基于医疗保健物联网的脑电图癫痫发作检测:一种智能系统

IF 0.3 Q4 PHARMACOLOGY & PHARMACY Current Drug Therapy Pub Date : 2024-07-19 DOI:10.2174/0115748855307754240711065309
Tanishk Thakur, Naresh Rana, Shruti Jain
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Overactive electrical discharges disrupt normal brain electrical activity and interfere with nerve cell communication.\n\n\n\nA comprehensive analysis of the literature revealed that several CAD system\ndesigns have shown to be useful to radiologists in routine medical practice as second-opinion aids for\nepileptic seizure detection in circumstances where a clear differentiation cannot be formed subjectively.\nCAD systems are made to help radiologists by automating the examination of medical data and images, improving the efficiency and accuracy of diagnosis. These systems examine patterns in medical\nimaging using machine learning approaches, which can be quite helpful in spotting small abnormalities that the human eye can miss. 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引用次数: 0

摘要

癫痫发作是大脑中突然出现的不受控制的电活动,根据异常活动的部位和严重程度,可引起各种症状。癫痫是导致癫痫发作的最常见原因之一。对文献的综合分析表明,一些计算机辅助诊断系统的设计在常规医疗实践中对放射科医生非常有用,在主观上无法形成明确区分的情况下,可以作为第二意见辅助癫痫发作检测。这些系统利用机器学习方法检查医学影像中的模式,这对发现人眼可能忽略的微小异常非常有帮助。此外,本研究的目标是设计一种智能医疗保健系统,结合使用 DWT、Hjorth 和统计参数进行癫痫发作检测。在这篇研究文章中,作者提出了医疗保健物联网(IoHT)框架,用于进行癫痫发作检测。作者使用了不同的预处理技术,提取了不同的特征,如 Hjorth、小波和统计参数,并使用不同的机器学习技术对这些特征进行了分类。DWT + Hjorth + 统计参数与 bior 1.5 作为预处理技术产生了最佳结果。在 k = 5 的情况下,使用 kNN 获得了 86% 的准确率;使用 SVM 分类器的线性核获得了 93% 的准确率;使用决策树和逻辑回归获得了 95.5% 的准确率。作者还考虑了另一个数据集进行验证,使用决策树和逻辑回归分类器,并将 bior1.5 小波滤波器作为预处理技术,获得了 96.83% 的准确率。这提高了癫痫发作检测的精确度和可靠性,对患者护理和监测具有重要意义。这项工作展示了如何将 IoHT 和机器学习结合起来,构建可靠的实时癫痫发作检测系统。这些发展使及时干预和个性化治疗计划成为可能,可显著提高癫痫患者的护理质量。
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Internet of Healthcare Things Based Detection of EEG Epileptic Seizures: A Smart System
A seizure is a sudden and uncontrolled electrical activity in the brain that can cause a variety of symptoms, depending on the location and severity of the abnormal activity. It can be a symptom of an underlying neurological disorder or can occur without an apparent cause. Epilepsy is one of the most common causes of seizures. Overactive electrical discharges disrupt normal brain electrical activity and interfere with nerve cell communication. A comprehensive analysis of the literature revealed that several CAD system designs have shown to be useful to radiologists in routine medical practice as second-opinion aids for epileptic seizure detection in circumstances where a clear differentiation cannot be formed subjectively. CAD systems are made to help radiologists by automating the examination of medical data and images, improving the efficiency and accuracy of diagnosis. These systems examine patterns in medical imaging using machine learning approaches, which can be quite helpful in spotting small abnormalities that the human eye can miss. Moreover, the objective of this study was to design a smart healthcare system using a combination of DWT, Hjorth, and statistical parameters for seizure detection. In this research article, the authors proposed the framework of the Internet of Healthcare Things (IoHT) for performing seizure detection. The authors used different pre-processing techniques and extracted different features like Hjorth, wavelets, and statistics, which were classified using different machine-learning techniques. This novel methodology combines a number of technologies and techniques to improve seizure detection's precision and dependability. DWT + Hjorth + Statistical parameters with bior 1.5 as the pre-processing technique yielding the best outcomes. 86% accuracy was obtained with kNN for k = 5, 93% accuracy was obtained with a linear kernel for an SVM classifier, and 95.5% accuracy was obtained using a decision tree and logistic regression. The authors also considered another dataset for validation and received 96.83% accuracy with decision tree and logistic regression classifiers considering the bior1.5 wavelet filter as a preprocessing technique. The IoHT framework offers a multi-modal, adaptive method of seizure detection that enables the dynamic modification of detection parameters and the incorporation of extra sensor signals. This improves seizure detection's precision and dependability, which has important implications for patient care and monitoring. This work shows how IoHT and machine learning can be combined to build a reliable, real-time seizure detection system. These developments, which make it possible for prompt interventions and individualized treatment plans, can significantly improve the quality of care for individuals with epilepsy.
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来源期刊
Current Drug Therapy
Current Drug Therapy PHARMACOLOGY & PHARMACY-
CiteScore
1.30
自引率
0.00%
发文量
50
期刊介绍: Current Drug Therapy publishes frontier reviews of high quality on all the latest advances in drug therapy covering: new and existing drugs, therapies and medical devices. The journal is essential reading for all researchers and clinicians involved in drug therapy.
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