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基于人工特征和抽象特征的低信噪比数据心房颤动检测。

Atrial Fibrillation Detection with Low Signal-to-Noise Ratio Data Using Artificial Features and Abstract Features.

机构信息

School of Mechanical, Electrical and Information Engineering, Shandong University, Weihai 264209, China.

School of Business, Shandong University, Weihai 264209, China.

出版信息

J Healthc Eng. 2023 Jan 21;2023:3269144. doi: 10.1155/2023/3269144. eCollection 2023.

Abstract

Detecting atrial fibrillation (AF) of short single-lead electrocardiogram (ECG) with low signal-to-noise ratio (SNR) is a key of the wearable heart monitoring system. This study proposed an AF detection method based on feature fusion to identify AF rhythm (A) from other three categories of ECG recordings, that is, normal rhythm (N), other rhythm (O), and noisy (∼) ECG recordings. So, the four categories, that is, N, A, O, and ∼ were identified from the database provided by PhysioNet/CinC Challenge 2017. The proposed method first unified the 9 to 60 seconds unbalanced ECG recordings into 30 s segments by copying, cutting, and symmetry. Then, 24 artificial features including waveform features, interval features, frequency-domain features, and nonlinear feature were extracted relying on prior knowledge. Meanwhile, a 13-layer one-dimensional convolutional neural network (1-D CNN) was constructed to yield 38 abstract features. Finally, 24 artificial features and 38 abstract features were fused to yield the feature matrix. Random forest was employed to classify the ECG recordings. In this study, the mean accuracy (Acc) of the four categories reached 0.857. The of N, A, and O reached 0.837. The results exhibited the proposed method had relatively satisfactory performance for identifying AF from short single-lead ECG recordings with low SNR.

摘要

检测具有低信噪比 (SNR) 的短单导联心电图 (ECG) 中的心房颤动 (AF) 是可穿戴心脏监测系统的关键。本研究提出了一种基于特征融合的 AF 检测方法,用于从其他三类 ECG 记录中识别 AF 节律 (A),即正常节律 (N)、其他节律 (O) 和噪声 (∼) ECG 记录。因此,从 PhysioNet/CinC Challenge 2017 提供的数据库中识别出了 N、A、O 和 ∼这四个类别。该方法首先通过复制、裁剪和对称将 9 到 60 秒的不平衡 ECG 记录统一为 30 秒的片段。然后,基于先验知识提取了 24 个人工特征,包括波形特征、间隔特征、频域特征和非线性特征。同时,构建了一个 13 层一维卷积神经网络 (1-D CNN),生成 38 个抽象特征。最后,将 24 个人工特征和 38 个抽象特征融合生成特征矩阵。随机森林用于对 ECG 记录进行分类。在这项研究中,四个类别的平均准确率 (Acc) 达到了 0.857。N、A 和 O 的召回率达到了 0.837。结果表明,该方法在识别具有低 SNR 的短单导联 ECG 记录中的 AF 方面具有相对令人满意的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5fc7/9884164/95b8e0fa77f0/JHE2023-3269144.001.jpg

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