Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling

Prostate cancer is the second most diagnosed cancer in the world. Treatment guidelines involve a multitude of therapies, however adherence to them is not fully established, while lack of personalized treatment strategies fails to put the patient as an individual clinical profile at the center of the...

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Main Authors: Lev Korolkov, Heather A Robinson, Konstantinos Mouratis
Format: Article
Language:English
Published: SAGE Publishing 2025-04-01
Series:Digital Health
Online Access:https://doi.org/10.1177/20552076251326021
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author Lev Korolkov
Heather A Robinson
Konstantinos Mouratis
author_facet Lev Korolkov
Heather A Robinson
Konstantinos Mouratis
author_sort Lev Korolkov
collection DOAJ
description Prostate cancer is the second most diagnosed cancer in the world. Treatment guidelines involve a multitude of therapies, however adherence to them is not fully established, while lack of personalized treatment strategies fails to put the patient as an individual clinical profile at the center of their treatment. We aim to present the concept of a digital treatment analyzer (TA) for the management of prostate cancer (PC) patients, leveraging real-world data (RWD) and predictive modeling to enhance personalized disease management strategies and adherence to PC guidelines, ultimately aiming to optimize therapeutic efficacy and improve outcomes. The TA comprises digital tools integrated into one user-intuitive interface, facilitating the development of patient-specific clinical profiles, classification of patients into matched historical RWD cohorts, presentation of relevant clinical guidelines, visual representation of treatment and outcomes, and mortality risk prediction based on a validated machine learning models. The Medical Information Mart for Intensive Care (MIMIC) IV dataset was utilized, including structured and unstructured data from the patient journey. The developed TA represents a promising approach to enhance personalized disease management strategies and adherence to PC guidelines. By integrating contemporary clinical guidelines, RWD and AI-driven insights, our digital TA aims to optimize therapeutic efficacy and improve patient outcomes. The presented concept demonstrates the potential for using a digital approach that integrates RWD into a treatment journey, to provide healthcare stakeholders with a holistic approach to PC management involving all available modern tools to achieve optimal outcomes.
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spelling doaj-art-0e082ac0549b432e8e03551fa3ee8ddc2025-08-20T01:48:41ZengSAGE PublishingDigital Health2055-20762025-04-011110.1177/20552076251326021Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modellingLev Korolkov0Heather A Robinson1Konstantinos Mouratis2 , Munchen, Germany Health eResearch Centre, University of Manchester, Manchester, UK Leipzig Heart Centre University Hospital: Herzzentrum Leipzig Universitatsklinik, Leipzig, GermanyProstate cancer is the second most diagnosed cancer in the world. Treatment guidelines involve a multitude of therapies, however adherence to them is not fully established, while lack of personalized treatment strategies fails to put the patient as an individual clinical profile at the center of their treatment. We aim to present the concept of a digital treatment analyzer (TA) for the management of prostate cancer (PC) patients, leveraging real-world data (RWD) and predictive modeling to enhance personalized disease management strategies and adherence to PC guidelines, ultimately aiming to optimize therapeutic efficacy and improve outcomes. The TA comprises digital tools integrated into one user-intuitive interface, facilitating the development of patient-specific clinical profiles, classification of patients into matched historical RWD cohorts, presentation of relevant clinical guidelines, visual representation of treatment and outcomes, and mortality risk prediction based on a validated machine learning models. The Medical Information Mart for Intensive Care (MIMIC) IV dataset was utilized, including structured and unstructured data from the patient journey. The developed TA represents a promising approach to enhance personalized disease management strategies and adherence to PC guidelines. By integrating contemporary clinical guidelines, RWD and AI-driven insights, our digital TA aims to optimize therapeutic efficacy and improve patient outcomes. The presented concept demonstrates the potential for using a digital approach that integrates RWD into a treatment journey, to provide healthcare stakeholders with a holistic approach to PC management involving all available modern tools to achieve optimal outcomes.https://doi.org/10.1177/20552076251326021
spellingShingle Lev Korolkov
Heather A Robinson
Konstantinos Mouratis
Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
Digital Health
title Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
title_full Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
title_fullStr Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
title_full_unstemmed Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
title_short Development of a digital treatment analyzer for the management of prostate cancer patients, with the help of real world data and use of predictive modelling
title_sort development of a digital treatment analyzer for the management of prostate cancer patients with the help of real world data and use of predictive modelling
url https://doi.org/10.1177/20552076251326021
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