Petmezas Georgios, Papageorgiou Vasileios E, Vassilikos Vasileios, Pagourelias Efstathios, Tsaklidis George, Katsaggelos Aggelos K, Maglaveras Nicos
2nd Department of Obstetrics and Gynecology, Medical School, Aristotle University of Thessaloniki, Thessaloniki, Greece; Centre for Research and Technology Hellas, Thessaloniki, Greece.
Department of Mathematics, Aristotle University of Thessaloniki, Thessaloniki, Greece.
Comput Biol Med. 2024 Jun;176:108557. doi: 10.1016/j.compbiomed.2024.108557. Epub 2024 May 6.
Heart failure (HF), a global health challenge, requires innovative diagnostic and management approaches. The rapid evolution of deep learning (DL) in healthcare necessitates a comprehensive review to evaluate these developments and their potential to enhance HF evaluation, aligning clinical practices with technological advancements.
This review aims to systematically explore the contributions of DL technologies in the assessment of HF, focusing on their potential to improve diagnostic accuracy, personalize treatment strategies, and address the impact of comorbidities.
A thorough literature search was conducted across four major electronic databases: PubMed, Scopus, Web of Science and IEEE Xplore, yielding 137 articles that were subsequently categorized into five primary application areas: cardiovascular disease (CVD) classification, HF detection, image analysis, risk assessment, and other clinical analyses. The selection criteria focused on studies utilizing DL algorithms for HF assessment, not limited to HF detection but extending to any attempt in analyzing and interpreting HF-related data.
The analysis revealed a notable emphasis on CVD classification and HF detection, with DL algorithms showing significant promise in distinguishing between affected individuals and healthy subjects. Furthermore, the review highlights DL's capacity to identify underlying cardiomyopathies and other comorbidities, underscoring its utility in refining diagnostic processes and tailoring treatment plans to individual patient needs.
This review establishes DL as a key innovation in HF management, highlighting its role in advancing diagnostic accuracy and personalized care. The insights provided advocate for the integration of DL in clinical settings and suggest directions for future research to enhance patient outcomes in HF care.
心力衰竭(HF)是一项全球性的健康挑战,需要创新的诊断和管理方法。深度学习(DL)在医疗保健领域的迅速发展使得有必要进行全面综述,以评估这些进展及其增强HF评估的潜力,使临床实践与技术进步保持一致。
本综述旨在系统地探讨DL技术在HF评估中的贡献,重点关注其提高诊断准确性、个性化治疗策略以及应对合并症影响的潜力。
在四个主要电子数据库(PubMed、Scopus、Web of Science和IEEE Xplore)中进行了全面的文献检索,共获得137篇文章,随后将其分为五个主要应用领域:心血管疾病(CVD)分类、HF检测、图像分析、风险评估和其他临床分析。选择标准侧重于利用DL算法进行HF评估的研究,不限于HF检测,还包括任何分析和解释HF相关数据的尝试。
分析表明,研究显著侧重于CVD分类和HF检测,DL算法在区分患病个体和健康受试者方面显示出巨大潜力。此外,该综述强调了DL识别潜在心肌病和其他合并症的能力,突出了其在完善诊断过程和根据个体患者需求制定治疗计划方面的实用性。
本综述确立了DL作为HF管理中的一项关键创新,突出了其在提高诊断准确性和个性化护理方面的作用。所提供的见解倡导将DL整合到临床环境中,并为未来研究提供方向,以改善HF护理中的患者预后。