利用新的斯托克韦尔变换特征,结合 LinkNet-MBi-LSTM 进行大脑活动识别。

IF 1.7 4区 医学 Q3 DEVELOPMENTAL BIOLOGY
Amruta Jagadish Takawale, Ajay N. Paithane
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引用次数: 0

摘要

从脑电图波识别大脑活动是生物医学工程和神经科学的一个重要研究领域。传统方法通常首先采用信号处理技术从脑电图数据中提取特征,然后应用机器学习算法对数据进行分类。然而,这些脑电信号的空间分辨率较低,因此难以确定大脑神经活动源的确切位置。目前,人们正在使用基于 DL 的大脑活动识别算法来克服这些限制。因此,本研究提出了一种新颖的混合框架,利用增强斯托克韦尔变换和脑电信号进行脑活动检测,该框架被称为 LinkNet 和改进的双向-长短期记忆(LN-MBI-LSTM)模型。该框架采用的方法包括特征提取、脑活动识别和预处理等阶段。首先,使用改进的韦纳滤波(IWF)方法对 EEG 输入信号进行预处理。然后使用特征提取技术从预处理后的脑电信号中提取相关特征。为了识别脑部活动,随后使用 LinkNet 和改进的双向长短期记忆(MBi-LSTM)分别处理这些恢复的特征集。在 LN-MBi-LSTM 模型的验证过程中,将模拟和实验计算都考虑在内的全面分析是其中的一部分。最后,本研究展示了 LN-MBi-LSTM 框架的治疗潜力,为大脑活动识别提供了一个强大且经过验证的模型。LinkNet-MBi-LSTM 模型的最高精确度为 0.997,与其他模型截然不同,并证实了它具有产生准确正面预测的卓越能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Combined LinkNet-MBi-LSTM for brain activity recognition with new Stockwell transform features

Combined LinkNet-MBi-LSTM for brain activity recognition with new Stockwell transform features

Recognizing brain activity from EEG waves is an important field of study in biomedical engineering and neuroscience. Conventional approaches usually begin with signal processing techniques to extract features from the EEG data, and then machine learning algorithms are applied to classify the data. However, the spatial resolution of these EEG signals is low, which makes it difficult to pinpoint the exact location of the neural activity source in the brain. There are ongoing initiatives to use DL-based brain activity recognition algorithms to overcome these constraints. Therefore, this work presents a novel hybrid framework for brain activity detection using the enhanced Stockwell transform and an EEG signal that is called LinkNet and modified bidirectional–long short-term memory (LN-MBi-LSTM) model. This framework follows a methodical approach that includes stages for feature extraction, brain activity recognition and preprocessing. Firstly, the improved Weiner filtering (IWF) approach is used to preprocess the EEG input signal. The relevant features are then extracted using a feature extraction technique from the preprocessed EEG signal. To identify the brain activity, these recovered feature sets are subsequently processed separately using LinkNet and modified bidirectional–long short-term memory (MBi-LSTM). A thorough analysis that takes into account both simulation and experimental calculations is part of the validation process for the LN-MBi-LSTM model. Finally, this study demonstrates the therapeutic potential of the LN-MBi-LSTM framework by presenting a strong and verified model for brain activity recognition. With the highest precision of 0.997, the LinkNet-MBi-LSTM model distinguishes itself from other models and confirms its exceptional capacity to produce accurate positive predictions.

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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
78
审稿时长
6-12 weeks
期刊介绍: International Journal of Developmental Neuroscience publishes original research articles and critical review papers on all fundamental and clinical aspects of nervous system development, renewal and regeneration, as well as on the effects of genetic and environmental perturbations of brain development and homeostasis leading to neurodevelopmental disorders and neurological conditions. Studies describing the involvement of stem cells in nervous system maintenance and disease (including brain tumours), stem cell-based approaches for the investigation of neurodegenerative diseases, roles of neuroinflammation in development and disease, and neuroevolution are also encouraged. Investigations using molecular, cellular, physiological, genetic and epigenetic approaches in model systems ranging from simple invertebrates to human iPSC-based 2D and 3D models are encouraged, as are studies using experimental models that provide behavioural or evolutionary insights. The journal also publishes Special Issues dealing with topics at the cutting edge of research edited by Guest Editors appointed by the Editor in Chief. A major aim of the journal is to facilitate the transfer of fundamental studies of nervous system development, maintenance, and disease to clinical applications. The journal thus intends to disseminate valuable information for both biologists and physicians. International Journal of Developmental Neuroscience is owned and supported by The International Society for Developmental Neuroscience (ISDN), an organization of scientists interested in advancing developmental neuroscience research in the broadest sense.
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