基于熵特征和机器学习技术的多类心电图信号质量评估

Priya Sardar, Rajarshi Gupta, S. Mukhopadhyay
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引用次数: 0

摘要

心电图(Electrocardiology, ECG)可用于多种心功能的测定,并广泛用于动态健康监测。利用心电图进行自动测量的主要障碍是信号质量,它会受到诸如患者运动、皮肤电极接触不良等各种伪影的影响。虽然有各种各样的心电信号质量评估(SQA)技术可用,但大多数工作都使用计算密集型和内存要求高的技术,如小波、自编码器、模式分解技术等。本文充分利用了各种熵特征,具有信息丰富、计算量轻、应用前景好的特点。其次,多重心电图SQA的证据是偶然的。本文介绍了20熵特征在三级心电SQA中的应用。来自2011年计算机心脏病学(CinC)挑战赛的总计400条记录,每条记录有6条导联,每条导联持续10秒,3级SQA的盲测准确率为75.43%,2级SQA的盲测准确率为97%。结果表明,熵特征优于小波特征和声发射特征,随机森林优于支持向量机和k-NN。本研究在使用CinC2011数据集的ECG SQA上提供了改进的结果。
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Multiclass Signal Quality Assessment of Electrocardiogram using Entropy-based Features and Machine Learning Technique
Electrocardiology (ECG) is useful for deriving a multitude of cardiac functions, and widely used for ambulatory health monitoring. The main hindrance for automatic measurement utilizing ECG is signal quality which gets affected with various artifacts like patient motion, poor skin-electrode contact. While various of ECG signal quality assessment (SQA) techniques are available, most of the works use computationally intensive and memory demanding techniques like wavelet, autoencoders, mode decomposition techniques etc. This paper exhaustively uses various entropy features, which are information rich, computationally lightweight and promising for the application. Secondly, evidence of multiclass ECG SQA is occasional. This paper describes the use of 20 entropy features for 3-class ECG SQA. Total 400 records from Computing in Cardiology (CinC) 2011 challenge, each of 6 leads and of 10 s duration per lead was evaluated, with a blind test accuracy of 75.43% for 3 class and 97% for 2-class SQA. It was found that the entropy features outperform the wavelet and AE features, and random forest provides superior performance over support vector machine and k-NN. The present research provides improved results over few published works on ECG SQA using CinC2011 dataset.
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