Development of PancRISK, a urine biomarker-based risk score for stratified screening of pancreatic cancer patients
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Published:2019-12-20
Issue:5
Volume:122
Page:692-696
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ISSN:0007-0920
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Container-title:British Journal of Cancer
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language:en
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Short-container-title:Br J Cancer
Author:
Blyuss OlegORCID, Zaikin Alexey, Cherepanova Valeriia, Munblit Daniel, Kiseleva Elena M., Prytomanova Olga M., Duffy Stephen W., Crnogorac-Jurcevic Tatjana
Abstract
Abstract
Background
An accurate and simple risk prediction model that would facilitate earlier detection of pancreatic adenocarcinoma (PDAC) is not available at present. In this study, we compare different algorithms of risk prediction in order to select the best one for constructing a biomarker-based risk score, PancRISK.
Methods
Three hundred and seventy-nine patients with available measurements of three urine biomarkers, (LYVE1, REG1B and TFF1) using retrospectively collected samples, as well as creatinine and age, were randomly split into training and validation sets, following stratification into cases (PDAC) and controls (healthy patients). Several machine learning algorithms were used, and their performance characteristics were compared. The latter included AUC (area under ROC curve) and sensitivity at clinically relevant specificity.
Results
None of the algorithms significantly outperformed all others. A logistic regression model, the easiest to interpret, was incorporated into a PancRISK score and subsequently evaluated on the whole data set. The PancRISK performance could be even further improved when CA19-9, commonly used PDAC biomarker, is added to the model.
Conclusion
PancRISK score enables easy interpretation of the biomarker panel data and is currently being tested to confirm that it can be used for stratification of patients at risk of developing pancreatic cancer completely non-invasively, using urine samples.
Funder
Pancreatic Cancer Research Fund DH | National Institute for Health Research DH | NIHR | Efficacy and Mechanism Evaluation Programme
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Oncology
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