人工智能引导的神经调节在保留和降低射血分数的心力衰竭:机制,证据和未来的方向。

IF 2.3 4区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
Rabiah Aslam Ansari, Sidhartha Gautam Senapati, Vibhor Ahluwalia, Gianeshwaree Alias Rachna Panjwani, Anmolpreet Kaur, Gayathri Yerrapragada, Jayavinamika Jayapradhaban Kala, Poonguzhali Elangovan, Shiva Sankari Karuppiah, Naghmeh Asadimanesh, Anjani Muthyala, Shivaram P Arunachalam
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引用次数: 0

摘要

心力衰竭是一种重要的全球健康负担,可分为射血分数降低(HFrEF)和射血分数保持(HFpEF),分别以收缩功能障碍和舒张僵硬为特征。虽然HFrEF受益于药物和器械治疗,但HFpEF缺乏有效的治疗方法,这两种情况都会导致高再住院率和生活质量下降,特别是在有合并症的老年人中。本文综述了人工智能(AI)在推进自主神经调节心力衰竭管理中的作用。人工智能增强了患者选择,优化了刺激策略,并实现了自适应闭环系统。在HFrEF中,迷走神经刺激和压力反射激活治疗改善了功能状态和生物标志物,而人工智能驱动的模型根据生理反馈动态调整刺激。在HFpEF中,AI有助于深层表型分析,以确定神经调节干预的反应亚群。临床工具支持远程监控、风险评估和症状检测。然而,数据整合、伦理监督和临床采用等挑战限制了现实世界的应用。算法透明、偏见最小化和公平获取是成功的关键。跨学科合作和伦理创新对于通过人工智能引导的神经调节制定个性化、数据驱动、以患者为中心的心力衰竭治疗策略至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial Intelligence-Guided Neuromodulation in Heart Failure with Preserved and Reduced Ejection Fraction: Mechanisms, Evidence, and Future Directions.

Artificial Intelligence-Guided Neuromodulation in Heart Failure with Preserved and Reduced Ejection Fraction: Mechanisms, Evidence, and Future Directions.

Artificial Intelligence-Guided Neuromodulation in Heart Failure with Preserved and Reduced Ejection Fraction: Mechanisms, Evidence, and Future Directions.

Heart failure, a significant global health burden, is divided into heart failure with reduced ejection fraction (HFrEF) and preserved ejection fraction (HFpEF), characterized by systolic dysfunction and diastolic stiffness, respectively. While HFrEF benefits from pharmacological and device-based therapies, HFpEF lacks effective treatments, with both conditions leading to high rehospitalization rates and reduced quality of life, especially in older adults with comorbidities. This review explores the role of artificial intelligence (AI) in advancing autonomic neuromodulation for heart failure management. AI enhances patient selection, optimizes stimulation strategies, and enables adaptive, closed-loop systems. In HFrEF, vagus nerve stimulation and baroreflex activation therapy improve functional status and biomarkers, while AI-driven models adjust stimulation dynamically based on physiological feedback. In HFpEF, AI aids in deep phenotyping to identify responsive subgroups for neuromodulatory interventions. Clinical tools support remote monitoring, risk assessment, and symptom detection. However, challenges like data integration, ethical oversight, and clinical adoption limit real-world application. Algorithm transparency, bias minimization, and equitable access are critical for success. Interdisciplinary collaboration and ethical innovation are essential to develop personalized, data-driven, patient-centered heart failure treatment strategies through AI-guided neuromodulation.

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来源期刊
Journal of Cardiovascular Development and Disease
Journal of Cardiovascular Development and Disease CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
2.60
自引率
12.50%
发文量
381
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