Adaboost Based ECG Signal Quality Evaluation

Zeyang Zhu, Wenyan Liu, Yang Yao, Xuewei Chen, Yingxian Sun, Lisheng Xu
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引用次数: 4

Abstract

Cardiovascular disease is one of the major diseases that threaten human health. Electrocardiogram (ECG) signal is an important indicator for the diagnosis of cardiovascular disease. Accurate analysis of ECG plays a key role in the diagnosis of cardiovascular disease. Underdeveloped areas have always been a high-risk area for cardiovascular disease and there are few doctors for diagnosing cardiovascular disease. One solution is using a telemedicine system for disease diagnosis. However, the quality of the ECG signal collected is not necessarily reliable and may impact diagnosis. In order to solve the problem, we have studied various methods for assessing the quality of ECG signals. In the paper, we analyzed the 12-lead ECG data provided by PhysioNet and selected two features of the time domain: the number of R peaks and the amplitude difference. These two features were extracted from the ECG data to form a matrix of 24 features. We trained the classification model with the feature matrix and achieved a classification accuracy of 95.80% on the test set. Experimental results demonstrated that the proposed Adaboost algorithm had advantages in accuracy compared with other algorithms for solving ECG quality assessment problems.
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基于Adaboost的心电信号质量评价
心血管疾病是威胁人类健康的主要疾病之一。心电图信号是诊断心血管疾病的重要指标。准确的心电图分析在心血管疾病的诊断中起着关键作用。欠发达地区一直是心血管疾病的高发地区,诊断心血管疾病的医生很少。一种解决方案是使用远程医疗系统进行疾病诊断。然而,采集到的心电信号质量不一定可靠,可能会影响诊断。为了解决这个问题,我们研究了各种评估心电信号质量的方法。在本文中,我们分析了由PhysioNet提供的12导联心电数据,并选择了时域的两个特征:R峰的数量和幅度差。从心电数据中提取这两个特征,形成一个包含24个特征的矩阵。我们使用特征矩阵训练分类模型,在测试集上实现了95.80%的分类准确率。实验结果表明,与其他算法相比,Adaboost算法在解决心电质量评估问题方面具有精度优势。
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