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基于机器学习方法从基质图自动定位室性心动过速消融靶点:在猪模型中的开发与验证

Machine learning approach for automated localization of ventricular tachycardia ablation targets from substrate maps: development and validation in a porcine model.

作者信息

Wang Xuezhe, Dennis Adam, Hesselkilde Eva Melis, Saljic Arnela, Linz Benedikt M, Sattler Stefan M, Williams James, Tfelt-Hansen Jacob, Jespersen Thomas, Chow Anthony W C, Dhanjal Tarvinder, Lambiase Pier D, Orini Michele

机构信息

Institute of Cardiovascular Science, University College London, 1-19 Torrington Pl, London WC1E 7HB, UK.

Department of Biomedical Sciences, Faculty of Health and Medical Sciences, University of Copenhagen, Copenhagen, Denmark.

出版信息

Eur Heart J Digit Health. 2025 Jun 10;6(4):645-655. doi: 10.1093/ehjdh/ztaf064. eCollection 2025 Jul.

Abstract

AIMS

The recurrence rate of ventricular tachycardia (VT) after ablation remains high due to the difficulty in locating VT critical sites. This study proposes a machine learning approach for improved identification of ablation targets based on intracardiac electrograms (EGMs) features derived from standard substrate mapping in a chronic myocardial infarction (MI) porcine model.

METHODS AND RESULTS

Thirteen pigs with chronic MI underwent invasive electrophysiological studies using multipolar catheters (Advisor™ HD grid, EnSite Precision™). Fifty-six substrate maps and 35 068 EGMs were collected during sinus rhythm and pacing from multiple sites, including left, right, and biventricular pacing. Ventricular tachycardia was induced in all pigs, and a total of 36 VTs were localized and mapped with early, mid-, and late diastolic components of the circuit. Mapping sites within 6 mm from these critical sites were considered as potential ablation targets. Forty-six signal features representing functional, spatial, spectral, and time-frequency properties were computed from each bipolar and unipolar EGM. Several machine learning models were developed to automatically localize ablation targets, and logistic regressions were used to investigate the association between signal features and VT critical sites. Random forest provided the best accuracy based on unipolar signals from sinus rhythm map, provided an area under the curve of 0.821 with sensitivity and specificity of 81.4% and 71.4%, respectively.

CONCLUSION

This study demonstrates for the first time that machine learning approaches based on EGM features may support clinicians in localizing targets for VT ablation using substrate mapping. This could lead to the development of similar approaches in VT patients.

摘要

目的

由于难以定位室性心动过速(VT)的关键部位,消融术后VT的复发率仍然很高。本研究提出一种机器学习方法,用于在慢性心肌梗死(MI)猪模型中,基于标准基质标测得出的心内电图(EGM)特征,改进消融靶点的识别。

方法与结果

13只患有慢性MI的猪使用多极导管(Advisor™ HD网格,EnSite Precision™)进行了有创电生理研究。在窦性心律期间以及从多个部位(包括左、右和双心室起搏)起搏时,收集了56张基质图和35068份EGM。所有猪均诱发了室性心动过速,共定位并绘制了36次室性心动过速的舒张早期、中期和晚期成分。距离这些关键部位6毫米以内的标测部位被视为潜在的消融靶点。从每个双极和单极EGM中计算出代表功能、空间、频谱和时频特性的46个信号特征。开发了几种机器学习模型来自动定位消融靶点,并使用逻辑回归研究信号特征与VT关键部位之间的关联。基于窦性心律图的单极信号,随机森林提供了最佳准确性,曲线下面积为0.821,敏感性和特异性分别为81.4%和71.4%。

结论

本研究首次证明,基于EGM特征的机器学习方法可能有助于临床医生使用基质标测来定位VT消融的靶点。这可能会促使在VT患者中开发类似的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b9aa/12282365/6cba750e547e/ztaf064_ga.jpg

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