Data from Prognostic DNA Methylation Biomarkers in Ovarian Cancer

Autor: Kenneth P. Nephew, Tim H-M. Huang, Sun Kim, Robert Brown, Gillian Gifford, Beth Y. Karlan, Ramana V. Davuluri, Joseph C. Wan, Zailong Wang, Lang Li, Sandya Liyanarachchi, Rae Lynn Baldwin, Yoo-Sung Kim, Henry H. Paik, Curtis Balch, Susan H. Wei
Rok vydání: 2023
DOI: 10.1158/1078-0432.c.6518470.v1
Popis: 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.
Databáze: OpenAIRE