AI Article Synopsis

  • The study examines how machine learning algorithms can predict cardiovascular events (CVE) based on various cardiovascular risk factors (CVRF), showing advantages over traditional scoring systems and promoting personalized medicine.
  • Data from 3,746 male workers were analyzed using algorithms like XGBoost, Random Forest, and Naïve Bayes, focusing on variables such as age, physical status, and treatment adherence.
  • Age was identified as the most significant risk factor, with treatment adherence proving to be a key influence on CVE risk, particularly when Random Forest was utilized, achieving a high F1 score of 0.84.

Article Abstract

Assessment of the influence of cardiovascular risk factors (CVRF) on cardiovascular event (CVE) using machine learning algorithms offers some advantages over preexisting scoring systems, and better enables personalized medicine approaches to cardiovascular prevention. Using data from four different sources, we evaluated the outcomes of three machine learning algorithms for CVE prediction using different combinations of predictive variables and analysed the influence of different CVRF-related variables on CVE prediction when included in these algorithms. A cohort study based on a male cohort of workers applying populational data was conducted. The population of the study consisted of 3746 males. For descriptive analyses, mean and standard deviation were used for quantitative variables, and percentages for categorical ones. Machine learning algorithms used were XGBoost, Random Forest and Naïve Bayes (NB). They were applied to two groups of variables: i) age, physical status, Hypercholesterolemia (HC), Hypertension, and Diabetes Mellitus (DM) and ii) these variables plus treatment exposure, based on the adherence to the treatment for DM, hypertension and HC. All methods point out to the age as the most influential variable in the incidence of a CVE. When considering treatment exposure, it was more influential than any other CVRF, which changed its influence depending on the model and algorithm applied. According to the performance of the algorithms, the most accurate was Random Forest when treatment exposure was considered (F1 score 0.84), followed by XGBoost. Adherence to treatment showed to be an important variable in the risk of having a CVE. These algorithms could be applied to create models for every population, and they can be used in primary care to manage interventions personalized for every subject.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10653526PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0293759PLOS

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