Saeed Imran, Hashmi Muhammad Usman, Khalid Muhammad, Ramzan Hussain, Ibrahim Muhammad, Baig Mirza Farzan, Mansoor Syeda Arshia, Asad Zummar, Abbas Johar, Pillai Shonita
Internal Medicine, Nishtar Medical University, Multan, PAK.
Clinical Research, Rahmah Academy of Research Excellence, Islamabad, PAK.
Cureus. 2025 Jul 1;17(7):e87130. doi: 10.7759/cureus.87130. eCollection 2025 Jul.
Heart failure (HF) is a prevalent global health concern, impacting millions and contributing to high morbidity, mortality, and healthcare costs. The management of HF involves complex strategies, and traditional approaches often fail to address the escalating burden of hospital readmissions and deteriorating patient quality of life. Artificial intelligence (AI) has emerged as a promising tool for enhancing diagnostic accuracy, personalizing treatment plans, and improving patient outcomes in HF care. This narrative review investigates how AI technologies can benefit HF patients' quality of life by improving risk assessment, patient self-management, and diagnostics. A comprehensive review of the literature was conducted through the studies on PubMed, Scopus, and Embase, primarily focusing on AI applications in HF diagnosis, management, and patient education, with key studies selected to highlight the role of AI in improving clinical outcomes and reducing hospital readmissions. AI-driven tools, such as neural networks and deep learning algorithms, have demonstrated high accuracy in the early detection of HF, enabling timely interventions that mitigate disease progression. Rule-based AI systems apply fixed clinical rules to standardize HF diagnostics but cannot adjust to individual patient differences. Machine learning methods analyze structured health records to forecast risks like hospitalizations or refine treatments. Deep learning techniques, using neural networks, detect subtle heart abnormalities in complex imaging data like echocardiograms that conventional approaches might overlook. Personalized digital health applications, including avatar-based self-management programs, have significantly improved quality of life by empowering patients to monitor symptoms, adhere to treatment regimens, and engage proactively in their care. Furthermore, AI's integration into cardiac imaging systems enhances precision in identifying subtle cardiac abnormalities. At the same time, remote monitoring technologies leverage predictive analytics to flag decompensation risks, allowing clinicians to adjust therapies preemptively. These advancements collectively optimize therapeutic strategies and reduce rehospitalization rates. Despite challenges such as implementation costs, data privacy concerns, and ethical considerations surrounding algorithmic bias, AI's evolving role in HF management highlights its transformative potential. By bridging gaps in personalized care, fostering patient engagement, and refining risk stratification, AI promises to revolutionize HF management paradigms, shifting the focus from reactive treatment to proactive, patient-centered precision medicine. This integration addresses systemic inefficiencies and holds promise for sustainable improvements in long-term outcomes and quality of life for HF patients globally.
心力衰竭(HF)是一个普遍存在的全球健康问题,影响着数百万人,并导致高发病率、高死亡率和高昂的医疗成本。HF的管理涉及复杂的策略,而传统方法往往无法解决医院再入院负担不断加重和患者生活质量不断恶化的问题。人工智能(AI)已成为一种有前景的工具,可提高诊断准确性、个性化治疗方案,并改善HF护理中的患者结局。这篇叙述性综述探讨了AI技术如何通过改善风险评估、患者自我管理和诊断来提高HF患者的生活质量。通过对PubMed、Scopus和Embase上的研究进行全面文献综述,主要关注AI在HF诊断、管理和患者教育中的应用,并选择关键研究以突出AI在改善临床结局和减少医院再入院方面的作用。AI驱动的工具,如神经网络和深度学习算法,在HF的早期检测中已显示出高准确性,能够进行及时干预以减轻疾病进展。基于规则的AI系统应用固定的临床规则来标准化HF诊断,但无法适应个体患者差异。机器学习方法分析结构化健康记录以预测住院等风险或优化治疗。深度学习技术利用神经网络在复杂的成像数据(如超声心动图)中检测传统方法可能忽略的细微心脏异常。个性化数字健康应用,包括基于虚拟化身的自我管理程序,通过使患者能够监测症状、坚持治疗方案并积极参与自身护理,显著提高了生活质量。此外,AI集成到心脏成像系统中可提高识别细微心脏异常的精度。同时,远程监测技术利用预测分析标记失代偿风险,使临床医生能够提前调整治疗。这些进展共同优化了治疗策略并降低了再住院率。尽管存在实施成本、数据隐私问题以及围绕算法偏差的伦理考量等挑战,但AI在HF管理中不断演变的作用凸显了其变革潜力。通过弥合个性化护理差距、促进患者参与并完善风险分层,AI有望彻底改变HF管理模式,将重点从被动治疗转向主动的、以患者为中心的精准医学。这种整合解决了系统性低效率问题,并有望在全球范围内可持续改善HF患者的长期结局和生活质量。