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AI in ECG: Validating an ambulatory semiology labeller and predictor

Publication Type : Journal Article

Publisher : Epilepsy Research

Source : Epilepsy Research, Volume 204, 2024, 107403

Url : https://www.sciencedirect.com/science/article/abs/pii/S0920121124001189

Campus : Coimbatore

School : School of Engineering

Department : Electronics and Communication

Year : 2024

Abstract : Objectives Early prediction of epileptic seizures can help reduce morbidity and mortality. In this work, we explore using electrocardiographic ECG signal as input to a seizure prediction system and note that the performance can be improved by using selected signal processing techniques. Methods We used frequency domain analysis with a deep neural network backend for all our experiments in this work. We further analysed the effect of the proposed system for different seizure semiologies and prediction horizons. We explored refining the signal using signal processing to enhance the system's performance. Results Our final system using the Temple University Hospital’s Seizure TUHSZ corpus gave an overall prediction accuracy of 84.02 %, sensitivity of 87.59 %, specificity of 81.9 %, and an area under the receiver operating characteristic curve AUROC of 0.9112. Notably, these results surpassed the state-of-the-art outcomes reported using the TUHSZ database; all findings are statistically significant. We also validated our study using the Siena scalp EEG database. Using the frequency domain data, our baseline system gave a performance of 75.17 %, 79.17 %, 70.04 % and 0.82 for prediction accuracy, sensitivity, specificity and AUROC, respectively. After selecting the optimal frequency band of 0.8–15 Hz, we obtained a performance of 80.49 %, 89.51 %, 75.23 % and 0.89 for prediction accuracy, sensitivity, specificity and AUROC, respectively which is an improvement of 5.32 %, 10.34 %, 5.19 % and 0.08 for prediction accuracy, sensitivity, specificity and AUROC, respectively. Conclusions The seizure information in ECG is concentrated in a narrow frequency band. Identifying and selecting that band can help improve the performance of seizure detection and prediction. Significance EEG is susceptible to artefacts and is not preferred in a low-cost ambulatory device. ECG can be used in wearable devices like chest bands and is feasible for developing a low-cost ambulatory device for seizure prediction. Early seizure prediction can provide patients and clinicians with the required alert to take necessary precautions and prevent a fatality, significantly improving the patient’s quality of life.

Cite this Research Publication : P. Muralidharan, R. Sankaran, P. Bendapudi, C. S. Kumar, A. A. Kumar, AI in ECG: Validating an ambulatory semiology labeller and predictor, Epilepsy Research, Volume 204, 2024, 107403, https://doi.org/10.1016/j.eplepsyres.2024.107403

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