Single-nucleotide polymorphisms within the antioxidant defence system and associations with aggressive prostate cancer
June M. Chan, Departments of Epidemiology & Biostatistics and Urology, University of California San Francisco (UCSF), MC 3110, Helen Diller Family Cancer Research Building, 1450 3rd Street, PO Box 589001, San Francisco, CA 94158-9001, USA.
What’s known on the subject? and What does the study add?
Prior studies have identified potential interaction effects between antioxidant nutrients and germline gene variants with regards to prostate cancer risk. In particular, the rs4880 gene variant in SOD2 (or MnSOD) has been linked to several cancers, including prostate, and appears to interact with antioxidant status and cancer risk.
We identified additional variants in SOD2 and SOD1 that may affect risk of prostate cancer, or interact with selenium status to affect prostate cancer risk.
To study the effects of oxidative stress on prostate cancer development as the exact biological mechanisms behind the relationship remain uncertain. We previously reported a statistically significant interaction between circulating selenium levels, variants in the superoxide dismutase 2 gene (SOD2; rs4880), and risk of developing prostate cancer and presenting with aggressive prostate cancer.
PATIENTS AND METHODS
We genotyped men with localized/regional prostate cancer for 26 loci across eight genes that are central to cellular antioxidant defence: glutathione peroxidase (GPX1, GPX4), peroxisome proliferator-activated receptor γ coactivator (PPARGC1A, PPARGC1B), SOD1, SOD2, and SOD3, and ‘X-ray repair complementing defective repair in Chinese hamster cell 1’ (XRCC1). Among 489 men, we examined the relationships between genotypes, circulating selenium levels, and risk of presenting with aggressive prostate cancer at diagnosis, as defined by stage, grade and prostate-specific antigen (PSA) level (213 aggressive cases).
Two variants in SOD2 were significantly associated with the risk of aggressive prostate cancer (rs17884057, odds ratio 0.83, 95% confidence interval 0.70–0.99; and rs4816407, 1.27, 1.02–1.57); men with A alleles at rs2842958 in SOD2 had lower plasma selenium levels (median 116 vs 121.8 µg/L, P= 0.03); and the association between plasma selenium levels and risk of aggressive prostate cancer was modified by SOD1 (rs10432782) and SOD2 (rs2758330).
While this study was cross-sectional and these associations might be due to chance, further research is warranted on the potential important role of antioxidant defence in prostate cancer.
reactive oxygen species
antioxidant defence system
peroxisome proliferators-activated receptor γ coactivator
X-ray repair complementing defective repair in Chinese hamster cells
logarithm of odds
The association of oxidative stress with cancer development and progression has been studied for several decades, but many questions remain [1,2]. Oxidative stress is caused by reactive oxygen species (ROS) that are inadequately detoxified. Exogenous (consumed) antioxidants and endogenous (internally synthesized) antioxidants contribute to the ‘antioxidant defence system’ (ADS) [3,4]. Superoxide dismutases (SODs), as endogenous antioxidants, catalyse the breakdown of superoxide, a ROS, into oxygen and hydrogen peroxide, thus protecting the cell from superoxide toxicity. Humans have three forms of SOD; SOD1 is located in the cytoplasm, SOD2 in the mitochondria, and SOD3 is extracellular. A single-nucleotide polymorphism (SNP) in exon-2 of SOD2 (rs4880) causes an amino-acid substitution (Ala16Val) . The Val-variant causes partial arrest of the precursor protein within the inner membrane and decreases formation of the active SOD2 tetramer . The Ala-SOD2 has been linked with risk of Parkinson’s disease , Alzheimer’s disease , breast cancer [9,10], colorectal cancer , sporadic motor neurone disease , and severe alcoholic liver disease , whereas the Val-SOD2 has been reported as a risk factor for lung carcinoma  and dilated cardiomyopathy .
In a nested case-control study within the Physicians’ Health Study (600 cases and 600 controls), we reported that although Ala16Val polymorphisms in SOD2 rs4880 (hereafter referred to as AA, VA, or VV for brevity) alone were not a risk factor for prostate cancer, the individuals with AA with lower plasma antioxidants levels (either selenium alone or a combination of selenium, lycopene and vitamin E) had a significantly higher risk of prostate cancer (especially advanced prostate cancer) than either those with AA with higher plasma antioxidant levels or those with V alleles . Subsequently, in a different set of patients with prostate cancer (current study population), there was a statistically significant interaction whereby men with the same AA SOD2 variant and higher circulating selenium levels had a lower risk of presenting with aggressive prostate cancer, while men with a V allele in rs4880 and high selenium levels had a higher risk  than men with V alleles and low selenium levels.
Based on these data, we expanded our SNP selection to assess other variants in SOD2 and other genes in the ADS in relation to prostate cancer status. We assessed SNPs on SOD1, SOD2 and SOD3, glutathione peroxidase (GPX1, GPX4), peroxisome proliferators-activated receptor γ coactivator 1 (PPARGC1α, PPARGC1β), and X-ray repair complementing defective repair in Chinese hamster cells 1 (XRCC1). The biochemical function of GPX1 is to convert free hydrogen peroxide to water, and that of GPX4 (also known as phospholipid hydroperoxidase) is to convert lipid hydroperoxides to their corresponding alcohols. Both GPX1 and GPX4 contain selenium at their active site . PPARGC1 regulates genes involved in energy metabolism, and is required for the induction of many ROS-detoxifying enzymes, including SOD2 and GPX1 . XRCC1 protein is involved in the efficient repair of DNA damage, such as single-strand breaks, which are formed by exposure to ionizing radiation, alkylating agents, or ROS . We hypothesized that variants in these genes would be associated with risk of aggressive prostate cancer, and might interact with circulating selenium to influence risk of aggressive prostate cancer in men with local/regional prostate cancer.
PATIENTS AND METHODS
Patients with prostate cancer for this study were selected from the Prostate Clinical Research Information System and Specimen Tracking Inventory Program databases at the Dana-Farber Cancer Institute . The Prostate Clinical Research Information System is a central repository of patient data, including comprehensive follow-up of all patients. To be eligible for this study, patients had to have a diagnosis of localized/locally advanced prostate cancer (i.e. stage T3 or less, N0 and M0); consented and donated blood for research before undergoing any type of local therapy; and consented to be followed clinically for research purposes. Of 778 patients who fulfilled these study criteria, 753 were selected according to the availability of complete clinical data and genomic DNA. Plasma collected before any type of therapy was available for selenium assessment in 489 of the selected patients.
The prognostic risk at diagnosis was categorized using modified criteria of D’Amico et al. [22,23], as: low risk (≤T2a and PSA level ≤10 ng/mL and Gleason sum ≤6); intermediate risk (T2b or PSA level 10–20 ng/mL, or Gleason sum 7); and high risk (>T2b or PSA level >20 ng/mL or Gleason sum >7). The primary outcome of interest was the presentation of aggressive prostate cancer at diagnosis, defined as stage T2b-T3, or PSA level >10 ng/mL or biopsy Gleason 7 (corresponding to the intermediate-/high-risk categories).
Blood was withdrawn using EDTA as an anticoagulant and centrifuged at 1000 g for 10 min at 17 °C. Purified plasma was aliquoted and stored at −80 °C until used for the analysis. This process was complete 2–16 h after sample withdrawal. Genomic DNA was prepared from EDTA-blood using the QIAamp DNA Blood mini kit (Qiagen Inc, Valencia, CA, USA) within 24 h after withdrawal and stored at 4 °C. DNA concentration was assayed using pico-green (Invitrogen, Carlsbad, CA, USA), and adjusted to 5 ng/µL for genotype analysis.
We initially identified 56 SNPs in SOD1, SOD2 and SOD3, GPX1, GPX4, PPARGC1α, PPARGC1β, and XRCC1, derived from the National Cancer for Biotechnology Information database by heterozygosity ratio (≥0.05). Six SNPs that did not conform to Hardy–Weinberg equilibrium (P < 0.01) were removed. Any SNP with a minor allele frequency of <5% (six) was also removed from analysis. Among the remaining 44 SNPs, tagging polymorphisms were selected using the Haploview procedure (http://www.broad.mit.edu/mpg/haploview/) by setting a pair-wise linkage disequilibrium (LD) mode to (r2≥ 0.8 and logarithm of odds, LOD, ≥3). In all, 26 SNPs that captured most of the haplotypes in a region of LD were selected and examined for their association with risk of aggressive prostate cancer.
Except for the GCG repeat and rs1050450 within GPX1, all other SNPs were analysed by sequential PCR-mass spectrometry systems (Sequenom, San Diego, CA, USA) ‘Increase Plexing Efficiency and Flexibility for MassARRAY System Assay or homogeneous Mass EXTENDED assay’. Methods for assessing the variants in GPX1 are described below.
The GCG repeat SNP within GPX1 was analysed using a previously described procedure  with minor modifications. Genomic DNA (40 ng) was amplified using 17 pmol each of primers (forward: 5′FAM-GAAACTGCCTGTGCCACGTGACC-3′ and reverse: 5′-CGAGAAGGCATACACCGACTGGGC -3′) in 22 µL PCR buffer (Qiagen) containing 1.5 mm MgCl2, 1.8 mm dNTP, Q solution, 1.5 units of Taq polymerase (all Qiagen). The PCR reaction had an initial denaturing temperature at 94 °C (2 min) followed by 35 cycles of denaturing (94 °C; 30 s), annealing (62.5 °C; 1 min), and extension (72 °C; 30 s) steps. An 8-min extension at 72 °C followed the final cycle. The 1 µL of PCR product was diluted with water to 50 µL; 2 µL of diluted PCR product were mixed with 10 µL formamide, 0.25 µL Gene Scan-500 LIZ Size Standard (Applied Biosystems, Foster City, CA, USA), and water to adjust the final volume to 20 µL. This mixture was applied to a POP-7 capillary array which was linked to an automated fluorescence detection system, ABI 3730 (Applied Biosystems). Using ‘Genemapper Software v4.0’ and ‘Peak Scanner Software v1.0’ for the analysis, the GCG repeat number was calculated as ((fragment length −154 bp)/3 = (GCG)n). This equation was confirmed by sequencing 30 PCR samples.
For rs1050450 in GPX1, a SNP (CCC/Pro or CTC/Leu) within GPX1 locates in exon-2 at the amino-acid position between 198 and 200. Shifts in amino-acid position depend on the number of GCG repeats (4–6x) in exon-1. Consequently, this SNP is referred either as Pro198Leu or Pro200Leu. This was analysed using a previously described procedure  with minor modifications. Genomic DNA (20 ng) was amplified using 12.5 pmol each of primers (forward: 5′-CTACGCAGGTACAGCC GCCGCT-3′ and reverse: 5′-CAGGTGTTCCTCCC TCGTAGGT-3′) in 12.5 µL 60 mm Tris-HCl (pH 9.5) buffer containing 15 mm ammonium sulphate, 2 mm MgCl2, 1.6 mm dNTP, and 0.6 units platinum Taq DNA Polymerase (Invitrogen, Carlsbad, CA, USA). The PCR had an initial denaturing temperature at 94 °C (2 min) followed by 35 cycles of denaturing (94 °C; 30 s), annealing (62.5 °C; 1 min), and extension (72 °C; 30 s) steps. An 8-min extension at 72 °C followed the final cycle. 7.5 µL of PCR product were digested by incubating with 25 units of ApaI (New England BioLabs, Beverly, MA, USA) at 25 °C for 2 h. Digested products were visualized on a 2% agarose gel stained with ethidium bromide. Fragment patterns specific for three genotypes were: Pro/Pro (CCC/CCC; 118 bp, 74 bp), Pro/Leu (CCC/CTC; 192 bp, 118 bp, 74 bp), and Leu/Leu (CTC/CTC; 192 bp).
Plasma selenium level was analysed using a previously described procedure in the laboratory of Irena King (Fred Hutchinson Cancer Research Center ). Diluted 99 : 300 in 0.5% Triton X-100, plasma selenium concentration (µg/L) was analysed by flame-less atomic absorption (Perkin-Elmer 5000; Perkin Elmer Corp., Norwalk, CT, USA) using an electrode-less discharge lamp operating at λ= 196.0 nm and a 1′Vov platform graphite furnace. Twenty-seven of 489 plasma samples were analysed in duplicate with ‘blind’ numbering; the median coefficient of variation was within 5.3%. For these samples, the first measurement was used in the analysis.
Patient disease characteristics at diagnosis were summarized as counts and percentages, or as median (range), and interquartile range of levels. Plasma selenium levels between genotypes were compared using the Wilcoxon rank-sum test. Associations of disease aggressiveness with genotypes were evaluated using a chi-square test. Relative risk (RR) and 95% CI compared to common homozygote were estimated using a generalized linear model for binomial data with a log-link rather than a logit-link function. Associations of disease aggressiveness with selenium levels were evaluated using a Cochran-Armitage test for trend, where selenium levels were categorized to five ordered groups according to the quintile thresholds (108.3, 118.0, 125.5, 139.7 µg/L, respectively; equivalent to 1.08, 1.18, 1.26, 1.40 ppm). The likelihood ratio test from the generalized linear model was used to test for an interaction between genotypes and selenium levels on disease aggressiveness, where selenium levels were evaluated both as quintile groups and continuous values. All analyses were conducted with P < 0.05 (two-sided) considered to indicate statistical significance.
The demographic and clinical characteristics at diagnosis of the selected 753 men with prostate cancer are summarized in Table 1. The patients were mostly white, with a median age of 62 years and a median PSA level of 6.3 ng/mL. About half of the patients had low-risk disease, a third had intermediate-risk disease, and ≈10% had high-risk disease. Age was not associated with the risk of aggressive disease (data not shown). Among these 753 men, 489 had plasma selenium levels assessed with a median of 121.4 µg/L. The demographic and clinical characteristics of these 489 men were comparable to those of the 753 men (data not shown).
The clinical and demographic characteristics of 753 men with localized prostate cancer at diagnosis, including 359 men with aggressive disease (e.g. intermediate/high prognostic risk)
|Age at diagnosis, years|| 62 (43–86; 56–68)|
|PSA at diagnosis, ng/mL|| 6.3 (0.7–575.8; 4.8–9.1)|
|Plasma selenium, µg/L||121.4 (64.2–221.1; 110.4–135.1)|
|(489 men)|| |
|Ethnic group|| |
| White||719 (95.5)|
| Other|| 30 (4)|
| Unknown|| 4 (0.5)|
|T stage at diagnosis|| |
| T1b|| 1 (0.1)|
| T1c||392 (52.1)|
| T2|| 46 (6.1)|
| T2a||132 (17.5)|
| T2b|| 15 (2)|
| T3|| 5 (0.7)|
| T3a|| 3 (0.4)|
| T3b|| 1 (0.1)|
| Tx||158 (21)|
|Biopsy Gleason|| |
| ≤6||472 (62.7)|
| 7||221 (29.3)|
| ≥8|| 59 (7.8)|
| Unknown|| 1 (0.1)|
|PSA level at diagnosis, ng/mL|| |
| ≤10||589 (78.2)|
| 10–20||104 (13.8)|
| >20|| 55 (7.3)|
| Unknown|| 5 (0.7)|
|% of biopsy core positive|| |
| ≤33||331 (44)|
| 33–50||100 (13.3)|
| >50||168 (22.3)|
| Unknown||154 (20.5)|
|Risk categories*|| |
| Low||394 (52.3)|
| Intermediate||259 (34.4)|
| High||100 (13.3)|
We assessed 24 SNPs, one triplet (GCG) repeat polymorphism within GPX1, and one deletion/insertion polymorphism of three nucleotides (AGA) within SOD1. Also, 18 SNPs that were captured by one of the 26 listed SNPs or rs4880  are shown in Table 2.
Table 2. SNPs studied among 753 men with localized prostate cancer at diagnosis
|GPX1|| 2876||3p21.3||–||(GCG)4–6||repeat change||7∼(10–12)*||(4–6)x Ala|
| || || ||rs1050450||C/T||missense||198–200*||Pro/Leu|
| || || ||rs8178977||C/G||intronic|| || |
| || || ||rs713041||C/T||synonymous||220||Leu/Leu|
| || || ||rs32577||C/T||synonymous||388||Pro/Pro|
|SOD1|| 6647||21q22.11||rs10432782||G/T||intronic|| || |
| || || ||rs17884057||(–)/AGA||intronic|| || |
| || || ||rs9967983||A/T||intronic|| || |
| || || ||rs4816407||A/G||intronic|| || |
|SOD2|| 6648||6q25.3||rs2842958||A/G||intronic|| || |
| || || ||rs4523113||A/T||intronic|| || |
| || || ||rs2758330||G/T||intronic|| || |
| || || ||rs5746136||A/G||3′-UTR||1264|| |
| || || ||rs5746138||A/G||3′-UTR||1496|| |
| || || ||rs7855||A/G||3′ near gene|| || |
|SOD3|| 6649||4q16.3-q21||rs8192287||G/T||5′ near gene|| || |
| || || ||rs699473||C/T||5′ near gene|| || |
| || || ||rs17878863||A/G||intronic|| || |
| || || ||rs17881426||A/T||intronic|| || |
| || || ||rs1007991||C/G||intronic|| || |
| || || ||rs8192291||C/T||synonymous|| || |
| || || ||rs2695232||C/T||3′-UTR||1011|| |
Table 3 shows: the genotype distribution of each SNP, and association of each SNP with the risk of aggressive prostate cancer (753 total, 359 with aggressive disease); plasma selenium levels in allele groups of each SNP (489 patients); and the interaction between genotypes, selenium level, and risk of aggressive prostate cancer (489 patients, 213 with aggressive disease).
Genotype frequencies, selenium levels, and their associations with aggressive prostate cancer (intermediate- or high-risk disease) among 753 men with localized disease at diagnosis
We combined rare homozygotes (frequency <0.05) with heterozygotes. Consequently, 16 SNPs were analysed between two genotypes, and nine with three genotypes. GCG repeats within GPX1 showed six genotypes with combinations of 4–6 repeats. Genotype distributions in this group were comparable to those reported in other Caucasian or global cohorts (see the National Cancer for Biotechnology Information database).
Two SNPs (rs17884057 and rs4816407) within SOD1 were associated with the risk of aggressive prostate cancer at borderline significance (P= 0.04 and 0.05, respectively, Table 3). Men with (–)(–) or (–)(AGA) alleles at the rs17884057 locus had a lower risk of aggressive disease than men with (AGA)(AGA) alleles (RR 0.83, 95% CI 0.70–0.99). Also, men with AG or GG alleles at the rs4816407 locus had a higher risk of aggressive disease than men with AA alleles (RR 1.27, 95% CI 1.02–1.57). No other SNP was significantly associated with the risk of aggressive prostate cancer (Table 3).
Comparison of selenium levels among genotype groups of each polymorphism showed that the men with AG alleles at the rs2842958 locus (SOD2) had lower levels (116.0 µg/L median) than those of men with GG alleles (121.8 µg/L median; P= 0.03, Table 3). This SNP (rs2842958) itself was not associated with the risk of aggressive disease.
Tests for interactions between plasma selenium level, gene variants and risk of aggressive prostate cancer are also reported in Table 3. Potential interactions of genotypes rs2758330 within SOD2 and rs10432782 within SOD1 with selenium and risk of aggressive prostate cancer were detected and explored further in Table 4. For both rs2758330 (SOD2) and rs10432782 (SOD1), the association of selenium levels with aggressive prostate cancer status was detected only at one genotype (Table 4). The RR for aggressive disease of men with GG or GT alleles (rs2758330) increased with increasing plasma selenium levels (Ptrend < 0.001), with men in the highest quintile vs lowest quintile having more than double the risk. However, selenium levels were not associated with the risk of aggressive disease among men who were T homozygous (Pinteraction= 0.02 using quintiles of selenium, and 0.11 using a continuous measure of selenium). Similarly, for rs10432782, the RR for aggressive disease of men with T homozygote increased with their plasma selenium levels (Ptrend= 0.04), while there was no significant association among men with GG or GT alleles (Pinteraction= 0.15 or 0.05 using quintile or continuous measures of selenium, respectively; Table 4).
Table 4. The RR (95% CI) for aggressive prostate cancer according to quintiles of individual plasma selenium level and genotype status of individual polymorphisms in SOD1 and SOD2
|All patients||489||1.00 (ref)||0.99 (0.70–1.40)||1.08 (0.77–1.52)||1.11 (0.80–1.55)||1.35 (0.99–1.84)||0.04|| |
|SOD1|| || || || || || || || |
| rs10432782|| || || || || || || || |
| T T||395||1.00 (ref)||1.02 (0.68–1.52)||1.25 (0.86–1.83)||1.20 (0.82–1.75)||1.42 (0.99–2.03)||0.04||0.15 (0.05)|
| G G/G T|| 60||1.00 (ref)||0.90 (0.47–1.72)||0.44 (0.19–1.02)||0.67 (0.29–1.53)||0.75 (0.38–1.50)||0.30|| |
|SOD2|| || || || || || || || |
| rs2758330|| || || || || || || || |
| T T||311||1.00 (ref)||0.84 (0.58–1.22)||0.85 (0.58–1.25)||0.76 (0.50–1.15)||0.97 (0.68–1.37)||0.82||0.02 (0.11)|
| G G/G T||175||1.00 (ref)||1.23 (0.57–2.65)||1.71 (0.88–3.32)||2.10 (1.13–3.89)||2.58 (1.40–4.76)||<0.001|| |
The results indicated that there were borderline associations between one SOD1 haplotype and risk of aggressive prostate cancer, and that SOD2 haplotypes modified the effect of selenium with disease aggressiveness. However, these associations were mainly driven by the single SNPs, as discussed above (data not shown). We gained no additional insights by a haplotype analysis compared to results using single polymorphisms. Also there were no gene–gene interactions from either single polymorphism or haplotype analysis.
In this study there were five SNPs within SOD1 (rs10432782, rs17884057, rs4816407) and SOD2 (rs2842958, rs2758330) that had suggestive associations with prostate cancer aggressiveness or selenium level, or that interacted with selenium level to affect the risk of prostate cancer aggressiveness. These data expand on previous work by ourselves [16,17] and others [27–30], that reported associations between a distinct variant in SOD2 (rs4880) and prostate cancer risk or aggressiveness. SOD1 and SOD2 catalyse the same biochemical reaction, but have different characteristics in chromosomal location, cellular compartment, assembly of catalytic unit, and cofactors. Available information is very limited for these five SNPs, and to the best of our knowledge, this is the first report to describe the association of these SOD2 and SOD1 SNPs with prostate cancer status. However, the results should be interpreted cautiously, given the modest statistical power and likelihood for chance findings.
Two SNPs (rs17884057 and rs4816407) in SOD1 were directly associated with the risk of presenting with aggressive prostate cancer; one variant in SOD2 (rs2842958) correlated with selenium levels; and distinct variants in SOD1 (rs10432782) and SOD2 (rs2758330) had modifying effects on the associations between selenium and risk of aggressive prostate cancer. Selenium itself has been hypothesized to reduce cancer risk, including prostate cancer [31–52]. However, selenium supplementation did not affect the incidence of early-stage localized prostate cancer in the large randomized Selenium and Vitamin E Cancer Prevention Trial , and a few studies suggested that selenium might have an enhancing effect on cancer risk [31–33,43,54,55]. Selenium is involved in several enzymes of the ADS, forming an active centre of the enzymes GPX and thioredoxin reductase . In cells, hydrogen peroxide (which is produced by the catalytic action of the SOD) is further detoxified to water by GPX, catalase, or peroxiredoxin; the activity of the last depending on a reduced form of thioredoxin, which is provided by thioredoxin reductase. In this manner, the SODs and selenium are indirectly co-operating in the ADS. However, to date no direct association between SOD and selenium has been shown at any level.
Genotype and/or external factors might be crucial in determining active levels of the SOD in cells and overall in the ADS. For example, the AA variant of rs4880 in SOD2 might be more effective at transporting the enzyme through the mitochondrial membrane, thereby increasing breakdown of superoxide radicals into hydrogen peroxide . Further breakdown of hydrogen peroxide into water relies on selenium-dependent GPX. If there is insufficient selenium, the GPX reaction is halted and an accumulation of hydrogen peroxide might occur, leading to toxicity, oxidation and propensity for DNA damage . This SOD2 variant (rs4880) has also been reported to modify associations of other risk factors for cancer: intake of fruits and vegetables  or smoking history  and breast cancer; age at diagnosis and colorectal cancer ; and race and lung cancer .
On SOD1, two polymorphisms (rs17884057, rs4816407) were associated with the risk of presenting with aggressive prostate cancer, and one (rs10432782) appeared to modify the effect of selenium on the risk of aggressive prostate cancer. LD analysis indicated that, among these three SNPs, none tagged the other two (threshold r2≥0.8 and LOD ≥3 ). Similarly, the LD analyses of variants studied in SOD2 (rs2842958, rs2758330, and rs4880, previously reported) showed no tagging among these three SNPs (threshold r2≥ 0.8 and LOD ≥ 3 ,).
Data on the association of SOD haplotype with diseases are limited. Wiener et al.  studied SOD2 haplotypes and inherited Alzheimer’s disease, and reported associations with four loci, rs2758346 (C or T), rs4880 (T or C), rs2855116 (T or G), and rs5747136 (G or A). In the current study, haplotype analysis showed no associations with aggressive prostate cancer beyond those indicated by single polymorphisms.
One recent study analysed more than 50 SNPs across 10 genes encoding proteins in the ADS (catalase, SOD1, SOD2, GPX1, GPX4, glutathione reductase, thioredoxin1 and 2, thioredoxin reductase 1 and 2 in relation to breast cancer ). In that study, two SNPs in GPX4 (rs713041 and rs757229) were associated with all-cause mortality. In addition, there were some suggestions of antioxidant gene–gene interaction for breast cancer [57,58].
In conclusion, we identified several putative antioxidant-related genetic markers for the risk of aggressive prostate cancer. Further research is warranted to confirm or refute these results, in particular larger studies that expand target SNPs to other genes in the ADS, and consider metabolizing enzymes of exogenous antioxidants. Also, functional analyses for each potential SNP will be important.
National Cancer Institute/National Institutes of Health (R01 CA106947); Prostate Cancer Specialized Programs of Research Excellence (SPORE) grant from National Institutes of Health/National Cancer Institute to Dana-Farber Harvard Cancer Center (2 P50 CA090381-06) and University of California San Francisco (2 P50 CA089520-06); American Association for Cancer Research and the California Department of Public Health Early Career Development Award; Prostate Cancer Foundation; and The Arthur and Linda Gelb Center. These funding agencies provided financial support for this work but were not directly involved in the design of the study, collection of data, analysis, interpretation, decisions regarding publication, or writing of the manuscript.
We sincerely thank Opeyemi Talabi and Carolyn Evan for their assistance in study management and data collection; and all the participants without whom none of this work would be possible.
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