ECG Analysis-Based Cardiac Disease Prediction Using Signal Feature Selection with Extraction Based on AI Techniques

A. Sharma, Dr. H.S. Hota
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引用次数: 4

Abstract

ECG (Electrocardiogram) performs classification using a machine learning model for processing different features in the ECG signal. The electrical activity of the heart is computed with the ECG signal with machine learning library. The key issue in the handling of ECG signals is an estimation of irregularities to evaluate the health status of patients. The ECG signal evaluate the impulse waveform for the specialized tissues in the cardiac heart diseases. However, the ECG signal comprises of the different difficulties associated with waveform estimation to derive certain features. Through machine learning (ML) model the input features are computed with input ECG signals. In this paper, proposed a Noise QRS Feature to evaluate the features in the ECG signals for the effective classification. The Noise QRS Feature model computes the ECG signal features of the waveform sequences.  Initially, the signal is pre-processed with the Finite Impulse response (FIR) filter for the analysis of ECG signal. The features in the ECG signal are processed and computed with the QRS signal responses in the ECG signal. The Noise QRS Feature evaluate the ECG signal with the kNN for the estimation and classification of features in the ECG signals. The performance of the proposed Noise QRS Feature features are comparatively examined with the Discrete Wavelet Transform (DWT), Dual-Tree Complex Wavelet Transforms (DTCWT) and Discrete Orthonormal Stockwell Transform (DOST) and the machine learning model Cascade Feed Forward Neural Network (CFNN), Feed Forward Neural Network (FFNN). Simulation analysis expressed that the proposed Noise QRS Feature exhibits a higher classification accuracy of 99% which is ~6 – 7% higher than the conventional classifier model.
基于心电分析的基于AI技术的信号特征选择与提取的心脏病预测
ECG(心电图)使用机器学习模型来处理ECG信号中的不同特征进行分类。利用机器学习库利用心电信号计算心电活动。心电信号处理的关键问题是对不规则性的估计,以评估患者的健康状况。心电信号对心脏疾病中特殊组织的脉冲波形进行评价。然而,心电信号包括与波形估计相关的不同困难,以获得某些特征。通过机器学习模型对输入的心电信号进行特征计算。本文提出了一种噪声QRS特征来对心电信号中的特征进行评价,以便进行有效的分类。噪声QRS特征模型计算波形序列的心电信号特征。首先用有限脉冲响应(FIR)滤波器对信号进行预处理,用于心电信号的分析。利用心电信号中的QRS信号响应对心电信号中的特征进行处理和计算。噪声QRS特征利用kNN对心电信号进行评价,对心电信号中的特征进行估计和分类。采用离散小波变换(DWT)、双树复小波变换(DTCWT)、离散正交斯托克韦尔变换(DOST)和机器学习模型级联前馈神经网络(CFNN)、前馈神经网络(FFNN)对所提噪声QRS特征的性能进行了比较研究。仿真分析表明,所提出的噪声QRS特征的分类准确率达到99%,比传统的分类器模型提高了6 ~ 7%。
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