Skip to main content
Molecular Genetics & Genomic Medicine logoLink to Molecular Genetics & Genomic Medicine
. 2020 Jul 23;8(10):e1319. doi: 10.1002/mgg3.1319

Aberrant DNA methylation of PTPRG as one possible mechanism of its under‐expression in CML patients in the State of Qatar

Mohamed A Ismail 1,2, Muthanna Samara 3, Ali Al Sayab 2, Mohamed Alsharshani 4, Mohamed A Yassin 5, Govindarajulu Varadharaj 6, Marzia Vezzalini 7, Luisa Tomasello 8, Maria Monne 9, Hisham Morsi 10, M Walid Qoronfleh 11, Hatem Zayed 12, Richard Cook 1, Claudio Sorio 7, Helmout Modjtahedi 1, Nader I Al‐Dewik 1,13,14,15,
PMCID: PMC7549574  PMID: 32700424

Abstract

Background

Several studies showed that aberrant DNA methylation is involved in leukemia and cancer pathogenesis. Protein tyrosine phosphatase receptor gamma (PTPRG) expression is a natural inhibitory mechanism that is downregulated in chronic myeloid leukemia (CML) disease. The mechanism behind its downregulation has not been fully elucidated yet.

Aim

This study aimed to investigate the CpG methylation status at the PTPRG locus in CML patients.

Methods

Peripheral blood samples from CML patients at time of diagnosis [no tyrosine kinase inhibitors (TKIs)] (n = 13), failure to (TKIs) treatment (n = 13) and healthy controls (n = 6) were collected. DNA was extracted and treated with bisulfite treatment, followed by PCR, sequencing of 25 CpG sites in the promoter region and 26 CpG sites in intron‐1 region of PTPRG. The bisulfite sequencing technique was employed as a high‐resolution method.

Results

CML groups (new diagnosed and failed treatment) showed significantly higher methylation levels in the promoter and intron‐1 regions of PTPRG compared to the healthy group. There were also significant differences in methylation levels of CpG sites in the promoter and intron‐1 regions amongst the groups.

Conclusion

Aberrant methylation of PTPRG is potentially one of the possible mechanisms of PTPRG downregulation detected in CML.

Keywords: aberrant DNA, cancer, CML, epigenetics, methylation, PTPRG, Qatar


This study delivers important message that the epigenetic silencing phenomenon via DNA hyper‐methylation resulting in decreased PTPRG protein expression which play a critical role in CML disease initiation and progression. These findings also highlight the importance of evaluation and characterization the methylation levels of PTPRG gene in CML patients worldwide. Increasing cancer societies’ awareness on PTPRG methylation and its silencing effects in CML can be enriched and integrated into the international CML patients’ management.

graphic file with name MGG3-8-e1319-g003.jpg

1. BACKGROUND

Chronic myeloid leukemia (CML) is a clonal myeloid stem cell disorder associated with abnormal exponential proliferation of granulocytes and their precursors (Goldman, 2010). CML incidence rates are estimated to be 0.7–1.0/100,000 (Hoglund, Sandin, & Simonsson, 2015). BCR‐ABL1 fusion oncogene that results from the Philadelphia (Ph+) chromosome t (9; 22) (q34; q11), is the hallmark of CML disease. The translocation juxtaposes the c‐abl (ABL1) gene on chromosome 9 with the breakpoint cluster region (BCR) gene on chromosome 22. The BCR‐ABL oncoprotein plays a key role of the constitutive activation of the tyrosine kinase domain (Aladag & Haznedaroglu, 2019; Deininger, Goldman, & Melo, 2000), therefore it has become an important target for therapeutic interventions with small molecule tyrosine kinase inhibitors (TKIs) which compete with the ATP binding site of the catalytic domain of ABL tyrosine kinase (Soverini, Bassan, & Lion, 2019). In the past decade, the introduction of these TKIs has demonstrated a significant improvement in managing and treating CML. At present five TKIs; Imatinib Mesylate (IM), Nilotinib, Dasatinib, Ponatinib, and Bosutinib are approved by the United States Food and Drug Administration (FDA) for the treatment of CML patients (Druker et al., 2006; Gover‐Proaktor et al., 2019; Jabbour & Kantarjian, 2016; Sasaki et al., 2016). Despite the safety and efficacy of these TKIs in achieving major / complete response at the molecular, cytogenetic, and hematological levels (Baccarani, Rosti, & Soverini, 2019; Druker et al., 2006; Hochhaus et al., 2007), a substantial proportion of patients (around 20%–25%) develop resistance to treatments (Al‐Dewik, Jewell, Yassin, & Morsi, 2015; Apperley, 2007; Baccarani et al., 2019). TKIs resistance that is BCR‐ABL1‐dependent, where mechanisms such as point mutations or cellular/biological processes that interfere with TKI bioavailability disrupt the effectiveness of BCR‐ABL1 kinase inhibition. Moreover, BCR‐ABL1‐independent resistance is attributed to alternative signaling pathways operating in the presence of effective TKI inhibition of BCR‐ABL1 (Al‐Dewik, Ayoubi et al., 2011; Kalle, Sachchidanand, & Pallu, 2010; Nambu et al., 2010; Patel, O'Hare, & Deininger, 2017). One of the potential independent inhibitory mechanisms is the epigenetic regulation of protein tyrosine phosphatases.

Epigenetic silencing is a phenomenon whereby gene transcription is suppressed through DNA methylation (a process that may regulate gene function) resulting in decreased protein expression. Several studies have suggested that hypermethylation might play a role in disease progression in CML. Hypermethylation of several genes was associated with the progression of CML, its pathogenesis and response to treatment (Heller et al., 2016; Jelinek et al., 2011; Machova Polakova, 2013; Toyota et al., 2001; Wang et al., 2009, 2010).

Protein tyrosine phosphatase (PTP) superfamily of enzymes represents a natural regulatory mechanism of the tyrosine kinase family. They have the ability to remove phosphate groups from phosphorylated tyrosine residues leading to an equilibrium status in normal populations. Based on their cellular localization, PTPs are classified as receptor‐like and nonreceptor. Even though receptor‐type protein tyrosine phosphatases (PTPRs) share similar basic structure, distinct PTPRs have specific targets and, may thus, play alternative roles in cell regulation (Du & Grandis, 2015; Jiang, den Hertog, & Hunter, 2000; Tonks, 2006). Of these, protein tyrosine phosphatase receptor gamma (PTPRG) was described as a tumor suppressor gene in several tumors and its expression level was found to be significantly downregulated in CML patients and correlates with its promoter methylation in both patients and cell lines (Della Peruta, 2010; Tomasello et al., 2020). Moreover, PTPRG expression is restored in patients who respond optimally to TKIs treatment, and its expression remains low in patients who fail treatment (Vezzalini et al., 2017). More recently, we identified a single Nucleotide Polymorphism (SNPs) (rs62620047) in PTPRG (Y92H) in patients who failed Imatinib Mesylate (IM) treatment (Al‐Dewik et al., 2016). While the molecular and flow cytometry characteristics of PTPRG were studied (Vezzalini et al., 2017), the contributing epigenetic mechanisms that influence the PTPRG activity in CML patients remains unclear and warrants further investigation.

The aim of this study is to investigate the methylation patterns of PTPRG gene in a cohort of CML patients in Qatar where resistance to IM treatment has been reported to be significantly higher than other parts of the world (Al‐Dewik, Jewell, Yassin, El‐Ayoubi, & Morsi, 2014).

2. MATERIALS AND METHODS

2.1. Patient recruitment, characteristics, and sample collection

Informed consent was obtained from all participants. The study was approved by both Ministry of Public Health and institutional review board of Hamad Medical Corporation (Project No. 11118/11). This study adhered to the World Medical Association's Declaration of Helsinki (1964–2008) and its amendments for Ethical Human Research including confidentiality, privacy, and data management. A total of 26 adult CML patients and 6 matched healthy controls that were confirmed to have normal complete blood count (CBC) and negative for BCR‐ABL1 translocation were included in this study.

The peripheral blood samples were collected in EDTA tubes for newly diagnosed patients before starting TKIs and at time of failure for patients who relapsed or failed treatment according to European Leukemia Net (ELN) guidelines 2013. The CML patients' response to TKIs treatment was assessed based on the hematologic, cytogenetic, and molecular response results according to (ELN 2013) (Baccarani et al., 2013; Steegmann et al., 2016). Resistance to treatment was defined as showing lack of one of the following; hematological response and/or Ph+ >95% by 3 months, BCR‐ABL1 >10% and/or Ph+ >35% by 6 months, BCR‐ABL1 >1% and/or Ph+ >0 by 12 months after the start of treatment.

2.2. DNA isolation and bisulfite conversion

Total DNA was isolated from total leucocytes with Maxwell® 16 DNA Purification Kits as per manufacture guidelines (Khokhar, Mitui, Leos, Rogers, & Park, 2011). Purity of extracted DNA was assessed by a Nano Drop spectrophotometer 2000 (Thermofisher Scientific), a ratio of 1.8–2.4 was considered acceptable and for optimal results, an absolute quantity of 200–500 ng of DNA was used.

The DNA samples were then treated with sodium bisulfite according to the manufacturer's instructions (EpiTect Bisulfite Kit, QIAGEN). The bisulfite treatment catalyzes the deamination of all the unmethylated cytosine (uC), nucleotides to uracil (U), or thymidine (T) nucleotides and leaves the methylated cytosine (mC) unchanged. For optimal results, the amount of starting DNA in the bisulfite modification process was kept at 200–500 ng.

2.3. Primers design, bisulfite sequencing PCR (BSP), and Gradient Polymerase Chain reaction

The University of California, Santa Cruz (UCSC) Genome Browser (UCSC, 2013) was utilized to identify the possible “CpG sites” flanking the cytosine phosphate guanine (CpG) region followed by “Bio Edit Sequence Aliqment Editor” tool to identify the forward and reverse primers. Finally, BiSearch is a primer‐design and search tool utilized to ensure amplification of specific PCR products (Table S1) (BiSearch, 2019). Gradient PCR was performed to find the specific annealing temperature for the selected gene. Specific products 321bp and 218bp were detected at 60°C for promoter and intron‐1 regions of PTPRG, respectively. Bisulfite treatment was performed followed by Sanger sequencing (Table S2).

2.4. Bisulfite sequencing

The PCR products were sequenced with an ABI PRISM BigDye terminator sequencing kit v1.1 (Life Technologies) and directly analyzed by an automated ABI 3130 Genetic Analyzer (Life Technologies).

2.5. Methylation analysis

The analysis of the methylation status of CpG sites in the region amplified by PCR was performed using the ESME (Epigenetic Sequencing Methylation) Analysis Software (Lewin, Schmitt, Adorjan, Hildmann, & Piepenbrock, 2004). The software uses a genomic sequence as a reference and four‐dye trace sequencing data as tests. The ratio of C to T at CG sites was determined after correction for incomplete conversion to determine extent of methylation. Furthermore, the percentage of methylation was calculated as the peak height of C versus the peak height of C plus the peak height of T for each CpG site as shown in the computer‐generated sequencing chromatogram extracted from the Chromas program (Version 2.32, Technelysium). The ABI sequencing data files (*.ab1) along with reference fasta‐files (*.fa) were run through the ESME software. A single C at the corresponding CpG site was considered as 100% methylation, a single T as no methylation and overlapping C and T as partial methylation (0%–100%) (Jiang et al., 2010).

Cytosine phosphate guanine sites of promoter and intron‐1 regions of PTPRG were plotted using Methylation plotter (Mallona, Díez‐Villanueva, & Peinado, 2014). The methylation levels (0%–100%) were converted to (0–1) for plotting purposes (Mallona, Diez‐Villanueva, & Peinado, 2014). The genomic co‐ordinates were identified for the CpG sites (Table S3). The methylation data obtained was represented diagrammatically as follows: a horizontal series represented a single sample, circles referred to CpG sites and shape filled indicated the methylation of the site.

2.6. BCR‐ABL1 and PTPRG quantification by RQ‐PCR

The BCR‐ABL1 and PTPRG quantification were carried out using RQ‐PCR as previously described (Al‐Dewik et al., 2014; Della Peruta et al., 2010; Piras et al., 2013; Vezzalini et al., 2017) (Table 1).

Table 1.

CML patients’ characteristics according to gender, age, clinical phase, the type and total dose of TKIs received and response to treatments

Patients

Gender

Male (M), Female (F)

Age (years) Clinical phase BCR‐ABL1(IS) PTPRG/ABL*100 Treatment Response
CML case 01. M 45 CP 100% 0.02% No treatment. Newly diagnosed
CML case 02. M 23 CP 100% 0.01% No treatment. Newly diagnosed
CML case 03. M 28 CP 100% 0.01% No treatment. Newly diagnosed
CML case 04. M 38 CP 100% 0.01% No treatment. Newly diagnosed
CML case 05. M 43 AP 100% 0.01% No treatment. Newly diagnosed
CML case 06. F 45 CP 100% 0.01% No treatment. Newly diagnosed
CML case 07. M 46 CP 100% 0.02% No treatment. Newly diagnosed
CML case 08. F 28 CP 100% 0.01% No treatment. Newly diagnosed
CML case 09. M 40 CP 100% 0.01% No treatment. Newly diagnosed
CML case 10. M 34 CP 100% 0.01% No treatment. Newly diagnosed
CML case 11. M 58 CP 100% 0.01% No treatment. Newly diagnosed
CML case 12. F 43 CP 100% 0.01% No treatment. Newly diagnosed
CML case 13. M 32 CP 100% 0.01% No treatment. Newly diagnosed
CML case 14. F 49 CP 37% 0.2%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 15. F 35 CP 86% 0.01% Imatinib(400 mg), then shift to Dasatinib (50 mg) Failed treatment
CML case 16. M 23 CP 35% 0.3%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 17. M 25 CP 12% 0.3%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 18. F 34 CP 45% 0.2%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 19. M 31 CP 33% 0.2%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 20. F 29 CP 25% 0.3%

Imatinib (400 mg)

No changes in treatment

Failed treatment

CML case 21.

F 35 CP 68% 0.1%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 22. M 38 CP 80% 0.02%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 23. M 38 CP 60% 0.1%

Imatinib (400 mg)

No changes in treatment

Failed treatment
CML case 24. M 34 CP 55% 0.1% Imatinib (400 mg) Failed treatment
CML case 25. M 61 CP 11% 0.4%

Nilotinib (300 mg)

No changes in treatment

Failed treatment
CML case 26. M 40 BC 15% 0.3%

Dasatinib (70 mg)

No changes in treatment

Failed treatment

Abbreviations: AP, accelerated phase; BC; blast crisis phase; CP, chronic phase.

2.7. Statistical analysis

Descriptive statistics in the form of median range and frequency, and percentages were calculated. For continuous outcomes and categorical independent variables, T test for independent samples was used to test the mean differences for two groups and one‐way ANOVA with Bonferroni post hoc analysis was employed to test the mean differences for three groups using SPSS 24. All p values presented are two‐tailed, and p values < .05 are considered statistically significant.

3. RESULTS

3.1. Participants’ characteristics

Out of the 26 CML patients, 13 were newly diagnosed (ND) with CML and 13 failed treatment (F) (Table 1). Patients’ age ranged from 25–60 years (mean 37.48 and SD: 9.82) with a male to female ratio of 18 (69.2%) males and 8 (30.8%) females. In addition, there were six healthy participants who have never had cancer (H) (Age range: 23–46 years mean: 37.17; SD: 9.58; Gender: five (83.3%) male and one (16.7%) female). Out of the 26 patients, 24 patients were in Chronic Phase (CP) (92.3%), one patient was in accelerated phase (AP) (3.85%) and one patient was in Blast Crisis (BC) phase (3.85%).

3.2. Hypermethylation of the promoter region of PTPRG

T test was performed to study the methylation pattern of promoter of PTPRG in both cases and controls. The results revealed a significant difference in promoter methylation levels between CML (ND and F groups) and the healthy group (t (30) = 5.7, p < .001) (CML: mean = 6.77, SD: 2.87; Healthy: mean = 0.00, SD: 0.00).

Additionally, we tested the differences between the three groups (ND, F and H). One‐way ANOVA and Bonferroni post hoc test results indicated that the ND and F groups had significantly higher methylation compared with the H group (p < .001). There was no significant difference between ND and F groups (Table 2).

Table 2.

Descriptive analysis for methylation levels of the Promoter region and Intron‐1 region

Region Groups N Mean ± SD 95% confidence interval for mean
Lower bound Upper bound
Promotor Newly Diagnosed (ND) 13 7.3 ± 3.0 5.5 9.2
Failed (F) 13 6.1 ± 2.6 4.5 7.7
Healthy (H) 6 0.00 0.00 0.00
Intron‐1 Newly Diagnosed (ND) 13 14.13 ± 3.6 11.95 16.312
Failed (F) 13 15.11 ± 3.3 13.147 17.08
Healthy (H) 6 0.00 0.00 0.00

3.3. Methylation patterns in the 25 CpG sites of promoter region of PTPRG

One‐way ANOVA was performed to compare methylation status in each CpG site in the promoter region between the three groups (ND, F, and H). There were significant differences in 2 out of 25 CpG sites (13 and 143) among the groups (F (2, 29) = 7.0; p = .003 and F (2, 29) = 4.35; p = .022 respectively). Bonferroni post hoc test results indicated that methylation in CpG 13 for the ND and the F groups was significantly higher compared to the H group (p = .002 and p = .035 respectively). Furthermore, methylation in CpG 143 for the F group was significantly higher compared to the H group (p = .045). (Figure 1). No significant differences were found in the rest of the CpG sites.

Figure 1.

Figure 1

Data visualization with Methylation plotter for 25 sites of Promoter region of PTPRG. (a) Lollipop‐like visualization of methylation sites. (b) Methylation profiling plot reflecting with asterisks those positions for which significant differences between groups were detected. (c) Boxplots for each group showing the methylation data distribution. (d) Unsupervised hierarchical clustering of the data; sample label colors reflect groups classification

3.4. Hypermethylation of intron‐1 region of PTPRG

T test was performed to study the methylation pattern of intron‐1 of PTPRG in both cases and controls. The results revealed a significant difference in intron‐1 methylation levels between CML (ND and F groups) and the healthy group (t (30) = 10.38, p < .001) (CML: mean = 14.62, SD: 3.41; Healthy: mean = 0.00, SD: 0.00).

One‐way ANOVA showed significant differences in methylation between the three groups (ND, F and H) for intron‐1 region [F (2, 29) = 53.590, p = .001]. Bonferroni post hoc test results indicated that the methylation status for the ND and the F groups was significantly higher than the H group (p < .001). There was no significant difference between the ND and the F groups (Table 2).

3.5. Methylation patterns in 26 CpG sites of Intron‐1 region of PTPRG

One‐way ANOVA was also performed to compare methylation levels in each CpG sites in the intron‐1 region between the three groups; ND, F, and H. The results indicated that there were significant differences in 23 out of 26 CpG sites (Figure 2 and Table 3). Bonferroni post hoc test revealed that the methylation levels were significantly higher amongst the ND and the F groups compared to the H group in most of the intron‐1 CpG sites except CpG 70, CpG 94, CpG 155 and CpG 161 (in the ND group) and CpG 173 (in the F group). In addition, the F group had significantly higher methylation levels in the CpG sites 94 (p = .003) and 155 (p = .01) compared to the ND group.

Figure 2.

Figure 2

Data visualization with Methylation plotter for 26 sites of Intron‐1 region of PTPRG. (a) Lollipop‐like visualization of methylation sites. (b) Methylation profiling plot reflecting with asterisks those positions for which significant differences between groups were detected. (c) Boxplots for each group showing the methylation data distribution. (d) Unsupervised hierarchical clustering of the data; sample label colors reflect the groups classification

Table 3.

Methylation levels of the 23 CpG sites in the Intron‐1 region amongst F and ND groups compared to H group

Site Groups Mean ± SD 95% confidence interval range p value
CpG 59 F 17.00 ± 10.47 10.67 ± 23.32 .013
ND 16.07 ± 13.66 7.82 ± 24.33 .019
CpG 70 F 21.38 ± 24.21 6.75 ± 36.02 .034
ND 15.00 ± 5.89 11.44 ± 18.56 .204
CpG 77 F 8.30 ± 5.089 5.23 ± 11.38 .001
ND 8.30 ± 3.79 6.01 ± 10.60 .001
CpG 86 F 5.46 ± 3.69 3.23 ± 7.69 .001
ND 4.62 ± 1.61 3.64 ± 5.59 .003
CpG 88 F 2.69 ± 2.39 1.25 ± 4.14 .027
ND 2.85 ± 1.86 1.72 ± 3.97 .018
CpG 91 F 1.92 ± 3.59 −0.25 ± 4.09 .352
ND 1.00 ± 1.08 0.34 ± 1.65 1.000
CpG 94 F 11.38 ± 6.70 7.33 ± 15.43 .000
ND 4.92 ± 2.22 3.58 ± 6.26 .109
CpG 111 F 2.08 ± 6.64 −1.94 ± 6.09 1.000
ND 0.15±0.55 −0.18±0.49 1.000
CpG 117 F 1.84 ± 5.18 −1.29 ± 4.98 .817
ND 0.23±0.44 −0.03±0.50 1.000
CpG 155 F 11.30 ± 11.78 4.19 ± 18.43 .016
ND 1.77 ± 1.48 0.87 ± 2.66 1.000
CpG 161 F 9.46 ± 11.23 2.68 ± 16.25 .041
ND 2.69 ± 1.75 1.63 ± 3.75 1.000
CpG 173 F 4.00 ± 2.97 2.204 ± 5.80 .169
ND 5.85 ± 5.59 2.46 ± 9.22 .021
CpG 189 F 12.38 ± 6.51 8.45 ± 16.32 .042
ND 15.07 ± 13.44 6.95 ± 23.20 .011
CpG 191 F 13.85 ± 10.97 7.22 ± 20.47 .002
ND 10.92 ± 3.33 8.91 ± 12.93 .016
CpG 193 F 11.38 ± 4.37 8.74 ± 14.02 .000
ND 12.70 ± 4.73 9.83 ± 15.55 .000
CpG 199 F 8.00 ± 4.14 5.50 ± 10.50 .000
ND 7.85 ± 4.02 5.42 ± 10.27 .001
CpG 226 F 14.62 ± 7.10 10.32 ± 18.90 .000
ND 13.62 ± 4.23 11.06 ± 16.17 .000
CpG 228 F 23.62 ± 9.82 17.68 ± 29.55 .000
ND 24.46 ± 6.92 20.28 ± 28.65 .000
CpG 236 F 17.62 ± 9.22 12.05 ± 23.18 .000
ND 17.62 ± 5.58 14.25 ± 20.98 .000
CpG 238 F 17.54 ± 9.47 11.81 ± 23.26 .000
ND 17.62 ± 5.55 14.26 ± 20.97 .000
CpG 243 F 36.23 ± 13.23 28.24 ± 44.23 .000
ND 43.23 ± 14.76 34.21 ± 52.15 .000
CpG 246 F 28.54 ± 10.71 22.07 ± 35.01 .000
ND 28.54 ± 7.48 24.02 ± 33.06 .000
CpG 252 F 19.77 ± 8.05 14.90 ± 24.64 .000
ND 20.23 ± 4.21 174.70 ± 22.77 .000
CpG 260 F 28.00 ± 11.23 21.21 ± 34.79 .000
ND 29.69 ± 7.03 25.45 ± 33.94 .000
CpG 281 F 37.23 ± 15.54 27.84 ± 46.62 .000
ND 39.69 ± 14.37 31.01 ± 48.38 .000
CpG 288 F 27.31 ± 12.60 19.70 ± 34.92 .000
ND 22.77 ± 12.50 15.21 ± 30.33 .001

4. DISCUSSION

This is the first prospective study to evaluate epigenetic mechanisms of PTPRG regulation amongst CML patient's population where the rate of IM resistances is higher than other reported parts of the world (Al‐Dewik, Ayoubi et al., 2011; Al‐Dewik et al., 2014; Al‐Dewik, Jewell et al., 2014; Al‐Dewik, Morsi et al., 2016; Patel et al., 2017). It addresses the important role of PTPRG as a regulatory element in BCR‐ABL1‐mediated oncogenesis. Our study provides an evidence of the involvement of the epigenetic modification of PTPRG in the pathogenesis of CML. PTPRG was found to be significantly hyper methylated compared to the control (Figures 1 and 2).

Protein tyrosine phosphatase receptor gamma is known to induce a reduction of protein BCR‐ABL‐specific tyrosine phosphorylation of its direct downstream targets/substrates such as CRKL and of STAT5 (Della Peruta et al., 2010). In the current study, we expanded the methylation coverage of PTPRG via studying two regions of its promoter; 321bp andintron‐1 218 bp using advanced molecular technique such as Sanger sequencing. In the same context, Della Peruta et al., documented earlier that upregulated PTPRG expression is associated with a reduction in methylation levels in 166 bp of PTPRG using Methylation‐specific PCR technique (Della Peruta et al., 2010). More recently, we demonstrated that in PTPRG‐negative CML cell lines, the methylating enzyme DNA (cytosine‐5)‐methyl transferees 1 (DNMT1) is over‐expressed, bind to PTPRG promoter and is responsible for its hypermethylation, while its inhibition or downregulation correlates with PTPRG re‐expression (Tomasello et al., 2020). Our findings revealed that the methylation occurs more frequently in the intron‐1 region compared to the promoter region in CML patients besides showing a significant increase of the methylated percentage at the CpG sites in both promoter and intron‐1 regions compared to healthy individuals (Table 3). Interestingly, our findings indicated and confirmed that the hyper methylated pattern of PTPRG gene in CML patients acts as an early promoter for CML formation and to be dependent on BCR‐ABL1 titers. It may well contribute as a BCR‐ABL1 independent resistance molecular event.

We analyzed 51 CpG sites in PTPRG in CML and healthy control groups for methylation. Overall, the frequency of methylated CpG sites was significantly higher in CML cases compared to healthy controls, suggesting the potential involvement of CpG methylation sites in CML (Figures 1 and 2). Interestingly, two CpG sites in the intron‐1 region were found to be significantly hyper‐methylated amongst failed groups compared with newly diagnosed. In the newly diagnosed group, the frequency of CpG site methylation was significantly different from the healthy group, suggesting that CpG site methylation have a central role in the molecular events leading to CML. These findings support the assumption that the CML disease is not only driven by the BCR‐ABL1 translocation (Lecca & Sorio, 2016). Moreover, we also observed a significantly higher methylated CpG sites in the failed group compared to the healthy group, indicating that CpG site methylation may be important for disease progression (Table 3).

Several studies have documented the effect of DNA methylation pattern of regulatory genes on various cellular activities such as cell proliferation and survival, as well as cell‐signaling molecules in CML (Behzad et al., 2018). Jelinek et al., 2011 studied the Methylation levels of 10 genes in CML patients and found that the frequency of methylated genes ranged from 11%to 86% as follows: ABL1 (86%), CDH13 (79%), NPM2 (74%), PGRA (66%), TFAP2E (63%), DPYS (54%), PGRB (52%),OSCP1 (30%), PDLIM4 (21%), and CDKN2B (11%), suggesting an aberrant methylation of DNA associated with the progression of the disease (Jelinek et al., 2011). Another study using a whole methylome approach in 36 CML patients, found that 31 genes were uniquely hyper methylated in CML and 42 genes that became hyper methylated with the progression of CML. Remarkably, the same group showed that utilizing DNA methylation inhibitor such as azacytidine in blastic crisis CML patients resistant to Imatinib Mesylate (IM) could reverse the aberrant hypermethylation associated with progression of CML to blast crisis and supports the use of this drug as an epigenetic therapy (Byun, 2007). In another study with CML cell line K562 and its IM resistant variant (K562‐R) the methylation levels were found to be significantly higher and that the gene expression levels were significantly lower for MLH1, RPRM, FEM1B, and THAP2 in K562‐R cells when compared to parental K562 cells. Further, treatment of the K562‐R cells with epigenetic drugs, such as 5‐azacytidine (AzaC) reduced resistance to Imatinib Methylate (REN, 2012). In another study, SOX30 methylation has been correlated with disease progression in patients with chronic myeloid leukemia (Zhang et al., 2019).

Protein tyrosine phosphatase receptor gamma expression has been shown to be downregulated by RAS activation, while its upregulation has been observed in hypo‐methylation condition in in childhood acute lymphoblastic leukemia (ALL) (Xiao et al., 2014). Finally, PTPRG methylation has also been reported in solid cancer (Cheung et al., 2008; Wang & Dai, 2007). Eddy et al., suggested that PTPRG inton1 methylation could be a biomarker for early detection of colorectal cancer (van Roon et al., 2011).

5. CONCLUSION

Hypermethylation of PTPRG locus might suggest a molecular mechanism independent of BCR‐ABL1 function in CML patients. Our data contributes to deepen our understanding of the crucial role of aberrant DNA methylation in CML disease initiation and progression. Potentially, PTPRG methylation could be a biomarker for early detection of CML. However, further studies are needed on the validation of specific aberrant methylation of PTPRG and its prognostic and predictive values for the response to therapy in the CML patients.

CONFLICTS OF INTEREST

The authors declare that there are no conflicts of/or competing interests.

AUTHORS' CONTRIBUTIONS

MI was responsible for performing the experiments; MI, MS, and ND were responsible for analyzing the data. MI and ND designed the experiment. MI, ND, and MS performed statistical analysis. MI, MY, and ND involved in patient's recruitment. MI, ND, AS, MS, MV, GV, MM, MS, HiM, MWQ, HZ, RC, CS, HeM, and ND conceptual work, framework, draft write‐up and editing. All authors read and approved the final manuscript.

ETHICAL APPROVAL AND CONSENT APPROVAL

Informed consent was obtained from all participants. The study was approved by both Ministry of Public Health and institutional review board of Hamad Medical Corporation (Project No. 1118/11). This study adhered to the World Medical Association's Declaration of Helsinki (1964–2008) for Ethical Human Research including confidentiality, privacy, and data management.

CONSENT FOR PUBLICATION

Consent for publication was obtained through ethics approval and consent to participate.

Supporting information

Tables S1‐S3

ACKNOWLEDGMENTS

This report (publication) was made possible by NPRP grants (28‐6‐7‐17 and 4‐157‐3–052) from the Qatar National Research Fund (a member of Qatar foundation). The statements made herein are solely the responsibility of the authors. The authors thank their respective institutions for their continued support. The publication of this article was funded by the Qatar National Library, Doha, Qatar. MI started this study as part of a PhD project under the supervision of ND (Local PhD Supervisor), HeM (Director of study) and RC (Other supervisor) at Kingston University London.

Ismail MA, Samara M, Al Sayab A, et al. Aberrant DNA methylation of PTPRG as one possible mechanism of its under‐expression in CML patients in the State of Qatar. Mol Genet Genomic Med. 2020;8:e1319.

Funding information

This work was supported by NPRP grants numbers (28‐6‐7‐17 and 4‐157‐3–052).

DATA AVAILABILITY STATEMENT

This is a research article and all data generated or analyzed during this study are included in this publication All enquiries should be directed to Dr. Nader Al‐Dewik: naldewik@hamad.qa.

REFERENCES

  1. Aladag, E. , & Haznedaroglu, I. C. (2019). Current perspectives for the treatment of chronic myeloid leukemia. Turkish Journal of Medical Sciences, 49, 1–10. [DOI] [PMC free article] [PubMed] [Google Scholar]
  2. Al‐Dewik, N. I. E. , Ayoubi, H. E. , Jewell, A. , & Morsi, H. (2011). BCR‐ABL kinase point mutations don't correlate with the resistance of chronic myelocytic leukemia (CML) to imatinib mesylate (IM); A study on CML patient population in Qatar. Hamad bin Khalifa University Press (HBKU Press), 2011(1), BMP52. doi: 10.5339/qfarf.2011.BMP52. [DOI] [Google Scholar]
  3. Al‐Dewik, N. I. E. , Ayoubi, H. E. , Jewell, A. , & Morsi, H. (2011). Elevation of alpha acid glycoprotein (AGP) does not correlate with the resistance of chronic myeloid leukaemia (CML) to imatinib mesylate (IM). Hamad bin Khalifa University Press (HBKU Press), 2011(1), BMP51. [Google Scholar]
  4. Al‐Dewik, N. I. , Jewell, A. P. , Yassin, M. , El‐Ayoubi, H. R. , & Morsi, H. M. (2014). Studying the impact of presence of point mutation, insertion mutation and additional chromosomal abnormalities in chronic myeloid leukemia patients treated with imatinib mesylate in the State of Qatar. QScience Connect, 2014(1), 13. [Google Scholar]
  5. Al‐Dewik, N. I. , Jewell, A. P. , Yassin, M. A. , El‐Ayoubi, H. R. , & Morsi, H. M. (2014). Molecular monitoring of patients with chronic myeloid leukemia (CML) in the state of Qatar: Optimization of techniques and response to imatinib. Qscience Connect, 2014, 24. [Google Scholar]
  6. Al‐Dewik, N. I. , Jewell, A. P. , Yassin, M. A. , & Morsi, H. M. (2015). Studying the impact of presence of alpha acid glycoprotein and protein glycoprotein in chronic myeloid leukemia patients treated with imatinib mesylate in the state of Qatar. Biomark Cancer, 7, 63–67. [DOI] [PMC free article] [PubMed] [Google Scholar]
  7. Al‐Dewik, N. I. , Monne, M. , Araby, M. , Al Sayab, A. , Vezzalini, M. , Tomasello, L. , … Yassin, M. A. (2016). Novel molecular findings in protein tyrosine phosphatase receptor gamma (PTPRG) among chronic myelocytic leukemia (CML) patients studied by next generation sequencing (NGS): A pilot study in patients from the state of Qatar and Italy. Blood, 128, 5427–5427. [Google Scholar]
  8. Al‐Dewik, N. I. , Morsi, H. M. , Samara, M. M. , Ghasoub, R. S. , Gnanam, C. C. , Bhaskaran, S.K , … Yassin, M. A. (2016). Is adherence to imatinib mesylate treatment among patients with chronic myeloid leukemia associated with better clinical outcomes in qatar? Clinical Medicine Insights Oncology, 10, 95. doi: 10.4137/cmo.s32822 [DOI] [PMC free article] [PubMed] [Google Scholar]
  9. Apperley, J. F. (2007). Part I: Mechanisms of resistance to imatinib in chronic myeloid leukaemia. The Lancet Oncology, 8, 1018–1029. [DOI] [PubMed] [Google Scholar]
  10. Baccarani, M. , Deininger, M. W. , Rosti, G. , Hochhaus, A. , Soverini, S. , Apperley, J. F. , … Hehlmann, R. (2013). European LeukemiaNet recommendations for the management of chronic myeloid leukemia: 2013. Blood, 122, 872–884. [DOI] [PMC free article] [PubMed] [Google Scholar]
  11. Baccarani, M. , Rosti, G. , & Soverini, S. (2019). Chronic myeloid leukemia: The concepts of resistance and persistence and the relationship with the BCR‐ABL1 transcript type. Leukemia, 33, 2358–2364. [DOI] [PubMed] [Google Scholar]
  12. Behzad, M. M. , Shahrabi, S. , Jaseb, K. , Bertacchini, J. , Ketabchi, N. , & Saki, N. (2018). Aberrant DNA methylation in chronic myeloid leukemia: Cell fate control, prognosis, and therapeutic response. Biochemical Genetics, 56, 149–175. [DOI] [PubMed] [Google Scholar]
  13. BISEARCH . (2019). Primer Design and Search Tool [Online]. Retrieved from http://bisearch.enzim.hu [Google Scholar]
  14. Byun, H.‐M. , Eshaghian S., Jiang J. Y., Choi S. H., Soussa J., Ramezani L., Douer D., & Yang, A. S. (2007). DNA methylation analysis of 807 genes in chronic myeloid leukemia and acute promyelocytic leukemia. Blood, 110, 2122. [Google Scholar]
  15. Cheung, A. K. , Lung, H. L. , Hung, S. C. , Law, E. W. , Cheng, Y. , Yau, W. L. , … Lung, M. L. (2008). Functional analysis of a cell cycle‐associated, tumor‐suppressive gene, protein tyrosine phosphatase receptor type G, in nasopharyngeal carcinoma. Cancer Research, 68, 8137–8145. [DOI] [PubMed] [Google Scholar]
  16. Deininger, M. W. , Goldman, J. M. , & Melo, J. V. (2000). The molecular biology of chronic myeloid leukemia. Blood, 96, 3343–3356. [PubMed] [Google Scholar]
  17. Della Peruta, M. , Martinelli, G. , Moratti, E. , Pintani, D. , Vezzalini, M. , Mafficini, A. , … Sorio, C. (2010). Protein tyrosine phosphatase receptor type gamma is a functional tumor suppressor gene specifically downregulated in chronic myeloid leukemia. Cancer Research, 70, 8896–8906. [DOI] [PubMed] [Google Scholar]
  18. Druker, B. J. , Guilhot, F. , O'Brien, S. G. , Gathmann, I. , Kantarjian, H. , Gattermann, N. , … Investigators, I. (2006). Five‐year follow‐up of patients receiving imatinib for chronic myeloid leukemia. New England Journal of Medicine, 355, 2408–2417. [DOI] [PubMed] [Google Scholar]
  19. Du, Y. , & Grandis, J. R. (2015). Receptor‐type protein tyrosine phosphatases in cancer. Chinese Journal of Cancer, 34, 61–69. [DOI] [PMC free article] [PubMed] [Google Scholar]
  20. Goldman, J. M. (2010). Chronic myeloid leukemia: A historical perspective. Seminars in Hematology, 47, 302–311. [DOI] [PubMed] [Google Scholar]
  21. Gover‐Proaktor, A. , Granot, G. , Pasmanik‐Chor, M. , Pasvolsky, O. , Shapira, S. , Raz, O. , … Leader, A. (2019). Bosutinib, dasatinib, imatinib, nilotinib, and ponatinib differentially affect the vascular molecular pathways and functionality of human endothelial cells. Leukaemia & Lymphoma, 60, 189–199. [DOI] [PubMed] [Google Scholar]
  22. Heller, G. , Topakian, T. , Altenberger, C. , Cerny‐Reiterer, S. , Herndlhofer, S. , Ziegler, B. , … Zochbauer‐Muller, S. (2016). Next‐generation sequencing identifies major DNA methylation changes during progression of Ph+ chronic myeloid leukemia. Leukemia, 30, 1861–1868. [DOI] [PMC free article] [PubMed] [Google Scholar]
  23. Hochhaus, A. , Kantarjian, H. M. , Baccarani, M. , Lipton, J. H. , Apperley, J. F. , Druker, B. J. , … Shah, N. P. (2007). Dasatinib induces notable hematologic and cytogenetic responses in chronic‐phase chronic myeloid leukemia after failure of imatinib therapy. Blood, 109, 2303–2309. [DOI] [PubMed] [Google Scholar]
  24. Hoglund, M. , Sandin, F. , & Simonsson, B. (2015). Epidemiology of chronic myeloid leukaemia: An update. Annals of Hematology, 94(Suppl 2), S241–S247. [DOI] [PubMed] [Google Scholar]
  25. Jabbour, E. , & Kantarjian, H. (2016). Chronic myeloid leukemia: 2016 update on diagnosis, therapy, and monitoring. American Journal of Hematology, 91, 252–265. [DOI] [PubMed] [Google Scholar]
  26. Jelinek, J. , Gharibyan, V. , Estecio, M. R. , Kondo, K. , He, R. , Chung, W. , … Issa, J. P. (2011). Aberrant DNA methylation is associated with disease progression, resistance to imatinib and shortened survival in chronic myelogenous leukemia. PLoS One, 6, e22110. [DOI] [PMC free article] [PubMed] [Google Scholar]
  27. Jiang, G. , den Hertog, J. , & Hunter, T. (2000). Receptor‐like protein tyrosine phosphatase alpha homodimerizes on the cell surface. Molecular and Cellular Biology, 20, 5917–5929. [DOI] [PMC free article] [PubMed] [Google Scholar]
  28. Jiang, M. , Zhang, Y. , Fei, J. , Chang, X. , Fan, W. , Qian, X. , … Lu, D. (2010). Rapid quantification of DNA methylation by measuring relative peak heights in direct bisulfite‐PCR sequencing traces. Laboratory Investigation, 90, 282–290. [DOI] [PubMed] [Google Scholar]
  29. Kalle, A. M. , Sachchidanand, S. , & Pallu, R. (2010). Bcr–Abl‐independent mechanism of resistance to imatinib in K562 cells: Induction of cyclooxygenase‐2 (COX‐2) by histone deacetylases (HDACs). Leukemia Research, 34, 1132–1138. [DOI] [PubMed] [Google Scholar]
  30. Khokhar, S. K. , Mitui, M. , Leos, N. K. , Rogers, B. B. , & Park, J. Y. (2011). Evaluation of Maxwell(R) 16 for automated DNA extraction from whole blood and formalin‐fixed paraffin embedded (FFPE) tissue. Clinical Chemistry and Laboratory Medicine, 50, 267–272. [DOI] [PubMed] [Google Scholar]
  31. Lecca, P. , & Sorio, C. (2016). Accurate prediction of the age incidence of chronic myeloid leukemia with an improved two‐mutation mathematical model. Integrative Biology, 8, 1261–1275. [DOI] [PubMed] [Google Scholar]
  32. Lewin, J. , Schmitt, A. O. , Adorjan, P. , Hildmann, T. , & Piepenbrock, C. (2004). Quantitative DNA methylation analysis based on four‐dye trace data from direct sequencing of PCR amplificates. Bioinformatics, 20, 3005–3012. [DOI] [PubMed] [Google Scholar]
  33. Machova Polakova, K. , Koblihova, J. , & Stopka, T. (2013). Role of epigenetics in chronic myeloid leukemia. Current Hematologic Malignancy Reports, 8, 28–36. [DOI] [PMC free article] [PubMed] [Google Scholar]
  34. Mallona, I. , Diez‐Villanueva, A. , & Peinado, M. A. (2014). Methylation plotter: A web tool for dynamic visualization of DNA methylation data. Source Code for Biology and Medicine, 9, 11. [DOI] [PMC free article] [PubMed] [Google Scholar]
  35. Mallona, I. , Díez‐Villanueva, A. , & Peinado, M. A. (2014). Methylation plotter: A web tool for dynamic visualization of DNA methylation data. Source Code for Biology and Medicine, 9, 1–5. [DOI] [PMC free article] [PubMed] [Google Scholar]
  36. Nambu, T. , Araki, N. , Nakagawa, A. , Kuniyasu, A. , Kawaguchi, T. , Hamada, A. , & Saito, H. (2010). Contribution of BCR‐ABL‐independent activation of ERK1/2 to acquired imatinib resistance in K562 chronic myeloid leukemia cells. Cancer Science, 101, 137–142. [DOI] [PMC free article] [PubMed] [Google Scholar]
  37. Patel, A. B. , O'Hare, T. , & Deininger, M. W. (2017). Mechanisms of resistance to ABL kinase inhibition in chronic myeloid leukemia and the development of next generation ABL kinase inhibitors. Hematology/oncology Clinics of North America, 31, 589–612. [DOI] [PMC free article] [PubMed] [Google Scholar]
  38. Piras, G. , Vezzalini, M. , Uras, A. , Murineddu, M. , Yassin, M. A. , Al‐Dewik, N. I. , … Sorio, C. (2013). PTPRG and BCR/ABL1 expression in CML patients at diagnosis and upon TKI treatment: Preliminary results. Blood, 122, 5163–5163. [Google Scholar]
  39. REN . (2012). Identification of DNA methylation biomarkers in imatinib‐resistant chronic myeloid leukemia cells.
  40. Sasaki, K. , Kantarjian, H. , Jabbour, E. , Ravandi, F. , Takahashi, K. , Konopleva, M. , … Cortes, J. E. (2016). Frontline therapy with high‐dose imatinib versus second generation tyrosine kinase inhibitor in patients with chronic‐phase chronic myeloid leukemia ‐ a propensity score analysis. Haematologica, 101, e324–e327. [DOI] [PMC free article] [PubMed] [Google Scholar]
  41. Soverini, S. , Bassan, R. , & Lion, T. (2019). Treatment and monitoring of Philadelphia chromosome‐positive leukemia patients: Recent advances and remaining challenges. Journal of Hematology & Oncology, 12, 39. [DOI] [PMC free article] [PubMed] [Google Scholar]
  42. Steegmann, J. L. , Baccarani, M. , Breccia, M. , Casado, L. F. , Garcia‐Gutierrez, V. , Hochhaus, A. , … Clark, R. E. (2016). European LeukemiaNet recommendations for the management and avoidance of adverse events of treatment in chronic myeloid leukaemia. Leukemia, 30, 1648–1671. [DOI] [PMC free article] [PubMed] [Google Scholar]
  43. Tomasello, L. , Vezzalini, M. , Boni, C. , Bonifacio, M. , Scaffidi, L. , Yassin, M. , … Sorio, C. (2020). Regulative loop between β‐catenin and protein tyrosine receptor type γ in chronic myeloid leukemia. International Journal of Molecular Sciences, 21, 2298. [DOI] [PMC free article] [PubMed] [Google Scholar]
  44. Tonks, N. K. (2006). Protein tyrosine phosphatases: From genes, to function, to disease. Nature Reviews Molecular Cell Biology, 7, 833–846. [DOI] [PubMed] [Google Scholar]
  45. Toyota, M. , Kopecky, K. J. , Toyota, M.‐O. , Jair, K.‐W. , Willman, C. L. , & Issa, J.‐P.‐J. (2001). Methylation profiling in acute myeloid leukemia. Blood, 97, 2823–2829. [DOI] [PubMed] [Google Scholar]
  46. UCSC . (2013). Human hg38 chr3:61561571‐62297609 UCSC Genome Browser v390 [Online]. Retrieved from https://genome.ucsc.edu/cgi‐bin/hgTracks?db=hg38&lastVirtModeType=default&lastVirtModeExtraState=&virtModeType=default&virtMode=0&nonVirtPosition=&position=chr3%3A61561571%2D62297609&hgsid=780556759_Shpm2jlMxywEjyXrNNwjB1gFkQYn [Google Scholar]
  47. van Roon, E. H. , de Miranda, N. F. , van Nieuwenhuizen, M. P. , de Meijer, E. J. , van Puijenbroek, M. , Yan, P. S. , … Boer, J. M. (2011). Tumour‐specific methylation of PTPRG intron 1 locus in sporadic and Lynch syndrome colorectal cancer. European Journal of Human Genetics, 19, 307–312. [DOI] [PMC free article] [PubMed] [Google Scholar]
  48. Vezzalini, M. , Mafficini, A. , Tomasello, L. , Lorenzetto, E. , Moratti, E. , Fiorini, Z. , … Sorio, C. (2017). A new monoclonal antibody detects downregulation of protein tyrosine phosphatase receptor type gamma in chronic myeloid leukemia patients. Journal of Hematology & Oncology, 10, 129. [DOI] [PMC free article] [PubMed] [Google Scholar]
  49. Wang, J. F. , & Dai, D. Q. (2007). Metastatic suppressor genes inactivated by aberrant methylation in gastric cancer. World Journal of Gastroenterology, 13, 5692–5698. [DOI] [PMC free article] [PubMed] [Google Scholar]
  50. Wang, X. , Li, J. , Fu, B. , Guo, L. , Zhang, J. , & Huang, S. (2009). Methylation status of JunB and CDH13 gene promoter in CD34(+)CD38(‐) chronic myelogenous leukemia cells. Zhongguo Shi Yan Xue Ye Xue Za Zhi, 17, 1405–1408. [PubMed] [Google Scholar]
  51. Wang, Y.‐L. , Qian, J. , Lin, J. , Yao, D.‐M. , Qian, Z. , Zhu, Z.‐H. , & Li, J.‐Y. (2010). Methylation status of DDIT3 gene in chronic myeloid leukemia. Journal of Experimental & Clinical Cancer Research, 29, 54. [DOI] [PMC free article] [PubMed] [Google Scholar]
  52. Xiao, J. , Lee, S. T. , Xiao, Y. , Ma, X. , Houseman, E. A. , Hsu, L. I. , … Wiemels, J. L. (2014). PTPRG inhibition by DNA methylation and cooperation with RAS gene activation in childhood acute lymphoblastic leukemia. International Journal of Cancer, 135, 1101–1109. [DOI] [PMC free article] [PubMed] [Google Scholar]
  53. Zhang, T. J. , Wen, X. M. , Zhou, J. D. , Gu, Y. , Xu, Z. J. , Guo, H. , … Qian, J. (2019). SOX30 methylation correlates with disease progression in patients with chronic myeloid leukemia. OncoTargets and Therapy, 12, 4789–4794. [DOI] [PMC free article] [PubMed] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Tables S1‐S3

Data Availability Statement

This is a research article and all data generated or analyzed during this study are included in this publication All enquiries should be directed to Dr. Nader Al‐Dewik: naldewik@hamad.qa.


Articles from Molecular Genetics & Genomic Medicine are provided here courtesy of Blackwell Publishing

RESOURCES