Inbar Omri, Inbar Or, Dlin Ron, Casaburi Richard
Clinical and Exercise Physiology, School of Public Health, Sackler Faculty of Medicine, Tel Aviv University, Tel Aviv, Israel.
Medical Engineering, Medibyt LTD, Yakum, Israel.
Eur J Appl Physiol. 2025 Mar 21. doi: 10.1007/s00421-025-05740-2.
Cardiopulmonary exercise testing (CPET) has emerged as a powerful diagnostic tool, providing comprehensive physiological insights into the integrated function of cardiovascular, respiratory, and metabolic systems. Exploiting physiological interactions, CPET allows in-depth diagnostic insights. CPET performance entrains several complexities. Interpreting CPET data can be challenging, requiring significant physiological expertise. The advent of artificial intelligence (AI) has introduced a transformative approach to CPET interpretation, enhancing accuracy, efficiency, and clinical decision-making. This review article explores the current state of AI applications in CPET, highlighting AI's potential to replace the traditional stress electrocardiogram (ECG) test as the preferred diagnostic tool in preventive medicine and medical screening. The article discusses the underlying principles of AI, its integration into CPET interpretation, and the associated benefits, including improved diagnostic accuracy, reduced interobserver variability, and expedited decision-making. Additionally, it addresses the challenges and considerations surrounding the implementation of AI in CPET such as data quality, model interpretability, and ethical concerns. The review concludes by emphasizing the significant promise of AI-assisted CPET interpretation in revolutionizing preventive medicine and medical screening settings and enhancing patient care.
心肺运动试验(CPET)已成为一种强大的诊断工具,能对心血管、呼吸和代谢系统的综合功能提供全面的生理见解。利用生理相互作用,CPET可实现深入的诊断洞察。CPET的实施存在若干复杂性。解读CPET数据可能具有挑战性,需要相当的生理学专业知识。人工智能(AI)的出现为CPET解读引入了一种变革性方法,提高了准确性、效率和临床决策能力。这篇综述文章探讨了AI在CPET中的应用现状,强调了AI有潜力取代传统的应激心电图(ECG)测试,成为预防医学和医学筛查中的首选诊断工具。文章讨论了AI的基本原理、其在CPET解读中的整合以及相关益处,包括提高诊断准确性、减少观察者间差异和加快决策速度。此外,还探讨了在CPET中实施AI所面临的挑战和考量因素,如数据质量、模型可解释性和伦理问题。综述最后强调了AI辅助CPET解读在革新预防医学和医学筛查环境以及改善患者护理方面的巨大前景。