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首页> 外文期刊>Biocybernetics and biomedical engineering >Fast statistical model-based classification of epileptic EEG signals
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Fast statistical model-based classification of epileptic EEG signals

机译:基于快速统计模型的癫痫脑电图信号分类

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This paper presents a supervised classification method to accurately detect epileptic brain activity in real-time from electroencephalography (EEG) data. The proposed method has three main strengths: it has low computational cost, making it suitable for real-time implementation in EEG devices; it performs detection separately for each brain rhythm or EEG spectral band, following the current medical practices; and it can be trained with small datasets, which is key in clinical problems where there is limited annotated data available. This is in sharp contrast with modern approaches based on machine learning techniques, which achieve very high sensitivity and specificity but require large training sets with expert annotations that may not be available. The proposed method proceeds by first separating EEG signals into their five brain rhythms by using a wavelet filter bank. Each brain rhythm signal is then mapped to a low-dimensional manifold by using a generalized Gaussian statistical model; this dimensionality reduction step is computationally straight-forward and greatly improves supervised classification performance in problems with little training data available. Finally, this is followed by parallel linear classifications on the statistical manifold to detect if the signals exhibit healthy or abnormal brain activity in each spectral band. The good performance of the proposed method is demonstrated with an application to paediatric neurology using 39 EEG recordings from the Children's Hospital Boston database, where it achieves an average sensitivity of 98%, specificity of 88%, and detection latency of 4 s, performing similarly to the best approaches from the literature. (C) 2018 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:本文提出了一种监督分类方法,可以从脑电图(EEG)数据实时检测癫痫脑活动。该方法具有三种主要优势:它具有低计算成本,使其适用于EEG器件中的实时实现;它在当前的医疗实践之后,为每个脑节律或脑电图谱带分别进行检测;它可以用小型数据集接受培训,这是临床问题中的关键,其中有限有限的注释数据。这与基于机器学习技术的现代方法形成鲜明对比,这达到了非常高的灵敏度和特异性,但需要具有可能无法使用的专家注释的大型训练集。所提出的方法通过使用小波滤波器组首先将EEG信号分离成五个脑节律。然后通过使用通用的高斯统计模型将每个脑节律信号映射到低维歧管;这种维数减少步骤是直接计算的,大大提高了训练数据的问题中的监督分类性能。最后,这是统计歧管上的平行线性分类,以检测信号是否在每个光谱带中表现出健康或异常的脑活动。通过来自儿童医院波士顿数据库的39个脑电图录音来证明该方法的良好性能是使用儿童医院波士顿数据库的39 eeg录音,在那里实现了98%,特异性为88%的平均灵敏度,以及4 s的检测等待时间,表现得如此从文献中最好的方法。 (c)2018年纳雷斯州博士生物庭院研究所和波兰科学院的生物医学工程。 elsevier b.v出版。保留所有权利。

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