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Copyright © 2009 Veeck et al; licensee BioMed Central Ltd. Prognostic relevance of Wnt-inhibitory factor-1 (WIF1) and Dickkopf-3 (DKK3) promoter methylation in human breast cancer 1Molecular Oncology Group, Institute of Pathology, University Hospital of the RWTH Aachen, Pauwelsstrasse 30, D-52074 Aachen, Germany 2Institute of Surgical Pathology, University Hospital Zürich, Schmelzbergstrasse 12, CH-8091, Zürich, Switzerland 3Institute for Computational Science and Department of Computer Science, ETH Zürich, Universitätsstrasse 6, CH-8092 Zürich, Switzerland 4Department of Pathology, University of Erlangen, Krankenhausstrasse 12, D-91054 Erlangen, Germany 5Current address: Cancer Epigenetics and Biology Program (PEBC), Bellvitge Institute for Biomedical Research (ICO-IDIBELL), Hospital Duran i Reynals, Av. Gran Via de L'Hospitalet 199-203, E-08907 Barcelona, Spain Corresponding author.Jürgen Veeck: juergen.veeck/at/rwth-aachen.de; Peter J Wild: peter.wild/at/cell.biol.ethz.ch; Thomas Fuchs: thomas.fuchs/at/inf.ethz.ch; Peter J Schüffler: peter.schueffler/at/inf.ethz.ch; Arndt Hartmann: arndt.hartmann/at/uk-erlangen.de; Ruth Knüchel: rknuechel-clarke/at/ukaachen.de; Edgar Dahl: edahl/at/ukaachen.de Received October 8, 2008; Accepted July 1, 2009. 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. Abstract Background Secreted Wnt signaling antagonists have recently been described as frequent targets of epigenetic inactivation in human tumor entities. Since gene silencing of certain Wnt antagonists was found to be correlated with adverse patient survival in cancer, we aimed at investigating a potential prognostic impact of the two Wnt antagonizing molecules WIF1 and DKK3 in breast cancer, which are frequently silenced by promoter methylation in this disease. Methods WIF1 and DKK3 promoter methylation were assessed by methylation-specific PCR with bisulfite-converted DNA from 19 normal breast tissues and 150 primary breast carcinomas. Promoter methylation was interpreted in a qualitative, binary fashion. Statistical evaluations included two-sided Fisher's exact tests, univariate log-rank tests of Kaplan-Meier curves as well as multivariate Cox regression analyses. Results WIF1 and DKK3 promoter methylation were detected in 63.3% (95/150) and 61.3% (92/150) of breast carcinoma samples, respectively. In normal breast tissues, WIF1 methylation was present in 0% (0/19) and DKK3 methylation in 5.3% (1/19) of samples. In breast carcinomas, WIF1 methylation was significantly associated with methylation of DKK3 (p = 0.009). Methylation of either gene was not associated with clinicopathological parameters, except for DKK3 methylation being associated with patient age (p = 0.007). In univariate analysis, WIF1 methylation was not associated with clinical patient outcome. In contrast, DKK3 methylation was a prognostic factor in patient overall survival (OS) and disease-free survival (DFS). Estimated OS rates after 10 years were 54% for patients with DKK3-methylated tumors, in contrast to patients without DKK3 methylation in the tumor, who had a favorable 97% OS after 10 years (p < 0.001). Likewise, DFS at 10 years for patients harboring DKK3 methylation in the tumor was 58%, compared with 78% for patients with unmethylated DKK3 (p = 0.037). Multivariate analyses revealed that DKK3 methylation was an independent prognostic factor predicting poor OS (hazard ratio (HR): 14.4; 95% confidence interval (CI): 1.9–111.6; p = 0.011), and short DFS (HR: 2.5; 95% CI: 1.0–6.0; p = 0.047) in breast cancer. Conclusion Although the Wnt antagonist genes WIF1 and DKK3 show a very similar frequency of promoter methylation in human breast cancer, only DKK3 methylation proves as a novel prognostic marker potentially useful in the clinical management of this disease. Background The most common epigenetic alteration in human cancer affecting gene expression is 5'-cytosine methylation within CpG islands in gene promoter regions [1]. Promoter methylation effectively represses RNA transcription and occurs in many genes involved in human cancer development [2]. The majority of these affected genes are potential or known tumor suppressor genes that are regulators of different cellular pathways, such as cell cycle, DNA repair, growth factor signaling or cell adhesion [3]. Wnt signaling is one of the central cellular pathways commonly disrupted in several tumor types, including breast cancer [4,5]. Unlike colorectal cancer, evidence for genetic alterations of Wnt pathway components in breast cancer, such as adenomatous polyposis coli (APC) mutations, is rare [6]. Several lines of evidence suggest that in breast cancer the Wnt signaling pathway is disrupted predominantly through epigenetic aberrations, most of all by promoter methylation of genes encoding secreted Wnt inhibitory molecules. For instance, genes encoding secreted frizzled-related proteins (SFRP) and Wnt-inhibitory factor-1 (WIF1) were previously reported as frequent targets of epigenetic inactivation in breast cancer [7-12]. In addition to this, we have recently shown that the putative Wnt signaling inhibitor Dickkopf-3 (DKK3) is functionally inactivated by promoter methylation in more than 60% of tumors from patients with invasive breast cancer [13]. Besides secreted inhibitors, two studies also reported frequent methylation of the APC gene in breast carcinomas [14,15]. Altogether, this provides strong evidence for an epigenetically disrupted and thereby activated Wnt signaling pathway in the development of human breast cancer. There is increasing evidence that promoter methylation of cancer-related genes can be one of the most prevalent molecular markers for human cancer diseases [16]. The potential clinical applications of DNA-methylation biomarkers may include diagnosis of neoplasm, tumor classification, prediction of response to treatment, or patient prognosis [17]. Methylation of particular Wnt pathway genes has already been described as a potential biomarker for unfavorable patient outcome in human cancer. For instance, we have recently shown that methylation of SFRP1 as well as SFRP5 is associated with reduced patient overall survival in breast cancer [7,10]. In contrast to this, high-frequent methylation of SFRP2 was not prognostically relevant in breast cancer [9], but was shown to comprise a diagnostic value as a sensitive screening marker for the stool-based detection of colorectal cancer and premalignant colorectal lesions [18-20]. DKK3 methylation is associated with reduced DFS in acute lymphoblastic leukemia [21], and also with shorter OS in kidney cancer [22] and non-small cell lung cancer [23], as well as very recently reported with OS in gastric cancer [24]. Taken together, promoter methylation of Wnt signaling antagonists appears to provide a rich pool of novel tumor biomarkers in human cancer, potentially useful in the clinical setting by helping to improve management of this disease. In the present study, we addressed the question to whether promoter methylation of two Wnt antagonist genes (WIF1 and DKK3), that were previously reported as hypermethylated in breast cancer, provides prognostically relevant information in this tumor entity. In univariate and multivariate analyses we have investigated gene methylation in a large cohort (n = 150) of invasive breast cancer specimens. We here demonstrate for the first time that DKK3 methylation, but not WIF1 methylation, is an independent prognostic factor indicating poor patient survival in human breast cancer. Methods Patient material Surgically resected samples were obtained from 150 unselected breast cancer patients at the Departments of Gynecology at the University Hospitals of Aachen, Jena, Regensburg and Düsseldorf in Germany from 1991 to 2005. For 19 patients, normal breast tissues were available. In all cases, at least two-board certified pathologists agreed on the diagnosis on breast cancer. The samples were recruited in a non-selective, consecutive manner. Cases were not stratified for any known pre-operative or pathological prognostic factor. Inclusion criteria for the study were: Female patients presenting with unilateral, primary invasive breast cancer without individual breast cancer history. Exclusion criteria were: neo-adjuvant chemotherapy prior to surgery, presentation with secondary breast cancer, or peritumorous carcinoma in situ present in the tumor sample. All patients gave informed consent for retention and analysis of their tissue for research purposes and the Institutional Review Boards of the participating centers approved the study. Tumor histology was determined according to the criteria of the WHO (2003), while disease stage was assessed according to UICC [25]. Histological, tumors were graded according to Bloom and Richardson, as modified by Elston and Ellis [26]. Hormone receptor status was assessed according to the scoring system developed by Remmele and Stegner [27]. For 125 patients follow-up data were available with a median time of 64 months (range 1 to 174 months). Patient characteristics of this cohort have been previously described [13]. Extraction of genomic DNA Tumor material was snap-frozen in liquid nitrogen immediately after surgery. Hematoxylin/Eosin-stained sections were prepared for assessing the percentage of tumor cells; only samples with > 70% tumor cells were selected. A total of 20 tissue sections (20 μm each) per specimen was dissected in a cryotom and pooled. Normal breast tissue specimens were prepared likewise. For normal breast samples, the epithelial cell amount had to exceed 30% in order to be selected for further preparation. Samples were dissolved in lysis buffer followed by DNA isolation, using the QIAamp DNA Mini Kit (Qiagen, Hilden, Germany) according to the manufacturer's recommendations. The extracted genomic DNA was finally diluted in 55 μl of Tris buffer (10 mM; pH 7.6). In silico promoter analysis The WIF1 promoter, located at chromosome position 12q14.2, was investigated according to the contig ENSG00000156076 contained in the Ensembl database [28]. A genomic nucleotide sequence consisting of 1000 bp upstream of the annotated transcription start site (TSS) and 293 bp downstream of the TSS (first exon) was analyzed by methprimer software [29]. Criteria for CpG island prediction were adjusted to the definition from Takai and Jones [30], and included an observed/expected CpG ratio of ≥ 0.7 and a GC content of ≥ 60%. The identified CpG island proximal to the TSS was chosen for promoter methylation analysis. Methylation-specific PCR (MSP) primers were derived from a particular region within this island, which has been analyzed for CpG methylation by bisulfite genomic sequencing (BGS) in a previous study [11]. The DKK3 promoter, located at chromosome position 11p15.3, was investigated according to the contig ENSG00000050165 contained in the Ensembl database. A genomic nucleotide sequence consisting of 1000 bp upstream of the annotated TSS and 1001 bp downstream of the TSS was analyzed by methprimer software. The downstream region covered the first three exons of the gene, since DKK3 was reported to be alternatively transcribed under the control of two distinct promoters [31]. Methprimer software identified the existence of two distinct CpG islands, located proximal to either of the two predicted transcription start sites. The downstream CpG island was chosen for promoter methylation analysis, since the shorter DKK3 transcript was shown to be more commonly distributed in normal human tissues [31]. Bisulfite-modification and methylation-specific PCR Approximately 1 μg of genomic DNA was bisulfite-modified using the EZ DNA Methylation Kit (Zymo Research, Orange, CA) according to the manufacturer's recommendations. The bisulfite-converted DNA was finally eluted in 20 μl of Tris buffer (10 mM; pH 7.6). Methylation-specific PCR was performed according to Herman et al. [32]. In short, 1 μl of modified DNA (~50 ng) was amplified using MSP primers (see Table 1) that specifically recognized either the unmethylated or methylated promoter sequences after bisulfite conversion [32]. Reaction volumes of 25 μl contained 1 × MSP-buffer [33], 400 nM of each primer, and 1.25 mM of each dNTP. One drop of mineral oil was added to each reaction tube. The PCR was initiated as "Hot Start" PCR at 95°C and held at 80°C before the addition of 1.25 units Taq DNA polymerase (Promega, Madison, WI). Cycle conditions were: 95°C for 5 min, 34 cycles of 95°C for 30 sec, 55°C (58°C) for 30 sec, 72°C for 40 sec and a final extension at 72°C for 5 min. Amplification products were visualized on 3% low range ultra agarose gel (Bio-Rad Laboratories, Hercules, CA) containing ethidium bromide and illuminated under ultraviolet light. Specificity of MSP primers in detecting the promoter methylation status were demonstrated by use of universal unmethylated and universal poly-methylated DNA as template (Epi Tect Control DNA Set; Qiagen, Hilden, Germany). Sensitivity of the utilized primers and cycling conditions was defined by use of a dilution series in MSP assays, constituted of methylated DNA diluted with unmethylated DNA (50%, 10%, 1%, 0.1%, 0.01% and 0% methylation).
Statistical evaluations Statistical analyses were completed using SPSS 14.0 (SPSS, Chicago, IL). Differences were considered significant when P-values were below 0.05. To study statistical associations between clinicopathological factors and methylation status contingency tables and two-sided Fisher's exact test were accomplished. In case of multiple statistical tests, the false discovery rate controlling procedure was applied. Survival curves were calculated using the Kaplan-Meier method, with significance evaluated by two-sided log-rank statistics. OS (n = 125) was measured from the day of surgery until breast cancer-related death (n = 21) and was censored for patients alive at last contact (n = 91), in case of death unrelated to the tumor (n = 5) or when the death cause was unknown (n = 8). DFS (n = 125) was measured from surgery until local or distant relapse (n = 30) and was censored for patients alive without evidence of relapse at the last follow-up (n = 95). A stepwise multivariate Cox regression model was adjusted, testing the independent prognostic relevance of clinical/investigational factors. The limit for reverse selection procedures was p = 0.1. Only patients for whom the status of all variables was known (n = 103) were included in the proportional hazard models. The proportionality assumption for all variables was assessed with log-negative-log survival distribution functions. The variables tumor size (pT), node status (pN) and histological grade (G) were dichotomised into less and more progressive groups (pT1-2 vs. pT3-4; pN0 vs. pN1-3; G1-2 vs. G3). Results WIF1 promoter methylation in primary breast carcinomas WIF1 promoter methylation in human breast cancer has been previously reported by Ai et al. [11], who demonstrated, by use of MSP, WIF1 methylation in 16 of 24 (67%) breast carcinoma samples. For three breast tumor specimens, these MSP results had also been confirmed by BGS. Unfortunately, in their study the WIF1 promoter regions investigated by MSP and BGS were not matching or overlapping, so we decided to analyze WIF1 promoter methylation in breast cancer by MSP in the particular promoter region that has been covered by BGS in the other study (Figure (Figure1A).1A
DKK3 promoter methylation in primary breast carcinomas We have recently reported of frequent DKK3 promoter methylation in human breast cancer [13]. In the respective report, we have demonstrated that DKK3 methylation was present in 61.3% of breast cancer patients (92 of 150), whereas in 19 matching normal breast tissues only one sample (5.3%) revealed faint methylation signals. Ideally, the samples analyzed for WIF1 methylation in the present report were physically identical with the samples previously analyzed for DKK3 methylation. The previously analyzed DKK3 promoter region is pictured in Figure Figure3A.3A
Association of WIF1 and DKK3 promoter methylation with clinicopathological parameters For descriptive data analysis clinicopathological parameters were correlated with the WIF1 and DKK3 promoter methylation status. In a bivariate analysis, WIF1 methylation was not associated with patient age at diagnosis, tumor size, lymph node status, histological grade, histological type, and estrogen or progesterone receptor status (Table 2). DKK3 methylation was associated with advanced patient age at diagnosis (p = 0.007), but not associated with any other of the investigated parameters (Table 2).
Correlation of WIF1 and DKK3 promoter methylation in primary breast carcinoma In a bivariate analysis, methylation of the WIF1 promoter was significantly associated with methylation of the DKK3 promoter (p = 0.009) (Table 2). Both gene promoters were mutually unmethylated in tumors from 29 of 150 patients (19.3%) and mutually methylated in tumors from 66 of 150 patients (44.0%) (Figure (Figure4).4
Association of WIF1 promoter methylation with patient survival Patient OS and DFS were compared between methylated versus unmethylated WIF1 promoter sequence by univariate Kaplan-Meier analysis using log-rank statistics. In this analysis, WIF1 methylation was not significantly associated with patient OS (p = 0.656) or patient DFS (p = 0.154) (Table 3), as also demonstrated by Kaplan-Meier survival curves (Figure (Figure5).5
Association of DKK3 promoter methylation with patient survival Patient OS and DFS were compared between methylated versus unmethylated DKK3 promoter sequence. In contrast to WIF1 methylation, DKK3 methylation was significantly associated with poor OS (5-year survival: 75% for cases with methylated alleles vs. 97% for cases with unmethylated alleles; 10-year survival: 54% vs. 97%; p = 0.0005; Table 3) and shorter DFS (5-year survival: 67% for cases with methylated alleles vs. 84% for cases with unmethylated alleles; 10-year-survival: 58% vs. 78%; p = 0.037; Table 3), as also illustrated by Kaplan-Meier survival curves (Figure (Figure5).5
Discussion It was previously reported that expression of the Wnt antagonist genes WIF1 and DKK3 is downregulated in several tumor entities as a consequence of epigenetic DNA modification [11,13,21,31,35,36]. WIF1 is a conserved Wnt-binding protein that prevents Wnt ligands from interacting with membranous frizzled receptors, thus may inhibit activation of the Wnt/β-catenin signaling cascade [37]. In breast, lung, prostate and bladder cancer, WIF1 expression was found to be frequently downregulated [38], suggesting it might represent a tumor suppressor gene. In breast cancer, this downregulation could be attributed to hypermethylation of the WIF1 promoter [11], as demonstrated both in breast cell lines and in primary breast carcinomas. In our study, methylation of the WIF1 promoter was detected in 63% of invasive tumors from breast cancer patients, thus being in good agreement with previous results from Ai et al. [11], who reported a frequency of 67% for WIF1 methylation in mammary tumors. Differences may arise through different sample sizes (n = 150 and n = 24) as well as different promoter locations assessed in either study. DKK3 is a further secreted inhibitor of Wnt signaling, but in contrast to WIF1 does not sequester Wnt ligands. The actual mechanism by which DKK3 acts inhibitory on Wnt pathway activation has not been identified yet, but suppression of DKK3 increased β-catenin/T-cell factor (TCF)-dependent gene activity in mammary cells [39], cancerous lung cells [40] and glioma [41]. Likewise to WIF1, the DKK3 gene was also reported as a frequent target of epigenetic inactivation in numerous tumor entities, e.g. in lung cancer, prostate cancer and leukemia [21,31,42], suggesting that DKK3 may exert tumor suppressive functions. In a recent report, we have demonstrated that DKK3 is frequently inactivated in invasive breast carcinomas by promoter methylation leading to loss of DKK3 expression [13]. This epimutation affected 92 of 150 investigated breast cancer patients (61%). Since these samples were identical to the samples for which we now have determined WIF1 methylation, we were able to perform a combined analysis of both genes' methylation in breast cancer. In a bivariate analysis, WIF1 methylation status in breast carcinomas was significantly associated with the DKK3 methylation status. Despite, within the cohort of carcinomas being affected by methylation of either the DKK3 or WIF1 gene, a large fraction (45%) showed methylation in one gene only. This demonstrates that in spite of a statistical association between methylation of the two genes, there is still a large fraction of breast cancer patients with different DKK3/WIF1 methylation pattern. Therefore, it is unlikely that methylation of both Wnt antagonist genes is a mandatory mutual carcinogenic event. In a further correlation analysis, neither of the two genes was associated with relevant clinicopathological features, except for DKK3 methylation being associated with advanced patient age. Age-dependent promoter methylation has been reported previously [43,44] and may randomly overlay the effects of gene-specific promoter methylation that can lead to the development of distinct cancer subtypes. The absence of an association between WIF1 or DKK3 methylation with important clinicopathological factors like tumor size, histological grade and lymph node invasion strongly suggests that methylation of either gene is an early carcinogenic event in breast cancer development, rather than contributing to tumor progression. Most important, major differences between WIF1 and DKK3 methylation arise in their association with breast cancer patient survival. WIF1 methylation showed no significance in clinical patient outcome in contrast to DKK3 methylation, which was tightly associated with adverse patient OS and weaker with short DFS in our study. Patients harboring DKK3 methylation in the tumor had a poor prognosis (54% chance of 10-years OS) in contrast to patients retaining an unmethylated DKK3 promoter, who had a favorable prognosis (97% chance of 10-years OS). This finding was supported by a multivariate Cox regression analysis in which DKK3-methylated patients revealed a high risk of tumor-related death (HR: 14.4). Hence, this parameter outperformed classical prognostic factors in our patient cohort, i.e. high histological grade (HR: 4.4) or a positive lymph node status (HR: 5.5). Unproportional HRs of high impact were rarely achieved even in studies with very large sample size numbers, neither by strong conventional factors like node status (HR: 2.4) [45] and grade (HR: 5.7) [46] nor by investigational factors like the tissue urokinase-type plasminogen activator/inhibitor (uPA/PAI), which in case of high level exposes patients to a five times greater risk of dying from breast cancer [47]. In conclusion, our results demonstrate that determination of the DKK3 methylation status may provide valuable information to aid prognostication in the clinical management of breast cancer patients. Notably, methylation of the DKK3 promoter was recently shown to be prognosis relevant also in other tumor entities, such as in acute lymphoblastic leukemia, kidney cancer, lung cancer, and gastric cancer [21-24], pointing to a potential clinical use of this marker in several cancer diseases. Our findings raise expectations towards translation of such methylation markers into clinical practice. As an example, DKK3 may be a prime candidate gene to be incorporated into diagnostic multimarker panels, for its aberrant methylation is specific to malignant cells in breast cancer [13]. Preliminary results from our laboratory revealed that DKK3 methylation can be detected with high clinical sensitivity and specificity in blood serum of breast cancer patients independent of tumor size and node status (unpublished data). The presence of detectable tumor DNA in serum is generally associated with poor prognosis [48,49], and taken together with its marker performance in solid breast tumor tissue, DKK3 methylation fulfils essential prerequisites as a biomarker in a blood-borne assay, of which we will report in a future study. In summary, we here demonstrate that although WIF1 and DKK3 promoter methylation are similar frequent alterations in human breast cancer, only DKK3 methylation appears to be a survival risk factor for breast cancer patients and thus might be useful as prognostic marker in clinical oncology helping to improve patient outcome. Conclusion This study shows that the Wnt antagonist gene WIF1 is frequently inactivated by promoter hypermethylation in human breast cancer. Although WIF1 is similarly frequent hypermethylated like the Wnt antagonist gene DKK3, and neither gene methylation is associated with relevant clinicopathological factors, DKK3 methylation is an independent prognostic factor in breast cancer patient survival, whereas WIF1 methylation is not. These differences may reflect subtle distinctions in the biological roles of the two related molecules in inhibiting Wnt/β-catenin signaling. Abbreviations BGS: bisulfite genomic sequencing; BMBF: Bundesministerium für Bildung und Forschung; CI: confidence interval; DFS: disease-free survival; DKK3: Dickkopf-3; ER: estrogen receptor; HR: hazard ratio; MSP: methylation-specific polymerase chain reaction; NTC: no template control; OS: overall survival; PCP: planar cell polarity pathway; PCR: polymerase chain reaction; PR: progesterone receptor; TCF: T-cell factor; UICC: International Union Against Cancer; UMD: universal methylated DNA; UUD: universal unmethylated DNA; WHO: World Health Organization; WIF1: Wnt-inhibitory factor 1. Competing interests ED has declared that he has submitted a patent application on the use of DKK3 promoter methylation. The other authors declare that they have no competing interests. Authors' contributions JV carried out the methylation experiments, contributed to statistical evaluations, participated in the conception and design of the study, and wrote the manuscript. PJW participated in statistical analyses and data interpretation, and critically revised the manuscript. TF and PJS supported with expertise in statistical analyses, and critically revised the manuscript. AH provided clinical samples and clinicopathological data, and critically revised the manuscript. RK participated in the design and coordination of the study, and critically revised the manuscript. ED planned and coordinated the study, and critically revised the manuscript. All authors have given final approval of the version to be published. Pre-publication history The pre-publication history for this paper can be accessed here: Acknowledgements The expert technical assistance of Sevim Alkaya, Sonja von Serényi and Inge Losen is greatly appreciated. We thank Dr. Dieter Niederacher (Heinrich-Heine University, Düsseldorf, Germany) and Prof. Matthias Dürst (Friedrich-Schiller University, Jena, Germany) for kindly providing patient samples as well as Dr. Monika Klinkhammer-Schalke and Dr. Felicitas Horn (Tumour Registry, Regensburg, Germany) for continuous help in obtaining clinical follow-up data. This work is a research project within the German Human Genome Project and has been supported by the BMBF grant 01KW0401 to ED. References
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