Harnessing Risk Assessment for Thrombosis and Bleeding to Optimize Anticoagulation Strategy in Nonvalvular Atrial Fibrillation.

IF 5 2区 医学 Q1 HEMATOLOGY
Yue Zhao, Li-Ya Cao, Ying-Xin Zhao, Di Zhao, Yi-Fan Huang, Fei Wang, Qian Wang
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引用次数: 0

Abstract

Background:  Oral anticoagulation (OAC) following catheter ablation (CA) of nonvalvular atrial fibrillation (NVAF) is essential for the prevention of thrombosis events. Inappropriate application of OACs does not benefit stroke prevention but may be associated with a higher risk of bleeding. Therefore, this study aims to develop clinical data-driven machine learning (ML) methods to predict the risk of thrombosis and bleeding to establish more precise anticoagulation strategies for patients with NVAF.

Methods:  Patients with NVAF who underwent CA therapy were enrolled from Southwest Hospital from 2015 to 2023. This study compared eight ML algorithms to evaluate the predictive power for both thrombosis and bleeding. Model interpretations were recognized by feature importance and SHapley Additive exPlanations methods. With potential essential risk factors, simplified ML models were proposed to improve the feasibility of the tool.

Results:  A total of 1,055 participants were recruited, including 105 patients with thrombosis and 252 patients with bleeding. The models based on XGBoost achieved the best performance with accuracies of 0.740 and 0.781 for thrombosis and bleeding, respectively. Age, BNP, and the duration of heparin are closely related to the high risk of thrombosis, whereas the anticoagulation strategy, BNP, and lipids play a crucial role in the occurrence of bleeding. The optimized models enrolling crucial risk factors, RF-T for thrombosis and Xw-B for bleeding, achieved the best recalls of 0.774 and 0.780, respectively.

Conclusion:  The optimized models will have a great application potential in predicting thrombosis and bleeding among patients with NVAF and will form the basis for future score scales.

利用血栓和出血风险评估优化非瓣膜性心房颤动的抗凝策略。
背景:非瓣膜性心房颤动(NVAF)导管消融术(CA)后口服抗凝药(OAC)对于预防血栓事件至关重要。不恰当地应用 OAC 无益于血栓预防,反而可能会增加出血风险。因此,本研究旨在开发临床数据驱动的机器学习(ML)方法,以预测血栓形成和出血风险,从而为 NVAF 患者制定更精确的抗凝策略:从2015年至2023年,西南医院共招募了接受CA治疗的NVAF患者。本研究比较了八种 ML 算法,以评估其对血栓和出血的预测能力。模型解释通过特征重要性和SHapley Addictive exPlanations方法进行识别。针对潜在的基本风险因素,提出了简化的 ML 模型,以提高工具的可行性:共招募了 1055 名参与者,包括 105 名血栓形成患者和 252 名出血患者。基于 XGBoost 的模型性能最佳,血栓和出血的准确率分别为 0.704 和 0.781。年龄、BNP 和肝素持续时间与血栓形成的高风险密切相关,而抗凝策略、BNP 和血脂则对出血的发生起着至关重要的作用。纳入关键风险因素的优化模型,即血栓形成的 RF-T 和出血的 Xw-B,分别获得了 0.774 和 0.780 的最佳召回率:结论:优化后的模型在预测 NVAF 患者血栓形成和出血方面具有重要的临床应用价值,并将成为未来评分量表的基础。
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来源期刊
Thrombosis and haemostasis
Thrombosis and haemostasis 医学-外周血管病
CiteScore
11.90
自引率
9.00%
发文量
140
审稿时长
1 months
期刊介绍: Thrombosis and Haemostasis publishes reports on basic, translational and clinical research dedicated to novel results and highest quality in any area of thrombosis and haemostasis, vascular biology and medicine, inflammation and infection, platelet and leukocyte biology, from genetic, molecular & cellular studies, diagnostic, therapeutic & preventative studies to high-level translational and clinical research. The journal provides position and guideline papers, state-of-the-art papers, expert analysis and commentaries, and dedicated theme issues covering recent developments and key topics in the field.
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