基于人工智能的计算机断层扫描肺静脉形态特征分析与导管消融后房颤复发风险:一项多部位研究。

IF 9.1 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Golnoush Asaeikheybari, Majd El-Harasis, Amit Gupta, M Benjamin Shoemaker, John Barnard, Joshua Hunter, Rod S Passman, Han Sun, Hyun Su Kim, Taylor Schilling, William Telfer, Britta Eldridge, Po-Hao Chen, Abhishek Midya, Bibin Varghese, Samuel J Harwood, Alison Jin, Sojin Y Wass, Aleksandar Izda, Kevin Park, Abel Abraham, David R Van Wagoner, Animesh Tandon, Mina K Chung, Anant Madabhushi
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引用次数: 0

摘要

背景:房颤(AF)复发(AF+)在导管消融后很常见。肺静脉(PV)隔离是房颤消融的基础,但PV重构与房颤+的风险相关。我们旨在评估计算机断层图像上基于人工智能的原发性和继发性PV分支形态学特征是否与消融后AF+相关。方法:训练两个人工智能模型对ct图像进行分割,实现PV分支的分离。将来自Cleveland Clinic (n=135)和Vanderbilt University (n=594)的患者合并,分为2组进行训练和交叉验证(D1, n=218)和内部测试(D2, n=511)。独立验证集(D3, n=80)来自克利夫兰大学医院。我们从房颤+且导管消融后无复发患者的原发性和继发性PV分支中提取了48个基于分形和12个基于形状的放射学特征。为了预测房颤+,我们基于原发性分支PV模型(Mp)、次级分支PV模型(Ms)和原发性和继发性分支PV模型(Mc)的显著特征构建了3个梯度增强分类模型。结果:发现与原发性pv相关的特征与AF+相关。在3个数据集上,Mp分类器在曲线下的面积分别为0.73、0.71和0.70。AF+病例在其原发性PV区表现出更大的表面复杂性,与AF非复发病例相比,这可以通过更高的分形维值来证明。Ms分类器结果显示与AF+的相关性较弱,表明原发性PV分支形态学与消融后AF+的相关性较高。结论:这项迄今为止最大的多机构研究揭示了人工智能提取的3个部位809例原发性PV分支形态学特征与AF+之间的关联。未来的工作将集中于通过整合临床、结构和形态学特征,包括左心房附件和左心房相关特征,来增强分类器的预测能力。
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-Based Feature Analysis of Pulmonary Vein Morphology on Computed Tomography Scans and Risk of Atrial Fibrillation Recurrence After Catheter Ablation: A Multi-Site Study.

Background: Atrial fibrillation (AF) recurrence is common after catheter ablation. Pulmonary vein (PV) isolation is the cornerstone of AF ablation, but PV remodeling has been associated with the risk of AF recurrence. We aimed to evaluate whether artificial intelligence-based morphological features of primary and secondary PV branches on computed tomography images are associated with AF recurrence post-ablation.

Methods: Two artificial intelligence models were trained for the segmentation of computed tomography images, enabling the isolation of PV branches. Patients from Cleveland Clinic (N=135) and Vanderbilt University (N=594) were combined and divided into 2 sets for training and cross-validation (D1, n=218) and internal testing (D2, n=511). An independent validation set (D3, N=80) was obtained from University Hospitals of Cleveland. We extracted 48 fractal-based and 12 shape-based radiomic features from primary and secondary PV branches of patients with AF recurrence (AF+) and without recurrence after catheter ablation of AF (AF-). To predict AFrecurrence, 3 Gradient Boosting classification models based on significant features from primary (Mp), secondary (Ms), and combined (Mc) PV branches were built.

Results: Features relating to primary PVs were found to be associated with AF recurrence. The Mp classifier achieved area under the curve values of 0.73, 0.71, and 0.70 across the 3 datasets. AF+ cases exhibited greater surface complexity in their primary PV area, as evidenced by higher fractal dimension values compared with AF- cases. The Ms classifier results revealed a weaker association with AF+, suggesting higher relevance to AF recurrence post-ablation from primary PV branch morphology.

Conclusions: This largest multi-institutional study to date revealed associations between artificial intelligence-extracted morphological features of the primary PV branches with AF recurrence in 809 patients from 3 sites. Future work will focus on enhancing the predictive ability of the classifier by integrating clinical, structural, and morphological features, including left atrial appendage and left atrium-related characteristics.

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来源期刊
CiteScore
13.70
自引率
4.80%
发文量
187
审稿时长
4-8 weeks
期刊介绍: Circulation: Arrhythmia and Electrophysiology is a journal dedicated to the study and application of clinical cardiac electrophysiology. It covers a wide range of topics including the diagnosis and treatment of cardiac arrhythmias, as well as research in this field. The journal accepts various types of studies, including observational research, clinical trials, epidemiological studies, and advancements in translational research.
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