PLoS ONE (Jan 2011)

Genome-scale screen for DNA methylation-based detection markers for ovarian cancer.

  • Mihaela Campan,
  • Melissa Moffitt,
  • Sahar Houshdaran,
  • Hui Shen,
  • Martin Widschwendter,
  • Günter Daxenbichler,
  • Tiffany Long,
  • Christian Marth,
  • Ite A Laird-Offringa,
  • Michael F Press,
  • Louis Dubeau,
  • Kimberly D Siegmund,
  • Anna H Wu,
  • Susan Groshen,
  • Uma Chandavarkar,
  • Lynda D Roman,
  • Andrew Berchuck,
  • Celeste L Pearce,
  • Peter W Laird

DOI
https://doi.org/10.1371/journal.pone.0028141
Journal volume & issue
Vol. 6, no. 12
p. e28141

Abstract

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The identification of sensitive biomarkers for the detection of ovarian cancer is of high clinical relevance for early detection and/or monitoring of disease recurrence. We developed a systematic multi-step biomarker discovery and verification strategy to identify candidate DNA methylation markers for the blood-based detection of ovarian cancer.We used the Illumina Infinium platform to analyze the DNA methylation status of 27,578 CpG sites in 41 ovarian tumors. We employed a marker selection strategy that emphasized sensitivity by requiring consistency of methylation across tumors, while achieving specificity by excluding markers with methylation in control leukocyte or serum DNA. Our verification strategy involved testing the ability of identified markers to monitor disease burden in serially collected serum samples from ovarian cancer patients who had undergone surgical tumor resection compared to CA-125 levels. We identified one marker, IFFO1 promoter methylation (IFFO1-M), that is frequently methylated in ovarian tumors and that is rarely detected in the blood of normal controls. When tested in 127 serially collected sera from ovarian cancer patients, IFFO1-M showed post-resection kinetics significantly correlated with serum CA-125 measurements in six out of 16 patients.We implemented an effective marker screening and verification strategy, leading to the identification of IFFO1-M as a blood-based candidate marker for sensitive detection of ovarian cancer. Serum levels of IFFO1-M displayed post-resection kinetics consistent with a reflection of disease burden. We anticipate that IFFO1-M and other candidate markers emerging from this marker development pipeline may provide disease detection capabilities that complement existing biomarkers.