主动脉狭窄人工智能心电图与超声心动图特征的相关性研究。

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Saki Ito, Michal Cohen-Shelly, Zachi I Attia, Eunjung Lee, Paul A Friedman, Vuyisile T Nkomo, Hector I Michelena, Peter A Noseworthy, Francisco Lopez-Jimenez, Jae K Oh
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引用次数: 1

摘要

目的:人工智能心电图(AI-ECG)是一种很有前途的工具,可以在出现症状之前检测主动脉瓣狭窄(AS)患者。然而,AI-ECG中反映的负责其检测的功能、结构或血流动力学成分尚不清楚。方法和结果:采用Mayo诊所开发的AI-ECG模型,使用卷积神经网络识别中重度AS患者。作为试验组的患者,研究as的AI-ECG概率与超声心动图参数的相关性。本研究纳入102 926例患者(63.0±16.3岁,男性52%),其中28 464例(27.7%)经AI-ECG诊断为as阳性。AI-ECG阳性组中年龄较大、房颤、高血压、糖尿病、冠状动脉疾病和心力衰竭的发生率高于阴性组(P < 0.001)。AI-ECG与主动脉瓣面积(ρ = -0.48, R2 = 0.20)、峰值流速(ρ = 0.22, R2 = 0.08)、平均压力梯度(ρ = 0.35, R2 = 0.08)相关。AI-ECG与左室(LV)质量指数(ρ = 0.36, R2 = 0.13)、E/ E′(ρ = 0.36, R2 = 0.12)、左心房容积指数(ρ = 0.42, R2 = 0.12)相关。左室射血分数和脑卒中容积指数与AI-ECG均无显著相关性。年龄与AI-ECG相关(ρ = 0.46, R2 = 0.22),其与超声心动图参数的相关性与AI-ECG相似。结论:AI-ECG可反映AS严重程度、舒张功能障碍和左室肥厚的综合情况。在模型中似乎存在心脏解剖/功能特征的分级,其识别过程是多因素的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Correlation between artificial intelligence-enabled electrocardiogram and echocardiographic features in aortic stenosis.

Correlation between artificial intelligence-enabled electrocardiogram and echocardiographic features in aortic stenosis.

Correlation between artificial intelligence-enabled electrocardiogram and echocardiographic features in aortic stenosis.

Correlation between artificial intelligence-enabled electrocardiogram and echocardiographic features in aortic stenosis.

Aims: An artificial intelligence-enabled electrocardiogram (AI-ECG) is a promising tool to detect patients with aortic stenosis (AS) before developing symptoms. However, functional, structural, or haemodynamic components reflected in AI-ECG responsible for its detection are unknown.

Methods and results: The AI-ECG model that was developed at Mayo Clinic using a convolutional neural network to identify patients with moderate-severe AS was applied. In patients used as the testing group, the correlation between the AI-ECG probability of AS and echocardiographic parameters was investigated. This study included 102 926 patients (63.0 ± 16.3 years, 52% male), and 28 464 (27.7%) were identified as AS positive by AI-ECG. Older age, atrial fibrillation, hypertension, diabetes, coronary artery disease, and heart failure were more common in the positive AI-ECG group than in the negative group (P < 0.001). The AI-ECG was correlated with aortic valve area (ρ = -0.48, R2 = 0.20), peak velocity (ρ = 0.22, R2 = 0.08), and mean pressure gradient (ρ = 0.35, R2 = 0.08). The AI-ECG also correlated with left ventricular (LV) mass index (ρ = 0.36, R2 = 0.13), E/e' (ρ = 0.36, R2 = 0.12), and left atrium volume index (ρ = 0.42, R2 = 0.12). Neither LV ejection fraction nor stroke volume index had a significant correlation with the AI-ECG. Age correlated with the AI-ECG (ρ = 0.46, R2 = 0.22) and its correlation with echocardiography parameters was similar to that of the AI-ECG.

Conclusion: A combination of AS severity, diastolic dysfunction, and LV hypertrophy is reflected in the AI-ECG to detect AS. There seems to be a gradation of the cardiac anatomical/functional features in the model and its identification process of AS is multifactorial.

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