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使用密集神经网络分类器,通过 1 到 12 个 ECG 导联检测心房颤动和扑动的房室同步。

Atrioventricular Synchronization for Detection of Atrial Fibrillation and Flutter in One to Twelve ECG Leads Using a Dense Neural Network Classifier.

机构信息

Institute of Biophysics and Biomedical Engineering, Bulgarian Academy of Sciences, Acad. G. Bonchev Str. Bl 105, 1113 Sofia, Bulgaria.

出版信息

Sensors (Basel). 2022 Aug 14;22(16):6071. doi: 10.3390/s22166071.

DOI:10.3390/s22166071
PMID:36015834
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9413391/
Abstract

This study investigates the use of atrioventricular (AV) synchronization as an important diagnostic criterion for atrial fibrillation and flutter (AF) using one to twelve ECG leads. Heart rate, lead-specific AV conduction time, and P-/f-wave amplitude were evaluated by three representative ECG metrics (mean value, standard deviation), namely RR-interval (RRi-mean, RRi-std), PQ-interval (PQi-mean, PQI-std), and PQ-amplitude (PQa-mean, PQa-std), in 71,545 standard 12-lead ECG records from the six largest PhysioNet CinC Challenge 2021 databases. Two rhythm classes were considered (AF, non-AF), randomly assigning records into training (70%), validation (20%), and test (10%) datasets. In a grid search of 19, 55, and 83 dense neural network (DenseNet) architectures and five independent training runs, we optimized models for one-lead, six-lead (chest or limb), and twelve-lead input features. Lead-set performance and SHapley Additive exPlanations (SHAP) input feature importance were evaluated on the test set. Optimal DenseNet architectures with the number of neurons in sequential [1st, 2nd, 3rd] hidden layers were assessed for sensitivity and specificity: DenseNet [16,16,0] with primary leads (I or II) had 87.9-88.3 and 90.5-91.5%; DenseNet [32,32,32] with six limb leads had 90.7 and 94.2%; DenseNet [32,32,4] with six chest leads had 92.1 and 93.2%; and DenseNet [128,8,8] with all 12 leads had 91.8 and 95.8%, indicating sensitivity and specificity values, respectively. Mean SHAP values on the entire test set highlighted the importance of RRi-mean (100%), RR-std (84%), and atrial synchronization (40-60%) for the PQa-mean (aVR, I), PQi-std (V2, aVF, II), and PQi-mean (aVL, aVR). Our focus on finding the strongest AV synchronization predictors of AF in 12-lead ECGs would lead to a comprehensive understanding of the decision-making process in advanced neural network classifiers. DenseNet self-learned to rely on a few ECG behavioral characteristics: first, characteristics usually associated with AF conduction such as rapid heart rate, enhanced heart rate variability, and large PQ-interval deviation in V2 and inferior leads (aVF, II); second, characteristics related to a typical P-wave pattern in sinus rhythm, which is best distinguished from AF by the earliest negative P-peak deflection of the right atrium in the lead (aVR) and late positive left atrial deflection in lateral leads (I, aVL). Our results on lead-selection and feature-selection practices for AF detection should be considered for one- to twelve-lead ECG signal processing settings, particularly those measuring heart rate, AV conduction times, and P-/f-wave amplitudes. Performances are limited to the AF diagnostic potential of these three metrics. SHAP value importance can be used in combination with a human expert's ECG interpretation to change the focus from a broad observation of 12-lead ECG morphology to focusing on the few AV synchronization findings strongly predictive of AF or non-AF arrhythmias. Our results are representative of AV synchronization findings across a broad taxonomy of cardiac arrhythmias in large 12-lead ECG databases.

摘要

这项研究使用 1 到 12 个心电图导联,调查房室(AV)同步作为心房颤动和扑动(AF)的重要诊断标准的应用。通过三个代表性的心电图指标(平均值、标准差)评估心率、导联特异性 AV 传导时间和 P-/f-波幅度,即 RR 间隔(RRi-mean、RRi-std)、PQ 间隔(PQi-mean、PQI-std)和 PQ 幅度(PQa-mean、PQa-std),在六个最大的 PhysioNet CinC Challenge 2021 数据库中的 71,545 个标准 12 导联心电图记录中。考虑了两种节律类别(AF、非-AF),随机将记录分配到训练集(70%)、验证集(20%)和测试集(10%)中。在 19、55 和 83 个密集神经网络(DenseNet)架构的网格搜索和五个独立的训练运行中,我们针对单导联、六导联(胸部或肢体)和十二导联输入特征优化了模型。在测试集上评估导联集性能和 Shapley 可加性解释(SHAP)输入特征重要性。评估具有连续[1st、2nd、3rd]隐藏层中神经元数量的最佳 DenseNet 架构的敏感性和特异性:具有主要导联(I 或 II)的 DenseNet [16,16,0]为 87.9-88.3 和 90.5-91.5%;具有六个肢体导联的 DenseNet [32,32,32]为 90.7 和 94.2%;具有六个胸部导联的 DenseNet [32,32,4]为 92.1 和 93.2%;具有所有 12 个导联的 DenseNet [128,8,8]为 91.8 和 95.8%,分别表示敏感性和特异性值。整个测试集的平均 SHAP 值突出了 RRi-mean(100%)、RR-std(84%)和心房同步性(40-60%)对 PQa-mean(aVR、I)、PQi-std(V2、aVF、II)和 PQi-mean(aVL、aVR)的重要性。我们专注于寻找 12 导联心电图中 AF 的最强 AV 同步预测因子,这将有助于全面了解高级神经网络分类器的决策过程。DenseNet 自行学习依赖于一些心电图行为特征:首先,通常与 AF 传导相关的特征,如快速心率、增强的心率变异性以及 V2 和下导(aVF、II)中较大的 PQ 间隔偏差;其次,与窦性节律中典型 P 波模式相关的特征,通过导联(aVR)中右心房最早的负 P 峰偏移和侧导联(I、aVL)中晚期的左心房正偏移,与 AF 最容易区分。我们在 AF 检测中用于导联选择和特征选择实践的结果应考虑用于 1 到 12 导联心电图信号处理设置,特别是那些测量心率、AV 传导时间和 P-/f-波幅度的设置。性能仅限于这三个指标对 AF 诊断的潜力。SHAP 值重要性可与人类专家的心电图解释结合使用,将重点从对 12 导联心电图形态的广泛观察转移到关注对 AF 或非 AF 心律失常具有强预测性的少数 AV 同步发现。我们的结果代表了大型 12 导联心电图数据库中广泛的心律失常分类中 AV 同步发现。

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