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基于时间重分配多同步挤压变换的CNN-BiLSTM-注意力机制模型的用于脑电图癫痫发作预测的数字孪生

Digital Twin for EEG seizure prediction using time reassigned Multisynchrosqueezing transform-based CNN-BiLSTM-Attention mechanism model.

作者信息

Ghosh Antara, Dey Debangshu

机构信息

Electrical Engineering Department, Jadavpur University, Kolkata 32, India.

出版信息

Biomed Phys Eng Express. 2024 Dec 11;11(1). doi: 10.1088/2057-1976/ad992c.

DOI:10.1088/2057-1976/ad992c
PMID:39622083
Abstract

The prediction of epileptic seizures is a classical research problem, representing one of the most challenging tasks in the analysis of brain disorders. There is active research into digital twins (DT) for various healthcare applications, as they can transform research into customized and personalized healthcare. The widespread adoption of DT technology relies on ample patient data to ensure precise monitoring and decision-making, leveraging Machine Learning (ML) and Deep Learning (DL) algorithms. Given the non-stationarity of EEG recordings, characterized by substantial frequency variations over time, there is a notable preference for advanced time-frequency methods in seizure prediction. This research proposes a DT-based seizure prediction system by applying an advanced time-frequency analysis approach known as Time-Reassigned MultiSynchroSqueezing Transform (TMSST) to EEG data to extract patient-specific impulse features and subsequently, a Deep Learning strategy, CNN-BiLSTM-Attention mechanism model is utilized in learning and classifying features for seizure prediction. The proposed architecture is named as 'Digital Twin-Net'. By estimating the group delay in the time direction, TMSST produces the frequency components that are responsible for the EEG signal's temporal behavior and those time-frequency signatures are learned by the developed CNN-BiLSTM-Attention mechanism model. Thus the combination acts as a digital twin of a patient for the prediction of epileptic seizures. The experimental results showed that the suggested approach achieved an accuracy of 99.70% when tested on 22 patients from the publicly accessible CHB-MIT dataset. The proposed method surpasses previous solutions in terms of overall performance. Consequently, the suggested method can be regarded as an efficient approach to EEG seizure prediction.

摘要

癫痫发作预测是一个经典的研究问题,是脑部疾病分析中最具挑战性的任务之一。目前针对数字孪生(DT)在各种医疗保健应用方面有积极的研究,因为它们可以将研究转化为定制化和个性化的医疗保健。DT技术的广泛应用依赖于充足的患者数据,以利用机器学习(ML)和深度学习(DL)算法确保精确的监测和决策。鉴于脑电图(EEG)记录的非平稳性,其特征是频率随时间有显著变化,在癫痫发作预测中对先进的时频方法有明显的偏好。本研究提出了一种基于DT的癫痫发作预测系统,通过将一种称为时间重分配多同步挤压变换(TMSST)的先进时频分析方法应用于EEG数据,以提取患者特定的脉冲特征,随后,利用深度学习策略,即CNN - 双向长短期记忆网络(BiLSTM) - 注意力机制模型对特征进行学习和分类以进行癫痫发作预测。所提出的架构被命名为“数字孪生网络”。通过估计时间方向上的群延迟,TMSST产生负责EEG信号时间行为的频率成分,并且这些时频特征由所开发的CNN - BiLSTM - 注意力机制模型进行学习。因此,这种组合充当了用于癫痫发作预测的患者数字孪生。实验结果表明,当在公开可用的CHB - MIT数据集中的22名患者上进行测试时,所建议的方法实现了99.70%的准确率。所提出的方法在整体性能方面超越了先前的解决方案。因此,所建议的方法可被视为一种有效的EEG癫痫发作预测方法。

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