Medhi Diptiman, Kamidi Sushmitha Reddy, Mamatha Sree Kannuru Paparaju, Shaikh Shifa, Rasheed Shanida, Thengu Murichathil Abdul Hakeem, Nazir Zahra
Internal Medicine, Gauhati Medical College and Hospital, Guwahati, Guwahati, IND.
College of Medicine, Chalmeda Anand Rao Institute of Medical Sciences, Karimnagar, IND.
Cureus. 2024 May 5;16(5):e59661. doi: 10.7759/cureus.59661. eCollection 2024 May.
Heart failure (HF) is prevalent globally. It is a dynamic disease with varying definitions and classifications due to multiple pathophysiologies and etiologies. The diagnosis, clinical staging, and treatment of HF become complex and subjective, impacting patient prognosis and mortality. Technological advancements, like artificial intelligence (AI), have been significant roleplays in medicine and are increasingly used in cardiovascular medicine to transform drug discovery, clinical care, risk prediction, diagnosis, and treatment. Medical and surgical interventions specific to HF patients rely significantly on early identification of HF. Hospitalization and treatment costs for HF are high, with readmissions increasing the burden. AI can help improve diagnostic accuracy by recognizing patterns and using them in multiple areas of HF management. AI has shown promise in offering early detection and precise diagnoses with the help of ECG analysis, advanced cardiac imaging, leveraging biomarkers, and cardiopulmonary stress testing. However, its challenges include data access, model interpretability, ethical concerns, and generalizability across diverse populations. Despite these ongoing efforts to refine AI models, it suggests a promising future for HF diagnosis. After applying exclusion and inclusion criteria, we searched for data available on PubMed, Google Scholar, and the Cochrane Library and found 150 relevant papers. This review focuses on AI's significant contribution to HF diagnosis in recent years, drastically altering HF treatment and outcomes.
心力衰竭(HF)在全球范围内普遍存在。它是一种动态疾病,由于多种病理生理学和病因,其定义和分类各不相同。HF的诊断、临床分期和治疗变得复杂且主观,影响患者的预后和死亡率。诸如人工智能(AI)等技术进步在医学中发挥了重要作用,并越来越多地应用于心血管医学,以改变药物研发、临床护理、风险预测、诊断和治疗。针对HF患者的医疗和外科干预措施在很大程度上依赖于HF的早期识别。HF的住院和治疗成本很高,再次入院增加了负担。AI可以通过识别模式并将其应用于HF管理的多个领域来帮助提高诊断准确性。AI在借助心电图分析、先进的心脏成像、利用生物标志物和心肺压力测试提供早期检测和精确诊断方面已显示出前景。然而,其挑战包括数据获取、模型可解释性、伦理问题以及在不同人群中的通用性。尽管目前正在努力完善AI模型,但它为HF诊断预示着一个充满希望的未来。在应用排除和纳入标准后,我们在PubMed、谷歌学术和考科蓝图书馆上搜索了可用数据,共找到150篇相关论文。本综述重点关注近年来AI对HF诊断的重大贡献,这极大地改变了HF的治疗和结局。