Smart Seizure Detection System: Machine Learning Based Model in Healthcare IoT.

Q3 Medicine
Naresh Rana, Tanishk Thakur, Shruti Jain
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引用次数: 0

Abstract

Aims: Epilepsy, the tendency to have recurrent seizures, can have various causes, including brain tumors, genetics, stroke, brain injury, infections, and developmental disorders. Epileptic seizures are usually transient events. They normally leave no trace after the postictal recovery period has passed.

Background: An electroencephalogram (EEG) can only detect brain activity during the recording. It will be detected if an epileptogenic focus or generalized abnormality is active during the recording.

Objective: This work demonstrated a smart seizure detection system for Healthcare IoT, which is a challenging problem of EEG data analysis.

Method: The study suggested an integrated methodology in recognition of the drawbacks of manual identification and the significant negative effects of uncontrollable seizures on patients' lives.

Result: The research shows remarkable accuracy, up to 100% in some experiments, by combining classifier ensembles like Decision Trees, Logistic Regression, and Support Vector Machine with different signal processing techniques like Discrete Wavelet Transform, Hjorth Parameters, and statistical features. The results were compared using the kNN classifier, compared with other datasets and other state-of-the-art techniques.

Conclusion: Healthcare IoT is further utilized by the methodology, which takes a comprehensive approach using classifier ensembles and signal processing approaches resulting in real-time data to help them make better decisions. This demonstrates how well the suggested method works for smart seizure detection, which is a crucial development for better patient outcomes.

智能癫痫发作检测系统:基于机器学习的医疗物联网模型。
目的:癫痫是一种反复发作的疾病,其病因多种多样,包括脑肿瘤、遗传、中风、脑损伤、感染和发育障碍。癫痫发作通常是短暂的。在发作后的恢复期过后,通常不会留下任何痕迹:背景:脑电图(EEG)只能检测记录期间的大脑活动。背景:脑电图只能检测记录期间的大脑活动,如果记录期间有致痫灶或全身异常活动,则会被检测到:这项工作展示了一种用于医疗物联网的智能癫痫发作检测系统,这是脑电图数据分析中的一个具有挑战性的问题:该研究提出了一种综合方法,以认识到人工识别的缺点以及无法控制的癫痫发作对患者生活造成的重大负面影响:研究表明,通过将决策树、逻辑回归和支持向量机等分类器集合与离散小波变换、Hjorth 参数和统计特征等不同信号处理技术相结合,在某些实验中准确率高达 100%。使用 kNN 分类器对结果进行了比较,并与其他数据集和其他最先进的技术进行了比较:该方法采用分类器集合和信号处理方法的综合方法,产生实时数据,帮助医疗保健物联网做出更好的决策。这表明所建议的方法在智能癫痫发作检测方面效果显著,这对改善患者预后至关重要。
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
Current aging science
Current aging science Medicine-Geriatrics and Gerontology
CiteScore
3.90
自引率
0.00%
发文量
40
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