Detection of Myocardial Ischaemia by using ECG, Artificial Neural Network and Gaussian Mixture Model

In this study, a new technique which detects anomalies in skin sympathetic nerve activity (SKNA) and ECG by using state-of- the-art signal processing and machine learning methods is developed to perform robust detection of myocardial ischaemia (MI). For this purpose, a signal processing technique th...

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Published in:2020 28th Signal Processing and Communications Applications Conference (SIU) pp. 1 - 4
Main Authors: Terzi, Merve Begum, Arikan, Orhan
Format: Conference Proceeding
Language:English
Published: IEEE 05-10-2020
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Abstract In this study, a new technique which detects anomalies in skin sympathetic nerve activity (SKNA) and ECG by using state-of- the-art signal processing and machine learning methods is developed to perform robust detection of myocardial ischaemia (MI). For this purpose, a signal processing technique that simultaneously obtains SKNA and ECG from wideband recordings on STAFF III database is developed. By using preprocessed data, a novel feature extraction technique which obtains ECG features that are critical for reliable detection of MI is developed. By using extracted features, a supervised learning technique based on artificial neural network (ANN) and an unsupervised learning technique based on Gaussian mixture model (GMM) are developed to perform robust detection of ECG anomalies. A Neyman-Pearson type of approach is developed to perform robust detection of outliers that correspond to MI. The performance results of proposed technique over STAFF III database showed that technique provides highly reliable detection of MI by performing robust detection of ECG anomalies. Therefore, in cases where diagnostic information of ECG is not sufficient for reliable diagnosis of MI, proposed technique can be used to provide early and accurate diagnosis of the disease, which can lead to a significant reduction in mortality rates of ischaemic heart diseases.
AbstractList In this study, a new technique which detects anomalies in skin sympathetic nerve activity (SKNA) and ECG by using state-of- the-art signal processing and machine learning methods is developed to perform robust detection of myocardial ischaemia (MI). For this purpose, a signal processing technique that simultaneously obtains SKNA and ECG from wideband recordings on STAFF III database is developed. By using preprocessed data, a novel feature extraction technique which obtains ECG features that are critical for reliable detection of MI is developed. By using extracted features, a supervised learning technique based on artificial neural network (ANN) and an unsupervised learning technique based on Gaussian mixture model (GMM) are developed to perform robust detection of ECG anomalies. A Neyman-Pearson type of approach is developed to perform robust detection of outliers that correspond to MI. The performance results of proposed technique over STAFF III database showed that technique provides highly reliable detection of MI by performing robust detection of ECG anomalies. Therefore, in cases where diagnostic information of ECG is not sufficient for reliable diagnosis of MI, proposed technique can be used to provide early and accurate diagnosis of the disease, which can lead to a significant reduction in mortality rates of ischaemic heart diseases.
Author Arikan, Orhan
Terzi, Merve Begum
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Snippet In this study, a new technique which detects anomalies in skin sympathetic nerve activity (SKNA) and ECG by using state-of- the-art signal processing and...
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SubjectTerms anomaly detection
artificial neural network
coronary balloon angioplasty
Electrocardiography
Feature extraction
Gaussian mixture model
Myocardium
Neural networks
Neyman-Pearson criterion
Reactive power
Reliability
Signal processing
Sympathetic nerve activity
Title Detection of Myocardial Ischaemia by using ECG, Artificial Neural Network and Gaussian Mixture Model
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