Department of Cardiology, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
Department of Cardiology, Fuwai Central China Cardiovascular Hospital, Zhengzhou, China.
J Cardiovasc Electrophysiol. 2024 Apr;35(4):811-820. doi: 10.1111/jce.16228. Epub 2024 Feb 29.
Various left atrial (LA) anatomical structures are correlated with postablative recurrence for atrial fibrillation (AF) patients. Comprehensively integrating anatomical structures, digitizing them, and implementing in-depth analysis, which may supply new insights, are needed. Thus, we aim to establish an interpretable model to identify AF patients' phenotypes according to LA anatomical morphology, using machine learning techniques.
Five hundred and nine AF patients underwent first ablation treatment in three centers were included and were followed-up for postablative recurrent atrial arrhythmias. Data from 369 patients were regarded as training set, while data from another 140 patients, collected from different centers, were used as validation set. We manually measured 57 morphological parameters on enhanced computed tomography with three-dimensional reconstruction technique and implemented unsupervised learning accordingly. Three morphological groups were identified, with distinct prognosis according to Kaplan-Meier estimator (p < .001). Multivariable Cox model revealed that morphological grouping were independent predictors of 1-year recurrence (Group 1: HR = 3.00, 95% CI: 1.51-5.95, p = .002; Group 2: HR = 4.68, 95% CI: 2.40-9.11, p < .001; Group 3 as reference). Furthermore, external validation consistently demonstrated our findings.
Our study illustrated the feasibility of employing unsupervised learning for the classification of LA morphology. By utilizing morphological grouping, we can effectively identify individuals at different risks of postablative recurrence and thereby assist in clinical decision-making.
各种左心房(LA)解剖结构与房颤(AF)患者消融后复发相关。全面整合解剖结构,对其进行数字化,并进行深入分析,可能会提供新的见解,因此,我们旨在使用机器学习技术,根据 LA 解剖形态建立可解释的模型来识别 AF 患者的表型。
纳入了三个中心的 509 例首次消融治疗的 AF 患者,并对消融后复发性房性心律失常进行了随访。369 例患者的数据被视为训练集,而另外 140 例来自不同中心的数据被用作验证集。我们使用增强 CT 三维重建技术手动测量了 57 个形态参数,并进行了无监督学习。根据 Kaplan-Meier 估计器,识别出三个形态组,具有明显不同的预后(p < .001)。多变量 Cox 模型显示,形态分组是 1 年复发的独立预测因素(组 1:HR = 3.00,95%CI:1.51-5.95,p = .002;组 2:HR = 4.68,95%CI:2.40-9.11,p < .001;组 3 为参考)。此外,外部验证一致证实了我们的发现。
我们的研究表明,无监督学习可用于 LA 形态分类。通过使用形态分组,我们可以有效地识别出不同消融后复发风险的个体,从而辅助临床决策。