Abstract
Chronic lymphocytic leukemia (CLL) is an incurable disease characterized by an extremely variable clinical course. We have recently shown that high catalase (CAT) expression identifies patients with an aggressive clinical course. Elucidating mechanisms regulating CAT expression in CLL is preeminent to understand disease mechanisms and develop strategies for improving its clinical management. In this study, we investigated the role of the CAT promoter rs1001179 single nucleotide polymorphism (SNP) and of the CpG Island II methylation encompassing this SNP in the regulation of CAT expression in CLL. Leukemic cells harboring the rs1001179 SNP T allele exhibited a significantly higher CAT expression compared with cells bearing the CC genotype. CAT promoter harboring the T -but not C- allele was accessible to ETS-1 and GR-β transcription factors. Moreover, CLL cells exhibited lower methylation levels than normal B cells, in line with the higher CAT mRNA and protein expressed by CLL in comparison with normal B cells. Methylation levels at specific CpG sites negatively correlated with CAT levels in CLL cells. Inhibition of methyltransferase activity induced a significant increase in CAT levels, thus functionally validating the role of CpG methylation in regulating CAT expression in CLL. Finally, the CT/TT genotypes were associated with lower methylation and higher CAT levels, suggesting that the rs1001179 T allele and CpG methylation may interact in regulating CAT expression in CLL. This study identifies genetic and epigenetic mechanisms underlying differential expression of CAT, which could be of crucial relevance for the development of therapies targeting redox regulatory pathways in CLL.
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Introduction
Chronic lymphocytic leukemia (CLL), the most prevalent form of leukemia in Western countries, is an incurable disease exhibiting an extremely variable clinical course and response to treatment [1]. The disease is characterized by an accumulation of monoclonal, mature, CD5 + B cells in the peripheral blood, bone marrow, and secondary lymphoid organs [1]. In the last decades, advances in understanding the biological heterogeneity of the disease have led to the identification of proteins in signaling pathways involved in leukemia homing, survival, and proliferation [2]. Some of these proteins have been associated with a more aggressive form of the disease and are targets for novel therapeutic intervention [3]. However, there remains substantial intragroup clinical heterogeneity in otherwise molecularly homogeneous CLL subgroups [4]. Moreover, responses to novel therapies are heterogeneous across patients and resistance or toxicity associated with their long-term exposure are common phenomena [1].
Along with the understanding of molecular heterogeneity of the disease, growing interest is emerging in redox metabolism in CLL. Alterations of redox homeostasis have been often observed in cancer [5, 6]. Increased reactive oxygen species (ROS) levels have been detected in various cancers, where they activate protumorigenic signals; enhance cell survival, proliferation, and chemoresistance; and cause DNA damage and genetic instability [7, 8]. However, escalated levels of ROS can also promote ferroptosis and antitumorigenic signals, resulting in an increase of oxidative stress and induction of cancer cell death [7, 9]. In CLL, leukemic cells accumulate higher levels of ROS than normal B cells [10]. However, ROS levels are extremely variable across samples of patients and higher ROS levels are associated with favorable prognostic features and a slower disease progression [11]. Augmented levels of ROS also confer increased sensitivity to anticancer agents, inducing apoptosis in leukemia cells [12]. Thus, escalated levels of ROS seem to account for lesser aggressive behavior of CLL cells. Although the underlying mechanisms of altered ROS in cancer patients often remain elusive, alterations of the multifaced antioxidant enzyme system controlling ROS homeostasis have been observed in several cancers [13, 14]. Specifically, the crucial antioxidant enzyme catalase (CAT), which decomposes H2O2 to O2 and H2O, is often altered in cancer cells [15]. CAT can protect cells from tumor initiation and progression, due to its role in preventing the accumulation of dangerous levels of oxidants. In line with this, some studies have reported downregulation of CAT expression in some cancers [13, 14, 16]. However, CAT expression is highly expressed in other cancer cells, which require high antioxidant detoxifying systems and upregulation of CAT for tumor progression and metastasis to compensate for high ROS production and to prevent ROS-mediated cell death processes [10, 17, 18]. Consistently, we have recently documented that high CAT mRNA expression identifies an aggressive clinical course whereas low CAT levels are associated with an indolent disease in CLL [19]. This dichotomous expression of CAT in CLL subsets with divergent clinical behaviors highlights the importance to decipher the molecular mechanisms regulating CAT expression in leukemia cells.
Regulation of CAT expression in cancer is known to be multifactorial, including genetic and epigenetic changes, transcriptional and posttranscriptional regulations as well as posttranslational modifications [15]. However, the molecular mechanisms involved remain still poorly characterized in cancers. The human CAT gene core promoter is located in the first 200 bp region from the major CAT transcription start site [20]. The promoter, enriched in GC bases, contains multiple transcription start sites and both GGGCGG and CCAAT boxes, but lacks a TATA box and classical initiator element sequences [20, 21]. The human CAT gene is characterized by the presence of several single nucleotide polymorphisms (SNPs) in the promoter, 5′ and 3′-untranslated regions, exons and introns [15]. However, only the rs1001179 SNP in the CAT promoter, which consists of C > T substitution at 34,438,684 positions on chromosome 11 (GRCh38; − 330 position from ATG), alters CAT expression as well as blood CAT levels [22, 23, 24]. The human CAT gene also contains several CpG islands, among which the largest is the second one located between the promoter and the first exon [25]. Some evidence indicates that epigenetic changes, such as DNA methylation, contribute to the regulation of CAT expression in several biological contexts [26, 27].
In this study, we investigated mechanisms regulating CAT expression in leukemic cells of CLL patients. We identified the rs1001179 SNP and DNA methylation status as mechanisms involved in regulating CAT expression in CLL that could underlie differential CAT expression in subsets of patients.
Materials and methods
Cell samples
Peripheral blood mononuclear cells (PBMCs) from 75 untreated CLL patients and 55 age-matched healthy donors (HDs) were collected and cryopreserved at the Hematology Unit, Azienda Ospedaliera Universitaria Integrata in Verona (Italy) under a protocol approved by the local Ethics Committee. In accordance with the Declaration of Helsinki, all patients provided written informed consent for the collection and use of their blood samples for research purposes. The sample workflow is shown in Supplementary Fig. 1. Clinical annotations at diagnosis are summarized in Table S1. PBMCs were isolated and prepared as indicated in Online Supplementary Methods. MEC1 cell line (German Collection of Microorganisms and Cell Cultures—DSMZ, DE, EU) was maintained in IMDM; primary CLL cells and the mouse bone marrow-derived stromal cell line (M210B4, kindly provided by Dr Connie J Eaves, Terry Fox Laboratories, BC, CA) were maintained in RPMI 1640 (Thermo Fisher Scientific MA, USA). The culture media were supplemented with 10% heat-inactivated fetal bovine serum, 2 mM L-glutamine and 2 mM penicillin/streptomycin, at 37 °C in 5% CO2.
Quantitative polymerase chain reaction
Quantitative polymerase chain reaction (qPCR) for CAT, DNMTs and TETs mRNA quantification was assessed using PowerUp SYBR Green Master Mix (Applied Biosystems, CA, USA). Samples were run in triplicate on the Real-Time Quant Studio 3 (Thermo Fisher Scientific), as detailed in Online Supplementary Methods.
Flow cytometry
Protein expression levels of CAT were assessed using monoclonal antibodies (Table S2) and flow cytometry, as described in Online Supplementary Methods.
DNA extraction and Genotyping
Genomic DNA extraction from CLL and HD PBMCs was performed using the salting-out method. Genotyping was assessed as previously described by Zarei et al. [28].
Chromatin immunoprecipitation
Chromatin immunoprecipitation (ChIP) was performed according to the EpiQuik™ Chromatin Immunoprecipitation Kit (Epigentek, NY, USA), as previously described [29]. Briefly, cells were cross-linked with 1% formaldehyde. The cross-linked lysate was sonicated 10 times for 15 s interspersed by 30 s of rest on ice between each pulse to obtain average DNA fragment sizes ranging from 200 to 1000 bp. The sheared DNA was immunoprecipitated with the kit-provided Non-Immune IgG negative control, 4 µg of anti-ETS-1 (Santa Cruz, CA, USA), anti-GRβ (Abcam, CB, GB) and anti-STAT4 (Genetex International, CA, USA). The immunoprecipitated DNA quantification was performed amplifying the region of interest (from − 371 to − 255, human CAT promoter region location from ATG) using qPCR. The primers used were: CAT Chip F, 5′-AGGATGCTGATAACCGGGAG-3′; CAT Chip R, 5′-AGGGTGCGGAAAGGAAGG-3′. The thermal cycle reaction was performed as follows: 95 °C for 10 min followed by 40 cycles at 95 °C for 15 s and 60 °C for 1 min. The average cycle threshold of each triplicate was normalized to the input (un-immunoprecipitated DNA). Data are expressed as a percentage of input DNA that represents the enrichment of TFs on the specific region of CAT promoter surrounding rs1001179 SNP.
Pyrosequencing
Quantification of methylation levels of eight CpG sites in the CAT promoter region (GRCh38 ( +)—Chr11: 34,438,657–34,438,708) was determined by pyrosequencing of bisulfite-converted DNA. Sample bisulfite treatment, PCR amplification, pyrosequencing, and quantification of methylation levels were performed by EpigenDx (MA, USA).
Inhibition of DNA methyltransferase in CLL cells
MEC1 cells were seeded at 0.5 × 106 cells/ml in culture media. HD B cells and primary CLL cells were added at a concentration of 1 × 106 cells/ml to pre-seeded and sublethally irradiated M210B4 cells to support primary-cell survival. Cells were treated for 96 h in a medium containing DMSO vehicle or 2 µM DNA methyltransferase inhibitor 5-aza-2′-deoxycytidine (DAC; Sigma Aldrich, MO, USA). After treatment, CAT mRNA levels were assessed by qPCR, as previously described.
Software and Statistical analysis
Hardy–Weinberg equilibrium was validated by χ2 test. Fisher’s exact test, unpaired Student’s t-test, Mann–Whitney, Wilcoxon matched-pairs signed rank test, and log-rank (Mantel-Cox) test were used where indicated. Time-to-first-treatment (TTFT) was calculated as previously described [19]. Correlation analysis was performed calculating the Spearman correlation coefficient (Spearman r). A P value < 0.05 was considered statistically significant. Graphing and statistical analyses were performed using GraphPad Prism software (v. 7.03, GraphPad Software Inc., CA, USA). Linear models were developed using the open-source platform for statistical computing R (version 3.6.0). In-silico analysis and mathematical models have been detailed in Online Supplementary Methods.
Results
Higher levels of catalase are associated with a faster leukemia progression
We have recently identified low CAT expression as a major antioxidant element that identifies an indolent clinical behavior in CLL whereas high CAT expression is associated with a more aggressive disease course [19]. To validate the prognostic significance of CAT expression in the patients’ sample set analyzed in this study, first we characterized CAT mRNA and protein expression in B cells isolated from CLL patients and HDs. Although the levels of CAT mRNA were highly heterogeneous among CLL samples (coefficients of variation: CV = 74.72% for CLL versus CV = 49.37% for HD B cells), CLL cells expressed higher average CAT mRNA levels compared with HD B cells (Fig. 1A), thus confirming previous data [10]. CLL cells also exhibited an overall higher and more heterogeneous CAT protein level than HD B cells (CV = 35.75 for CLL versus CV = 23.99% for HDs) (Fig. 1B). Association between CAT mRNA and protein levels in CLL B cells is shown in Supplementary Fig. 2.
Then, we aimed at validating the association of catalase expression and disease behavior in the analyzed patients’ sample set. As shown in Fig. 1C, Kaplan–Meier curves showed that high levels of CAT mRNA were significantly associated with a faster disease, indicated as a shorter time to first treatment (TTFT). Moreover, we confirmed the association between CAT expression and disease progression also at a protein level (Fig. 1D). In contrast, we detected no association between CAT expression, either at the mRNA and protein levels, and the IGHV-gene mutational status, the most reliable biological prognostic factor in CLL (Supplementary Fig. 3) [4].
In-silico analyses of the CAT rs1001179 SNP region
To investigate mechanisms underlying differential catalase expression in leukemia, among the SNPs in the human CAT gene we focused on the rs1001179 SNP in the CAT promoter (Fig. 2A) since it has been associated with altered CAT expression in normal peripheral blood cells [22, 23, 24]. To support the role of this SNP in influencing CAT expression, we investigated the conservation of the region in close proximity to the rs1001179 SNP (from − 345 to − 269, positions from ATG) across phylogenetically related species, using multiple sequence alignments and statistical coupling analysis. We analyzed CAT upstream promoter regions encompassing the rs1001179 SNP in species that include primates, non-primate mammals, rodents, and zebrafish. The analyzed sequence showed several regions with a high percentage identity among species interspersed with long insertions in rat and mouse (Fig. 2B). Remarkably, the region upstream and encompassing the rs1001179 (included in the red box of Fig. 2B; from − 345 to − 330, human CAT promoter region location from ATG) was highly conserved among primates, with a percentage identity of 75% (Fig. 2B).
SNPs occurring in gene regulatory sequences, such as the promoter or 5′-UTR regions, may interfere with gene expression creating or disrupting transcription factor (TF) binding sites [30]. The finding that the CAT rs1001179 SNP region is rich in TF binding sites [15], prompted us to investigate the possible influence of this SNP in modifying the putative TF binding sites. In-silico analysis of the 750 bp promoter region 600 upstream and 150 downstream of ATG (Ch11:34,438,414–34,439,164) predicted that the two alleles of the rs1001179 SNP involve changes in the TF binding sequences (Fig. 2C). In particular, the presence of C allele predicted binding sites for the General Transcription Factor II-I (TFII-I), and GATA-binding factor 1 (GATA-1). Otherwise, the presence of T allele disrupted the binding sequence for TFII-I and GATA-1 and created putative binding sites for Signal Transducer and Activator of Transcription 4 (STAT4), ETS Proto-Oncogene 1 (c-Ets-1) and Glucocorticoid Receptor beta (GR-β) (Fig. 2C).
Taken together, these data suggest that the rs1001179 SNP plays a crucial role in controlling CAT expression. Moreover, the in-silico prediction of TF binding sites highlights the role of rs101179 SNP in transcriptional regulation of CAT expression.
The rs1001179 SNP is associated with different CAT levels
To investigate the role of rs1001179 SNP in controlling CAT expression in CLL, first we analyzed the genotype of 33 CLL patients and 10 HDs. Among the CLL patients, we detected 15 cases (45%) harboring the CC genotype, 13 patients (39%) with the CT genotype, and 5 patients (15%) with the TT genotype. The CC genotype was harbored in 5 HDs as well as the CT genotype. Then, we compared relative CAT mRNA levels in CLL cells grouped based on CC, CT, or TT genotypes. CLL cells harboring the TT genotype exhibited significantly higher average CAT mRNA levels compared with cells bearing the CC genotype whereas the CT genotype showed a trend toward association with higher CAT mRNA levels compared with the CC genotype (Supplementary Fig. 4). Thus, to improve the comparison statistics we grouped the CT and TT genotypes and compared CAT mRNA levels in CLL or HD samples between CC and CT/TT genotypes (Fig. 3). In CLL, although CAT mRNA levels were highly heterogeneous in both the two genotype groups (CV = 64.40% for the CC genotype; CV = 85.95% for the CT/TT genotypes), CLL cells harboring the T allele exhibited significantly higher average CAT mRNA levels compared with cells bearing the CC genotype (Fig. 3A). However, we failed to document an association between the rs1001179 SNP and clinical progression, measured as TTFT (Supplementary Fig. 5). In HD B cells, CAT mRNA levels were less heterogeneous than in CLL cells in both the genotype groups (CV = 39.43% for the CC genotype; CV = 31.01% for the T allele). CAT mRNA levels between the CC and CT genotype subgroups did not show significant differences (Fig. 3B).
Next, to test the ability of the TFs predicted by the bioinformatic analysis (ETS-1, GR-β and STAT4; Fig. 2C) to bind the catalase promoter in presence of the T allele, we performed ChIP assay in CLL cells harboring CC or CT/TT genotype. We compared the binding of ETS-1, GR-β and STAT4 between the two genotype groups and the Non-Immune IgG negative control (IgG). CLL cells harboring the T allele exhibited a significantly higher binding affinity for ETS-1 and GR-β than CLL cells immunoprecipitated with the IgG negative control. By contrast, CLL cells bearing the CC genotype did not show significant differences in binding affinity compared with the IgG negative control for all the analyzed TFs. In conclusion, ChIP assay data showed that CAT promoter harboring the T -but not C- allele was accessible to ETS-1 and GR-β, but not to STAT4 (Fig. 3C).
Taken together, these data indicate that genetic polymorphism may underlie, at least in part, the heterogeneous expression of CAT associated with variable CLL clinical behavior.
Epigenetic regulation of CAT expression
To investigate the involvement of epigenetic regulatory mechanisms in the control of CAT expression, we quantified the methylation levels of 8 CpG sites within the CpG Island II of the human CAT gene promoter in genomic DNA from 21 CLL and 10 HD B-cell samples, using bisulfite pyrosequencing (Fig. 2A). This region encompasses the rs1001179 SNP [GRCh38 ( +)—Chr11:34,438,657–34438708] and is shown to be differentially methylated in various cell contexts, influencing CAT expression [26, 27]. The percentage methylation levels in each CpG site (CpG#-n) and in the overall analyzed region are shown in Table S3.
We compared the overall methylation levels between CLL and HD B cells, measured as average methylation levels of all the CpG sites, to capture the overall biologically relevant effects of methylation on gene expression. As shown in Fig. 4A, CLL cells exhibited lower methylation levels compared with HD B cells, in line with the differential CAT gene expression documented in those cells (Fig. 1).
Methylation is a well-regulated process and methylation levels of closer CpG sites have been shown to be correlated with each other [31, 32]. Thus, we first evaluated the correlation levels between each CpG site in HD B cells and in leukemia cells. In HD B cells, the methylation degree of CpG sites positively correlated with each other (Fig. 4B). In contrast, we observed an overall lower or even negative correlation of methylation levels among the analyzed sites in CLL cells (Fig. 4C). Therefore, CLL cells exhibit a specific methylation pattern within the CAT promoter, with CpG site methylation unrelated from each other, as opposed to the highly coordinated methylation observed in HD B cells.
Further analysis showed a significant inverse relationship between the level of CpG methylation in sites CpG#22 to CpG#18 (CpG#-22-18) of the CAT promoter and its mRNA levels in CLL cells but not in HD B cells (Fig. 5A). Supplementary Fig. 6 shows the association of DNA methylation percentage with CAT mRNA expression in CLL for each site, from CpG-#22 to CpG-#18. These data suggest that methylation of the CpG Island II of the human CAT gene promoter regulates CAT expression in CLL cells. To functionally validate if the CAT promoter methylation plays a functional role in regulating its transcription, we analyzed CAT mRNA levels in MEC1, primary CLL cells, and HD B cells after treatment with the DNA methyltransferase inhibitor 5-aza-2’-deoxycytidine (DAC). As shown in Fig. 5B, inhibition of methyltransferase activity induced a significant increase of CAT mRNA in the CLL cell line MEC1 and in primary CLL cells but not in HD cells. Moreover, the DAC-induced increase of CAT was confirmed also at the protein level in MEC1 cells (Fig. 5C).
Taken together, these data show that epigenetics can regulate CAT expression in CLL cells via promoter methylation of the CpG Island II.
Methylation is catalyzed by several DNA methyltransferases (DNMTs) and inhibited by DNA demethylases, namely ten-eleven translocation (TET) methylcytosine dioxygenases. To assess the role of these enzymes in the methylation of CAT promoter in leukemia cells, first we characterized DNMT1, DNMT3A, TET1-3 mRNA expression levels in CLL and HD B cells (Fig. 6A). Among the analyzed methyltransferases and demethylases, expression of DNMT1 resulted significantly reduced in CLL cells compared with HD B cells (Fig. 6A), in accordance with the lower methylation levels within the CAT promoter showed by CLL versus HD B cells (Fig. 4C). Moreover, DNMT1 expression level inversely correlated with CAT expression in CLL, thus suggesting that differences in methylation levels underlying catalase expression are driven by the DNMT1 enzyme (Fig. 6B).
Interaction of genetic and epigenetic mechanisms in regulating CAT gene expression
Given that the rs1001179 SNP and methylation of the CAT promoter region encompassing this SNP influence CAT expression in CLL cells, we hypothesized that differential methylation of the promoter and the rs1001179 SNP could interact in regulating CAT expression. We statistically tested this hypothesis using linear models where CAT mRNA level was assumed to depend upon the different genotypes—a factor variable with 3 levels, the “CC”, “CT”, and “TT”—and the methylation levels—a continuous covariate—and on their interaction thereof. As shown in Supplementary Fig. 7, the interaction between methylation and CT genotype on catalase mRNA expression is statistically significant whereas a trend—although not statistically significant—towards interaction was shown between methylation and the TT genotype. The lack of statistical significance for the TT genotype could be due to the limited number of available data used to feed the model, causing predictions to be estimated with high uncertainty (Supplementary Fig. 7). Moreover, the marginal effects for the interaction between methylation and either genotypes CT and TT are quite similar and different from that estimated for genotype CC (Supplementary Fig. 7), thus indicating that the T allele is sufficient to determine the negative interaction between methylation and genotype on catalase mRNA expression. Therefore, we aggregated the CT and TT genotypes to improve regression statistics. As shown in Fig. 7, we found a significant inverse linear relationship between mean percent methylation across sites CpG#22-CpG#18 and CAT mRNA levels in CLL cells harboring the CT/TT genotypes.
Taken together, these data show that the CT/TT genotypes are associated with lower methylation levels and higher CAT expression and suggest that the rs1001179 T allele and methylation may reciprocally cooperate in regulating CAT expression in CLL.
Discussion
We have recently shown that lower CAT expression identifies CLL patients with an indolent clinical course while higher CAT levels are associated with an aggressive disease [19]. In this study, we show that the rs1001179 SNP T allele in the CAT promoter is associated with higher CAT levels in CLL cells and provides binding sequences for ETS-1 and GR-β transcription factors. Moreover, methylation of the CpG Island II in the CAT promoter, likely driven by the DNMT1 enzyme, is a further crucial element in the regulation of CAT expression in CLL. Remarkably, statistical linear models suggest that the rs1001179 T allele and CAT promoter methylation cooperate in regulating CAT expression. The key advance of this study is to identify genetic and epigenetic mechanisms at the basis of the differential expression of CAT in CLL subsets.
Herein, we show that CLL cells express higher CAT mRNA and protein levels than normal B cells, thus confirming and extending previous data [10]. Moreover, we document that higher mRNA and protein CAT expression identifies a subset of treatment-naïve patients with a faster disease progression, thus validating our previous findings in an independent set of patients and extending the results also at the protein level. In the patient set characterized in this study, we could not find a significant association between catalase expression and the IGHV mutational status, in contrast with our previous results from an independent CLL patient set [19]. This finding could be explained by an intragroup CAT heterogeneity correlated with clinical outcome in otherwise molecularly homogeneous CLL groups. Differential CAT expression in CLL supports the existence of two main disease subtypes characterized by a disparity in clinical outcome, probably as a consequence of differences not only in underlying genetic lesions, epigenetic changes, activated signaling pathways, and interactions with the microenvironment, but also in the redox machinery. Therefore, the elucidation of mechanisms regulating CAT expression in CLL is of preeminent importance to unveil mechanisms of disease and to develop strategies for improving its clinical management. In this study, we focus on the rs1001179 SNP in the CAT promoter, since it is associated with altered CAT expression [22, 23, 24]. In-silico alignment sequence analysis of the region in close proximity to the rs1001179 SNP shows several conserved sequences among phylogenetically related species, with a higher percentage identity among primates, suggesting that this region plays a fundamental role in the CAT gene expression regulation. In line with the putative functional role, CLL cells harboring the rs1001179 SNP T allele exhibit higher average CAT mRNA levels compared with cells bearing the wild-type C allele. This finding is in accordance with previous studies showing an association between the rs1001179 SNP T allele and higher CAT levels in normal peripheral blood cells [22, 23, 24]. Moreover, a possible correlation between the rs1001179 SNP in the CAT promoter and susceptibility to disease has been suggested in prostate cancer and hepatocellular carcinoma [33, 34, 35]. In contrast, the rs1001179 SNP is not a risk factor for non-Hodgkin lymphoma development [36]. Taken together, these data point to genetic polymorphism as a possible mechanism underlying the heterogeneous expression of CAT associated with variable CLL clinical behavior. However, we do not document an association between the rs1001179 SNP and clinical progression, measured as TTFT. This finding could be explained by the multifactorial pattern of CAT expression regulation in cancer, which include not only genetic but also epigenetic changes and transcriptional regulation [15, 37]. Further studies on a larger patients’ set are required to address the impact of the rs1001179 SNP on CLL.
The in-silico prediction of TF-binding sites indicates that the rs1001179 SNP in the CAT promoter lies on a putative consensus sequence for specific TFs involved in the regulation of CAT expression. This analysis predicts a putative binding sequence for TFII-1 and GATA-1 in presence of the C allele, and for STAT4, ETS1 and GR-β in presence of the T allele. While previous in-silico analyses have already predicted the binding of GATA-1 and TFII-1 to the rs101179 SNP C allele [22, 38], and of STAT4 to the rs101179 SNP T allele [38], the putative binding of GR-β and ETS1 to rs101179 SNP has never been predicted so far. In this study, we validate the binding of GR-β and ETS-1 to the CAT promoter harboring the T -but not the C- allele. GRs can either directly bind canonical GC response elements (GREs) or act through indirect "tethered" interaction with other TFs, mediating transactivation or transrepression [39]. Moreover, several ChIP-seq studies also showed that GR can bind sequences that differ from canonical binding sequences, directly or indirectly, via other TFs [39, 40, 41]. Taken together, these data suggest that GR-β could directly bind the CAT promoter bearing the T allele, thus competing with ETS-1 or, alternatively, it can indirectly bind the promoter through a "tethered" interaction with ETS-1. GR-transcriptional programs exert effects on apoptosis, metabolism, and inflammation, often in collaboration with other TFs [42, 43, 44]. ETS1 is the major extracellular signal-regulated kinase 1/2 (ERK1/2) downstream effector [45, 46]. Interestingly, higher ERK1/2 activation identifies CLL patients with a faster disease progression [47, 48]. The findings that CLL patients with more aggressive disease are characterized by higher CAT levels [19] and ERK1/2 activation [19, 49], together with data on the function of rs1001179 T as a binding sequence for ETS1, could be suggestive of a possible role of the ERK1/2-ETS1 pathway in the transcriptional regulation of CAT that deserves to be further investigated.
This study also shows that CLL cells exhibit lower CAT promoter methylation compared with normal B cells, which could reflect the massive DNA hypomethylation that characterize CLL cells [50]. Moreover, while in normal B cells the methylation degree of CpG sites positively correlated with each other, in CLL cells we show an overall lower or even negative correlation of methylation levels among the CpG analyzed sites. Overall, methylation has been described as a well-regulated, non-random process throughout the genome and, based on this regulated process, closer neighboring CpG sites are more likely to share the same methylation status [31]. Thus, this leukemia-specific methylation pattern suggests that the co-methylation process between nearby CpG sites may be dysregulated in the CAT promoter of CLL cells. Moreover, methylation of the CpG Island II of the human CAT gene promoter negatively correlates with CAT mRNA levels. Remarkably, inhibition of DNA methyltransferase in CLL cells induces an augment of CAT mRNA levels, thus functionally validating the role of methylation in regulating CAT gene expression in CLL. However, DNA-methyltransferase inhibition does not completely restore CAT expression, thus suggesting that other mechanisms beside methylation are involved in the regulation of CAT expression in CLL, in line with the multifactorial nature of CAT expression regulation in cancer [15].
The expression of DNMT1 resulted significantly reduced in CLL cells compared with HD B cells, reflecting the lower methylation levels within the CAT promoter shown by CLL versus HD B cells. In addition, DNMT1 expression level inversely correlated with CAT expression in CLL, highlighting its role in modulating methylation of the CpG Island II in the CAT promoter. Therefore, these results identify DNMT1 as a driver of differences in methylation levels underlying catalase expression.
Using statistical linear models, we show that CLL cells carrying the rs1001179 SNP T allele also exhibit a lower CpG Island II methylation in the CAT promoter and a higher CAT expression. This finding suggests that methylation of the promoter region encompassing the rs1001179 SNP could modify the effects of this SNP on CAT expression in leukemia cells, for example influencing the binding affinity of TFs to DNA sites, as reported for other genes [51, 52, 53]. Indeed, some transcription factors preferably bind hypermethylated DNA while others are inhibited by hypermethylated CpG sites [54]. Herein, we also show that ETS-1 can bind the CAT promoter in presence of rs1001179 SNP T allele, which in turn results associated with higher CAT levels in CLL cells but not in HD B cells. Interestingly, DNA binding of ETS-1 is known to preferably bind hypomethylated DNA [54]. Taken together, these data could account for the finding that rs1001179 SNP does not influence CAT expression in HD B cells, which are indeed characterized by higher CAT promoter methylation levels, compared with leukemic cells. Remarkably, SNPs can also influence the methylation status of surrounding CpG sites operating as a cis-acting factor for methylation of adjacent CpG sites [30, 55]. Therefore, the potential interactions of these regulatory mechanisms can alter the binding of TFs to DNA in an allele-specific manner, thus playing a role in disease risk and cancer progression. Also, targeting CAT regulatory pathways may be an interesting therapeutic strategy to be used in combination with the existing ones, with the aim to overcome drug resistance in CLL. Interestingly, potential catalase inhibitors in cancer are being investigated [15, 56, 57, 58, 59, 60] whilst there is very scanty evidence on CAT regulatory pathways in relation to drug resistance [61]. However, further investigations are required to address the impact of genetic and epigenetic mechanisms of catalase regulation as well as their interactions on leukemia progression and resistance.
In conclusion, our data advance the knowledge of the role of genetic and epigenetic mechanisms controlling CAT expression in leukemia. Future challenges are to design therapeutics strategies targeting CAT regulatory pathways that could implement the effectiveness of current therapies and overcome drug resistance in CLL.
Data availability
The data used and/or analyzed during the current study are available from the corresponding author on reasonable request.
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Acknowledgements
The authors would like to thank all patients who have donated samples for this study and the “Centro Piattaforme Tecnologiche” of the University of Verona (Italy) for technical support.
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Open access funding provided by Università degli Studi di Verona within the CRUI-CARE Agreement. This work was supported by grants from Gilead Sciences (Italy)—Fellowship Program 2018- to MTS.
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MG designed and performed experiments, analyzed data, wrote the manuscript; EDP performed qPCR experiments and analyzed mRNA expression data; RC revised statistical analysis and computed mathematical analysis; SG, CC and OL performed flow cytometry and cell sorting experiments; GM contributed to methylation study design; ID and MD contributed to study design; FMQ and MK managed clinical data; MGR designed the study and interpreted data; MTS designed and coordinated the study, interpreted data, and wrote the manuscript. All authors reviewed the manuscript.
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This study was performed in line with the principles of the Declaration of Helsinki. Approval was granted by the Ethics Committee of, Azienda Ospedaliera Universitaria Integrata in Verona (Italy) (N. Prog. 1828, May 12, 2010—‘Institution of cell and tissue collection for biomedical research in Onco-Hematology’).
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Galasso, M., Dalla Pozza, E., Chignola, R. et al. The rs1001179 SNP and CpG methylation regulate catalase expression in chronic lymphocytic leukemia. Cell. Mol. Life Sci. 79, 521 (2022). https://doi.org/10.1007/s00018-022-04540-7
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DOI: https://doi.org/10.1007/s00018-022-04540-7