Abstract

BackgroundAs proven to reflect the work state of heart and physiological situation objectively, electrocardiogram (ECG) is widely used in the assessment of human health, especially the diagnosis of heart disease. The accuracy and reliability of abnormal ECG (AECG) decision depend to a large extent on the feature extraction. However, it is often uneasy or even impossible to obtain accurate features, as the detection process of ECG is easily disturbed by the external environment. And AECG got many species and great variation. What’s more, the ECG result obtained after a long time past, which can not reach the purpose of early warning or real-time disease diagnosis. Therefore, developing an intelligent classification model with an accurate feature extraction method to identify AECG is of quite significance. This study aimed to explore an accurate feature extraction method of ECG and establish a suitable model for identifying AECG and the diagnosis of heart disease.MethodsIn this research, the wavelet combined with four operations and adaptive threshold methods were applied to filter the ECG and extract its feature waves first. Then, a BP neural network (BPNN) intelligent model and a particle swarm optimization (PSO) improved BPNN (PSO-BPNN) intelligent model based on MIT-BIH open database was established to identify ECG. To reduce the complexity of the model, the principal component analysis (PCA) was used to minimize the feature dimension.ResultsWavelet transforms combined four operations and adaptive threshold methods were capable of ECG filtering and feature extraction. PCA can significantly deduce the modeling feature dimension to minimize the complexity and save classification time. The PSO-BPNN intelligent model was suitable for identifying five types of ECG and showed better effects while comparing it with the BPNN model.ConclusionIn summary, it was further concluded that the PSO-BPNN intelligent model would be a suitable way to identify AECG and provide a tool for the diagnosis of heart disease.

Highlights

  • As proven to reflect the work state of heart and physiological situation objectively, electrocardiogram (ECG) is widely used in the assessment of human health, especially the diagnosis of heart disease

  • We mainly aimed to explore an accurate de-noising and feature extraction method of ECG based on a wavelet and perform intelligent modeling to classify abnormal ECG (AECG) based on particle swarm optimization (PSO) optimized BP neural network (BPNN) with combining the advantage of BPNN and PSO

  • The experiments manifest that the PSO optimized BPNN intelligent model indicating greater accuracy and better classification results than that of the conventional BPNN model

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Summary

Introduction

As proven to reflect the work state of heart and physiological situation objectively, electrocardiogram (ECG) is widely used in the assessment of human health, especially the diagnosis of heart disease. The accuracy and reliability of abnormal ECG (AECG) decision depend to a large extent on the feature extraction. It is often uneasy or even impossible to obtain accurate features, as the detection process of ECG is disturbed by the external environment. This study aimed to explore an accurate feature extraction method of ECG and establish a suitable model for identifying AECG and the diagnosis of heart disease. The accuracy and reliability of ECG decision depend to a large extent on feature extraction It is often uneasy or even impossible to obtained accurate features, for the ECG detection process is very disturbed by the external environment, and abnormal ECG (AECG) has many species and great variation. Wavelet presents good results in signal filtering and feature extraction [13]

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