Investigator

Oleg Blyuss

Statistician · Queen Mary University of London, Wolfson Institute of Preventive Medicine

Research Interests

OBOleg Blyuss
Papers(1)
Bayesian and deep‐lea…
Institutions(1)
University College Lo…

Papers

Bayesian and deep‐learning models applied to the early detection of ovarian cancer using multiple longitudinal biomarkers

AbstractBackgroundOvarian cancer is the most lethal of all gynecological cancers. Cancer Antigen 125 (CA125) is the best‐performing ovarian cancer biomarker which however is still not effective as a screening test in the general population. Recent literature reports additional biomarkers with the potential to improve on CA125 for early detection when using longitudinal multimarker models.MethodsOur data comprised 180 controls and 44 cases with serum samples sourced from the multimodal arm of UK Collaborative Trial of Ovarian Cancer Screening (UKCTOCS). Our models were based on Bayesian change‐point detection and recurrent neural networks.ResultsWe obtained a significantly higher performance for CA125–HE4 model using both methodologies (AUC 0.971, sensitivity 96.7% and AUC 0.987, sensitivity 96.7%) with respect to CA125 (AUC 0.949, sensitivity 90.8% and AUC 0.953, sensitivity 92.1%) for Bayesian change‐point model (BCP) and recurrent neural networks (RNN) approaches, respectively. One year before diagnosis, the CA125–HE4 model also ranked as the best, whereas at 2 years before diagnosis no multimarker model outperformed CA125.ConclusionsOur study identified and tested different combination of biomarkers using longitudinal multivariable models that outperformed CA125 alone. We showed the potential of multivariable models and candidate biomarkers to increase the detection rate of ovarian cancer.

63Works
1Papers
Early Detection of CancerBiomarkers, TumorPancreatic NeoplasmsOvarian NeoplasmsCarcinoma, Pancreatic DuctalBreast NeoplasmsNeoplasm Recurrence, LocalPrognosis

Positions

2017–

Statistician

Queen Mary University of London · Wolfson Institute of Preventive Medicine

Researcher

University of Hertfordshire

2012–

Research Associate

University College London Institute for Women's Health · Women's Cancer

2008–

Lecturer in Mathematics

Oles Honchar Dnipropetrovsk National University · Applied Mathematics

2007–

Research Fellow

Oles Honchar Dnipropetrovsk National University · Applied Mathematics

Education

2011

PhD in Theoretical Foundations of Informatics and Cybernetics

Oles Honchar Dnipropetrovsk National University · Applied Mathematics

2007

MSc with distinction in Computer System Analysis

Oles Honchar Dnipropetrovsk National University · Applied Mathematics

2006

BSc with distinction in Computer Sciences

Oles Honchar Dnipropetrovsk National University · Applied Mathematics

Country

GB