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. 2015 Jul 16;2:15023. doi: 10.1038/hgv.2015.23

HLA-A*02:06 and PTGER3 polymorphism exert additive effects in cold medicine-related Stevens–Johnson syndrome with severe ocular complications

Mayumi Ueta 1,2,3,*, Katsushi Tokunaga 2, Chie Sotozono 3, Hiromi Sawai 2, Kyung-Chul Yoon 4, Mee Kum Kim 5, Kyoung Yul Seo 6, Choun-Ki Joo 7, Kei Tashiro 8, Shigeru Kinoshita 1
PMCID: PMC4785539  PMID: 27081535

Abstract

We previously reported that PTGER3 (prostaglandin E receptor 3 (subtype EP3)) single-nucleotide polymorphisms (SNPs) were associated with Stevens–Johnson syndrome (SJS)/toxic epidermal necrolysis (TEN) with severe ocular complications (SOC). We also documented that approximately 80% of our SJS/TEN patients had taken cold medicines within several days before disease onset, and we thus designated them cold medicine-related SJS/TEN (CM-SJS/TEN) patients. Moreover, we reported that HLA-A*02:06 with TLR3 polymorphisms exerted more than additive effects in SJS/TEN with SOC. In this study, we focused on CM-SJS/TEN with SOC and analyzed the association with PTGER3 SNPs and an interactive effect between PTGER3 SNPs and HLA-A*02:06 in not only the Japanese but also the Korean population. In the Japanese population, PTGER3 SNP rs1327464 was most significantly associated with CM-SJS/TEN with SOC (G versus A; odds ratio (OR)=0.232, P=7.92×10−10), and we found an interaction with additive effects between HLA-A*02:06 and the high-risk genotypes PTGER3 rs1327464 GA or AA (OR=10.8, P=2.56×10−7). We also found a significant association between Korean CM-SJS/TEN with SOC and PTGER3 SNP rs1327464 (GG versus GA+AA, OR=0.246, P=0.00101), and we detected an additive effect between HLA-A*02:06 and the high-risk genotypes PTGER3 rs1327464 GA or AA (OR=14.2, P=5.58×10−6).

Introduction

Stevens–Johnson syndrome (SJS) and some toxic epidermal necrolysis (TEN) are acute inflammatory vesiculobullous reactions of the skin and mucous membranes, including the ocular surface, oral cavity and genitals, which are often associated with inciting drugs and infectious agents.1–6 These reactions carry high mortality rates of 3% for SJS and 27% for TEN,7 and surviving patients often experience severe sequelae such as vision loss due to severe ocular surface complications (SOC),8 although incidences are rare (one to six cases per million persons).6,9

We previously reported that PTGER3 (prostaglandin E receptor 3 (subtype EP3)) SNPs were associated with SJSTEN with SOC. Our genome-wide association study showed associations between six single-nucleotide polymorphisms (SNPs) in the prostaglandin E receptor 3 gene (PTGER3) and SJS/TEN with SOC,4 and our subsequent analysis using the DigiTag2 assay showed that 20 of the 38 SNPs of PTGER3 were associated with SJS/TEN with SOC.10

We also documented that approximately 80% of our SJS/TEN patients had taken cold medicines within several days before disease onset and accordingly designated them cold medicine related-SJS/TEN (CM-SJS/TEN) patients.1 Moreover, we reported that HLA-A*02:06 with TLR3 polymorphisms exerted more than additive effects in SJS/TEN with SOC.11 We also reported that HLA-A*02:06 was strongly associated with CM-SJS/TEN with SOC in Japanese individuals1 and was significantly associated with CM-SJS/TEN with SOC in Korean individuals.2

In this study, we focused on CM-SJS/TEN with SOC and analyzed the association with PTGER3 SNPs. We also asked whether there is an interactive effect between PTGER3 SNPs and HLA-A*02:06 in not only Japanese but also Korean populations.

Materials and methods

Patients

This study was approved by the institutional review boards of Kyoto Prefectural University of Medicine and the University of Tokyo as well as by the institutional review boards of Seoul National University College of Medicine, Yonsei University College of Medicine, Chonnam National University Medical School and College of Medicine and the Catholic University of Korea.

All experimental procedures were conducted in accordance with the principles of the Declaration of Helsinki. The purpose of the research and the experimental protocols were explained to all the participants; all gave their written informed consent before their participation in this study.

The diagnosis of SJS/TEN by the Japanese and Korean ophthalmologists was based on a confirmed history of acute-onset high fever, serious mucocutaneous illness with skin eruptions and the involvement of at least two mucosal sites including the ocular surface.1,2 Because ophthalmologists usually encounter SJS/TEN patients in the chronic rather than the acute stage, many of our patients had developed SJS/TEN many years before their recruitment for this study.

We defined patients with severe ocular complications (SOC) as patients who manifested pseudomembranes and ocular surface (cornea and/or conjunctiva) epithelial defects in the acute stage, and as ones with ocular sequelae such as severe dry eye, symblepharon, trichiasis and conjunctival invasion into the cornea in the chronic stage.1,2

In this study, we focused on cold medicine-related SJS/TEN (CM-SJS/TEN) that may have been elicited by cold medicines such as multi-ingredient cold medications and nonsteroidal anti-inflammatory drugs (NSAIDs). All the patients included in this study had taken cold medicines (e.g., NSAIDs, multi-ingredient cold medications) for symptoms of common cold a few to several days before disease onset.1,2 They were designated CM-SJS/TEN patients, although not all were able to name the specific drugs used. We also focused on SJS/TEN patients with SOC because the genetic predisposition might be different between SJS/TEN with and without SOC.1

Samples from 132 patients with CM-SJS/TEN with SOC were collected at Kyoto Prefectural University of Medicine. Of these patients, 51 were male and 81 were female; their ages ranged from 6 to 92 years (mean 42.4±17.4 (s.d.) years). The age at SJS/TEN onset ranged from 1 to 70 years (mean 24.7±16.2 years). Some of the patients could not recall the specific drug(s) they used. The controls were 221 healthy Japanese volunteers recruited by Kyoto Prefectural University of Medicine. They consisted of 89 males and 132 females; their ages ranged from 11 to 77 years (mean 35.6±11.1 years). Some of the CM-SJS/TEN patients and some of the controls had been included in our earlier studies.

Samples from 30 Korean patients with CM-SJS/TEN with SOC were collected at Seoul National University College of Medicine, Yonsei University, Chonnam National University and the Catholic University of Korea. These patients consisted of 11 males and 19 females, ranging in age from 4 to 71 years (mean 35.2±18.9 years). Their ages at the onset of SJS/TEN ranged from 3 to 63 years (mean 23.7±16.3 years). Healthy Korean volunteers ranging from 16 to 85 years old (n=120; 48 males and 72 females; mean age 38.1±15.6 years) served as the controls. Some of the CM-SJS/TEN patients and some of the controls had been included in our earlier studies.

Genomic DNA from the peripheral blood of Japanese patients and controls was isolated by SRL (Tokyo, Japan). The PAXgene blood DNA kit (Qiagen, Hilden, Germany) was used to extract DNA from whole peripheral blood of Korean patients and controls.

SNP genotyping

In the TaqMan SNP genotyping assay, PCR amplification was performed in a 10-μl reaction mixture containing 1 μl of genomic DNA, 5.0 μl of TaqMan GTXpress master mix (Applied Biosystems, Foster, CA, USA), and 40×TaqMan SNP genotyping assay probe (Applied Biosystems) for each SNP. The QPCR thermal cycling program was 95 °C for 20 s, followed by 50 cycles of 95 °C for 3 s and 60 °C for 20 s on a step-one plus system (Applied Biosystems).

In the DigiTag2 assay,10,12 multiplex PCR was performed in 10 μl multiplex PCR buffer containing 25 ng genomic DNA, 25 nM each multiplex primer mix, 200 μM each dNTP, 2.25 mM MgCl2 and 0.4 U KAPA2G Fast HotStart DNA polymerase (Kapa Biosystems, Boston, MA, USA). Cycling was performed at 95 °C for 3 min, followed by 40 cycles of 95 °C for 15 s and 68 °C for 2 min.

A chi-square test was applied to a two-by-two contingency table for the allele frequency and the dominant and recessive models.

HLA-A genotyping

For HLA-A genotyping, we performed PCR amplification followed by hybridization with sequence-specific oligonucleotide probes (PCR-SSO) using commercial bead-based typing kits (WAK Flow, Wakunaga, Hiroshima, Japan) as described elsewhere.1,2

Results

Associations with PTGER3 SNPs in Japanese population

In Japanese patients, 7 of 18 SNPs previously reported to be associated with SJS/TEN were significantly associated with CM-SJS/TEN with SOC after Bonferroni correction (Table 1a). PTGER3 SNP rs1327464 (G versus A) was most significantly associated with CM-SJS/TEN with SOC; the odds ratio (OR) for the major allele was 0.232 (P=7.92×10−10).

Table 1. Japanese CM-SJS/TEN with SOC patients.

a. Association with PTGER3 SNPs
rs number of SNP Frequency of genotypes (%) Allele 1: major allele Allele 2: minor allele
Allele 1 versus allele 2 Genotype 11 versus 12+22 Genotype 11+12 versus 22
  Genotypes Cases Controls P valuea Corrected Pb OR (95% CI) P valuea Corrected Pb OR (95% CI) P valuea Corrected Pb OR (95% CI)
rs7555865 11 C/C 56/132 (42.4) 105/219 (47.9) 0.106 0.315 0.0772
  12 C/T 55/132 (41.7) 93/219 (42.5)      
  22 T/T 21/132 (15.9) 21/219 (9.59)      
               
rs17131450 11 C/C 97/132 (73.5) 194/221 (87.8) 1.22×10−4 6.36×10−4 0.0190
  12 C/T 30/132 (22.7) 26/221 (11.8) 2.20×10−3 0.0114 0.342
  22 T/T 5/132 (3.79) 1/221 (0.452) 0.379 (0.228–0.630) 0.386 (0.221–0.674) 0.115 (0.0133–0.999)
               
rs5702 11 C/C 87/131 (66.4) 109/221 (49.3) 0.0228 1.81×10−3 0.628
  12 C/T 32/131 (24.4) 95/221 (43.0) 0.410 0.0325  
  22 T/T 12/131 (9.16) 17/221 (7.69) 1.52 (1.06–2.17) 2.03 (1.30–3.18)  
               
rs1325949 11 A/A 91/132 (68.9) 105/221 (47.5) 1.94×10−3 8.86×10−5 0.950
  12 A/G 30/132 (22.7) 98/221 (44.3) 0.0349 1.59×10−3  
  22 G/G 11/132 (8.33) 18/221 (8.14) 1.77 (1.23–2.55) 2.45 (1.56–3.86)  
               
rs2421805 11 T/T 44/130 (33.8) 104/216 (48.1) 1.93×10−3 9.21×10−3 0.0108
  12 T/G 65/130 (50.0) 96/216 (44.4) 0.0348 0.166 0.194
  22 G/G 21/130 (16.2) 16/216 (7.41) 0.602 (0.436–0.831) 0.551 (0.351–0.865) 0.415 (0.208–0.829)
               
rs7543182 11 G/G 92/132 (69.7) 112/221 (50.7) 9.29×10−3 4.64×10−4 0.591
  12 G/T 29/132 (22.0) 94/221 (42.5) 0.167 8.36×10−3  
  22 T/T 11/132 (8.33) 15/221 (6.79) 1.63 (1.13–2.36) 2.24 (1.42–3.53)  
               
rs.7555874 11 G/G 91/132 (68.9) 112/221 (50.7) 0.0130 7.85×10−4 0.591
  12 G/A 30/132 (22.7) 94/221 (42.5) 0.234 0.0141  
  22 A/A 11/132 (8.33) 15/221 (6.79) 1.59 (1.10–2.30) 2.16 (1.37–3.40)  
               
rs4147115 11 A/A 45/128 (35.2) 54/212 (25.5) 0.0603 0.0569 0.291
  12 A/T 54/128 (42.2) 99/212 (46.7)      
  22 T/T 29/128 (22.7) 59/212 (27.8)      
               
rs4650093 11 C/C 84/132 (63.6) 113/220 (51.4) 0.129 0.0247 0.486
  12 C/T 37/132 (28.0) 93/220 (42.3)   0.445  
  22 T/T 11/132 (8.33) 14/220 (6.36)   1.66 (1.06–2.58)  
               
rs17131478 11 G/G 86/131 (65.6) 135/219 (61.6) 0.420 0.452 0.613
  12 G/T 41/131 (31.3) 75/219 (34.2)      
  22 T/T 4/131 (3.05) 9/219 (4.11)      
               
rs17131479 11 C/C 87/132 (65.9) 135/217 (62.2) 0.485 0.486 0.744
  12 C/G 41/132 (31.1) 74/217 (34.1)      
  22 G/G 4/132 (3.03) 8/217 (3.69)      
               
rs7521005 11 A/A 84/132 (63.6) 114/221 (51.6) 0.138 0.0273 0.479
  12 A/G 37/132 (28.0) 93/221 (42.1)   0.491  
  22 G/G 11/132 (8.33) 14/221 (6.33)   1.64 (1.06–2.56)  
               
rs7541092 11 G/G 86/131 (65.6) 136/218 (62.4) 0.488 0.540 0.608
  12 G/A 41/131 (31.3) 73/218 (33.5)      
  22 A/A 4/131 (3.05) 9/218 (4.13)      
               
rs1327464 11 G/G 83/131 (63.4) 194/219 (88.6) 7.92×10−10 1.90×10−8 1.23×10−3
  12 G/A 40/131 (30.5) 24/219 (11.0) 1.43×10−8 3.41×10−7 0.0221
  22 A/A 8/131 (6.11) 1/219 (0.457) 0.232 (0.142–0.381) 0.223 (0.129–0.385) 0.0705 (0.00872–0.571)
               
rs1409161 11 G/G 57/132 (43.2) 68/221 (30.8) 0.0988 0.0183 0.958
  12 G/A 52/132 (39.4) 114/221 (51.6)   0.329  
  22 A/A 23/132 (17.4) 39/221 (17.6)   1.71 (1.09–2.67)  
               
rs34885906 11 T/T 120/132 (90.9) 189/221 (85.5) 0.152 0.138
  12 T/C 12/132 (9.09) 32/221 (14.5)      
  22 C/C 0/132 (0.00) 0/221 (0.00)      
               
rs2817864 11 T/T 77/132 (58.3) 118/221 (53.4) 0.146 0.367 0.0352
  12 T/G 53/132 (40.2) 89/221 (40.3) 0.634
  22 G/G 2/132 (1.52) 14/221 (6.33) 4.40 (0.983–19.7)
               
rs1409981 11 G/G 37/131 (28.2) 60/218 (27.5) 0.874 0.884 0.664
  12 G/A 65/131 (49.6) 114/218 (52.3)      
  22 A/A 29/131 (22.1) 44/218 (20.2)      
b. Interaction between HLA-A*02:06 and PTGER3 rs1327464 GA/AA
HLA-A*02:06 rs1327464 GA or AA CM-SJS/TEN with SOC Controls P valuea OR (95% CI)
+ + 22/131 (16.8%) 4/218 (1.83%) 2.56×10−7 10.8 (3.63–32.1)
+ 39/131 (29.8%) 26/218 (11.9%) 3.38×10−5 3.13 (1.80–5.45)
+ 26/131 (19.9%) 21/218 (9.63%) 6.80×10−3 2.32 (1.25–4.33)
44/131 (33.6%) 167/218 (76.6%) 1.74×10−15 0.154 (0.0956–0.249)

Abbreviations: CI, confidence interval; CM-SJS, cold medicine-related Stevens–Johnson syndrome; OR, odds ratio; SOC, severe ocular complication; SNP, single-nucleotide polymorphism; TEN, toxic epidermal necrolysis.

a

P value for allele or genotype frequency. Comparison was between patients and controls using the chi-square test (Pearson).

b

Corrected P: P values corrected for the multiplicity of testing by the number of comparisons (n=18).

In table 1a, bold values denote P values that are significant after correction for the multiplicity of testing by the number of comparisons. In table 1b, bold value denotes OR with additive effect.

Interaction between HLA-A*02:06 and PTGER3 gene SNPs in Japanese population

As we had found earlier that HLA-A*02:06 was strongly associated with CM-SJS/TEN with SOC in the Japanese,1 we then looked for interactive effects between these seven SNPs of the PTGER3 gene and HLA-A*02:06 (Supplementary Table 1). We found an interaction with additive effects between HLA-A*02:06 and the high-risk genotypes PTGER3 rs1327464 GA or AA (OR=10.8, P=2.56×10−7; Table 1b).

Associations with PTGER3 SNPs in Korean population

We then analyzed those seven SNPs using Korean samples because we had detected the same association between HLA-A*02:06 and CM-SJS/TEN with SOC in Korean patients.2 Although the number of Korean cases (n=30) was small, we again found a significant association between CM-SJS/TEN with SOC and PTGER3 SNP rs1327464 (GG versus GA+AA, OR=0.246, P=0.00101; Table 2a) but not with other SNPs (Supplementary Table 2).

Table 2. Korean CM-SJS/TEN with SOC patients.

a. Association with PTGER3 SNP
rs number of SNP Frequency of genotypes (%) Allele 1: major allele Allele 2: minor allele
Allele 1 versus allele 2 Genotype 11 versus 12+22 Genotype 11+12 versus 22
  Genotypes Cases Controls P valuea OR (95% CI) P valuea OR (95% CI) P valuea OR (95% CI)
rs1327464 11 G/G 17/30 (56.7) 101/120 (84.2) 0.00203 0.00101
  12 G/A 13/30 (43.3) 19/120 (15.8) 0.311 (0.144–0.673) 0.246 (0.103–0.589)  
  22 A/A 0/30 (0.00) 0/120 (0.00)      
b. Interaction between HLA-A*02:06 and PTGER3 rs1327464 GA/AA
HLA-A*02:06 rs1327464 GA or AA CM-SJS/TEN with SOC Controls P valuea OR (95% CI)
+ + 8/30 (26.7%) 3/120 (2.50%) 5.58×10−6 14.2 (3.49–57.7)
+ 2/30 (6.67%) 17/120 (14.2%) 0.269 0.433 (0.0943–1.99)
+ 5/30 (16.7%) 16/120 (13.3%) 0.638 1.30 (0.435–3.89)
15/15 (50.0%) 84/120 (70.0%) 0.0386 0.429 (0.190–0.968)

Abbreviations: CI, confidence interval; CM-SJS, cold medicine-related Stevens–Johnson syndrome; OR, odds ratio; SOC, severe ocular complication; SNP, single-nucleotide polymorphism; TEN, toxic epidermal necrolysis.

a

P value for allele or genotype frequency. Comparison was between patients and controls using the chi-square test (Pearson).

In table 1a, bold values denote P values that are significant after correction for the multiplicity of testing by the number of comparisons. In table 1b, bold value denotes OR with additive effect.

Interaction between HLA-A*02:06 and the PTGER3 SNP in Korean population

When we tested for possible interactive effects between the SNPs of the PTGER3 gene and HLA-A*02:06, we detected an additive effect (HLA-A*02:06 with PTGER3 rs1327464 risk genotypes GA or AA; OR=14.2, P=5.58×10−6; Table 2b).

Discussion

We now document that several SNPs of PTGER3 are significantly associated with CM-SJS/TEN with SOC and that the association with PTGER3 SNP rs1327464 (cases, n=131; controls, n=219, OR (major allele)=0.232, P=7.92×10−10) is much stronger than that we previously reported regarding SJS/TEN with SOC, which included not only cold medicine-related but also other drug-related cases (cases, n=116; controls, n=221; OR (major allele)=0.46, P=0.0043).10 The association with the other six SNPs was the same as or slightly stronger than we previously reported. This result might suggest that CM-SJS/TEN with SOC is a purer phenotype than SJS/TEN with SOC.

Earlier, we reported that HLA-A*02:06 is significantly associated with CM-SJS/TEN with SOC in Japanese and Korean populations;2 in this study, we also found a significant association between HLA-A*02:06 and Japanese or Korean CM-SJS/TEN with SOC (Supplementary Table 3). We also reported that HLA-A*02:06 with TLR3 polymorphisms exerted more than additive effects in SJS/TEN with SOC.11 Our current study shows that HLA-A*02:06 with TLR3 SNP rs3775296 T/T also exerts more than additive effects in CM-SJS/TEN with SOC (Supplementary Table 4). HLA-A*02:06 with PTGER3 rs1327464 GA/AA also exerts an additive effect in CM-SJS/TEN with SOC. After removing samples with both HLA-A*02:06 and TLR3 SNP rs3775296 T/T, the additive effect between HLA-A*02:06 and PTGER3 rs1327464 GA/AA persisted in CM-SJS/TEN with SOC (Supplementary Table 5; OR=10.6, P=4.34×10−7), suggesting that these interactions are independent of each other. In the Japanese population, although HLA-A*02:06 alone showed OR=5.46 and P=1.39×10−11, and PTGER3 rs1327464 GA/AA alone showed OR=4.48 and P=1.90×10−8, the combination of HLA-A*02:06 and PTGER3 rs1327464 GA/AA showed a higher OR (OR=10.8, P=2.56×10−7) than each allele alone. Moreover, in the Korean population, the combination of HLA-A*02:06 and PTGER3 rs1327464 GA/AA showed a higher OR (OR=14.2, P=5.58×10−6) than each allele alone, although HLA-A*02:06 alone showed OR=2.50 and P=0.0412, and PTGER3 rs1327464 GA/AA alone showed OR=4.07 and P=0.00101. These findings might show that using the combination of these two polymorphisms could improve genetic testing compared with using only one susceptibility gene.

In the Japanese population, combined genotyping for HLA-A*02:06, TLR3 rs3775296 T/T and PTGER3 rs1327464 GA or AA may help to predict the risk for CM-SJS/TEN with SOC.

On the basis of our previous and current observations, we suggest that, in addition to microbial infections and cold medicines, the combination of multiple gene polymorphisms and their interactions contribute strongly to the onset of CM-SJS/TEN with SOC.

In conclusion, this study clarified the following: (1) SNPs of PTGER3 are significantly associated with CM-SJS/TEN with SOC, and the association with PTGER3 SNP rs1327464 (OR (major allele)=0.232, P=7.92×10−10) is much stronger than that we previously reported regarding SJS/TEN with SOC, suggesting that CM-SJS/TEN with SOC might be a purer phenotype than SJS/TEN with SOC and (2) in CM-SJS/TEN with SOC, HLA-A*02:06 with PTGER3 rs1327464 GA/AA also exerts an additive effect.

Acknowledgments

The authors thank the patients and volunteers who enrolled in our study. The authors also thank Hiromi Nishigaki for processing the blood samples and performing genotyping and Sangchul Yoon, Hyo Seok Lee and Kyu-Yeon Hwang for their assistance in collecting the blood and DNA samples and the clinical information. This work was supported by grants in aid from the Ministry of Education, Culture, Sports, Science and Technology of the Japanese government (BioBank Japan Project), by the JSPS Core-to-Core Program, Advanced Research Networks and, in part, by grants in aid for scientific research from the Japanese Ministry of Health, Labor and Welfare and a research grant from the Kyoto Foundation for the Promotion of Medical Science and the Intramural Research Fund of Kyoto Prefectural University of Medicine. The funding agencies had no role in the study design, data collection or analysis, the decision to publish or the manuscript preparation.

The authors declare no conflict of interest.

Footnotes

Supplementary Information for this article can be found on the Human Genome Variation website (http://www.nature.com/hgv).

Supplementary Table 1
Supplementary Table 2
Supplementary Table 3
Supplementary Table 4
Supplementary Table 5

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Supplementary Materials

Supplementary Table 1
Supplementary Table 2
Supplementary Table 3
Supplementary Table 4
Supplementary Table 5

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