GEM-CRAP:用于局灶性癫痫检测的融合架构。

IF 6.1 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Jianwei Shi, Yuanyuan Zhang, Ziang Song, Hang Xu, Yanfeng Yang, Lei Jin, Hengxin Dong, Zhaoying Li, Penghu Wei, Yongzhi Shan, Guoguang Zhao
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引用次数: 0

摘要

背景:癫痫发作的识别对癫痫的治疗至关重要。当前的机器学习和深度学习模型在对具有突出特征的全身性癫痫进行分类时,通常在公共数据集上表现良好。然而,在检测短暂的局部癫痫发作时,它们的表现不太有效。这些类似癫痫发作的模式可以被固定的大脑节律所掩盖。方法:我们的研究提出了一个监督多层混合模型GEM-CRAP(梯度增强调制与CNN-RES,类注意和预策略网络),具有三个并行的特征提取通道:CNN-RES模块,具有类注意机制的幅度感知通道,以及集成到递归神经网络中的基于lstm的预策略层。该模型在宣武医院和HUP的iEEG数据集上进行训练,该数据集包括来自83名患者的颅内、皮质和立体定向EEG数据,涵盖8500多个标记电极通道,用于混合分类(清醒和睡眠)。采用后svm网络对分类准确率在80%以下的通道进行二次训练。我们引入了一个平均通道偏差率指标来评估癫痫检测的准确性。结果:对于公开数据集,该模型对患者颅内和皮质脑电图序列的准确率达到97%以上,对混合序列的准确率达到95%以上,偏差低于5%。在宣武医院的数据集中,它在清醒时癫痫发作的准确率保持在94%以上,在睡眠时保持在90%左右。SVM二次训练使平均信道精度提高10%以上。此外,通道准确性分布与癫痫发作状态的时间分布之间存在很强的正相关。结论:GEM-CRAP通过自适应调节和注意机制增强局灶性癫痫的检测,在复杂信号环境下具有更高的精度和鲁棒性。除了改善发作间隔检测,它擅长于识别和分析特定的癫痫波形,如高频振荡。这一进展可能为更精确的癫痫诊断铺平道路,并为闭环神经刺激提供合适的人工智能算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GEM-CRAP: a fusion architecture for focal seizure detection.

Background: Identification of seizures is essential for the treatment of epilepsy. Current machine-learning and deep-learning models often perform well on public datasets when classifying generalized seizures with prominent features. However, their performance was less effective in detecting brief, localized seizures. These seizure-like patterns can be masked by fixed brain rhythms.

Methods: Our study proposes a supervised multilayer hybrid model called GEM-CRAP (gradient-enhanced modulation with CNN-RES, attention-like, and pre-policy networks), with three parallel feature extraction channels: a CNN-RES module, an amplitude-aware channel with attention-like mechanisms, and an LSTM-based pre-policy layer integrated into the recurrent neural network. The model was trained on the Xuanwu Hospital and HUP iEEG dataset, including intracranial, cortical, and stereotactic EEG data from 83 patients, covering over 8500 labeled electrode channels for hybrid classification (wakefulness and sleep). A post-SVM network was used for secondary training on channels with classification accuracy below 80%. We introduced an average channel deviation rate metric to assess seizure detection accuracy.

Results: For public datasets, the model achieved over 97% accuracy for intracranial and cortical EEG sequences in patients, and over 95% for mixed sequences, with deviations below 5%. In the Xuanwu Hospital dataset, it maintained over 94% accuracy for wakefulness seizures and around 90% during sleep. SVM secondary training improved average channel accuracy by over 10%. Additionally, a strong positive correlation was found between channel accuracy distribution and the temporal distribution of seizure states.

Conclusions: GEM-CRAP enhances focal epilepsy detection through adaptive adjustments and attention mechanisms, achieving higher precision and robustness in complex signal environments. Beyond improving seizure interval detection, it excels in identifying and analyzing specific epileptic waveforms, such as high-frequency oscillations. This advancement may pave the way for more precise epilepsy diagnostics and provide a suitable artificial intelligence algorithm for closed-loop neurostimulation.

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来源期刊
Journal of Translational Medicine
Journal of Translational Medicine 医学-医学:研究与实验
CiteScore
10.00
自引率
1.40%
发文量
537
审稿时长
1 months
期刊介绍: The Journal of Translational Medicine is an open-access journal that publishes articles focusing on information derived from human experimentation to enhance communication between basic and clinical science. It covers all areas of translational medicine.
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