with BRCA1 mutations.
Figure 2
Deregulated miRNAs are differentially expressed in the mammary gland
(A) miRNA and Brca1 mRNA expression data from murine mammary glands through puberty, pregnancy, lactation and involution. Definition of hour (hr), day (d), week (wk). (B) miRNA and BRCA1 mRNA expression data from BSC (breast stem cell-like, n = 2), BME (breast myoepithelial, n = 2) and BLEC (breast luminal epithelial cell, n = 2) epithelial populations of the human breast.
Deregulated miRNAs are differentially expressed in the mammary gland
(A) miRNA and Brca1 mRNA expression data from murine mammary glands through puberty, pregnancy, lactation and involution. Definition of hour (hr), day (d), week (wk). (B) miRNA and BRCA1 mRNA expression data from BSC (breast stem cell-like, n = 2), BME (breast myoepithelial, n = 2) and BLEC (breast luminal epithelial cell, n = 2) epithelial populations of the human breast.Utilising a published miRNA-Seq dataset we next interrogated expression in human mammary organoids comprised of myoepithelial, luminal and stem-like cells, which strongly resemble their in vivo counterparts that comprise the bilayered ducts throughout the breast [18]. We observed that eight of the nine (miR-16-5p not in dataset) miRNAs deregulated during development and BRCA1 mutated tumours were also differentially expressed in these subsets of the human breast (Figure 2B). MiR-485 and miR-542 were enriched in the stem-like population whereas miR-29b-1 and miR-30b were enriched in luminal epithelial cells, when compared to the stem-like and myoepithelial cells, with expression patterns highly similar to BRCA1. MiR-34b, miR-744, miR-485 and miR-542 expression all negatively correlated to BRCA1 expression, which is consistent with our findings from Brca1 knockout murine glands and humanBRCA1 mutant carriers.
BRCA1 binds to miRNA promoters and regulates miR-29b-1-5p levels in breast cancer
Given the non-canonical role of BRCA1 as a transcriptional regulator we analysed ChIP-seq data for humanBRCA1 binding in proximity to our differentially expressed miRNAs. BRCA1 binding, was identified for eight of the nine miRNA genes (Table 1). For miR-485-3p, miR-744, miR-664, miR-221, miR-29b-1-5p and miR-30b no histone marks indicative of promoter activity was identified within 15 kb upstream of these genes. To more accurately ascertain binding sites that may contribute to the transcriptional regulation of these six miRNAs, in addition to the first 15 kb upstream of each gene, the first putative promoter element located upstream of each miRNA was also included in the analysis. These putative promoter elements were enriched in H3K27ac, H3K4me3, H3K4me1 and DNase sensitivity found at promoters. This combined analysis demonstrated that seven of the nine miRNA genes had BRCA1 ChIP-seq binding suggesting a potential mechanism whereby BRCA1 regulates the expression of these miRNAs in breast cancer.
Table 1
ChIP-seq and bioinformatic promoter analysis shows that BRCA1 binds to putative miRNA promoter regions
hg19
15 Kb upstream
Nearest promoter histone mark
miRNA
Chr
Start
15 KB upstream
BRCA1 pAb
BRCA1 mAb
RNA-Pol II P-Ser2
Nearest H3K4me3
Len.
BRCA1 pAb
BRCA1 mAb
RNA-Pol II P-Ser2
miR-34b
11
111383663
111368663
-
1
-
miR-485-3p
14
101521756
101506756
-
-
2
chr14:101,363,445-101,371,834
8389
-
-
-
miR-744
17
11985216
11970216
-
1
3
chr17:11,923,129-11,928,868
5739
1
-
2
miR-542-3p
X
133675467
133690467
1
2
3
miR-664
1
220373961
220388961
-
3
3
chr1:220,392,260-220,399,591
7331
-
-
1
miR-221
X
45605694
45620694
-
2
1
chrX:45,622,880-45,634,966
12086
-
2
1
miR-16-2
3
160122533
160107533
1
2
5
miR-29b-1
7
130562298
130577298
-
2
4
chr7:130,591,395-130,602,861
11466
-
2
2
miR-30b
8
135812850
135827850
1
1
3
Chr8:135,842,014-135,846,518
4504
1
1
1
Six of the nine prioritised miRNAs contain BRCA1 ChIP-seq peaks within 15 kb of the miRNA transcriptional start site. Data sourced from GSE45715 [9]. MiR-744 has a BRCA1 associated ChIP-Seq peak at its nearest H3K4me3 promoter mark. Highlighted in bold are miRNA genes that have a greater number of binding sites than is expected by chance.
Six of the nine prioritised miRNAs contain BRCA1 ChIP-seq peaks within 15 kb of the miRNA transcriptional start site. Data sourced from GSE45715 [9]. MiR-744 has a BRCA1 associated ChIP-Seq peak at its nearest H3K4me3 promoter mark. Highlighted in bold are miRNA genes that have a greater number of binding sites than is expected by chance.The basal-like breast cancer cell line, HCC1937, harbours a nonsense mutation in the BRCA1 gene leading to a premature stop codon prior to the DNA binding domain. Using these cells, we stably overexpressed the full-length BRCA1 and assessed expression of the seven miRNAs with BRCA1 binding (Figure 3A). Of these, the expression of miR-29b-1-5p was significantly upregulated, consistent with our Brca1 knockout data and sequencing from the BRCA1 mutant tumours (Figures 3A, 1A and 1B). Six BRCA1 binding sites (enriched from the monoclonal antibody) were identified upstream of the miR-29b-1 gene, widespread DNase sensitivity is also seen, in conjuction with histone modifications typical of active promoters and enhancers (Figure 3B). Notably, the primary-miRNA-29b transcript encodes both miR-29b-1-5p and miR-29b-3p. MiR-29b-3p expression does not change upon BRCA1 overexpression, suggesting that both transcriptional and post-transcriptional regulatory processes are likely involved (Figure 3A).
Figure 3
BRCA1 over-expression upregulates miR-29b-1-5p
(A) relative expression of BRCA1 and seven prioritised miRNAs in the HCC1937 cell line transduced with pBH or pBH-BRCA1 compared to RPLP0 and RNU6B respectively. Results are characteristic of 3 independent replicates. Statistical significance was measured by Students’ t- Test (**P ≤ 0.01, ****P ≤ 0.0001, n.s.= not significant). (B) BRCA1 binding proximal to the miR-29b-1-5p genomic loci (miR29a, miR29b). The first 15 kb upstream and the nearest H3K4me3 peak are shown, representing the most likely putative promoter regions for this miRNA.
BRCA1 over-expression upregulates miR-29b-1-5p
(A) relative expression of BRCA1 and seven prioritised miRNAs in the HCC1937 cell line transduced with pBH or pBH-BRCA1 compared to RPLP0 and RNU6B respectively. Results are characteristic of 3 independent replicates. Statistical significance was measured by Students’ t- Test (**P ≤ 0.01, ****P ≤ 0.0001, n.s.= not significant). (B) BRCA1 binding proximal to the miR-29b-1-5p genomic loci (miR29a, miR29b). The first 15 kb upstream and the nearest H3K4me3 peak are shown, representing the most likely putative promoter regions for this miRNA.Analysis of possible targets for miR-29b-1-5p reveals that the top 4 targets, USP28, NEUROD1, LIN9 and WDR26 have all been previously associated with breast cancer (Supplementary Table 3). Furthermore, SPIN1 is among the predicted targets and has been previously identified to be repressed by miR-29b-1-5p in breast cancer cell lines [19].
Deregulated miRNAs are altered in non-familial breast cancers
BRCA1-associated tumours bear resemblance to TNBC and basal-like tumours, suggesting conserved biological mechanism of tumourigenesis for these tumour types. To determine if these nine miRNAs are also differentially expressed in non-familial breast tumours, including basal-like tumours, expression was analysed in the METABRIC cohort of patients. A heat map of normalised expression demonstrates that these miRNAs are differentially expressed in both familial and non-familial breast tumours, particularly miR-16-2, miR-30b, miR-221 and miR-542-3p (Figure 4, Supplementary Figure 1). These data suggest that this miRNA-signature is not specific to BRCA1-associated tumours.
Figure 4
Deregulated miRNAs are also altered in non-familial breast cancers
Deregulated miRNAs display heterogeneous expression in sporadic human breast cancers. Expression data was sourced from the METABRIC cohort with PAM50 subtypes indicated above the heatmap. A number of commonly used molecular markers (TFF1, ESR1, FOXA1, MCL1, FOXM1, EZH2, MKI67, EGFR, PGR, AR, ERBB2 (HER2) and KRT5) of breast cancer subtypes were also included in the heatmap to enable clustering into the PAM50 subtypes.
Deregulated miRNAs are also altered in non-familial breast cancers
Deregulated miRNAs display heterogeneous expression in sporadic humanbreast cancers. Expression data was sourced from the METABRIC cohort with PAM50 subtypes indicated above the heatmap. A number of commonly used molecular markers (TFF1, ESR1, FOXA1, MCL1, FOXM1, EZH2, MKI67, EGFR, PGR, AR, ERBB2 (HER2) and KRT5) of breast cancer subtypes were also included in the heatmap to enable clustering into the PAM50 subtypes.
BRCA1-associated miRNAs serve as significant biomarkers for survival of basal-like breast cancer
Breast tumours arising in BRCA1 mutation carriers most closely resemble basal-like breast tumours [3, 5]. These tumours do not commonly express the oestrogen (ER-) and progesterone receptors (PR-), or HER2 (HER2-). Patients with these tumours have decreased chances of survival and there are currently no targeted therapies available. To determine whether differential expression of the nine miRNAs associated with survival in basal-like tumours, the expression of each miRNA was used to stratify the overall survival (OS) of basal-like breast tumours from the METABRIC cohort. This analysis demonstrated that miR-29b-1-5p greatly stratified survival with high expression associating with a better outcome for patients with basal-like tumours and TNBC (HR = 0.281, P-value = 0.0006; Table 2, Supplementary Figure 2A and 2B). The survival stratification for TNBC validated within a separate cohort (Supplementary Figure 2C). Three other miRNAs also significantly stratified OS, high miR-664, expression was associated with poor survival whereas high miR-16-2 and miR-744, expression was associated with a better outcome (Table 2). Interestingly, miR-29b-1-5p stratified OS greater than any of the tested clinical markers including age at diagnosis and lymph node status. Utilising a multivariate analysis, only five conditions were needed to stratify OS of these basal-like tumours, miR-29b-1-5p, age at diagnosis, lymph node status, ERBB2 (HER) and miR-664. These data suggest that BRCA1 deregulated miRNAs can serve as potent biomarkers for the stratification of survival in patients with basal-like breast tumours.
Table 2
Prognostic potential of the nine conserved miRNAs in basal-like breast cancer
Condition
Univariate cox-proportional hazards model
Multivariate cox-proportional hazards model (stepwise)
HR
(95% CI)
P-Value
HR
(95% CI)
P-Value
miR-29b-1-5p (high vs low)
0.281
0.121
–
0.653
0.0006
0.305
0.130
–
0.717
0.0067
Age (<40, 41–60, >60)
0.547
0.375
–
0.799
0.0018
0.557
0.365
–
0.848
0.0067
Lymph Node (+, −)
2.317
1.340
–
4.007
0.0022
1.963
1.117
–
3.451
0.0198
ERBB2 (high vs low)
3.459
1.633
–
7.326
0.0052
3.875
1.799
–
8.346
0.0006
miR-664 (high vs low)
1.983
1.069
–
3.679
0.0224
1.981
1.051
–
3.731
0.0354
miR-16-2 (high vs low)
0.542
0.313
–
0.941
0.0263
ns
ns
miR-744 (high vs low)
0.562
0.333
–
0.948
0.0322
ns
ns
Menopausal status (Post, Pre)
1.597
0.944
–
2.701
0.0811
ns
ns
Size (T1, T2, T3)
1.459
0.925
–
2.299
0.1072
ns
ns
Treatment (Yes, No)
1.826
0.777
–
4.290
0.138
ns
ns
BRCA1 (high vs low)
0.653
0.366
–
1.165
0.14
ns
ns
miR-485-3p (high vs low)
1.508
0.863
–
2.637
0.1427
ns
ns
miR-542-3p (high vs low)
0.653
0.373
–
1.141
0.1477
ns
ns
miR-221 (high vs low)
0.686
0.370
–
1.272
0.2195
ns
ns
miR-30b (high vs low)
1.312
0.778
–
2.213
0.3132
ns
ns
miR-34b (high vs low)
0.778
0.456
–
1.327
0.3553
ns
ns
Tumour Grade (1,2,3)
1.443
0.600
–
3.468
0.3866
ns
ns
ESR1 (high vs low)
0.774
0.242
–
2.473
0.6545
ns
ns
PGR (high vs low)
1.190
0.292
–
4.855
0.8141
ns
ns
MiR-29b-1-5p was the most significantly prognostic miRNA entity when interrogated under the univariate and multivariate cox proportional hazard models. Hazards Ratio (HR), Confidence Interval (CI). Data was sourced from METABRIC [43, 48].
MiR-29b-1-5p was the most significantly prognostic miRNA entity when interrogated under the univariate and multivariate cox proportional hazard models. Hazards Ratio (HR), Confidence Interval (CI). Data was sourced from METABRIC [43, 48].
DISCUSSION
Significant molecular and structural alterations occur in the normal breast prior to the development of BRCA1 associated breast cancer. Several studies provide evidence that heterozygous loss of BRCA1 contributes to aberrant mammary gland development through increasing DNA damage [20, 21]. MiRNAs have diverse roles in cancer, including effecting DNA damage and have previously been linked to BRCA1 associated tumours [16, 22, 23]. Advances in therapeutic targeting of miRNAs have made them an attractive target in treating patients with cancer [24, 25]. We present here, that miRNAs deregulated following Brca1 loss may be useful as prognostic markers in patients with basal-like breast cancer or tumours arising in BRCA1 mutant carriers.We identified differentially expressed miRNAs in Brca1 deficient mammary epitheial cells, humanbreast tumours and the developing mammary gland. These deregulated miRNAs are not specific to Brac1 knockout mammary glands or BRCA1-associated tumours as they were also deregulated in non-familial tumours. The promoter of miR-29b-1-5p, contains several binding sites for BRCA1 among enrichment of active histone modifications and DNase sensitivity. Rescue of the BRCA1-mutant breast cancer cell line, HCC1937, with overexpression of a full-length BRCA1 gene resulted in a significant increase in expression of miR-29b-1-5p. This miRNA also proved to be a potent biomarker in the progression of basal-like breast cancer, a subtype with significant similarities to BRCA1 associated breast cancer. Indeed, miR-29b-1-5p was shown to be a more significant biomarker for the stratification of overall survival compared to more commonly utilised clinical biomarkers such as lymph-node status and age at diagnosis. Our work compliments a previous study showing that miR-29b-1-3p stratifies overall survival in a small group (n = 27) of breast cancerpatients with ER- disease [26].BRCA1 is capable of regulating gene expression through direct binding to promoters of protein-coding genes and non-coding RNAs [10]. For example, wild-type BRCA1 binds to the promoter of miR-155 in breast cancer cells, where it recruits histone deacetylase 2 (HDAC2) to promote chromatin condensation and gene repression [10]. The BRCA1R1699Q risk variant results in an altered BRCA1 that can no longer recruit HDAC2 and increased miR-155 expression and tumourigenesis. Given BRCA1 also binds upstream of miR-29b-1-5p, it would be interesting to explore the effect of risk variants on BRCA1’s ability to bind and possibly influence miR-29b-1-3p expression.The miR-29 family have already been reported to have tumour suppressor activity [27]. A previous study found many miR-29 family members have complimentarity to DNA methytransferases and that overexpression of miR-29 miRNAs restored normal DNA methylation and decreased tumourigenesis in lung cancer [28]. Similarly, in breast cancer, miR-29b has been shown to decrease metastasis following stimulation by GATA3, through targeting of regulators of angiogenesis, collagen remodelling and proteolysis [29]. Recent work has shown that in TNBC cell lines, miR-29b-1-5p acts to suppress oncogenic properties such as viability, apoptosis and migration, and overexpression of the miRNA increased the sensitivity of these cell lines to chemotherapeutic agents [19]. This tumour suppressive role was mediated through targetting of SPIN1 effecting the downstream signaling of WNT/β-catenin and Akt. Furthermore the miR-29 family also acts as a tumour supressor in tamoxifen resistant breast cancer cells inhibiting cell proliferation through repressing genes involved in mitochondrial bioenergetics [30, 31]. These data strengthen our finding that high expression of this miRNA is a biomarker for good prognosis. Very little work has explored the role of miR-29b-1-5p in development or cancer, however a single study has found that miR-29b-1-5p and miR-29c can influence proliferation, cell cycle and apoptosis in bladder cancer [32]. MiR-29b-1-5p is the 5′ miRNA processed from the same stem loop as miR-29b (3′ miRNA), their transcriptional regulation should be identical, but differ in the processing and maturation [33]. Given that we didn’t detect differential expression of miR-29b in our miRNA-seq data or in BRCA1 over-expressing HCC1937 cells, it is possible that Brca1 regulates the processing of only miR-29b-1-3p through alterations to the miRNA biogenesis and processing pathway [34]. Future work aiming to understand the role of Brca1 in miR-29b-1-5p regulation should explore possible changes to miRNA processing.The predicted human targets of miR-29b-1-5p reveal genes previously associated with breast cancer. USP28 is a deubiquitinase that has been shown to stabalise LSD1 and MYC, an important regulator of gene expression, to promote a cancer stem-cell like state and proliferation [35, 36]. Data from Drago-Ferrante et al. demonstrate that miR-29b-1-5p overexpression suppresses self renewal of mammospheres formed by breast cancer cell lines possibly through miR-29b-1-5p mediated reduction in MYC [19]. In a seperate study, WDR26 was shown to stablise the Akt signaling complex to promote tumour cell growth and metastasis [37]. In the Drago-Ferrante paper, they also demonstrated that miR-29b-1-5p is able to repress Akt signalling [19], this could possibly be through its putative regulation with of WDR26. MYC is a major oncogene in many cancers, including in BRCA1 breast tumours, where BRCA1 loss leads to overexpression of MYC contributing to tumourigenes [38]. It is possible that miR-29b-1-5p serves as a redundant repressor of MYC activity through regulation of USP28 and when loss contributes to oncogenesis. Additionally, the miR-29b family was found to target and negatively regulate the EMT regulator NMI, a gatekeeper of an epithelial phenotype, therefore inducing an aggressive mesenchymal phenotype in breast tumours [39]. Furthermore, miR-29b was also found to target a spliced variant of ADAM-12 (ADAM-12L) which was found to possess prognostic and chemopredictive properties in breast cancer [40].Several studies have investigated the utility of miRNAs in stratifying triple negative breast cancer or basal-like tumours. A 4-miRNA signature has been developed to stratify TNBC, particular those patients receiving chemotherapy, however none of the miRNAs identified in this study are amongst those four [41]. A separate group identified several miRNA biomarkers of TNBC, of which miR-16 features prominently [42]. Consistent with our survival data, the authors show that the expression of this miRNA is protective. The low level of overlap between our miRNAs and those already identified as biomarkers for TNBC or basal-like tumours is likely due to the mechanism of discovery. We have utilised developmental signatures to identify miRNAs strongly associated with BRCA1 biology. Dvinge and colleagues support this notion with the finding that miRNAs do have prognostic potential, however when combining miRNA expression signatures with protein coding genes, this potential is far greater [43].We have demonstrated that deletion of Brca1 in the murine mammary gland results in global changes to miRNA expression. Some of these changes in expression are found in BRCA1 mutation carriers, compared to normal breast tissue. We show that BRCA1 influences expression of miR-29b-1-5p in humanbreast cancer cell lines, possibly via promoter binding and influencing transcriptional regulation. Finally, we show that miR-29b-1-5p is a potent biomarker for the stratification of overall survival in basal-like breast cancer. These data highlight the need to understand normal developmental processing and how they might translate to key findings in tumourigenesis and biomarker discovery.
MATERIALS AND METHODS
miRNA-sequencing
All libraries were prepared using the Ion Torrent RNA-Seq v2 Kits, following the manufacturers recommended protocol. A combination of Ion Torrent and Proton sequencing was used with Ion PGM OT2 200 kits, Ion PGM 200 Sequencing Kit v2, and 318 sequencing chips and Ion PI Template OT2 200 kit, Ion PI Sequencing 200 kit, and P1 chips respectively. All kits were used according to the manufacturers specifications. Trimmed reads were mapped against mm10 with bowtie1 with the following parameters (n 0 -m 1 -l 15 -p 2 - S –max).
miRNA-sequencing differential gene expression
For differential gene expression determination Partek Genomis Suite v 6.6 and ANOVA were used, and differentially expressed miRNAs were filtered for significance values < 0.05. Filtering for significance identified 145 miRNAs that were differentially expressed. MiRNA expression values were then mean-centred and hierarchically clustered based on average-linkage and Manhattan distance using Multiple Experiment Viewer [44].
Gene expression
Differential expression of miRNAs in BRCA1 tumours was obtained from the Tanic et al. dataset [17]. Analysis of miRNA expression in non-familial breast tumours was done using the METABRIC cohort of breast tumours. Gene expression array log2 intensities were mean-centred and hierarchically clustered as above. Expression of miRNA and BRCA1 in epithelial cells of the human breast was obtained from Hirst et al. and normalised via mean-centring and Pearson’s correlation coefficients to BRCA1 expression shown in the figure [18]. It is important to note that this dataset doesn’t distinguish 3p and 5p miRNAs. Gene expression across the developmental stages of the murine mammary gland was extracted from GSE15054 and was normliased as above.
ChIP-seq analysis
BRCA1 and RNA Polymerase II Serine 2 Phosphorylation ChIP-seq data was sourced from GSE45715. This study used two separate BRCA1 anitbodies, a polyclonal (sc-646) and monoclonal (sc-6954) both from Santa Cruz. Data was mapped to hg19 using BOWTIE and ChIP-seq peaks called with MACS14 [45, 46]. For binding associated with miRNA promoter in the MCF10A cell line, BRCA1 binding within 15 kb upstream or at the nearest Histone 3 lysine 4 tri-methylation (H3K4me3 mark of promoter elements) was considered relevant. To reduce false positives when looking within the 15 kb upstream only binding above background was considered significant. The BRCA1 monoclonal antibody should bind every 15 kb within the genome and the polyconal 85 kb, based on 203894 and 36655 peaks respectively across the 2.9 × 109 genome size.
Tissue culture
The HCC1937breast cancer cell line was grown in RPMI-1640 supplemented with 10% Fetal Bovine Serum, 1 mM Sodium Pyruvate, 1:100 Penicillin/Streptomycin (Thermo Fisher Scientific) and 10 mM HEPES (Sigma-Aldrich). HCC1937+BRCA1 were sourced from Deans and McArthur 2004 [47].
qRT-PCR
RNA was extracted from HCC1937 cells using Trizol and phenol-chloroform extraction. cDNA was produced using Superscript III following the manufacturers protocol. qRT-PCR was performed with the Qiagen miScript SYBR based system. Primers for miRNA expression were, mm-miR-206-3p, hsa-miR-30b-5p, hsa-miR-744-5p, hsa-miR-664-3p, hsa-miR-16-5p, hsa-miR-485-3p, hsa-miR-34b-5p, hsa-miR-542-3p, hsa-miR-29b-1-5p, hsa-miR-29b-3p, hsa-miR-221, and RNU6b, sequences and catalogue numbers listed in Supplementary Table 4. Human miRNA primers were used when mouse were not available, miRNAs sequence is conserved between species. BRCA1 expression was performed using Taqman reagents, following the manufacturers protocol, probes BRCA1 (HS01556193_M1) and RPLP0 (HS99999902_M1).
Tumour survival analysis
Expression and clinical annotations were sourced from METABRIC [43, 48]. MedCalc was used to analyse association of miRNA expression with clinical outcome. For assignment of high and low expression groups, receiver operator curves (ROC) were employed to find the optimal expression cutoff for survival analysis. Clinical markers were divided into groups as indicated in Table 2, size (T1 = £20 mm, T2 = 20–50 mm, T3 = ≥50 mm). Univariate Cox-proportional hazards ratios were determined in MedCalc, following by a Multivariate Cox-proportional hazard test using a stepwise model. Kaplan-Meier surival analysis for TNBC from the METABRIC [43] and TCGA [49] was performed using the online tol Kaplan-Meier Plotter [50] using the “Auto select best cutoff” feature and selecting for “Molecular subtype:” TNBC (n = 300). METABRIC survival data was capped at 15 years and TCGA at 10 years.
miRNA target prediction
The mmmRNA [51] database was used to predict human mRNA targets of miR-29b-1-5p. This database combines predictions from four databases on experimental validation of miRNA targets and nine databases on predicted targets. Supplementary Table 3 contains the full list of targets produced by this database.
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