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Basic and Translational Investigations |
Division of Cancer Epidemiology and Genetics (S.L., N.R., P.D.I.) and Neuro-oncology Branch (H.A.F.), National Cancer Institute, Bethesda, MD; Barrow Neurological Institute, St. Joseph's Hospital and Medical Center, Phoenix, AZ (W.R.S.); Western Pennsylvania Hospital, Pittsburgh, PA (R.G.S.); Brigham and Women's Hospital, Boston, MA (P.M.B.); Department of Radiation Oncology, Massachusetts General Hospital, Boston, MA (J.S.L.); Division of Cancer Epidemiology and Genetics, Core Genotyping Facility, Advanced Technology Center, SAIC-Frederick, Inc., National Cancer Institute-Frederick, Frederick, MD (A.A.H.); USA
Address all correspondence to Stefan Lönn, Division of Cancer Epidemiology and Genetics, National Cancer Institute, Room 7053, 6120 Executive Blvd., Bethesda, MD 20892-7238, USA (Stefan.Lonn{at}ki.se).
| Abstract |
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Key Words: central nervous system glioma insulin-like growth factor meningioma single nucleotide polymorphism
| Introduction |
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Experimental studies have shown that alterations in IGF function can influence cellular transformation and tumor cell proliferation. IGF1, IGF2, and IGF1R genes have all been reported to be overexpressed in glioma and meningioma as well as in a wide range of other human cancers, including breast, leukemia, lung, thyroid, and prostate.4 IGFs, together with their receptors and binding proteins, have been reported to be associated with cancer risk.5,6 Epidemiological studies have suggested that genetic variation in IGF1, IGF1R, and IGFBP3 may be related to breast, prostate, and colorectal cancer risk.7-10 In vitro studies have demonstrated that IGF receptors and binding proteins promote mitogenesis and differentiation in glial cells, oligodendrocytes, neuronal cells, adult stem cells, and brain explants and regulate axon myelination.4 Furthermore, observations in the literature suggest that IGF gene pathways show similar expression and functional features during fetal development and tumorigenesis.11 There is, however, little epidemiologic data concerning the possible involvement of IGF signaling in the development of brain tumors in humans. A recent small prospective study indicated an inverse association between glioma and IGF-1 serum levels.12 We hypothesized that polymorphisms in IGF genes are risk factors for glioma and meningioma. To test the hypothesis, we examined associations with several IGF gene variants in the context of a case-control study.
| Materials and Methods |
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Cases and Controls
Eligible cases were defined as patients with a primary intracranial glioma or meningioma during the study period. All cases had to be diagnosed with a microscopically confirmed tumor within the 8 weeks preceding hospitalization at a participating hospital; most (80%) were enrolled within 3 weeks of initial diagnosis. In total, 88% of the glioma cases (n = 489) and 98% of the meningioma cases (n = 197) participated in the study. DNA extracted from blood samples was available for 388 glioma cases and 162 meningioma cases, of which 354 and 133, respectively, were non-Hispanic whites. We restricted the present analysis to non-Hispanic whites.
The controls were patients who were admitted to the same hospitals as the cases for a variety of nonmalignant conditions. The most common reasons for hospitalization among the controls were injuries (25%) and disorders of the circulatory (22%), musculoskeletal (22%), digestive (12%), and nervous (7%) systems. They were frequency matched to the total group of patients with tumors (including acoustic neuroma) according to hospital, age (in 10-year strata), sex, race or ethnic group, and proximity of their residence to the hospital. Of the eligible controls, 86% (n = 799) participated. DNA extracted from blood samples was available for 553 controls, of which 495 were non-Hispanic whites.
All participating cases and controls were interviewed by trained nurses. The structured, computerized, in-person interview included detailed questions related to medical and reproductive history, including exposure to diagnostic and therapeutic radiation, and various environmental risk factors, including occupational exposures, cellular telephone use, and sociodemographic characteristics.
Selection of Polymorphisms and Laboratory Analyses
Single-nucleotide polymorphisms (SNPs) in IGF genes were selected initially based on the allele frequency, potential functional importance as indicated by a non-synonymous amino acid change, occurrence in an exon or promoter region, or associations with other cancers in the literature;6-8 however, several intronic SNPs also were included as potential markers. Nine SNPs in five IGF genes were evaluated (Table 1).
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DNA was extracted from peripheral white blood cells from blood samples by GenoType, Ltd. (United Kingdom) using a phenol-chloroform method as described by Daly et al.14 Genotyping was conducted by the Core Genotyping Facility at the National Cancer Institute (Gaithersburg, MD, USA), using TaqMan (Applied Biosystems, Foster City, CA, USA) methods. Descriptions for assay-specific methods can be found at the National Cancer Institute SNP500Cancer Web site (http://snp500cancer.nci.nih.gov).
Quality-control measures included 75 study duplicates (two samples for each individual, all of whom were study subjects) interspersed throughout the batches for all assays and in 68 samples from three individuals who were not study subjects (processed in identical fashion as samples from study subjects). In addition, laboratory assay-specific positive controls for the three possible genotypes and one DNA-negative control were included on each assay plate.
Statistical Analysis
Allele frequencies in SNPs among controls were assessed for deviation from Hardy-Weinberg equilibrium (HWE). Associations between SNPs and risk of brain tumors were assessed using unconditional logistic regression to estimate odds ratios (ORs) and calculate associated 95% likelihood-based confidence intervals (CIs). All SNPs were analyzed under a dominant model, but a codominant relationship was assumed when numbers permitted (homozygous variant frequency >1% among the controls). The analyses were restricted to non-Hispanic whites and adjusted for the matching variables (hospital, age, sex, and proximity of their residence to the hospital).
Stratified analyses were performed by sex and age (two groups: <50 years and
50 years). Glioblastomas and low-grade gliomas were analyzed separately. The tumor grade of gliomas was classified according to the guidelines of Kleihues et al.15 There were 171 glioblastoma cases (48% of all gliomas) and 98 low-grade gliomas (28% of all gliomas). The low-grade glioma group included 34 oligodendrogliomas, 29 astrocytomas, 14 neuronal-glial tumors, 12 mixed gliomas, and 9 other low-grade gliomas.
| Results |
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Frequencies of characteristics of brain tumor cases and controls are presented in Table 2. Meningioma cases were more often female compared with controls or glioma cases. The glioma and meningioma cases tended to be older than the controls.
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The risks of glioma and meningioma associated with IGF polymorphic variants are presented in Table 3. The majority of the analyzed IGF genes did not display statistically significant associations with glioma or meningioma. For glioma, only one SNP (IGF1R gene rs2272037) indicated an association for both heterozygous and homozygous carriers (p for trend = 0.04); however, the OR was greater for heterozygotes than for homozygous variants. The OR under the dominant model was 1.58 (95% CI, 1.15-2.15). Under the dominant model, the IGF1 (rs6220) variant was significantly associated with glioma risk (OR 0.74; 95% CI, 0.56-0.98). Meningioma was not strongly associated with any of the genotypes examined.
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Table 4 displays the results for gliomas separately for glioblastoma and low-grade glioma. No statistically significant associations between glioblastoma and the analyzed SNPs were detected, but indications of associations were seen between low-grade glioma and one IGF1 SNP (rs6220) and two IGF1R SNPs (rs2272037 and rs2016347). The OR under a dominant model was 0.56 (95% CI, 0.35-0.90) for rs6220, 2.98 (95% CI, 1.65-5.38) for rs2272037, and 1.60 (95% CI, 0.90-2.83) for rs2016347. The rs2272037 was the only SNP that displayed a statistically significant trend (p = 0.03); however, the OR was greater for the heterozygous carriers than for the homozygous carriers.
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For several SNPs, the gender-specific analysis yielded a stronger association among men compared to women. Although data were sparse in the gender-specific analysis, the positive association observed for IGF1R (rs2272037) with low-grade glioma was stronger among men with OR 5.35 (95% CI, 1.97-14.57) for heterozygous carriers and OR 3.09 (95% CI, 0.95-10.00) for homozygous carriers compared to women with OR 2.51 (95% CI, 1.09-5.80) and OR 1.21 (95% CI, 0.39-3.70), respectively. Indication of a possible stronger association among men compared to the combined analysis was also present for IGF1 (rs2162679) and another IGF1R gene (rs2137680). Stratifying the analysis by age (<50 years,
50 years) did not indicate heterogeneity of risk for glioblastoma, low-grade glioma, or meningioma (results not shown).
The estimated ORs were similar in the crude and adjusted analysis, indicating that the matching variables had limited influence on the results. The results did not change materially when the analysis included all racial or ethnic groups. Sequentially excluding subgroups of controls based on reasons for hospitalization did not change any overall results.
| Discussion |
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This is the first study exploring the hypothesis that alterations in IGF pathways are risk factors for brain tumors, and the study has several notable strengths. The results are based on one of the largest brain tumor case-control studies with DNA. Cases were identified continuously during the study period through collaboration with the treating clinics, and a rapid recruitment of cases was therefore possible. The rapid ascertainment is essential in a study of brain cancers because of the severity of the disease and the relatively short survival time. The participation rate was high, and the collection of blood samples very soon after brain tumor diagnosis minimizes the influence of a survival bias associated with IGF genotypes.
The study has several limitations as well, and there is reason for caution in interpreting the results. Two of the analyzed SNPs showed significant departure from HWE, and these included SNPs with non-null associations. It has been reported that HWE-violating SNPs more often show significant associations than SNPs without HWE violation.19 There are several reasons why HWE may be violated, including genotyping error, chance, and population structure. In the present study, the quality-control data indicate high reproducibility of results for the two SNPs with HWE-violation. It is not likely that the HWE violation is a chance finding, but we cannot exclude the possibility. If we assume HWE for controls in the two SNPs according to the strategy presented by Chen et al.,20 the OR shifts toward unity but still indicates an association between IGF and low-grade glioma. In addition, discrepant HWE results do not mean that postulated associations should be dismissed, but they should hint at the need for caution in interpretation and more evidence and replication. We evaluated nine SNPs in four tumor groups or subgroups, and the only significant associations were only marginally significant, so they may well be due to chance; replication is clearly needed. The selected SNPs in our study did not fully cover the IGF pathway and additional SNPs should be analyzed, including more IGF genes, for example, IGFBP2 and IGFBP5. Selection bias could be a source of spurious associations in a hospital-based case-control study if one or more of the gene variants evaluated is associated with one or more of the diseases constituting the control series; however, sequential removal of each major control group based on reason for hospitalization did not materially change the results.
In conclusion, we report a possible association between IGF polymorphic variants and the risk of low-grade glioma. Our results are not robust, and the association between IGF polymorphisms and brain tumors needs to be considered further in large, well-designed studies with more comprehensive coverage of the IGF genes.
| Acknowledgments |
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Received for publication November 2, 2007. Accepted for publication March 3, 2008.
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