Visible to the public Temporal feature and heuristics-based Noise Detection over Classical Machine Learning for ECG Signal Quality Assessment

TitleTemporal feature and heuristics-based Noise Detection over Classical Machine Learning for ECG Signal Quality Assessment
Publication TypeConference Paper
Year of Publication2019
AuthorsHermawan, Indra, Ma’sum, M. Anwar, Riskyana Dewi Intan, P, Jatmiko, Wisnu, Wiweko, Budi, Boediman, Alfred, Pradekso, Beno K.
Conference Name2019 International Workshop on Big Data and Information Security (IWBIS)
Keywordsclassical machine learning, classical machine learning method, ECG signal quality assessment, electrocardiogram, Electrocardiography, heuristic method, heuristic rule, heuristics-based noise detection, lead-5 signal, learning (artificial intelligence), medical signal processing, patient monitoring, predictability, pubcrawl, Resiliency, Scalability, Security Heuristics, signal quality, SQA, temporal features, wavelet
AbstractThis study proposes a method for ECG signals quality assessment (SQA) by using temporal feature, and heuristic rule. The ECG signal will be classified as acceptable or unacceptable. Seven types of noise were able to be detected by the prosed method. The noises are: FL, TVN, BW, AB, MA, PLI and AWGN. The proposed method is aimed to have better performance for SQA than classical machine learning method. The experiment is conducted by using 1000 instances ECG signal. The experiment result shows that db8 has the best performance with 0.86, 0.85 and 85.6% on lead-1 signal and 0.69, 0.79, and 74% on lead-5 signal for specificity, sensitivity and accuracy respectively. Compared to the classical machine learning, the proposed heuristic method has same accuracy but has 48% and 31% better specificity for lead-1 and lead-5. It means that the proposed method has far better ability to detect noise.
DOI10.1109/IWBIS.2019.8935757
Citation Keyhermawan_temporal_2019