Prognostic DNA Methylation Biomarkers in Ovarian Cancer

Susan Wei(Cancer Genetics (United States)), Curtis Balch(Indiana University Health), Henry Paik(Indiana University School of Medicine), Yoo-Sung Kim(Inha University), Rae Lynn Baldwin(Cedars-Sinai Medical Center), Sandya Liyanarachchi(Cancer Genetics (United States)), Lang Li(Indiana University School of Medicine), Zailong Wang(The Ohio State University), Joseph C. Wan(Cancer Genetics (United States)), Ramana V. Davuluri(Cancer Genetics (United States)), Beth Y. Karlan(Cedars-Sinai Medical Center), Gillian Gifford(Cancer Research UK), Robert Brown(Cancer Research UK), Sun Kim(Indiana University Bloomington), Tim H-M. Huang(Cancer Genetics (United States)), Kenneth P. Nephew(Indiana University Health)
Clinical Cancer Research
May 1, 2006
Cited by 155

Abstract

PURPOSE: Aberrant DNA methylation, now recognized as a contributing factor to neoplasia, often shows definitive gene/sequence preferences unique to specific cancer types. Correspondingly, distinct combinations of methylated loci can function as biomarkers for numerous clinical correlates of ovarian and other cancers. EXPERIMENTAL DESIGN: We used a microarray approach to identify methylated loci prognostic for reduced progression-free survival (PFS) in advanced ovarian cancer patients. Two data set classification algorithms, Significance Analysis of Microarray and Prediction Analysis of Microarray, successfully identified 220 candidate PFS-discriminatory methylated loci. Of those, 112 were found capable of predicting PFS with 95% accuracy, by Prediction Analysis of Microarray, using an independent set of 40 advanced ovarian tumors (from 20 short-PFS and 20 long-PFS patients, respectively). Additionally, we showed the use of these predictive loci using two bioinformatics machine-learning algorithms, Support Vector Machine and Multilayer Perceptron. CONCLUSION: In this report, we show that highly prognostic DNA methylation biomarkers can be successfully identified and characterized, using previously unused, rigorous classifying algorithms. Such ovarian cancer biomarkers represent a promising approach for the assessment and management of this devastating disease.


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