Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review

Bayesian networks (BNs) are probabilistic graphical models that leverage Bayes’ theorem to portray dependencies and cause-and-effect relationships between variables. These networks have gained prominence in the field of health sciences, particularly in diagnostic processes, by allowing the integrati...

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Published in:Machine Learning and Knowledge Extraction
Main Authors: Kristina Polotskaya, Carlos S. Muñoz-Valencia, Alejandro Rabasa, Jose A. Quesada-Rico, Domingo Orozco-Beltrán, Xavier Barber
Format: Article
Language:English
Published: MDPI AG 2024-06-01
Subjects:
Online Access:https://www.mdpi.com/2504-4990/6/2/58
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author Kristina Polotskaya
Carlos S. Muñoz-Valencia
Alejandro Rabasa
Jose A. Quesada-Rico
Domingo Orozco-Beltrán
Xavier Barber
author_facet Kristina Polotskaya
Carlos S. Muñoz-Valencia
Alejandro Rabasa
Jose A. Quesada-Rico
Domingo Orozco-Beltrán
Xavier Barber
author_sort Kristina Polotskaya
collection DOAJ
container_title Machine Learning and Knowledge Extraction
description Bayesian networks (BNs) are probabilistic graphical models that leverage Bayes’ theorem to portray dependencies and cause-and-effect relationships between variables. These networks have gained prominence in the field of health sciences, particularly in diagnostic processes, by allowing the integration of medical knowledge into models and addressing uncertainty in a probabilistic manner. Objectives: This review aims to provide an exhaustive overview of the current state of Bayesian networks in disease diagnosis and prognosis. Additionally, it seeks to introduce readers to the fundamental methodology of BNs, emphasising their versatility and applicability across varied medical domains. Employing a meticulous search strategy with MeSH descriptors in diverse scientific databases, we identified 190 relevant references. These were subjected to a rigorous analysis, resulting in the retention of 60 papers for in-depth review. The robustness of our approach minimised the risk of selection bias. Results: The selected studies encompass a wide range of medical areas, providing insights into the statistical methodology, implementation feasibility, and predictive accuracy of BNs, as evidenced by an average area under the curve (AUC) exceeding 75%. The comprehensive analysis underscores the adaptability and efficacy of Bayesian networks in diverse clinical scenarios. The majority of the examined studies demonstrate the potential of BNs as reliable adjuncts to clinical decision-making. The findings of this review affirm the role of Bayesian networks as accessible and versatile artificial intelligence tools in healthcare. They offer a viable solution to address complex medical challenges, facilitating timely and informed decision-making under conditions of uncertainty. The extensive exploration of Bayesian networks presented in this review highlights their significance and growing impact in the realm of disease diagnosis and prognosis. It underscores the need for further research and development to optimise their capabilities and broaden their applicability in addressing diverse and intricate healthcare challenges.
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spelling doaj-art-a67191b9cbf5467e8a3be7441ec6ab7a2025-08-19T23:12:57ZengMDPI AGMachine Learning and Knowledge Extraction2504-49902024-06-01621243126210.3390/make6020058Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping ReviewKristina Polotskaya0Carlos S. Muñoz-Valencia1Alejandro Rabasa2Jose A. Quesada-Rico3Domingo Orozco-Beltrán4Xavier Barber5Center of Operations Research, Miguel Hernández University, 03202 Elche, SpainCenter of Operations Research, Miguel Hernández University, 03202 Elche, SpainCenter of Operations Research, Miguel Hernández University, 03202 Elche, SpainDepartment of Clinical Medicine, Miguel Hernández University, 03550 San Juan de Alicante, SpainDepartment of Clinical Medicine, Miguel Hernández University, 03550 San Juan de Alicante, SpainCenter of Operations Research, Miguel Hernández University, 03202 Elche, SpainBayesian networks (BNs) are probabilistic graphical models that leverage Bayes’ theorem to portray dependencies and cause-and-effect relationships between variables. These networks have gained prominence in the field of health sciences, particularly in diagnostic processes, by allowing the integration of medical knowledge into models and addressing uncertainty in a probabilistic manner. Objectives: This review aims to provide an exhaustive overview of the current state of Bayesian networks in disease diagnosis and prognosis. Additionally, it seeks to introduce readers to the fundamental methodology of BNs, emphasising their versatility and applicability across varied medical domains. Employing a meticulous search strategy with MeSH descriptors in diverse scientific databases, we identified 190 relevant references. These were subjected to a rigorous analysis, resulting in the retention of 60 papers for in-depth review. The robustness of our approach minimised the risk of selection bias. Results: The selected studies encompass a wide range of medical areas, providing insights into the statistical methodology, implementation feasibility, and predictive accuracy of BNs, as evidenced by an average area under the curve (AUC) exceeding 75%. The comprehensive analysis underscores the adaptability and efficacy of Bayesian networks in diverse clinical scenarios. The majority of the examined studies demonstrate the potential of BNs as reliable adjuncts to clinical decision-making. The findings of this review affirm the role of Bayesian networks as accessible and versatile artificial intelligence tools in healthcare. They offer a viable solution to address complex medical challenges, facilitating timely and informed decision-making under conditions of uncertainty. The extensive exploration of Bayesian networks presented in this review highlights their significance and growing impact in the realm of disease diagnosis and prognosis. It underscores the need for further research and development to optimise their capabilities and broaden their applicability in addressing diverse and intricate healthcare challenges.https://www.mdpi.com/2504-4990/6/2/58Bayesian networksdisease diagnosisdisease prognosisdirected acyclic graphBayesian classifierscoping review
spellingShingle Kristina Polotskaya
Carlos S. Muñoz-Valencia
Alejandro Rabasa
Jose A. Quesada-Rico
Domingo Orozco-Beltrán
Xavier Barber
Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
Bayesian networks
disease diagnosis
disease prognosis
directed acyclic graph
Bayesian classifier
scoping review
title Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
title_full Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
title_fullStr Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
title_full_unstemmed Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
title_short Bayesian Networks for the Diagnosis and Prognosis of Diseases: A Scoping Review
title_sort bayesian networks for the diagnosis and prognosis of diseases a scoping review
topic Bayesian networks
disease diagnosis
disease prognosis
directed acyclic graph
Bayesian classifier
scoping review
url https://www.mdpi.com/2504-4990/6/2/58
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