Using Saliva Epigenetic Data to Develop and Validate a Multivariable Predictor of Esophageal Cancer Status

Timothy Stone(University College London), Vanessa Ward(University College London), Áine Hogan(University College London), Kai Man Alexander Ho(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Ash Wilson(University College London), Hazel McBain(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Margaret Duku(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Paul Wolfson(University College London), Sharon Cheung(University College London), Avi Rosenfeld(Jerusalem College of Technology), Laurence Lovat(University College Hospital), Sharanabasappa Shetty, Stacey Forsey, Julie Matthews, Rosemary Phillips, Tracey White, Nikki White, Inder Mainie, Philip D. Hall, Helen Graham, Fiona Gregg, Leena Sinha, Rommel Butawen, Annemarie McGregor, Anjan Dhar, Ellen Brown, Susan Wadd, Gideon Lipman, Sandra L. Jackson, Ameena Ayub, Olivia Adu-Anti, Robert P. Willert, Huiyann Lee, Cheryl Mendonca, Jennifer Soren, Susannah Woodrow, Darmarah Veeramootoo, Tracy Foster, John de Caestecker, Sudarshan Kadri, Olivia Watchorn, Ellie Clarke, Danielle Morris, Martin Ebon, Clare E. Collins, Jason Dunn, Sebatian Zeki, Jessica Cordle, Radu Rusu, Andrew A. Li, Peter J. Basford, Yvette Thirlwall, Alexandra Cope, Nicole Kader, Nicky Barnes, Joana Da Rocha, Richard Keld, Elizabeth Ratcliffe, P.J.K. Paterson, Kalliopi Alexandropoulou, Edith Gallagher, Laura Matthews, Jeffrey Butterworth, Denise Donaldson, Heather Button, Vinod Patel, Mamoon Solkar, Heather Savill, Joanne Vere, Hendrik Wegstapel, Tessa Lawrence, Peter Milverton
Epigenomics
January 1, 2024
Cited by 1Open Access
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Abstract

Background: Salivary epigenetic biomarkers may detect esophageal cancer. Methods: A total of 256 saliva samples from esophageal adenocarcinoma patients and matched volunteers were analyzed with Illumina EPIC methylation arrays. Three datasets were created, using 64% for discovery, 16% for testing and 20% for validation. Modules of gene-based methylation probes were created using weighted gene coexpression network analysis. Module significance to disease and gene importance to module were determined and a random forest classifier generated using best-scoring gene-related epigenetic probes. A cost-sensitive wrapper algorithm maximized cancer diagnosis. Results: Using age, sex and seven probes, esophageal adenocarcinoma was detected with area under the curve of 0.72 in discovery, 0.73 in testing and 0.75 in validation datasets. Cancer sensitivity was 88% with specificity of 31%. Conclusion: We have demonstrated a potentially clinically viable classifier of esophageal cancer based on saliva methylation.


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