Department of Electronics and Communication Engineering, Mallareddy Institute of Technology and Science, Secunderabad 500100, Telangana, India.
Department of Computer Science and Engineering, Mohamed Sathak A. J College of Engineering, Sipcot IT Park, Siruseri, Chennai 603103, Tamilnadu, India.
Comput Intell Neurosci. 2022 Aug 10;2022:8419308. doi: 10.1155/2022/8419308. eCollection 2022.
This work is implemented for the management of patients with epilepsy, and methods based on electroencephalography (EEG) analysis have been proposed for the timely prediction of its occurrence. The proposed system is used for crisis detection and prediction system; it is useful for both patients and medical staff to know their status easily and more accurately. In the treatment of Parkinson's disease, the affected patients with Parkinson's disease can assess the prognostic risk factors, and the symptoms are evaluated to predict rapid progression in the early stages after diagnosis. The presented seizure prediction system introduces deep learning algorithms into EEG score analysis. This proposed work long short-term memory (LSTM) network model is mainly implemented for the identification and classification of qualitative patterns in the EEG of patients. While compared with other techniques like deep learning models such as convolutional neural networks (CNNs) and traditional machine learning algorithms, the proposed LSTM model plays a significant role in predicting impending crises over 4 different qualifying intervals from 10 minutes to 1.5 hours with very few wrong predictions.
这项工作是为管理癫痫患者而实施的,已经提出了基于脑电图(EEG)分析的方法来及时预测其发生。所提出的系统用于危机检测和预测系统;它对患者和医务人员都很有用,可以更轻松、更准确地了解他们的状态。在帕金森病的治疗中,受影响的帕金森病患者可以评估预后风险因素,并对症状进行评估,以预测诊断后早期的快速进展。所提出的癫痫发作预测系统将深度学习算法引入 EEG 评分分析。这项工作主要实现了长短期记忆(LSTM)网络模型,用于识别和分类患者 EEG 中的定性模式。与其他技术(如卷积神经网络(CNN)等深度学习模型和传统机器学习算法)相比,所提出的 LSTM 模型在预测未来危机方面发挥了重要作用,在 10 分钟到 1.5 小时的 4 个不同间隔内,预测结果准确率很高,错误预测很少。