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头皮脑电图的时频分解提高基于深度学习的癫痫诊断。

Time-Frequency Decomposition of Scalp Electroencephalograms Improves Deep Learning-Based Epilepsy Diagnosis.

机构信息

Nanyang Technological University, Singapore.

Massachusetts General Hospital and Harvard Medical School, USA.

出版信息

Int J Neural Syst. 2021 Aug;31(8):2150032. doi: 10.1142/S0129065721500325. Epub 2021 Jul 16.

DOI:10.1142/S0129065721500325
PMID:34278972
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9340811/
Abstract

Epilepsy diagnosis based on Interictal Epileptiform Discharges (IEDs) in scalp electroencephalograms (EEGs) is laborious and often subjective. Therefore, it is necessary to build an effective IED detector and an automatic method to classify IED-free versus IED EEGs. In this study, we evaluate features that may provide reliable IED detection and EEG classification. Specifically, we investigate the IED detector based on convolutional neural network (ConvNet) with different input features (temporal, spectral, and wavelet features). We explore different ConvNet architectures and types, including 1D (one-dimensional) ConvNet, 2D (two-dimensional) ConvNet, and noise injection at various layers. We evaluate the EEG classification performance on five independent datasets. The 1D ConvNet with preprocessed full-frequency EEG signal and frequency bands (delta, theta, alpha, beta) with Gaussian additive noise at the output layer achieved the best IED detection results with a false detection rate of 0.23/min at 90% sensitivity. The EEG classification system obtained a mean EEG classification Leave-One-Institution-Out (LOIO) cross-validation (CV) balanced accuracy (BAC) of 78.1% (area under the curve (AUC) of 0.839) and Leave-One-Subject-Out (LOSO) CV BAC of 79.5% (AUC of 0.856). Since the proposed classification system only takes a few seconds to analyze a 30-min routine EEG, it may help in reducing the human effort required for epilepsy diagnosis.

摘要

基于头皮脑电图(EEG)中的发作间期棘波放电(IED)进行癫痫诊断既费力又主观。因此,有必要构建有效的 IED 检测器和自动分类无 IED 与 IED EEG 的方法。在这项研究中,我们评估了可能提供可靠 IED 检测和 EEG 分类的特征。具体来说,我们研究了基于卷积神经网络(ConvNet)的 IED 检测器,它具有不同的输入特征(时间、频谱和小波特征)。我们探索了不同的 ConvNet 架构和类型,包括一维(1D)ConvNet、二维(2D)ConvNet 和在不同层注入噪声。我们在五个独立数据集上评估了 EEG 分类性能。在输出层带有高斯加性噪声的预处理全频 EEG 信号和频带(δ、θ、α、β)的 1D ConvNet 具有最佳的 IED 检测结果,在 90%灵敏度下的假阳性率为 0.23/min。EEG 分类系统在留一机构外(LOIO)交叉验证(CV)中的平均 EEG 分类准确率为 78.1%(AUC 为 0.839),留一受试者外(LOSO)CV 准确率为 79.5%(AUC 为 0.856)。由于所提出的分类系统仅需几秒钟即可分析 30 分钟的常规 EEG,因此它可能有助于减少癫痫诊断所需的人力。

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Multi-Center Validation Study of Automated Classification of Pathological Slowing in Adult Scalp Electroencephalograms Via Frequency Features.多中心验证研究:基于频率特征的成人头皮脑电图病理性慢波自动分类。
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Automated Adult Epilepsy Diagnostic Tool Based on Interictal Scalp Electroencephalogram Characteristics: A Six-Center Study.
基于深度学习的脑磁共振自闭症谱系障碍的年龄和性别多重分类。
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Improving automated diagnosis of epilepsy from EEGs beyond IEDs.提高 EEG 中除 IED 之外的癫痫自动诊断能力。
J Neural Eng. 2022 Nov 24;19(6). doi: 10.1088/1741-2552/ac9c93.
基于间期头皮脑电图特征的成人癫痫自动诊断工具:一项六中心研究。
Int J Neural Syst. 2021 May;31(5):2050074. doi: 10.1142/S0129065720500744. Epub 2021 Jan 12.
4
Deep Learning for Interictal Epileptiform Spike Detection from scalp EEG frequency sub bands.基于头皮脑电图频率子带的发作间期癫痫样棘波检测的深度学习
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Automated Detection of Interictal Epileptiform Discharges from Scalp Electroencephalograms by Convolutional Neural Networks.卷积神经网络对头皮脑电图中癫痫样放电的自动检测。
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JAMA Neurol. 2020 Jan 1;77(1):49-57. doi: 10.1001/jamaneurol.2019.3531.
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JAMA Neurol. 2020 Jan 1;77(1):103-108. doi: 10.1001/jamaneurol.2019.3485.
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