EPINET:用于癫痫发作预测的优化、资源节约型深度 GRU-LSTM 网络

Deepjyoti Kalita, Shiyona Dash, Khalid B. Mirza
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摘要

脑电图(EEG)作为一种非侵入性工具,可通过捕捉表明癫痫发作的病理生物信号标记来研究神经系统疾病,尤其是癫痫,这为本研究工作提供了背景。虽然以往的研究已利用深度学习技术进行癫痫发作检测,但仍迫切需要一种资源节约型模型,这种模型只需最少的训练数据和时间,但却能保持令人称道的特异性和灵敏度。针对这一空白,我们推出了一种创新的深度门控递归单元(GRU)-长短期记忆(LSTM)网络,命名为 EpiNET,专门用于利用脑电图数据预测癫痫发作。EpiNET 的一个显著特点是整合了统计、频谱和时间特征,这些特征的选择是为了简化计算,从而提高模型的效率。该模型在来自 CHB-MIT Scalp EEG 数据库的各种患者数据集上进行了细致的训练和验证,在癫痫发作预测准确性方面超越了现有的深度学习网络。EpiNET 拥有出色的指标,报告的灵敏度、准确度和特异性值分别为 92.54 ±?0.41% 、96.15 ±?0.45% 和 97.73 ±?0.58%。这凸显了 EpiNET 的功效,同时坚持了精简的模型结构,解决了计算效率方面的问题。本研究的一个突破性进展是引入了基于 GRU-LSTM 的深度学习模型,该模型能够至少提前 2 小时(120 分钟)预测癫痫发作,这标志着在及时干预和加强患者护理方面迈出了重要一步。总之,这项研究不仅推动了神经系统疾病预测领域的发展,而且强调了资源效率在模型开发中的极端重要性。
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EPINET: AN OPTIMIZED, RESOURCE EFFICIENT DEEP GRU-LSTM NETWORK FOR EPILEPTIC SEIZURE PREDICTION
The utilization of Electroencephalogram (EEG) as a non-invasive tool to investigate neurological disorders, particularly epilepsy, by capturing pathological biosignal markers indicative of seizures, sets the backdrop for this research endeavor. While previous studies have harnessed deep learning techniques for seizure detection, a pressing need persists for a resource-efficient model that demands minimal training data and time yet upholds commendable specificity and sensitivity. In response to this gap, we introduce an innovative deep Gated Recurrent Unit (GRU)– Long Short-Term Memory (LSTM) network, coined as EpiNET, purposefully crafted for the prediction of epileptic seizures using EEG data. A distinctive feature of EpiNET is its integration of statistical, spectral, and temporal features, chosen for their computational simplicity, thereby enhancing the model’s efficiency. The model is meticulously trained and validated on diverse patient datasets sourced from the CHB-MIT Scalp EEG database, outshining existing deep learning networks regarding seizure prediction accuracy. EpiNET boasts remarkable metrics, with reported sensitivity, accuracy, and specificity values standing at 92.54 ±?0.41%, 96.15 ±?0.45%, and 97.73 ±?0.58%, respectively. This underscores the efficacy of EpiNET while upholding a lean model structure, addressing concerns regarding computational efficiency. A ground-breaking aspect of this study is the introduction of a GRU-LSTM-based deep learning model capable of predicting epileptic seizures at least 2 h (120 min) in advance, marking a significant stride towards timely intervention and heightened patient care. In summary, this research not only advances the field of neurological disorder prediction but also underscores the paramount importance of resource efficiency in model development.
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EPINET: AN OPTIMIZED, RESOURCE EFFICIENT DEEP GRU-LSTM NETWORK FOR EPILEPTIC SEIZURE PREDICTION DESIGN A SINGLE SCREW EXTRUDER FOR POLYMER-BASED TISSUE ENGINEERING TOWARD EFFECTIVE BREAST CANCER DETECTION IN THERMAL IMAGES USING EFFICIENT FEATURE SELECTION ALGORITHM AND FEATURE EXTRACTION METHODS TOWARD EFFECTIVE BREAST CANCER DETECTION IN THERMAL IMAGES USING EFFICIENT FEATURE SELECTION ALGORITHM AND FEATURE EXTRACTION METHODS
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