A Bayesian network model for predicting cardiovascular risk

Comput Methods Programs Biomed. 2023 Apr:231:107405. doi: 10.1016/j.cmpb.2023.107405. Epub 2023 Feb 5.

Abstract

Background and objective: Cardiovascular diseases are the leading death cause in Europe and entail large treatment costs. Cardiovascular risk prediction is crucial for the management and control of cardiovascular diseases. Based on a Bayesian network built from a large population database and expert judgment, this work studies interrelations between cardiovascular risk factors, emphasizing the predictive assessment of medical conditions, and providing a computational tool to explore and hypothesize such interrelations.

Methods: We implement a Bayesian network model that considers modifiable and non-modifiable cardiovascular risk factors as well as related medical conditions. Both the structure and the probability tables in the underlying model are built using a large dataset collected from annual work health assessments as well as expert information, with uncertainty characterized through posterior distributions.

Results: The implemented model allows for making inferences and predictions about cardiovascular risk factors. The model can be utilized as a decision- support tool to suggest diagnosis, treatment, policy, and research hypothesis. The work is complemented with a free software implementing the model for practitioners' use.

Conclusions: Our implementation of the Bayesian network model facilitates answering public health, policy, diagnosis, and research questions concerning cardiovascular risk factors.

Keywords: Bayesian network; Cardiovascular diseases; Disease treatment; Health policy; Healthcare.

MeSH terms

  • Bayes Theorem
  • Cardiovascular Diseases*
  • Heart Disease Risk Factors
  • Humans
  • Risk Factors
  • Software