Skip to main content
  • Research article
  • Open access
  • Published:

NF-kappa B genes have a major role in Inflammatory Breast Cancer

Abstract

Background

IBC (Inflammatory Breast cancer) is a rare form of breast cancer with a particular phenotype. New molecular targets are needed to improve the treatment of this rapidly fatal disease. Given the role of NF-κB-related genes in cell proliferation, invasiveness, angiogenesis and inflammation, we postulated that they might be deregulated in IBC.

Methods

We measured the mRNA expression levels of 60 NF-κB-related genes by using real-time quantitative RT-PCR in a well-defined series of 35 IBCs, by comparison with 22 stage IIB and III non inflammatory breast cancers. Twenty-four distant metastases of breast cancer served as "poor prognosis" breast tumor controls.

Results

Thirty-five (58%) of the 60 NF-κB-related genes were significantly upregulated in IBC compared with non IBC. The upregulated genes were NF-κB genes (NFKB1, RELA, IKBKG, NFKBIB, NFKB2, REL, CHUK), apoptosis genes (MCL1L, TNFAIP3/A20, GADD45B, FASLG, MCL1S, IER3L, TNFRSF10B/TRAILR2), immune response genes (CD40, CD48, TNFSF11/RANKL, TNFRSF11A/RANK, CCL2/MCP-1, CD40LG, IL15, GBP1), proliferation genes (CCND2, CCND3, CSF1R, CSF1, SOD2), tumor-promoting genes (CXCL12, SELE, TNC, VCAM1, ICAM1, PLAU/UPA) or angiogenesis genes (PTGS2/COX2, CXCL1/GRO1). Only two of these 35 genes (PTGS2/COX2 and CXCL1/GRO1)were also upregulated in breast cancer metastases. We identified a five-gene molecular signature that matched patient outcomes, consisting of IL8 and VEGF plus three NF-κB-unrelated genes that we had previously identified as prognostic markers in the same series of IBC.

Conclusion

The NF-κB pathway appears to play a major role in IBC, possibly contributing to the unusual phenotype and aggressiveness of this form of breast cancer. Some upregulated NF-κB-related genes might serve as novel therapeutic targets in IBC.

Peer Review reports

Background

The main features distinguishing IBC (Inflammatory Breast Cancer) from other forms of primary breast cancer are a unique phenotype, which includes rapidly progressive breast inflammation, and an extreme tendency to metastasize. The three-year survival rate is about 40%, compared with 85% in non inflammatory breast cancer [1]. The molecular mechanisms underlying these characteristics are largely unknown, but their identification could help with diagnosis, patient stratification and drug development.

We and others have described several molecular alterations in IBC, such as frequent hormone receptor negativity, TP53 mutations and HER2/neu amplification [25]. In vitro and in vivo studies have implicated RhoC, MUC1, E-cadherin and LIBC/WISP3 in the pathogenesis of IBC. The expression of some of these genes is altered in human IBC tumors [6]. However, none of these genetic alterations is specific to the particular phenotype of IBC.

The advent of novel analytical methods such as DNA microarrays has helped to identify molecular signatures for various malignancies. In non inflammatory breast cancer, DNA microarray-based studies have distinguished tumor subclasses with distinct prognoses [7, 8]. Few DNA microarray-based studies have been performed in IBC [911]. One such study identified a set of 109 genes whose expression discriminated 37 IBCs from 44 non IBCs [9]. These 109 genes, some of which were NF-κB-related, were mainly associated with signal transduction, cell motility, invasion, angiogenesis and local inflammatory processes. Another genome-wide expression profiling study comparing 16 IBCs with 18 non stage-matched non IBCs identified a large number of overexpressed NF-κB-related genes [10]. Using real-time RT-PCR, immunohistochemistry and NF-κB-DNA-binding assays, the same authors recently confirmed the contribution of some of these NF-κB-related genes in IBC [12]. In a previous study of IBC, in which we analyzed the expression of 538 cancer genes by using real-time RT-PCR, we also observed abnormal expression of several NF-κB-associated genes [13].

NF-κB-regulated genes are involved in invasiveness, proliferation, angiogenesis, lymphangiogenesis and inflammation, and are therefore good candidates for explaining the particular characteristics of IBC [14, 15]. Increasing evidence suggests that NF-κB-associated pathways are dysregulated in numerous malignancies, including breast cancer [1620].

To confirm the role of NF-κB target genes in IBC tumorigenesis, we focused on 60 key genes involved in the NF-κB pathway [14, 15, 21]. We chose real-time quantitative RT-PCR to measure the expression levels of these 60 genes in a well-characterized series of 35 human IBC samples relative to a series of 22 non IBC tumors and 24 distant metastases of breast cancer ("poor prognosis" controls).

Methods

Patients and samples

The IBC samples were surgical biopsy specimens obtained from 35 women treated at Saint-Louis Hospital, Paris, France, between 1988 and 1995. IBC was diagnosed on the basis of rapidly progressive signs such as localized or generalized induration, redness and edema of the breast (stage T4d in the 1977 UICC classification). The 35 IBCs were also classified using a staging system named 'Poussee Evolutive' (PEV) developed by Gustave-Roussy investigators in an attempt to refine prognostication in IBC. This staging system takes into consideration aggressiveness of the tumor and signs of inflammation [22]. Using this system, both PEV2 and PEV3 are consistent with IBC. In 13 patients the entire affected breast was inflammatory (stage PEV3), while in 22 patients the inflammation was localized (stage PEV2).

All biopsies were performed before treatment, and infiltrating carcinoma was documented histologically in every case. All the patients underwent first-line high-dose anthracycline-based chemotherapy followed by local treatment. At the time of this analysis, 26 patients had relapsed and 9 remained disease-free. Each patient gave written informed consent. The Local Ethical Committee approved this study.

As "non IBC" controls, we used specimens of 22 non inflammatory locally advanced breast cancers (LABCs), of which 6 were stage IIb and 16 were non inflammatory stage III. These 22 non IBC controls were all high-grade invasive ductal carcinomas (Scarff-Bloom-Richardson histopathological grade III). The mRNA levels of the 60 genes in IBCs were expressed relative to those in non IBCs.

As "poor prognosis breast tumor controls" we used biopsies of 24 distant metastases (10 liver, 7 lung, 4 skin, 2 ovary and 1 stomach) of non IBCs distinct from the 22 "non IBC" controls.

The tumor samples were flash-frozen in liquid nitrogen and stored at -80°C until RNA extraction. Only tumor samples containing more than 70% of tumor cells were used.

Real-time RT-PCR

The theoretical and practical aspects of real-time quantitative RT-PCR using the ABI Prism 7700 Sequence Detection System (Perkin-Elmer Applied Biosystems) have been described in detail elsewhere [13].

The precise amount of total RNA added to each reaction mix (based on optical density) and its quality (i.e. lack of extensive degradation) are both difficult to assess. We therefore also quantified transcripts of two endogenous RNA control genes involved in two cellular metabolic pathways, namely TBP (Genbank accession NM_003194), which encodes the TATA box-binding protein (a component of the DNA-binding protein complex TFIID), and RPLP0 (NM_001002), which encodes human acidic ribosomal phosphoprotein P0. The results for each sample were normalized on the basis of the corresponding TBP (or RPLPO) mRNA content. We selected TBP as an endogenous control because its transcripts are moderately abundant, and because there are no known TBP retropseudogenes. [Retropseudogenes lead to co-amplification of contaminating genomic DNA and thus interfere with RT-PCR, despite the use of primers in separate exons.] We also selected RPLP0 because its transcripts are more abundant than those of TBP, and because this gene (better known as 36B4) is widely used as an endogenous control for northern blot analysis. Results, expressed as N-fold differences in target gene expression relative to the TBP (or RPLPO) gene, and termed "Ntarget", were determined as Ntarget = 2ΔCt sample where the ΔCt (cycle threshold) value of the sample was determined by subtracting the average Ct value of the target gene from the average Ct value of the TBP (or RPLP0) gene.

The Ntarget values of the samples were subsequently normalized such that the median of the non IBC Ntarget values was 1.

Primers for TBP, RPLP0 and the 60 target genes (see Table 1) were chosen with the assistance of the Oligo 5.0 computer program (National Biosciences, Plymouth, MN).

Table 1 List of the 60 selected genes

We searched the dbEST and nr databases to confirm the total gene specificity of the nucleotide sequences chosen as primers, and the absence of single nucleotide polymorphisms. In particular, the primer pairs were selected to be unique relative to the sequences of closely related family member genes or of the corresponding retropseudogenes. To avoid amplification of contaminating genomic DNA, one of the two primers was placed at the junction between two exons, if possible. In general, amplicons were between 60 and 120 nucleotides long. Gel electrophoresis was used to verify the specificity of PCR amplicons.

For each primer pair we performed no-template control (NTC) and no-reverse-transcriptase control (RT-negative) assays, which produced negligible signals (usually > 40 in Ct values), suggesting that primer-dimer formation and genomic DNA contamination effects were negligible.

The RNA extraction, cDNA synthesis and PCR conditions have been described in detail elsewhere [13].

Statistical analysis

As the mRNA levels did not fit a Gaussian distribution, (a) the mRNA levels in each subgroup of samples were characterized by their median and range rather than their mean and coefficient of variation, and (b) relationships between the molecular markers and clinical and histological parameters were tested with the non parametric Mann-Whitney U test [23].

Hierarchical clustering was done with GeneANOVA software [24].

Results

mRNA expression of the 60 NF-κB-associated genes, ESR1/ERα and MKI67in 35 IBCs and 22 non IBCs

The expression level of the 60 genes was determined individually in 35 IBCs and 22 non IBCs. Very low levels of target gene mRNA, that were detectable but not reliably quantifiable by real-time quantitative RT-PCR (Ct > 32), were observed for 4 (7%) of the 60 genes (IL1A, IL6, IL12B, and CSF2).

Thirty-five of the remaining 56 genes were significantly upregulated in the 35 IBCs relative to the 22 non IBCs (p < 0.05; Table 2). Only one gene, BIRC4/XIAP, was significantly down-regulated in the IBCs.

Table 2 List of the significantly dysregulated NF-KB-related genes in IBCs relative to non IBCs

The 35 upregulated genes included NF-κB genes (NFKB1, RELA, IKBKG, NFKBIB, NFKB2, REL, CHUK) and NF-κB-regulated genes involved in apoptosis (MCL1L, TNFAIP3/A20, GADD45B, FASLG, MCL1S, IER3L, TNFRSF10B/TRAILR2), immune response (CD40, CD48, TNFSF11/RANKL, TNFRSF11A/RANK, CCL2/MCP-1, CD40LG, IL15, GBP1), proliferation (CCND2, CCND3, CSF1R, CSF1, SOD2), tumor progression (CXCL12, SELE, TNC, VCAM1, ICAM1, PLAU/UPA) or angiogenesis (PTGS2/COX2, CXCL1/GRO1).

The expression of most of the 35 genes that were upregulated in IBCs was similar in the metastases and the 22 non IBCs (Table 2). Only two (PTGS2/COX2 and CXCL1/GRO1) of these 35 genes were also upregulated in the metastases relative to the 22 non IBCs (Table 2). It is noteworthy that these two genes correspond to the two angiogenesis genes that were significantly upregulated in the 35 IBCs. Finally, six genes (CSF1R, CD48, IKBKG, CD40LG, CSF1, and REL) were slightly down-regulated in the metastases relative to the non IBCs (Table 2).

In the same set of 35 IBCs and 22 non IBCs we also examined the expression of the ESR1/ERα gene and the MKI67 gene, the latter encoding the proliferation-related antigen Ki-67. ESR1/ERα and MKI67 expression was similar in the IBCs and non IBCs, indicating that NF-kB gene upregulation in IBCs occurs in a proliferation- and ERα-independent fashion (Table 2).

The mRNA levels reported in Table 2 (calculated as described in Materials and Methods) show the abundance of the target relative to the endogenous control (TBP), used to normalize the starting amount and quality of total RNA. Similar results were obtained with a second endogenous control, RPLP0 (data not shown).

Identification of a gene expression signature discriminating IBCs from non IBCs

Hierarchical clustering analysis was used to group the 28 most strongly upregulated genes (p < 0.01) on the basis of similarity in the pattern with which their expression varied over the 57 tumors (IBCs and non IBCs). The 28 genes were thus divided into six groups (Figure 1).

Figure 1
figure 1

Dendrogram of the 28 most strongly upregulated genes (p < 0.01) constructed using hierarchical clustering, according to the gene profiling of the 57 IBCs and non IBCs. The 28 genes were categorized into 6 groups. The 6 most strongly upregulated genes (named master gene) within each group are indicated on the right (TNFAIP3/A20, SELE, COX2, CXCL12, CCND3, IER3L). a: Mann-Whitney U Test (see table 2).

We then selected six "master genes", namely TNFAIP3/A20, SELE, COX2, CXCL12, CCND3, and IER3L, corresponding to the most discriminatory genes in each group (based on the p values, cf. Table 2). Hierarchical clustering of the 35 IBC and 22 non IBC samples, based on the expression of these six master genes (see dendrogram in Figure 2) identified two groups of tumor samples, with 96.3% (26/27) of IBCs clustered in one group and 30% (9/30) in the second group (p = 0.0000003). The signature correctly classified 26 of 35 IBCs (74% sensitivity) and 21 of 22 non IBCs (95% specificity).

Figure 2
figure 2

Dendrogram of the 35 IBCs and the 22 non IBC samples, constructed using hierarchical clustering, according to the expression of 6 genes, i.e. TNFAIP3/A20, SELE, COX2, CXCL12, CCND3, and IER3L. This analysis revealed two groups of tumors with 96,3% (26/27) of IBCs clustered in one group and 30% (9/30) in the second group.

mRNA expression of the 56 candidate genes according to IBC relapse status

Twenty-six (74%) of the 35 patients with IBC relapsed, a proportion in keeping with published data [25]. Comparison of the median mRNA levels of the 56 candidate genes between patients who relapsed (n = 26) and patients who did not relapse (n = 9) identified two genes -VEGF (p = 0.048) and IL8 (p = 0.042)- with lower expression in patients who relapsed.

In the same series of IBCs, we had previously identified a three-gene expression profile based on MYCN, EREG, and SHH (genes not involved in the NF-κB pathway) which discriminated cases with poor, intermediate and good outcome [13].

Hierarchical clustering analysis of the 35 IBCs based on a five-gene signature including the three previously identified genes (MYCN, EREG, and SHH) and the two genes identified here (VEGF and IL8) subdivided the patients into three groups with significantly different outcomes (p = 0.009; Figure 3): two groups of patients had very poor outcomes (respectively 100% and 88.9% relapsed), whereas 50% of the patients in the third group were free of relapse at the time of this analysis

Figure 3
figure 3

Dendrogram of 26 IBCs who relapsed (R) and 9 who did not relapse (circled) constructed by hierarchical clustering, according to MYCN/EREG/SHH/IL8/VEGF expression. The percentage of patients who relapsed are indicated on the right.

Discussion

IBC is a poorly understood disease with a dismal prognosis. Diagnosis is based on variously appreciated clinical signs, and prognostic factors are sorely needed. Despite multimodality treatments, the overall outcome of IBC is almost as grim as that of metastatic breast cancer [25, 26]. Identification of a molecular signature might help to improve the diagnosis, as well as the prognostication and targeted therapy of IBC. The specific molecular alterations underlying IBC are largely unknown, owing to the rarity of the disease together with diagnostic uncertainties and the small size of diagnostic samples, which may have hindered past molecular studies. Moreover, previous molecular studies often grouped IBCs together with non inflammatory LABCs, whereas IBC was recently shown to be distinct from other forms of LABC, probably with different underlying molecular alterations [27, 28].

Two major lines of evidence implicate NF-κB-associated pathways in IBC. First, NF-κB target genes are involved in the principal processes that are dysregulated at the clinical and molecular level in IBC, such as inflammation, proliferation and invasiveness [14, 15]. Second, recent DNA microarrays studies of IBC have shown abnormal expression of some NF-κB target genes [9, 10].

Real-time quantitative RT-PCR is complementary to cDNA microarray technology for tumor molecular profiling, being quantitative and also far more precise and reproducible. Moreover, RT-PCR is useful for analyzing weakly expressed genes, such as COX2, CXCL1/GRO1, TNFSF11/RANKL and CD40LG in the present study.

By using RT-PCR to compare the mRNA levels of 538 cancer genes in the same series of IBCs and non IBCs, we previously showed the upregulation of genes that mainly encoded AP1 transcription factors, but also some NF-κB target genes like COX2 and VEGF [13]. As the list of NF-κB-associated genes of interest was very incomplete in this previous study, we thoroughly scrutinized the literature on NF-κB for the present study [14, 15, 21]. A set of 60 major NFKB-related genes was selected for this analysis (Table 1).

The very high proportion (58%) of upregulated NF-κB-associated genes in our series of IBC was not entirely unexpected, given the functional roles of these genes in invasiveness, angiogenesis, inflammation, cell proliferation and survival. In their DNA microarray study, van Laere et al also observed a noteworthy proportion of overexpressed NF-κB target genes [10]. More recently, the same authors confirmed the involvement of some of these genes in IBC [12]. In particular, they validated by quantitative real-time RT-PCR the overexpression of 7 NF-κB-target genes (VCAM1, CCR5, SOD2, CTSB, IRF7, GBP1, and CD48) previously detected by them using cDNA microarrays [10, 12]. We tested these seven genes in our series; VCAM1, CD48, GBP1 and SOD2 also showed a moderately significant overexpression in IBC relative to the non IBCs, whereas CCR5, IRF7 and CTSB did not (Table 2).

One very interesting finding here is that the gene expression profile of 24 distant breast metastases was quite different from that of the 35 IBCs, as all the NF-κB-associated genes were expressed at similar levels in the 24 metastatic samples and the 22 non IBCs (except for the two angiogenesis-related genes PTGS2/COX2 and CXCL1/GRO1). This further supports a strong specific link between NF-κB gene activation and the IBC phenotype.

CXCL12, COX2, CCND2, MCL1L, TNFAIP3/A20, and GADD45B were the most strongly deregulated genes in our series of IBC. CXCL12 and its receptor CXCR4 play major roles in embryogenesis, homeostasis and inflammation. They are also key regulators of carcinogenesis, acting through a wide range of mechanisms such as increased survival and proliferation of cancer cells, angiogenesis and chemoinvasion [29]. Many studies have now validated the concept that this receptor-ligand pair strongly influences metastasis, in particular by directing the migration of cancer cells to sites of metastasis. The role of COX2 in mammary oncogenesis is also well established, and clinical trials of COX2 inhibitors like celecoxib are ongoing in breast cancer [30]. However, COX2 was also upregulated in the breast-cancer metastases and was thus not specifically dysregulated in IBC, contrary to most of the other NF-κB-associated genes tested here (Table 2). We observed an overexpression of three anti-apoptotic genes: i.e. MCL1L, TNFAIP3/A20, and GADD45B. Van Laere et al. also observed elevated GADD45B expression in IBC samples [10]. The activation of NF-κB-dependent anti-apoptotic genes may promote IBC tumorigenesis, as it has been shown in other inflammation-associated tumor types [31]. However, what matters in IBC is probably not the overexpression of a particular NF-κB-associated gene but rather the activation of the entire NF-κB pathway.

We think that one of the best ways to identify specific molecular alterations in IBC is to use "stage-matched" non inflammatory breast tumors as controls, and to strictly select patients with IBC. This approach can point out genes that are specifically associated with the IBC phenotype rather than with a poor prognosis in general. Applying these criteria, we identified a six-gene signature (TNFAIP3/A20, SELE, COX2, CXCL12, CCND3, IER3L) discriminating IBC from non IBC. However, nine IBCs were misclassified as non IBCs, even though they did not differ from the other 26 IBCs in terms of patient age, histological grade, hormone receptor status, PEV classification or prognosis (data not shown). The 6-gene signature was tested on an independent series of 37 IBCs and 44 non IBCs studied using cDNA microarrays [9]. Two genes (CCND3 and SELE) significantly discriminated the 37 IBC from the 44 non IBCs (p = 0,01; Bertucci F, personal data). The other four genes (TNFAIP3/A20, COX2, CXCL12, and IER3L) were not expressed at significant levels (> 2 × background signal in at least 50% of all tumor samples). Unfortunately, we could not test the signature at the protein level because no more paired paraffin-embedded tumor samples were available for immunohistochemistry (IHC) analysis. It will be important to perform the IHC on an independent prospective series of IBC samples.

Contrary to some DNA anomalies that we have previously observed in IBC by means of allelic imbalance analysis, we found no significant difference here in NF-κB-associated gene expression levels between PEV2 tumors (localized inflammation) and PEV3 tumors (extensive inflammation and poorer prognosis than PEV2 tumors) [32]. In particular, our previous study showed that 17q21 deletion was more frequent in PEV3 tumors. However, none of the genes found to be upregulated in the present study is located in this region. Finally, it should be borne in mind that several genes may be altered in all IBCs while others are specifically altered in certain IBC subtypes.

We also examined the prognostic significance of NF-κB-associated genes in IBC. Although the statistical significance was weak, we found that lower VEGF and IL8 expression was associated with relapse. This is surprising, as both genes promote angiogenesis. Furthermore, a five-gene expression profile with VEGF, IL8 and the three genes (MYCN, SHH, and EREG) that we previously showed to be associated with outcome in the same series of IBCs [13] clearly delineated two subgroups of IBC with high (near 100%) and low (50%) relapse rates (Figure 3).

Conclusion

These results demonstrate that the NF-κB pathway plays a major role in IBC. Activation of NF-κB-associated genes appears to contribute to the IBC phenotype and may prove to be of prognostic significance. Furthermore, upregulated NF-κB-related genes might serve as novel therapeutic targets in IBC. It is noteworthy that several NF-κB inhibitors are known to have antitumoral activity in breast cancer [33, 34] and that one has been shown to halt the growth of IBC xenografts, either alone or in combination with an anthracycline [35, 36].

References

  1. Jaiyesimi IA, Buzdar AU, Hortobagyi G: Inflammatory breast cancer: a review. J Clin Oncol. 1992, 10: 1014-1024.

    CAS  PubMed  Google Scholar 

  2. Delarue JC, May-Levin F, Mouriesse H, Contesso G, Sancho-Garnier H: Oestrogen and progesterone cytosolic receptors in clinically inflammatory tumours of the human breast. Br J Cancer. 1981, 44 (6): 911-916.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  3. Guerin M, Gabillot M, Mathieu MC, Travagli JP, Spielmann M, Andrieu N, Riou G: Structure and expression of c-erbB-2 and EGF receptor genes in inflammatory and non-inflammatory breast cancer: prognostic significance. Int J Cancer. 1989, 43: 201-208. 10.1002/ijc.2910430205.

    Article  CAS  PubMed  Google Scholar 

  4. Paradiso A, Tommasi S, Brandi M, Marzullo F, Simone G, Lorusso V, Mangia A, De Lena M: Cell kinetics and hormonal receptor status in inflammatory breast carcinoma. Comparison with locally advanced disease. Cancer. 1989, 64: 1922-1927. 10.1002/1097-0142(19891101)64:9<1922::AID-CNCR2820640927>3.0.CO;2-I.

    Article  CAS  PubMed  Google Scholar 

  5. Turpin E, Bieche I, Bertheau P, Plassa LF, Lerebours F, de Roquancourt A, Olivi M, Espie M, Marty M, Lidereau R, Vidaud M, de The H: Increased incidence of ERBB2 overexpression and TP53 mutation in inflammatory breast cancer. Oncogene. 2002, 21: 7593-7597. 10.1038/sj.onc.1205932.

    Article  CAS  PubMed  Google Scholar 

  6. Lerebours F, Bieche I, Lidereau R: Update on inflammatory breast cancer. Breast Cancer Res. 2005, 7: 52-58. 10.1186/bcr997.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  7. Sorlie T, Tibshirani R, Parker J, Hastie T, Marron JS, Nobel A, Deng S, Jonhsen H, Pesich R, Geisler S, Demeter J, Perou CM, Lonning PE, Brown PO, Borresen-Dale AL, Botstein D: Repeated observation of breast tumor subtypes in independent gene expression data sets. Proc Natl Acad Sci USA. 2003, 100: 8418-8423. 10.1073/pnas.0932692100.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  8. Sotiriou C, Neo SY, McShane LM, Korn EL, Long PM, Jazaeri A, Martiat P, Fox SB, Harris AL, Liu ET: Breast cancer classification and prognosis based on gene expression profiles from a population-based study. Proc Natl Acad Sci USA. 2003, 100: 10393-10398. 10.1073/pnas.1732912100.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  9. Bertucci F, Finetti P, Rougemont J, Charafe-Jauffret E, Nasser V, Loriod B, Camerlo J, Tagett R, Tarpin C, Houvenaeghel G, Jacquemier J, Houlgatte R, Birnbaum D, Viens P: Gene Expression Profiling for Molecular Characterization of Inflammatory Breast Cancer and Prediction of Response to Chemotherapy. Cancer Res. 2004, 64: 8558-8565. 10.1158/0008-5472.CAN-04-2696.

    Article  CAS  PubMed  Google Scholar 

  10. Van Laere S, Van der Auwera I, Van den Eynden GG, Fox SB, Bianchi F, Harris AL, van Dam P, Van Marck EA, Vermeulen PB, Dirix LY: Distinct molecular signature of inflammatory breast cancer by cDNA microarray analysis. Breast Cancer Res Treat. 2005, 93: 237-246. 10.1007/s10549-005-5157-z.

    Article  PubMed  Google Scholar 

  11. Nguyen DM, Sam K, Tsimelzon A, Li X, Wong H, Mohsin S, Clark GM, Hilsenbeck SG, Elledge RM, Allred DC, O'Connell P, Chang JC: Molecular heterogeneity of inflammatory breast cancer: a hyperproliferative phenotype. Clin Cancer Res. 2006, 12: 5047-5054. 10.1158/1078-0432.CCR-05-2248.

    Article  CAS  PubMed  Google Scholar 

  12. Van Laere SJ, Van der Auwera I, Van den Eynden GG, Elst HJ, Weyler J, Harris AL, van Dam P, Van Marck EA, Vermeulen PB, Dirix LY: Nuclear factor-kappaB signature of inflammatory breast cancer by cDNA microarray validated by quantitative real-time reverse transcription-PCR, immunohistochemistry, and nuclear factor-kappaB DNA-binding. Clin Cancer Res. 2006, 12: 3249-3256. 10.1158/1078-0432.CCR-05-2800.

    Article  CAS  PubMed  Google Scholar 

  13. Bieche I, Lerebours F, Tozlu S, Espie M, Marty M, Lidereau R: Molecular profiling of inflammatory breast cancer: identification of a poor-prognosis gene expression signature. Clin Cancer Res. 2004, 10: 6789-6795. 10.1158/1078-0432.CCR-04-0306.

    Article  CAS  PubMed  Google Scholar 

  14. Aggarwal BB: Nuclear factor-kappaB the enemy within. Cancer Cell. 2004, 6: 203-208. 10.1016/j.ccr.2004.09.003.

    Article  CAS  PubMed  Google Scholar 

  15. Karin M, Cao Y, Greten FR, Li ZW: NF-kappaB in cancer: from innocent bystander to major culprit. Nat Rev Cancer. 2002, 2: 301-310. 10.1038/nrc780.

    Article  CAS  PubMed  Google Scholar 

  16. Biswas DK, Shi Q, Baily S, Strickland I, Ghosh S, Pardee AB, Iglehard JD: NF-kappa B activation in human breast cancer specimens and its role in cell proliferation and apoptosis. Proc Natl Acad Sci USA. 2004, 101: 10137-10142. 10.1073/pnas.0403621101.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  17. Cao Y, Karin M: NF-kappaB in mammary gland development and breast cancer. J Mammary Gland Biol Neoplasia. 2003, 8: 215-223. 10.1023/A:1025905008934.

    Article  PubMed  Google Scholar 

  18. Cogswell PC, Guttridge DC, Funkhouser WK, Baldwin AS: Selective activation of NF-kappa B subunits in human breast cancer: potential roles for NF-kappa B2/p52 and for Bcl-3. Oncogene. 2000, 19: 1123-1131. 10.1038/sj.onc.1203412.

    Article  CAS  PubMed  Google Scholar 

  19. Huber MA, Azoitei N, Baumann B, Grunert S, Sommer A, Pehamberger H, Kraut N, Beug H, Wirth T: NF-kappaB is essential for epithelial-mesenchymal transition and metastasis in a model of breast cancer progression. J Clin Invest. 2004, 114: 569-581. 10.1172/JCI200421358.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  20. Nakshatri H, Bhat-Nakshatri P, Martin DA, Goulet RJ, Sledge GW: Constitutive activation of NF-kappaB during progression of breast cancer to hormone-independent growth. Mol Cell Biol. 1997, 17: 3629-3639.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  21. Shishodia S, Aggarwal BB: Nuclear factor-kappaB activation mediates cellular transformation, proliferation, invasion angiogenesis and metastasis of cancer. Cancer Treat Res. 2004, 119: 139-173.

    Article  CAS  PubMed  Google Scholar 

  22. Sarrazin D, Rouesse J, Arriagada R, May-Levin F, Petit JY, Contesso G: [Breast cancers in the evolutive phase]. Rev Prat. 1978, 28: 999-1009.

    CAS  PubMed  Google Scholar 

  23. Mann H, Whitney D: On a test of whether one or two random variables is stochastically larger than the other. Ann Math Stat. 1947, 18: 50-60. 10.1214/aoms/1177730491.

    Article  Google Scholar 

  24. Didier G, Brezellec P, Remy E, Henaut A: GeneANOVA-gene expression analysis of variance. Bioinformatics. 2002, 18: 490-491. 10.1093/bioinformatics/18.3.490.

    Article  CAS  PubMed  Google Scholar 

  25. Cristofanilli M, Buzdar AU, Hortobagyi GN: Update on the management of inflammatory breast cancer. Oncologist. 2003, 8: 141-148. 10.1634/theoncologist.8-2-141.

    Article  CAS  PubMed  Google Scholar 

  26. Smith I: Goals of treatment for patients with metastatic breast cancer. Semin Oncol. 2006, 33: 2S-5S. 10.1053/j.seminoncol.2005.07.030.

    Article  Google Scholar 

  27. Anderson WF, Chu KC, Chang S: Inflammatory breast carcinoma and noninflammatory locally advanced breast carcinoma: distinct clinicopathologic entities?. J Clin Oncol. 2003, 21: 2254-2259. 10.1200/JCO.2003.07.082.

    Article  PubMed  Google Scholar 

  28. Hance KW, Anderson WF, Devesa SS, Young HA, Levine PH: Trends in inflammatory breast carcinoma incidence and survival: the surveillance, epidemiology, and end results program at the National Cancer Institute. J Natl Cancer Inst. 2005, 97: 966-975.

    Article  PubMed  PubMed Central  Google Scholar 

  29. Luker KE, Luker GD: Functions of CXCL12 and CXCR4 in breast cancer. Cancer Lett. 2006, 238: 30-41. 10.1016/j.canlet.2005.06.021.

    Article  CAS  PubMed  Google Scholar 

  30. Costa C, Soares R, Reis-Filho JS, Leitao D, Amendoeira I, Schmitt FC: Cyclo-oxygenase 2 expression is associated with angiogenesis and lymph node metastasis in human breast cancer. J Clin Pathol. 2002, 55: 429-434.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  31. Pikarsky E, Porat RM, Stein I, Abramovitch R, Amit S, Kasem S, Gutkovich-Pyest E, Urieli-Shoval S, Galun E, Ben-Neriah Y: NF-kappaB functions as a tumour promoter in inflammation-associated cancer. Nature. 2004, 431: 461-466. 10.1038/nature02924.

    Article  CAS  PubMed  Google Scholar 

  32. Lerebours F, Bertheau P, Bieche I, Plassa LF, Champeme MH, Hacene K, Espie M, Marty M, Lidereau R: Two prognostic groups of inflammatory breast cancer have distinct genotypes. Clin Cancer Res. 2003, 9: 4184-4189.

    CAS  PubMed  Google Scholar 

  33. Matsumoto G, Namekawa J, Muta M, Nakamura T, Bando H, Tohyama K, Toi M, Umezawa K: Targeting of nuclear factor kappaB Pathways by dehydroxymethylepoxyquinomicin, a novel inhibitor of breast carcinomas: antitumor and antiangiogenic potential in vivo. Clin Cancer Res. 2005, 11: 1287-1293.

    CAS  PubMed  Google Scholar 

  34. Tanaka A, Muto S, Konno M, Itai A, Matsuda H: A new IkappaB kinase beta inhibitor prevents human breast cancer progression through negative regulation of cell cycle transition. Cancer Res. 2006, 66: 419-426. 10.1158/0008-5472.CAN-05-0741.

    Article  CAS  PubMed  Google Scholar 

  35. Pan Q, Bao LW, Kleer CG, Brewer GJ, Merajver SD: Antiangiogenic tetrathiomolybdate enhances the efficacy of doxorubicin against breast carcinoma. Mol Cancer Ther. 2003, 2: 617-622.

    CAS  PubMed  Google Scholar 

  36. Pan Q, Bao LW, Merajver SD: Tetrathiomolybdate inhibits angiogenesis and metastasis through suppression of the NFkappaB signaling cascade. Mol Cancer Res. 2003, 1: 701-706.

    CAS  PubMed  Google Scholar 

Pre-publication history

Download references

Acknowledgements

This work was supported by Comite Regional des Hauts-de-Seine de la Ligue Nationale Contre le Cancer.

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to Florence Lerebours.

Additional information

Competing interests

The author(s) declare that they have no competing interests.

Authors' contributions

FL helped design the study and analyze data, and wrote the manuscript. SV and CA did RNA extraction, cDNA synthesis and QRT-PCR. ME and MM participated in patients' selection and treatment. RL collected specimens and helped design the study. IB designed the study and analyzed data. All authors read and approved the final manuscript.

Authors’ original submitted files for images

Below are the links to the authors’ original submitted files for images.

Authors’ original file for figure 1

Authors’ original file for figure 2

Authors’ original file for figure 3

Rights and permissions

This article is published under license to BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Reprints and permissions

About this article

Cite this article

Lerebours, F., Vacher, S., Andrieu, C. et al. NF-kappa B genes have a major role in Inflammatory Breast Cancer. BMC Cancer 8, 41 (2008). https://doi.org/10.1186/1471-2407-8-41

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/1471-2407-8-41

Keywords