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. Author manuscript; available in PMC: 2014 Sep 9.
Published in final edited form as: Cancer Epidemiol Biomarkers Prev. 2013 May 23;22(8):1473–1475. doi: 10.1158/1055-9965.EPI-13-0476

An Assessment of the Shared Allelic Architecture between Type II Diabetes and Prostate Cancer

Oriana Hoi Yun Yu 1,4, William D Foulkes 2,3,5, Zari Dastani 4, Richard M Martin 6, Rosalind Eeles; for the PRACTICAL Consortium and the CRUK GWAS Investigators7,8, J Brent Richards 1,4,5
PMCID: PMC4158605  NIHMSID: NIHMS614781  PMID: 23704474

Abstract

Background

To determine whether the alleles that influence type II diabetes risk and glycemic traits also influence prostate cancer risk.

Methods

We used a multiple single-nucleotide polymorphisms (SNP) genotypic risk score to assess the average effect of alleles that increase type II diabetes risk or worsen glycemic traits on risk of prostate cancer in 19,662 prostate cancer cases and 19,715 controls from the Prostate Cancer Association Group to Investigate Cancer Associated Alterations in the Genome (PRACTICAL) consortium and 5,504 prostate cancer cases and 5,834 controls from the Cancer Research UK (CRUK) prostate cancer study.

Results

Calculating the average additive effect of type II diabetes or glycemic trait risk alleles on prostate cancer risk using a logistic model revealed no evidence of a shared allelic architecture between type II diabetes, or worsened glycemic status, with prostate cancer risk [OR for type II diabetes alleles: 1.00 (P = 0.58), fasting glycemia alleles: 1.00 (P = 0.67), HbA1c alleles: 1.00 (P = 0.93), 2-hour OGTT alleles: 1.01 (P = 0.14), and HOMA-B alleles: 0.99 (P = 0.57)].

Conclusions

Using genetic data from large consortia, we found no evidence for a shared genetic etiology of type II diabetes or glycemic risk with prostate cancer.

Impact

Our results showed that alleles influencing type II diabetes and related glycemic traits were not found to be associated with the risk of prostate cancer.

Introduction

Type II diabetes has been shown in observational studies to be associated with a decreased risk of developing prostate cancer (1). Understanding the association between type II diabetes and prostate cancer is of considerable interest to determine the role of glucose metabolism in prostate carcinogenesis because both the diseases are among the most common major diseases affecting elderly men.

By using datasets from the Prostate Cancer Association Group to Investigate Cancer Associated Alterations in the Genome (PRACTICAL) consortium and Cancer Research UK (CRUK) study, which included data from up to 50,715 men, we used a multiple single-nucleotide polymorphism (SNP) genotypic risk score to determine whether alleles influencing type II diabetes and related glycemic traits were associated with the risk of prostate cancer.

Materials and Methods

SNPs associated with type II diabetes at a genome-wide significant level (P < 5 × 10−8, N = 14) were obtained from the DIAbetes Genetics Replication and Meta-analysis (DIAGRAM) consortium (2). SNPs that were genomewide significantly associated with fasting glycemia (N = 290), HbA1c (N = 11), 2 hour OGTT (N = 5), and HOMA-B (N = 119) from the Meta-Analyses of Glucose and Insulin-related traits consortium (MAGIC) were also obtained for our analysis (35). The association of these SNPs with risk of prostate cancer was then sought in the PRACTICAL consortium, which included 30 studies, involving a total of 19,662 cases and 19,715 controls. Only 28 of the requested SNPs were genotyped in the PRACTICAL consortium and the remaining SNPs were not available through imputation. Therefore, to obtain a maximum number of SNPs for our analysis, the remaining SNPs (N = 287) were obtained from the CRUK study, composed of 5,504 prostate cancer cases and 5,834 controls (6) which had undergone imputation.

A total of 310 SNPs with their derived β (additive effect) and SEs for their additive effect on prostate cancer risk were obtained. All of the data used from the PRACTICAL consortium excluded individuals from the CRUK study. The β and SEs from CRUK and from PRACTICAL were then meta-analyzed for SNPs that were present in all datasets using an inverse-variance fixed-effects model through the GWAMA software package version 2.1 (Supplementary Table S1).

Using a multiple SNP genotypic risk score we have previously described (7), we determined whether the allelic architecture of both type II diabetes and its related glycemic traits were associated with prostate cancer risk. We stress that this approach does not constitute a Mendelian randomization study because pleiotropic effects cannot be excluded. To create such a genotypic risk score, independent alleles for each trait were selected using a linkage disequilibrium (LD) threshold of r2 ≤ 0.05 in the HapMap Utah residents with ancestry from northern and western Europe (CEU) population to select one genome-wide significant SNP per LD block. When more than one SNP arose from a single LD block, the SNP with the highest variance explained on the phenotypic outcome was selected. A total of 50 independent LD blocks from the 310 SNPs were obtained to calculate the multiple SNP genotyping risk score (Supplementary Table S2). To summarize, the multiple SNP genotyping risk score uses a logistic regression model that calculates the average additive effect (i.e., β), of the alleles that increase the risk of type II diabetes and glycemic traits, on the risk of prostate cancer. For purposes of presentation, the β were then transformed to ORs. The multiple SNP genotypic risk score was calculated using STATA version 10.1.

Results

Results of the analysis did not provide any evidence for association of type II diabetes or glycemic risk alleles on risk of prostate cancer [type II diabetes alleles: OR 1.00 (95% confidence interval, CI, 0.99–1.02), fasting glycemia alleles: OR 1.00 (95% CI, 0.99–1.02), HbA1c alleles: OR 1.00 (95% CI, 0.97–1.04), 2 hour OGTT alleles: OR 1.01 (95% CI, 1.00–1.03), and HOMA-B alleles: OR 0.99 (95% CI, 0.94–1.04); Table 1].

Table 1.

Results of the multiple SNP genotypic risk score, assessing the average effect of type II diabetes or glycemic risk alleles on risk of prostate cancer

Trait Number
of SNPs
OR (95% CI) P
Type II diabetes 14 1.00 (0.99–1.02) 0.58
Fasting glycemia 18 1.00 (0.99–1.02) 0.69
HbA1c 11 1.00 (0.97–1.04) 0.93
2 hour OGTTa 3 1.01 (1.00–1.03) 0.14
HOMA-Bb 4 0.99 (0.94–1.04) 0.57
a

2 hour OGTT = Glucose level 2 hour post 75 g oral glucose tolerance test.

b

HOMA-B = Homeostatic model assessment for β cell function.

Discussion

Using a multiple SNP genotypic risk score of only genome-wide significant SNPs derived from the largest meta-analyses to date, in a large consortium of prostate cancer studies, we showed no evidence for a shared allelic architecture between type II diabetes and glycemic traits and prostate cancer.

The results from this study are different from that of a recent study using data from the National Cancer Institute’s Breast and Prostate Cancer Cohort Consortium, which found an inverse association between type II diabetes and prostate cancer risk [OR: 0.87 (95% CI, 0.78–0.97, P = 0.015)] using 36 type II diabetes risk variants (8). However, the 36 diabetes risk variants used in their study included variants that have not been replicated.

In summary, despite the largest prostate cancer sample size to date and using only genome-wide significant SNPs arising from the largest type II diabetes and glycemic trait consortia, our results provide no evidence to support the contention that type II diabetes and glycemic traits influence the risk of prostate cancer.

Supplementary Material

Supplementary Tables

Acknowledgments

The authors thank the DIAGRAM, MAGIC, and PRACTICAL consortia and the CRUK study for access to the data in this article. Data on glycemic traits have been contributed by MAGIC investigators and have been downloaded from http://www.magicinvestigators.org.

Grant Support

This work was supported by grants from the Canadian Foundation for Innovation, the Canadian Institutes of Health Research (CIHR), Fonds de la recherche en sante du Québec, the Lady Davis Institute, and the Jewish General Hospital. Drs. J.B. Richards and Z. Dastani are supported by the CIHR.

R. Eeles received an educational support grant from Janssen Pharmaceuticals, Vista Diagnostics, Genprobe, and Illumina.

Appendix

The PRACTICAL Consortium

Rosalind Eeles1,2, Doug Easton3, Kenneth Muir4, Graham Giles5,6, Fredrik Wiklund7, Henrik Gronberg7, Christopher Haiman8, Johanna Schleutker9,10, Maren Weischer11, Ruth C. Travis12, David Neal13, Paul Pharoah14, Kay-Tee Khaw15, Janet L. Stanford16,17, William J. Blot18, Stephen Thibodeau19, Christiane Maier20,21, Adam S. Kibel22,23, Cezary Cybulski24, Lisa Cannon-Albright25, Hermann Brenner26, Jong Park27, Radka Kaneva28, Jyotnsa Batra29, Manuel R. Teixeira30, Zsofia Kote-Jarai1, Ali Amin Al Olama3, Sara Benlloch3

The CRUK GWAS Investigators

Rosalind Eeles1,2, Doug Easton3, Zsofia Kote-Jarai1, Kenneth Muir4, Graham Giles5,6, Gianluca Severi5,6, David Neal13, Jenny L. Donovan31, Freddie C. Hamdy32

1The Institute of Cancer Research, 15 Cotswold Road, Sutton, Surrey, SM2 5NG, UK, 2Royal Marsden NHS Foundation Trust, Fulham and Sutton, London and Surrey, UK, 3Centre for Cancer Genetic Epidemiology, Department of Public Health and Primary Care, University of Cambridge, Strangeways Laboratory, Worts Causeway, Cambridge, UK, 4University of Warwick, Coventry, UK, 5Cancer Epidemiology Centre, The Cancer Council Victoria, 1 Rathdowne street, Carlton Victoria, Australia, 6Centre for Molecular, Environmental, Genetic and Analytic Epidemiology, The University of Melbourne, Victoria, Australia, 7Department of Medical Epidemiology and Biostatistics, Karolinska Institute, Stockholm, Sweden, 8Department of Preventive Medicine, Keck School of Medicine, University of Southern California/Norris Comprehensive Cancer Center, Los Angeles, California, USA, 9Department of Medical Biochemistry and Genetics, University of Turku, Turku, Finland, 10Institute of Biomedical Technology/BioMediTech, University of Tampere and FimLab Laboratories, Tampere, Finland, 11Department of Clinical Biochemistry, Herlev Hospital, Copenhagen University Hospital, Herlev Ringvej 75, DK-2730 Herlev, Denmark, 12Cancer Epidemiology Unit, Nuffield Department of Clinical Medicine, University of Oxford, Oxford, UK, 13Surgical Oncology (Uro-Oncology: S4), University of Cambridge, Box 279, Addenbrooke’s Hospital, Hills Road, Cambridge, UK and Cancer Research UK Cambridge Research Institute, Li Ka Shing Centre, Cambridge, UK, 14Centre for Cancer Genetic Epidemiology, Department of Oncology, University of Cambridge, Strangeways Laboratory, Worts Causeway, Cambridge, UK, 15Cambridge Institute of Public Health, University of Cambridge, Forvie Site, Robinson Way, Cambridge CB2 0SR, 16Division of Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, Washington, USA, 17Department of Epidemiology, School of Public Health, University of Washington, Seattle, Washington, USA, 18International Epidemiology Institute, 1455 Research Blvd., Suite 550, Rockville, MD 20850, 19Mayo Clinic, Rochester, Minnesota, USA, 20Department of Urology, University Hospital Ulm, Germany, 21Institute of Human Genetics University Hospital Ulm, Germany, 22Brigham and Women’s Hospital/Dana-Farber Cancer Institute, 45 Francis Street-ASB II-3, Boston, MA 02115, 23Washington University, St Louis, Missouri, 24International Hereditary Cancer Center, Department of Genetics and Pathology, Pomeranian Medical University, Szczecin, Poland, 25Division of Genetic Epidemiology, Department of Medicine, University of Utah School of Medicine, 26Division of Clinical Epidemiology and Aging Research, German Cancer Research Center, Heidelberg Germany, 27Division of Cancer Prevention and Control, H. Lee Moffitt Cancer Center, 12902 Magnolia Dr., Tampa, Florida, USA, 28Molecular Medicine Center and Department of Medical Chemistry and Biochemistry, Medical University - Sofia, 2 Zdrave St, 1431, Sofia, Bulgaria, 29Australian Prostate Cancer Research Centre-Qld, Institute of Health and Biomedical Innovation and Schools of Life Science and Public Health, Queensland University of Technology, Brisbane, Australia, 30Department of Genetics, Portuguese Oncology Institute, Porto, Portugal and Biomedical Sciences Institute (ICBAS), Porto University, Porto, Portugal, 31School of Social and Community Medicine, University of Bristol, Canynge Hall, 39 Whatley Road, Bristol, UK, 32Nuffield Department of Surgical Sciences, University of Oxford, Oxford, UK, Faculty of Medical Science, University of Oxford, John Radcliffe Hospital, Oxford, UK

Funding for the CRUK study and PRACTICAL consortium

This work was supported by the Canadian Institutes of Health Research, European Commission’s Seventh Framework Programme grant agreement n° 223175 (HEALTH-F2-2009-223175), Cancer Research UK Grants C5047/A7357, C1287/A10118, C5047/A3354, C5047/A10692, C16913/A6135, and the NIH Cancer Post-Cancer GWAS initiative grant: No. 1 U19 CA 148537-01 (the GAME-ON initiative).

The authors thank the following for funding support: The Institute of Cancer Research and The Everyman Campaign, The Prostate Cancer Research Foundation, Prostate Research Campaign UK (now Prostate Action), The Orchid Cancer Appeal, The National Cancer Research Network UK, The National Cancer Research Institute (NCRI) UK. The authors thank for support of NIHR funding to the NIHR Biomedical Research Centre at The Institute of Cancer Research and The Royal Marsden NHS Foundation Trust.

The Prostate Cancer Program of Cancer Council Victoria also thanks grant support from The National Health and Medical Research Council, Australia (126402, 209057, 251533, 396414, 450104, 504700, 504702, 504715, 623204, 940394, 614296,), VicHealth, Cancer Council Victoria, The Prostate Cancer Foundation of Australia, The Whitten Foundation, PricewaterhouseCoopers, and Tattersall’s. EAO, DMK, and EMK thank the Intramural Program of the National Human Genome Research Institute for their support.

Footnotes

Note: Supplementary data for this article are available at Cancer Epidemiology, Biomarkers & Prevention Online (http://cebp.aacrjournals.org/).

Disclosure of Potential Conflicts of Interest

No potential conflicts of interest were disclosed by the other authors.

Authors' Contributions

Conception and design: O.H.Y. Yu, J.B. Richards

Development of methodology: Z. Dastani, J.B. Richards

Acquisition of data (provided animals, acquired and managed patients, provided facilities, etc.): R. Eeles

Analysis and interpretation of data (e.g., statistical analysis, biostatistics, computational analysis): O.H.Y. Yu, Z. Dastani, J.B. Richards

Writing, review, and/or revision of the manuscript: O.H.Y. Yu, W.D. Foulkes, R.M. Martin, R. Eeles

Administrative, technical, or material support (i.e., reporting or organizing data, constructing databases): O.H.Y. Yu, W.D. Foulkes, R. Eeles, J.B. Richards

Study supervision: J.B. Richards

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