Examination of a CpG Island Methylator Phenotype and Implications of Methylation Profiles in Solid Tumors
Carmen J. Marsit,E. Andres Houseman,Brock C. Christensen,Karen Eddy,Raphael Bueno,David J. Sugarbaker,Heather H. Nelson,Margaret R. Karagas,Karl T. Kelsey +8 more
TL;DR: The existence of CIMP and the relative preponderance of hypermethylation in these cancers suggest that methylation analysis may be clinically useful as a targeted screening tool.
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Abstract: The CpG island methylator phenotype (CIMP), thoroughly described in colorectal cancer and to a lesser extent in other solid tumors, is important in understanding epigenetics in carcinogenesis and may be clinically useful for classification of neoplastic disease. Therefore, we investigated whether this putative phenotype exists in exposure-related solid tumors, where somatic gene alterations and enhanced clonal growth are selected for by carcinogens, and examined the ability of methylation profiles to classify malignant disease. We studied promoter hypermethylation of 16 tumor suppressor genes and 3 MINT loci (acknowledged classifiers of CIMP) in 344 bladder cancers, 346 head and neck squamous cell carcinomas (HNSCC), 146 non-small-cell lung cancer (NSCLC), and 71 malignant pleural mesotheliomas (MPM). We employed rigorous statistical methods to examine the distribution of promoter methylation and the usefulness of these profiles for disease classification. In bladder cancer, HNSCC, and NSCLC, there was a significant correlation (P < 0.0001) between methylation of the three MINT loci and methylation index, although the distribution of methylated loci varied significantly across these disease. Although there was a significant (P < 0.001) association between gene methylation profile and disease, rates of misclassification of each disease by their methylation profile ranged from 28% to 32%, depending on the classification scheme used. These data suggest that a form of CIMP exists in these solid tumors, although its etiology remains elusive. Whereas the gene profiles of hypermethylation among examined loci could not unequivocally distinguish disease type, the existence of CIMP and the relative preponderance of hypermethylation in these cancers suggest that methylation analysis may be clinically useful as a targeted screening tool.
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Genome-scale analysis of DNA methylation in lung adenocarcinoma and integration with mRNA expression
Suhaida A. Selamat,Brian Chung,Luc Girard,Wei Zhang,Ying Zhang,Mihaela Campan,Kimberly D. Siegmund,Michael Koss,Jeffrey A. Hagen,Wan L. Lam,Stephen Lam,Adi F. Gazdar,Ite A. Laird-Offringa +12 more
TL;DR: In this paper, the authors performed genome-scale DNA methylation profiling using the Illumina Infinium HumanMethylation27 platform on 59 matched lung adenocarcinoma/non-tumor lung pairs.
Hypermethylator Phenotype in Sporadic Colon Cancer: Study on a Population-Based Series of 582 Cases
Ludovic Barault,Céline Charon-Barra,Valérie Jooste,Mathilde Funes de la Vega,Laurent Martin,Patrick Roignot,Patrick Rat,Anne Marie Bouvier,Pierre Laurent-Puig,Jean Faivre,Caroline Chapusot,F. Piard +11 more
TL;DR: Methylation is an independent prognostic factor in MSS colon cancer and shows the interest of defining three subgroups of patients according to their methylation status (No-CIMP/CIMp-Low/CimP-High).
297
Methylation of multiple genes as a candidate biomarker in non-small cell lung cancer.
TL;DR: Investigating the methylation profiles of non-small cell lung cancer in the Chinese population indicated that methylated alteration of multiple genes plays an important role in NSCLC pathogenesis and a panel of candidate epigenetic biomarkers forNSCLC detection in theChinese population was identified.
227
Association between DNA methylation and shortened survival in patients with advanced colorectal cancer treated with 5-fluorouracil based chemotherapy.
Lanlan Shen,Paul J. Catalano,Al B. Benson,Peter O'Dwyer,Stanley R. Hamilton,Jean Pierre J. Issa +5 more
TL;DR: CIMP is associated with poor survival in advanced colorectal cancer patients and Concurrent methylation of two or more genes of the CIMP-associated subset (MINT1, MINT31, p14ARF and p16INK4a) defined a group of cases with markedly reduced overall survival.
192
DNA methylation-based biomarkers for early detection of non-small cell lung cancer: an update
TL;DR: A detailed review of the literature is presented, focusing on DNA methylation-based markers developed using primary NSCLC tissue, and discusses progress on their detection in 'remote media' such as blood, sputum, bronchoalveolar lavage, or even exhaled breath condensate.
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