Skoularigkis Spyridon, Kourek Christos, Xanthopoulos Andrew, Briasoulis Alexandros, Androutsopoulou Vasiliki, Magouliotis Dimitrios, Athanasiou Thanos, Skoularigis John
Department of Cardiology, University Hospital of Larissa, 41110 Larissa, Greece.
Department of Cardiology, 417 Army Share Fund Hospital of Athens (NIMTS), 11521 Athens, Greece.
J Pers Med. 2025 Aug 1;15(8):345. doi: 10.3390/jpm15080345.
Heart failure (HF) poses a substantial global burden due to its high morbidity, mortality, and healthcare costs. Accurate prognostication is crucial for optimizing treatment, resource allocation, and patient counseling. Prognostic tools range from simple clinical scores such as ADHERE and MAGGIC to more complex models incorporating biomarkers (e.g., NT-proBNP, sST2), imaging, and artificial intelligence techniques. In acute HF, models like EHMRG and STRATIFY aid early triage, while in chronic HF, tools like SHFM and BCN Bio-HF support long-term management decisions. Despite their utility, most models are limited by poor generalizability, reliance on static inputs, lack of integration into electronic health records, and underuse in clinical practice. Novel approaches involving machine learning, multi-omics profiling, and remote monitoring hold promise for dynamic and individualized risk assessment. However, these innovations face challenges regarding interpretability, validation, and ethical implementation. For prognostic models to transition from theoretical promise to practical impact, they must be continuously updated, externally validated, and seamlessly embedded into clinical workflows. This review emphasizes the potential of prognostic models to transform HF care but cautions against uncritical adoption without robust evidence and practical integration. In the evolving landscape of HF management, prognostic models represent a hopeful avenue, provided their limitations are acknowledged and addressed through interdisciplinary collaboration and patient-centered innovation.
心力衰竭(HF)因其高发病率、死亡率和医疗成本而给全球带来了沉重负担。准确的预后评估对于优化治疗、资源分配和患者咨询至关重要。预后工具范围广泛,从简单的临床评分如ADHERE和MAGGIC到更复杂的模型,后者纳入了生物标志物(如NT-proBNP、sST2)、影像学和人工智能技术。在急性心力衰竭中,EHMRG和STRATIFY等模型有助于早期分诊,而在慢性心力衰竭中,SHFM和BCN Bio-HF等工具支持长期管理决策。尽管这些模型有用,但大多数模型存在局限性,如通用性差、依赖静态输入、缺乏与电子健康记录的整合以及在临床实践中未得到充分应用。涉及机器学习、多组学分析和远程监测的新方法有望实现动态和个性化的风险评估。然而,这些创新在可解释性、验证和伦理实施方面面临挑战。为了使预后模型从理论上的前景转变为实际影响,它们必须不断更新、进行外部验证并无缝嵌入临床工作流程。本综述强调了预后模型改变心力衰竭护理的潜力,但告诫在没有充分证据和实际整合的情况下不要盲目采用。在心力衰竭管理不断发展的背景下,预后模型是一条充满希望的途径,前提是认识到它们的局限性并通过跨学科合作和以患者为中心的创新加以解决。