Abstract
Background:
Ataxia telangiectasia mutated (ATM) is a kinase that has a central role in the maintenance of genomic integrity by activating cell cycle checkpoints and promoting repair of DNA double-strand breaks (DSB). In breast cancer, a low level of ATM was correlated with poor outcome; however, the molecular mechanism of this downregulation is still unclear.
Methods:
We used qRT–PCR assay to quantify mRNA levels of ATM gene in 454 breast tumours from patients with known clinical/pathological status and outcome; reverse phase protein arrays (RPPA) were used to assess the levels of ATM and 14 proteins in 233 breast tumours.
Results:
ATM mRNA was associated with poor metastasis-free survival (MFS) (P=0.00012) on univariate analysis. ATM mRNA and protein levels were positively correlated (P=0.00040). A low level of ATM protein was correlated with poorer MFS (P=0.000025). ATM expression at mRNA or protein levels are independent prognostic factors on multivariate analysis (P=0.00046 and P=0.00037, respectively). The ATM protein level was positively correlated with the levels of six proteins of the DSB repair pathway: H2AX (P<0.0000001), XRCC5 (P<0.0000001), NBN (P<0.0000001), Mre11 (P=0.0000029), Rad50 (P=0.0064), and TP53BP1 (P=0.026), but not with proteins involved in other pathways that are altered in cancer. Low expression of ATM protein was significantly associated with high miR-203 expression (P=0.011).
Conclusion:
We confirmed that ATM expression is an independent prognostic marker at both RNA and protein levels. We showed that alteration of ATM is involved in dysregulation of the DSB repair pathway. Finally, miR-203 may be responsible for downregulation of ATM in breast cancers.
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Main
Ataxia telangiectasia mutated (ATM) is a tumour-suppressor gene encoding a serine/threonine kinase that has an essential role in the DNA double-strand break (DSB). ATM transduces a DSB repair signal to downstream effector machinery by phosphorylating critical protein substrates (Hu et al, 2010). ATM also has a role in cell cycle arrest, apoptosis and senescence, in order to prevent genomic instability (Stagni et al, 2014).
Germline mutations in ATM are responsible for an autosomal recessive disease, ataxia-telangiectasia, characterised by progressive neurodegeneration, telangiectasia, immunodeficiency, thymic and gonadal atrophy, marked predisposition to malignancies and acute sensitivity to ionising radiation (Shiloh and Ziv, 2013).
ATM is also a breast cancer susceptibility gene with low penetrance and low frequency. The evidence for an increased risk of breast cancer is derived from carriers of heterozygous ATM mutations (Thompson et al, 2005; Renwick et al, 2006).
ATM transcript downregulation has been reported in gastric, pancreatic, colorectal, laryngeal and pharyngeal cancers and has been described as a poor prognostic factor (Grabsch et al, 2006; Lee et al, 2011; Beggs et al, 2012; Kim et al, 2014).
Genomic alterations of ATM gene have only been observed in rare cases (3–5%) of breast tumours (The Cancer Genome Atlas Network, 2012). ATM expression has been investigated in breast cancer but rarely in large cohorts. Downregulation of ATM has been described at mRNA and protein levels (Ye et al, 2007; Tommiska et al, 2008; Salimi et al, 2012; Bueno et al, 2014). ATM mRNA underexpression has been correlated with poor prognosis (Ye et al, 2007), and ATM protein underexpression has recently been described as an independent prognostic factor (Bueno et al, 2014). Contradictory associations between ATM downregulation and classical clinicopathological parameters have been reported in these studies.
The molecular mechanisms involved in ATM deregulation in breast cancers are still unclear. Somatic mutations of the ATM gene are found in only about 3% of breast cancers (Cerami et al, 2012; Gao et al, 2013) and ATM epigenetic dysregulation mediated by CpG island methylation has been studied but with discordant results (Vo et al, 2004; Treilleux et al, 2007; Flanagan et al, 2009; Pal et al, 2010). ATM gene deletion could be one mechanism involved, as loss of the 11q22-q23 region containing ATM gene is fairly frequent (The Cancer Genome Atlas Network, 2012). A posttranscriptional ATM regulation mechanism mediated by several microRNAs has also been reported in various cancers (Ng et al, 2010; Yan et al, 2010; Song et al, 2011; Lin et al, 2012; Bisso et al, 2013; Di Francesco et al, 2013; Guo et al, 2013; Mansour et al, 2013; Guo et al, 2014; Liang et al, 2014; Zhang et al, 2014; Zhou et al, 2014).
In order to investigate whether variations in the expression of ATM gene are associated with classical pathological parameters and outcome, we assessed ATM mRNA expression in 454 unilateral invasive breast tumours, using real-time quantitative reverse-transcription PCR (qRT–PCR) and ATM protein levels by reverse-phase protein arrays (RPPA) in 233 breast tumours. In addition, we determined the correlation between ATM dysregulation and 17 candidate proteins involved in various cancer pathways as well as 12 candidate miRNAs putatively involved in the posttranscriptional regulation of ATM.
Material and Methods
Patients and samples
Samples of 454 primary unilateral invasive primary breast tumours excised from women managed at Curie Institute—René Huguenin Hospital (Saint-Cloud, France) from 1978 to 2008 have been analysed. The samples were immediately stored in liquid nitrogen until mRNA and protein extraction. Tumour samples were considered suitable for our study if the proportion of tumour cells exceeded 70%.
All patients (mean age 61.7 years, range 31–91 years) met the following criteria: primary unilateral nonmetastatic breast carcinoma for which complete clinical, histological and biological data were available; no radiotherapy or chemotherapy before surgery; and full follow-up at Curie Institute—René Huguenin Hospital.
Treatment consisted of modified radical mastectomy in 291 cases (64.1%) and breast-conserving surgery plus locoregional radiotherapy in 163 cases (35.9%). The patients had a physical examination and routine chest radiography every 3 months for 2 years, then annually. Mammograms were done annually. Adjuvant therapy was administered to 367 patients, consisting of chemotherapy alone in 89 cases, hormone therapy alone in 176 cases and both treatments in 102 cases. The histological type and the number of positive axillary nodes were established at the time of surgery. The malignancy of infiltrating carcinomas was scored according to Scarff–Bloom–Richardson’s (SBR) histoprognostic system.
Hormone receptor (HR) (oestrogen receptor (ERα), progesterone receptor (PR)) and human epidermal growth factor receptor 2 (ERBB2) status were determined at the protein level by using biochemical methods (dextran-coated charcoal method, enzyme immunoassay or immunohistochemistry) and confirmed by real-time quantitative RT–PCR assays (Bieche et al, 1999, 2001a).
The population was divided into four groups according to HR (ERα and PR) and ERBB2 status, as follows: two luminal subtypes (HR+ (ERα+ or PR+)/ERBB2+ (n=54)) and (HR+ (ERα+ or PR+)/ERBB2− (n=289)); an ERBB2+ subtype (HR− (ERα- and PR−)/ERBB2+ (n=43)) and a triple-negative subtype (HR− (ERα− and PR−)/ERBB2− (n=68)). Standard prognostic factors are shown in Supplementary Table S1.
The median follow-up is 9.5 years (range 5 months to 33 years); 174 patients had a metastasis.
Ten specimens of adjacent normal breast tissue from breast cancer patients (n=4) or normal breast tissue from women undergoing cosmetic breast surgery (n=6) were used as sources of normal mRNA (Finak et al, 2006).
Real-time qRT–PCR for ATM expression
Quantitative values were obtained from the cycle number (Ct value) at which the increase in the fluorescence signal associated with exponential growth of PCR products started to be detected by the laser detector of the ABI Prism 7900 sequence detection system (Perkin–Elmer Applied Biosystems, Foster City, CA, USA), using the PE Biosystems analysis software (Perkin Elmer Applied Biosystems) according to the manufacturer’s manuals.
The precise amount of total mRNA added to each reaction mix (based on optical density) and its quality (i.e., lack of extensive degradation) are both difficult to assess. Therefore we also quantified transcripts of the TBP gene (Genbank accession NM_003194) encoding the TATA box-binding protein (a component of the DNA-binding protein complex TFIID) as an endogenous RNA control and normalised each sample on the basis of its TBP content. We selected TBP as an endogenous control, because the prevalence of its transcripts is moderate, and because there are no known TBP retropseudogenes (retropseudogenes lead to coamplification of contaminating genomic DNA and thus interfere with RT–PCR, despite the use of primers in separate exons) (Bieche et al, 1999).
Results are expressed as N-fold differences in ATM gene expression relative to the TBP gene and termed ‘NATM’ were determined as NATM=2ΔCtsample, where the ΔCt value of the sample was determined by subtracting the Ct value of the ATM gene from the Ct value of the TBP gene.
The NATM values of the samples were subsequently normalised such that the median of the NATM values for the 10 normal breast tissues was 1.
In addition to TBP, we previously used a second endogenous control, the RPLP0 gene, (also known as 36B4) which encodes human acidic ribosomal phosphoprotein P0, in a subgroup of our large series of breast tumour RNAs. Each sample was normalised on the basis of its TBP or RPLPO content. Similar results were obtained with the two endogenous controls for various candidate target gene expressions (Bieche et al, 2004). Then we only used TBP as an endogenous control.
The primers for TBP and ATM genes were chosen with the assistance of the Oligo 6.0 program (National Biosciences, Plymouth, MN, USA). We scanned the dbEST and nr databases to confirm the total gene specificity of the nucleotide sequences chosen for the primers and the absence of single-nucleotide polymorphisms. The nucleotide sequences of the primers used were as follows: ATM-U (5′-CCAGCTGTGCAGCGAACAAT-3′) and ATM-L (5′-TCTAAGCACGTTTCTGCTAACCAGT-3′) for ATM gene (PCR product of 91 bp), and TBP-U (5′-TGCACAGGAGCCAAGAGTGAA-3′) and TBP-L (5′-CACATCACAGCTCCCCACCA-3′) for TBP gene (PCR product of 132 bp). To avoid amplification of contaminating genomic DNA, one of the two primers was placed at the junction between two exons. Agarose gel electrophoresis was used to verify the specificity of PCR amplicons. The conditions of total RNA extraction, cDNA synthesis and PCR were as previously described (Bieche et al, 2001b).
miRNAs expression analysis
MicroRNAs were isolated with the RNA extraction procedure used for the protein-coding transcripts (total RNA extraction). Reverse transcription was performed with the QIAGEN miScript Reverse Transcription Kit, according to the manufacturer’s protocol (QIAGEN, GmbH, Hilden, Germany). Specific miRNAs were quantified by real-time PCR with the QIAGEN miScript SYBR Green PCR Kit (QIAGEN). The small nucleolar RNU44 was used as an internal control. The expression of miR-18a, miR-26a, miR-26b, miR-27a, miR-100, miR-101, miR-106a, miR-181a2, miR-181b1, miR-203, miR-223 and miR-421 was subsequently analysed in 30 samples (15 with low level and 15 with high level of ATM protein). The relative expression level of each miRNA, expressed as N-fold difference in target miRNA expression relative to RNU44, and termed ‘Ntarget’, was calculated as follows: Ntarget=2ΔCt. The ΔCt value of a given sample was determined by subtracting the Ct value of the target miRNA from the Ct value of RNU44.The Ntarget values of the samples were subsequently normalised so that the median Ntarget value of samples with low level of ATM protein was 1.
RPPA
Reverse phase protein array (RPPA) technology is a miniaturised ‘antigen-down’ or ‘dot-blot’ immunoassay suitable for quantifying the relative, semi-quantitative or quantitative abundance of total protein levels and posttranslational modifications across a variety of biological samples (Akbani et al, 2014).
Samples were disrupted in Laemmli buffer (50 mM Tris pH=6.8, 2% SDS, 5% glycerol, 2 mM DTT, 2.5 mM EDTA, 2.5 mM EGTA, 1 × HALT Phosphatase inhibitor (Perbio 78420), Protease inhibitor cocktail complete MINI EDTA-free (Roche 1836170, 1 tablet/10 ml), 4 mM Na3VO4 and 20 mM NaF) qsp 5 ml H2O, using a TissueLyser (Qiagen) and two 5-mm stainless beads per sample. Extracts were then boiled for 10 min at 100 °C, passed through a fine needle to reduce viscosity and centrifuged 15 min at 13 000 r.p.m. The supernatant was harvested and stored at −80 °C. Protein concentration was determined (Pierce BCA Reducing Agent Compatible Kit, Pierce, Rockford, IL, USA, ref 23252). Samples were deposited onto nitrocellulose-covered slides (Fast slides, Maine Manufacturing, Sanford, ME, USA) using a dedicated arrayer (2470 arrayer, Aushon Biosystems, Billerica, MA, USA). Five serial dilutions, ranging from 1000 to 62.5 μg ml−1, and two technical replicates per dilution were printed for each sample. Arrays were labelled with specific antibodies recognising studied proteins (see Supplementary Table S2 for the list of antibody references) or without primary antibody (negative control), using an Autostainer Plus (Dako, Glostrup, Denmark). Briefly, slides were incubated with avidin, biotin and peroxydase blocking reagents (Dako) before saturation with TBS containing 0.1% Tween-20 and 5% BSA (TBST-BSA). Slides were then probed overnight at 4 °C with primary antibodies diluted in TBST-BSA. After washes with TBST, arrays were probed with horseradish peroxidase-coupled secondary antibodies (Jackson ImmunoResearch Laboratories, Newmarket, UK) diluted in TBST-BSA for 1 h at RT. To amplify the signal, slides were incubated with Bio-Rad Amplification Reagent (Bio-Rad Laboratories, Hercules, CA, USA) for 15 min at RT. The arrays were washed with TBST, probed with Alexa647-Streptavidin (Molecular Probes, Life Technologies, Grand Island, NY, USA) diluted in TBST-BSA for 1 h at RT and washed again in TBST. For staining of total proteins, arrays were incubated 15 min in 7% acetic acid and 10% methanol, rinsed twice in water, incubated 10 min in Sypro Ruby (Life Technologies, Grand Island, NY, USA) and rinsed again. The processed slides were dried by centrifugation and scanned using a GenePix 4000B microarray scanner (Molecular Devices, Sunnyvale, CA, USA). Spot intensity was determined with the MicroVigene software (VigeneTech Inc., Carlisle, MA, USA). All primary antibodies used in RPPA have been previously tested by western blotting to assess their specificity for the protein of interest.
Raw data were normalised using Normacurve (Troncale et al, 2012), which normalises for fluorescent background per spot, a total protein stain and potential spatial bias on the slide. Next, each RPPA slide was median centred and scaled (divided by median absolute deviation). We then corrected for remaining sample loading effects individually for each array by correcting the dependency of the data for individual arrays on the median value of each sample over all arrays using a linear regression.
Statistical analysis
The distributions of ATM mRNA and protein, other target protein and miRNA levels were characterised by their median values and ranges. Relationships between ATM mRNA and protein levels and other target genes and miRNA levels, and between mRNA and protein levels and clinical parameters, were identified using nonparametric tests, the Kruskal–Wallis H test (relationship between one quantitative parameter and ⩾2 qualitative parameters) and the Spearman rank correlation test (relation between two quantitative parameters). Differences were considered significant at confidence levels >95% (P<0.05).
Metastasis-free survival (MFS) was determined as the interval between initial diagnosis and detection of the first metastasis.
To visualise the efficacy of a molecular marker (ATM mRNA and protein levels) to discriminate between two populations (patients who developed/did not develop metastases) in the absence of an arbitrary cutoff value, data were summarised in a ROC (receiver operating characteristic) curve (Hanley and McNeil, 1982). The AUC (area under curve) was calculated as a single measure to discriminate efficacy. Survival distributions were estimated by the Kaplan–Meier method, and the significance of differences between survival rates were ascertained with the log-rank test.
The Cox proportional hazards regression model was used to assess prognostic significance, and the results are presented as hazard ratios and 95% confidence intervals (CIs).
Results
Relationship between ATM mRNA expression in breast tumours and classical clinicopathological parameters and patient outcome
ATM mRNA expression level was assessed in the whole series of 454 samples (Supplementary Table S1) and in 10 normal breast tissue samples.
ATM mRNA expression showed no significant difference between the two groups of normal breast tissue controls: the four adjacent normal breast tissues from breast cancer patients vs the six normal breast tissues from women undergoing cosmetic breast surgery.
ATM mRNA expression level was weakly associated with three classical predictive factors: age (P=0.042), SBR histological grade (P=0.015), and macroscopic tumour size (P=0.022) (Table 1). Using HR (ERα and PR) and ERBB2 status, we subdivided our total population (n=454) into four subgroups: HR+/ERBB2+ (n=54), HR+/ERBB2− (n=289), HR−/ERBB2+ (n=43), and HR−/ERBB2− (n=68). No correlation was observed between the subgroups and ATM mRNA levels (Table 1). We also tested the possible relationship between ATM and Ki67 expression, also determined for the same tumours. No correlation was observed between ATM and Ki67 mRNA levels (Spearman test: r=−0.055, P=0.24), suggesting no link between ATM expression and cell proliferation.
We assessed the impact of variations of ATM mRNA levels on patient outcome by studying survival curves. AUC analyses were performed to identify a cut point, which divides the cohort into relevant ATM expression subgroups. Compared with tumours expressing high ATM mRNA levels (>1.30, n=123, 27.1%), tumours with low ATM mRNA expression (⩽1.30, n=331, 72.9%) were significantly associated with poor MFS (P=0.00012; Figure 1A). Patients with lower ATM expression had a 5-year MFS and a 10-year MFS of 70.4±2.5% and 59.0±2.8%, respectively, and patients with higher ATM expression had a 5-year MFS and a 10-year MFS of 85.7±3.2% and 78.7±3.9%, respectively.
Multivariate analysis using a Cox proportional hazards model assessed the predictive value for MFS of the parameters found to be significant on univariate analysis, that is, SBR histological grade, lymph node status, macroscopic tumour size, PR status (Supplementary Table S1) and ATM mRNA level (Figure 1A). The prognostic significance of lymph node status (P=0.000023), macroscopic tumour size (P=0.0026), PR status (P=0.004) and ATM mRNA level (P=0.00046) persisted (Table 2A). This analysis confirmed that the ATM mRNA level is an independent prognostic factor.
As ATM is a minor susceptibility gene for breast cancer, we wondered whether ATM alteration was observed more frequently among young patients in our breast cancer series. We observed a significant difference of ATM mRNA level between patients age <37 years (n=11; median=0.55) and breast cancer patients aged >37 years (n=443; median=0.98) (P=0.020), and a less significant difference was observed at the 50-year cutoff (P=0.042; Table 1).
Relationship between ATM protein level in breast tumours and classical clinicopathological parameters and patient outcome
We assessed the ATM protein level using RPPA in 233 tumour samples, including 144 of the 454 samples on which the mRNA expression level was also determined. A positive correlation was observed between ATM mRNA level and ATM protein level (Spearman test: r=+0.297, P=0.00040), supporting our data concerning ATM mRNA levels and also suggesting that dysregulation of ATM in breast cancer is in part transcriptional.
The characteristics of the 233 tumours tested by RPPA are shown in Supplementary Table S3. ERBB2 status was available for only 152 of these old samples, and these samples therefore could not be subdivided into HR/ERBB2 subgroups. No significant correlation was observed between ATM protein level and classical prognostic factors (Supplementary Table S4). AUC analyses identified a cut point that divided the cohort into relevant ATM protein level subgroups. The log-rank test showed a highly significant difference in MFS between patients with low (⩽0.81, n=62, 26.6%) and high (>0.81, n=171, 73.4%) ATM protein levels (P=0.000025; Figure 1B). Patients with lower ATM expression had a poorer prognosis (5-year MFS: 48.4±6.3%; 10-year MFS: 41.7±6.3%) than those with higher ATM expression (5-year MFS: 71.8±3.5%; 10-year MFS: 65.2±3.7%). Multivariate analysis showed that ATM protein level, like the ATM mRNA level, was an independent prognostic factor (P=0.00037; Table 2B).
Relationship between ATM protein level and other proteins of the DSB repair pathway
In order to study the possible implication of ATM in various well-known cancer pathways, we also used RPPA to study 13 additional proteins involved in the DSB repair pathway (H2AX, XRCC5, NBN, Mre11, Rad50 and TP53BP1), the epithelial–mesenchymal transition pathway (E-cadherin and Vimentin), two oncogenic pathways (p44/42-MAPK, P-p44/42-MAPK, AKT, P-AKT, mTOR, P-mTOR, MEK1/2 and P-MEK1/2) and cell proliferation (Ki67).
Significant correlations were observed only with proteins of the DSB repair pathway but not with proteins of the other classically dysregulated cancer pathways, as ATM was positively correlated with H2AX (P<0.0000001), XRCC5 (P<0.0000001), NBN (P<0.0000001), Mre11 (P=0.0000029), Rad50 (P=0.0064) and TP53BP1 (P=0.026) (Table 3).
As for ATM, the prognostic values of the DSB repair pathway proteins were also evaluated in this series of 233 breast tumour proteins (Table 3). No prognostic marker more discriminant than ATM (P=0.000025) was identified, highlighting the preponderant role of ATM in this pathway.
Relationship between ATM protein level and the expression status of 12 miRNAs
To investigate whether dysregulation of the ATM gene was triggered by miRNAs, we tested the possible negative correlation between ATM protein level and 12 candidate miRNAs levels described in the literature as posttranscriptional regulators of the ATM gene (Ng et al, 2010; Yan et al, 2010; Song et al, 2011; Lin et al, 2012; Bisso et al, 2013; Di Francesco et al, 2013; Guo et al, 2013, 2014; Mansour et al, 2013; Liang et al, 2014; Zhang et al, 2014; Zhou et al, 2014). MiR-18a, miR-26a, miR-26b, miR-27a, miR-100, miR-101, miR-106a, miR-181a2, miR-181b1, miR-203, miR-223 and miR-421 levels were analysed in 15 low ATM-expressing (marked low levels of both mRNA and protein) and 15 high ATM-expressing (marked high levels of both mRNA and protein) breast tumours (Table 4). A negative correlation was observed only between ATM and miR-203 expression status, as the median miR-203 value was 0.41 in high ATM-expressing breast tumours compared with the normalised value of 1 in low ATM-expressing breast tumours (P=0.011). It should be noted that three miRNAs (miR-26a, miR-26b and miR-101) showed a positive correlation with the ATM protein level.
Discussion
In breast cancer, ATM downregulation has been described at both the mRNA and protein levels and has been associated with poor outcome. In order to confirm the results of previous studies in our large cohort of breast cancers, we tested 10 normal breast tissue RNAs and 454 unilateral invasive primary breast tumour RNAs, using the qRT–PCR method.
A significant correlation was observed between a low level of ATM mRNA and histopathological grade III tumours (P=0.015) and high macroscopic tumour size (P=0.022), suggesting that a low level of ATM has a role in breast tumour aggressiveness and confirming the tumour-suppressor role of ATM.
It should be noted that ATM gene is a breast cancer susceptibility gene associated with moderate risk (Thompson et al, 2005; Renwick et al, 2006). We observed a higher frequency of ATM mRNA dysregulation in young breast cancer patients, supporting the idea that ATM dysregulation is a major molecular step in tumorigenesis in young breast cancer patients.
Survival analysis revealed that patients with low ATM mRNA levels had shorter MFS (P=0.00012), as previously described (Ye et al, 2007). Multivariate analysis showed that ATM mRNA status was an independent prognostic factor (P=0.00046). The positive correlation (P=0.00040) observed between ATM mRNA and ATM protein levels assessed by RPPA in 233 breast tumours indicated that regulation of ATM is in part transcriptional. A low level of ATM protein was correlated with poor outcome (P=0.000025). ATM protein level was also an independent prognostic factor (P=0.00037), as described in a recent study (Bueno et al, 2014).
These results are in agreement with studies describing downregulation of ATM mRNA (Ye et al, 2007; Salimi et al, 2012; Bueno et al, 2014) or protein (Tommiska et al, 2008; Bueno et al, 2014) in breast cancer. We also demonstrated the independent prognostic value of ATM mRNA level.
The mechanisms of dysregulation of ATM in breast cancers have not been fully elucidated. Posttranscriptional regulation of ATM mediated by miRNAs has been described in many cancers, including breast cancers. In order to investigate this hypothesis, we selected 12 miRNAs with luciferase studies from the literature, demonstrating their activity on ATM mRNA (Ng et al, 2010; Yan et al, 2010; Song et al, 2011; Lin et al, 2012; Bisso et al, 2013; Di Francesco et al, 2013; Guo et al, 2013; Mansour et al, 2013; Guo et al, 2014; Liang et al, 2014; Zhang et al, 2014; Zhou et al, 2014). A negative correlation was observed only between miR-203 level and ATM protein level (P=0.011). Regulation of ATM by miR-203 has only been described in colorectal cancer. Our results suggest that miR-203 could be partly involved in dysregulation of ATM in breast cancers. Further investigations are necessary to demonstrate the interaction between miR-203 and ATM protein level.
ATM is widely known to be a central player in cell proliferation and DNA-damage response (DDR). RPPA assay was used to study correlations between ATM protein level and other proteins of the DSB repair pathway, cell proliferation pathway and other pathways (EMT, MAPK and AKT/mTOR). Our results showed a relationship between ATM protein dysregulation and six other proteins of the DSB repair pathway, that is, H2AX, XRCC5, NBN, Mre11, Rad50 and TP53BP1. Conversely, no correlation was observed between ATM expression and proliferation, as demonstrated by Ki67 at mRNA and protein levels. These results confirm that ATM dysregulation has a major role in DSB repair pathway defect but not in cell proliferation. Our results suggest that, in addition to the well-known fact that reduction of ATM levels acts by altering the formation of DSB repair foci, ATM expression seems also linked to expression levels of several major actors of the DSB repair pathway. This DNA repair defect may be associated with homologous recombination DNA repair defect called ‘BRCAness’, particularly concerning the sensitivity to PARP inhibitors. PARP inhibitors have been shown to be highly lethal to tumour cells with deficiencies of DDR factors, such as BRCA1 or BRCA2. Their activity is based on the principle of synthetic lethality, which consists of targeting two separate molecular pathways that are nonlethal when disrupted individually but are lethal when inhibited simultaneously. The sensitivity of cancers with ATM downregulation to PARP inhibitors has been studied in breast and other cancers, with promising results (Williamson et al, 2010; Gilardini Montani et al, 2013; Kubota et al, 2014).
In conclusion, our results show that ATM is an outstanding prognostic marker in breast cancer and that ATM downregulation (both at the transcriptional and posttranscriptionnal levels) leads to dysregulation of the DSB repair pathway, which is probably involved in breast tumorigenesis. This could predict a favourable response to treatment with PARP inhibitors.
Change history
17 March 2015
This paper was modified 12 months after initial publication to switch to Creative Commons licence terms, as noted at publication
References
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Acknowledgements
We thank the staff of Institut Curie—René Huguenin Hospital for their assistance in specimen collection and patient care. We thank Aurélie Barbet, Caroline Lecerf and Floriane Bard for performing the RPPA experiments. This work was supported by the Comité Départemental des Hauts-de-Seine de la Ligue Nationale Contre le Cancer and the Association pour la Recherche en Cancérologie de Saint-Cloud (ARCS). The RPPA platform is supported by the Cancéropôle Ile-de-France.
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Rondeau, S., Vacher, S., De Koning, L. et al. ATM has a major role in the double-strand break repair pathway dysregulation in sporadic breast carcinomas and is an independent prognostic marker at both mRNA and protein levels. Br J Cancer 112, 1059–1066 (2015). https://doi.org/10.1038/bjc.2015.60
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DOI: https://doi.org/10.1038/bjc.2015.60
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