Beyond Clinical Factors: Harnessing Artificial Intelligence and Multimodal Cardiac Imaging to Predict Atrial Fibrillation Recurrence Post-Catheter Ablation.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-09-19 DOI:10.3390/jcdd11090291
Edward T Truong, Yiheng Lyu, Abdul Rahman Ihdayhid, Nick S R Lan, Girish Dwivedi
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Abstract

Atrial fibrillation (AF) is the most common type of cardiac arrhythmia, with catheter ablation being a key alternative to medical treatment for restoring normal sinus rhythm. Despite advances in understanding AF pathogenesis, approximately 35% of patients experience AF recurrence at 12 months after catheter ablation. Therefore, accurate prediction of AF recurrence occurring after catheter ablation is important for patient selection and management. Conventional methods for predicting post-catheter ablation AF recurrence, which involve the use of univariate predictors and scoring systems, have played a supportive role in clinical decision-making. In an ever-changing landscape where technology is becoming ubiquitous within medicine, cardiac imaging and artificial intelligence (AI) could prove pivotal in enhancing AF recurrence predictions by providing data with independent predictive power and identifying key relationships in the data. This review comprehensively explores the existing methods for predicting the recurrence of AF following catheter ablation from different perspectives, including conventional predictors and scoring systems, cardiac imaging-based methods, and AI-based methods developed using a combination of demographic and imaging variables. By summarising state-of-the-art technologies, this review serves as a roadmap for developing future prediction models with enhanced accuracy, generalisability, and explainability, potentially contributing to improved care for patients with AF.

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超越临床因素:利用人工智能和多模态心脏成像技术预测导管消融术后心房颤动复发。
心房颤动(房颤)是最常见的心律失常类型,导管消融术是替代药物治疗恢复正常窦性心律的重要方法。尽管人们对房颤发病机制的认识不断进步,但仍有约 35% 的患者在导管消融术后 12 个月房颤复发。因此,准确预测导管消融术后房颤复发对于患者的选择和管理非常重要。预测导管消融术后房颤复发的传统方法包括使用单变量预测因子和评分系统,这些方法在临床决策中起到了辅助作用。在医学技术日新月异、无处不在的今天,心脏成像和人工智能(AI)可通过提供具有独立预测能力的数据和识别数据中的关键关系,在加强房颤复发预测方面发挥关键作用。本综述从不同角度全面探讨了预测导管消融术后房颤复发的现有方法,包括传统预测方法和评分系统、基于心脏成像的方法以及结合人口统计学和成像变量开发的基于人工智能的方法。通过总结最先进的技术,本综述为未来开发具有更高精度、通用性和可解释性的预测模型提供了路线图,可能有助于改善房颤患者的护理。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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