机器学习在口服抗凝治疗心房颤动患者出血风险预测中的应用。

IF 1.7 4区 医学 Q3 HEMATOLOGY
Tsahi T Lerman, Shmuel Tiosano, Roy Beigel, Michal Cohen-Shelly, Ran Kornowski, Refael Munitz, David A Nace, Shuja Hassan, Karen Scandrett, Daniel E Forman, Boris Fishman
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引用次数: 0

摘要

心房颤动(AF)是一种常见的心律失常,与系统性血栓栓塞和中风的风险显著增加有关。抗凝治疗,特别是直接口服抗凝剂,已成为预防中风的标准,但其代价是出血风险增加。随着经皮左心耳闭塞术等抗凝治疗的有效替代方法的引入,出血风险分层已成为指导治疗决策的关键。传统的统计学方法已被用于出血风险分层评分,如HEMORR2HAGES、HAS-BLED和ATRIA。然而,这些方法可能不足以解决出血风险的多因素性质,在不同的患者群体,他们的整体性能一直是次优的。机器学习(ML)的最新进展为增强出血风险预测和优化抗凝治疗提供了有希望的机会。本文综述了ML在接受抗凝治疗的房颤患者中的应用,重点介绍了基于ML的出血风险评分的发展和验证。与传统工具相比,这些模型已经证明了更好的预测性能,利用复杂的数据集来识别细微的模式和交互。此外,机器学习驱动的华法林管理工具,包括剂量预测、治疗范围内时间优化和药物-药物相互作用的识别,显示出提高患者安全性和治疗效果的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning application for bleeding risk prediction in patients with atrial fibrillation treated with oral anticoagulation.

Atrial fibrillation (AF) is a prevalent cardiac arrhythmia associated with a significantly increased risk of systemic thromboembolism and stroke. Anticoagulation therapy, particularly with Direct Oral Anticoagulants, has become the standard for stroke prevention but comes at the cost of an increased bleeding risk. With the introduction of effective alternatives to anticoagulation, such as percutaneous left atrial appendage occlusion, bleeding risk stratification has become essential to guide therapeutic decision-making. Conventional statistical methods have been used for bleeding risk stratification scores, such as HEMORR2HAGES, HAS-BLED, and ATRIA. However, these methods may inadequately address the multifactorial nature of bleeding risk in diverse patient populations, and their overall performance has been suboptimal. Recent advancements in machine learning (ML) offer promising opportunities to enhance bleeding risk prediction and optimize anticoagulation therapy. This review explores ML applications in AF patients receiving anticoagulation therapy, focusing on the development and validation of ML-based bleeding risk scores. These models have demonstrated improved predictive performance compared to traditional tools, leveraging complex datasets to identify nuanced patterns and interactions. Furthermore, ML-driven tools in warfarin management, including dose prediction, optimization of time in the therapeutic range, and the identification of drug-drug interactions, show significant potential to enhance patient safety and treatment efficacy.

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来源期刊
Acta Haematologica
Acta Haematologica 医学-血液学
CiteScore
4.90
自引率
0.00%
发文量
61
审稿时长
6-12 weeks
期刊介绍: ''Acta Haematologica'' is a well-established and internationally recognized clinically-oriented journal featuring balanced, wide-ranging coverage of current hematology research. A wealth of information on such problems as anemia, leukemia, lymphoma, multiple myeloma, hereditary disorders, blood coagulation, growth factors, hematopoiesis and differentiation is contained in first-rate basic and clinical papers some of which are accompanied by editorial comments by eminent experts. These are supplemented by short state-of-the-art communications, reviews and correspondence as well as occasional special issues devoted to ‘hot topics’ in hematology. These will keep the practicing hematologist well informed of the new developments in the field.
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