AI in ECG: Validating an ambulatory semiology labeller and predictor

IF 2 4区 医学 Q3 CLINICAL NEUROLOGY Epilepsy Research Pub Date : 2024-06-28 DOI:10.1016/j.eplepsyres.2024.107403
Pooja Muralidharan , Ravi Sankaran , Perraju Bendapudi , C. Santhosh Kumar , A. Anand Kumar
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引用次数: 0

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.

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心电图中的人工智能:验证非卧床半身像标记和预测器。
目的:早期预测癫痫发作有助于降低发病率和死亡率。在这项工作中,我们探索了使用心电图(ECG)信号作为癫痫发作预测系统的输入,并注意到通过使用选定的信号处理技术可以提高性能:我们在这项工作中的所有实验中都使用了频域分析和深度神经网络后台。我们进一步分析了所提议的系统对不同癫痫发作符号学和预测范围的影响。我们还探索了使用信号处理来完善信号,以提高系统的性能:我们使用坦普尔大学医院癫痫发作(TUHSZ)语料库的最终系统的总体预测准确率为 84.02%,灵敏度为 87.59%,特异性为 81.9%,接收者操作特征曲线下面积 (AUROC) 为 0.9112。值得注意的是,这些结果超过了使用 TUHSZ 数据库报告的最先进结果;所有结果均具有统计学意义。我们还利用锡耶纳头皮脑电图数据库验证了我们的研究。使用频域数据,我们的基线系统在预测准确性、灵敏度、特异性和 AUROC 方面的表现分别为 75.17%、79.17%、70.04% 和 0.82。在选择了 0.8-15 Hz 的最佳频段后,我们的预测准确率、灵敏度、特异性和 AUROC 分别达到了 80.49 %、89.51 %、75.23 % 和 0.89,预测准确率、灵敏度、特异性和 AUROC 分别提高了 5.32 %、10.34 %、5.19 % 和 0.08:结论:心电图中的癫痫发作信息集中在一个狭窄的频段。结论:心电图中的癫痫发作信息集中在一个狭窄的频段,识别和选择该频段有助于提高癫痫发作检测和预测的性能:意义:脑电图易受伪影影响,不适合用于低成本的可穿戴设备。心电图可用于可穿戴设备(如胸带),对于开发用于癫痫发作预测的低成本流动设备是可行的。早期癫痫发作预测可为患者和临床医生提供所需的警报,以采取必要的预防措施并防止死亡,从而显著提高患者的生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Epilepsy Research
Epilepsy Research 医学-临床神经学
CiteScore
0.10
自引率
4.50%
发文量
143
审稿时长
62 days
期刊介绍: Epilepsy Research provides for publication of high quality articles in both basic and clinical epilepsy research, with a special emphasis on translational research that ultimately relates to epilepsy as a human condition. The journal is intended to provide a forum for reporting the best and most rigorous epilepsy research from all disciplines ranging from biophysics and molecular biology to epidemiological and psychosocial research. As such the journal will publish original papers relevant to epilepsy from any scientific discipline and also studies of a multidisciplinary nature. Clinical and experimental research papers adopting fresh conceptual approaches to the study of epilepsy and its treatment are encouraged. The overriding criteria for publication are novelty, significant clinical or experimental relevance, and interest to a multidisciplinary audience in the broad arena of epilepsy. Review articles focused on any topic of epilepsy research will also be considered, but only if they present an exceptionally clear synthesis of current knowledge and future directions of a research area, based on a critical assessment of the available data or on hypotheses that are likely to stimulate more critical thinking and further advances in an area of epilepsy research.
期刊最新文献
Use of benzodiazepines in patients with status epilepticus requiring second-line antiseizure medication treatment. Significant reduction of seizure frequency in patients with drug-resistant epilepsy by vagus nerve stimulation: Systematic review and meta-analysis. Neuromodulation Strategies in Lennox-Gastaut Syndrome: Practical Clinical Guidance from the Pediatric Epilepsy Research Consortium. Epilepsy core outcome set for effectiveness trials (EPSET): A systematic review of outcomes measured in registered phase III and IV clinical trials for adults with epilepsy. Plasma proteomics in epilepsy: Network-based identification of proteins associated with seizures.
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