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A comprehensive review of deep learning-based models for heart disease prediction

  • Chunjie Zhou
  • , Pengfei Dai
  • , Aihua Hou
  • , Zhenxing Zhang
  • , Li Liu
  • , Ali Li
  • , Fusheng Wang
  • Ludong University
  • Ltd.
  • Yantai City Hospital of Traditional Chinese Medicine

Research output: Contribution to journalArticlepeer-review

49 Scopus citations

Abstract

Heart disease (HD) is one of the leading causes of death in humans, posing a heavy burden on society, families, and patients. Real-time prediction of HD can reduce mortality rates and is crucial for timely intervention and treatment of HD. Deep learning (DL)-related methods have higher accuracy and real-time performance in predicting HD. In this study, we comprehensively compared and evaluated the contributions and limitations of DL algorithms, extended deep learning (ETDL) algorithms, and integrated deep learning (integrated DL) algorithms that combine DL with other technologies for predicting HD. The articles considered span the period from 2018 to 2023, and after rigorous screening, 64 articles were selected for preliminary research. A systematic literature review of real-time HDP will provide future researchers with a comprehensive understanding of existing deep learning methods and related integrated technologies in the healthcare industry. Furthermore, it discusses popular datasets employed in deploying numerous prediction models. Additionally, it reveals existing open problems or challenges encountered by previous researchers. Notably, the most prevalent challenge is the scarcity of large discrete datasets, followed by the need for further improvement of existing models.

Original languageEnglish
Article number263
JournalArtificial Intelligence Review
Volume57
Issue number9
DOIs
StatePublished - Sep 2024

Keywords

  • Deep learning
  • Heart disease
  • Prediction

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