Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications

Introduction: This article provides a comprehensive analysis of predictive models for individual cancer risk, examining their development, application, and evaluation. The study covers various cancer types, highlighting the diversity and sophistication of models over time. Methods: Utilizing data fr...

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Main Author: Philippe Westerlinck
Format: Article
Language:English
Published: MDPI AG 2025-06-01
Series:Onco
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Online Access:https://www.mdpi.com/2673-7523/5/2/29
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author Philippe Westerlinck
author_facet Philippe Westerlinck
author_sort Philippe Westerlinck
collection DOAJ
description Introduction: This article provides a comprehensive analysis of predictive models for individual cancer risk, examining their development, application, and evaluation. The study covers various cancer types, highlighting the diversity and sophistication of models over time. Methods: Utilizing data from PubMed, Web of Science, and Scopus, the research includes models developed for 22 cancer types, with significant emphasis on breast and colorectal cancers due to their prevalence and early detection benefits. Results: The analysis reveals an uneven distribution of models, often concentrated in the United States and the United Kingdom, with a notable gap in models for rarer cancers. Key methodologies such as logistic regression and Cox proportional hazards models dominate the field, reflecting a preference for established statistical techniques. The study underscores the importance of incorporating multiple risk factors, including genetic, environmental, lifestyle, and clinical data, to enhance predictive accuracy. Despite advancements, the article identifies a critical need for external validation and standardization in reporting practices to improve model reliability and generalizability. Conclusions The findings emphasize the potential of these models in personalized cancer prevention and early detection, while also calling for continued research and methodological harmonization to address existing gaps and challenges.
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spelling doaj-art-bc52bca83de24320a1c731c8af3c17572025-08-20T03:27:39ZengMDPI AGOnco2673-75232025-06-01522910.3390/onco5020029Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and ApplicationsPhilippe Westerlinck0Department of Radiation Oncology, University Hospital Centre (CHU), Avenue de l’Hôpital 1, 4000 Liège, BelgiumIntroduction: This article provides a comprehensive analysis of predictive models for individual cancer risk, examining their development, application, and evaluation. The study covers various cancer types, highlighting the diversity and sophistication of models over time. Methods: Utilizing data from PubMed, Web of Science, and Scopus, the research includes models developed for 22 cancer types, with significant emphasis on breast and colorectal cancers due to their prevalence and early detection benefits. Results: The analysis reveals an uneven distribution of models, often concentrated in the United States and the United Kingdom, with a notable gap in models for rarer cancers. Key methodologies such as logistic regression and Cox proportional hazards models dominate the field, reflecting a preference for established statistical techniques. The study underscores the importance of incorporating multiple risk factors, including genetic, environmental, lifestyle, and clinical data, to enhance predictive accuracy. Despite advancements, the article identifies a critical need for external validation and standardization in reporting practices to improve model reliability and generalizability. Conclusions The findings emphasize the potential of these models in personalized cancer prevention and early detection, while also calling for continued research and methodological harmonization to address existing gaps and challenges.https://www.mdpi.com/2673-7523/5/2/29cancer risk predictionpredictive modelsrisk factorsmodel validationpersonalized medicine
spellingShingle Philippe Westerlinck
Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
Onco
cancer risk prediction
predictive models
risk factors
model validation
personalized medicine
title Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
title_full Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
title_fullStr Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
title_full_unstemmed Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
title_short Comparative Analysis of Predictive Models for Individual Cancer Risk: Approaches and Applications
title_sort comparative analysis of predictive models for individual cancer risk approaches and applications
topic cancer risk prediction
predictive models
risk factors
model validation
personalized medicine
url https://www.mdpi.com/2673-7523/5/2/29
work_keys_str_mv AT philippewesterlinck comparativeanalysisofpredictivemodelsforindividualcancerriskapproachesandapplications