Tehnički Vjesnik (Jan 2024)

A Review on Machine Learning Applications: CVI Risk Assessment

  • Ayşe Banu Birlik,
  • Hakan Tozan,
  • Kevser Banu Köse

DOI
https://doi.org/10.17559/TV-20230326000480
Journal volume & issue
Vol. 31, no. 4
pp. 1422 – 1430

Abstract

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Comprehensive literature has been published on the development of digital health applications using machine learning methods in cardiovascular surgery. Many machine learning methods have been applied in clinical decision-making processes, particularly for risk estimation models. This review of the literature shares an update on machine learning applications for cardiovascular intervention (CVI) risk assessment. This study selected peer-reviewed scientific publications providing sufficient detail about machine learning methods and outcomes predicting short-term CVI risk in cardiac surgery. Thirteen articles fulfilling pre-set criteria were reviewed and tables were created presenting the relevant characteristics of the studies. The review demonstrates the usefulness of machine learning methods in high-risk CVI applications, identifies the need for improvement, and provides efficient support for future prediction models for the healthcare system.

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