Diagnosis of epithelial ovarian cancer using a combined protein biomarker panel.

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2019
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Abstract
An early detection tool for EOC was constructed from analysis of biomarker expression data from serum collected during the UKCTOCS.This study included 49 EOC cases (19 Type I and 30 Type II) and 31 controls, representing 482 serial samples spanning seven years pre-diagnosis. A logit model was trained by analysis of dysregulation of expression data of four putative biomarkers, (CA125, phosphatidylcholine-sterol acyltransferase, vitamin K-dependent protein Z and C-reactive protein); by scoring the specificity associated with dysregulation from the baseline expression for each individual.The model is discriminatory, passes k-fold and leave-one-out cross-validations and was further validated in a Type I EOC set. Samples were analysed as a simulated annual screening programme, the algorithm diagnosed cases with >30% PPV 1-2 years pre-diagnosis. For Type II cases (~80% were HGS) the algorithm classified 64% at 1 year and 28% at 2 years tDx as severe.The panel has the potential to diagnose EOC one-two years earlier than current diagnosis. This analysis provides a tangible worked example demonstrating the potential for development as a screening tool and scrutiny of its properties. Limits on interpretation imposed by the number of samples available are discussed.
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russell2019diagnosisbritish Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Russell, Matthew R;Graham, Ciaren;D'Amato, Alfonsina;Gentry-Maharaj, Aleksandra;Ryan, Andy;Kalsi, Jatinderpal K;Whetton, Anthony D;Menon, Usha;Jacobs, Ian;Graham, Robert L J;
Journal British Journal of Cancer
Year 2019
DOI 10.1038/s41416-019-0544-0
URL
Keywords Keywords not found

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