基于BERT NLP的癫痫分类和两种不同时频分析的源隔离技术的比较

S. Davidson, N. McCallan, K. Y. Ng, P. Biglarbeigi, D. Finlay, B.L. Lan, J. Mclaughlin
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摘要

癫痫是世界上最常见的神经系统疾病之一[1],全世界约有5000万人受其影响[2]。当数以百万计的神经元同步兴奋,导致大脑皮层的电活动波时,癫痫发作就会发生[3]。脑电图(EEG)是一种以毫秒时间分辨率测量皮层活动的非侵入性工具。脑电图记录大脑皮层神经细胞产生的电位[4]。因此,该工具常用于癫痫发作的分析和检测[5]。癫痫会给患者的生活质量带来许多困难。因此,至关重要的是,自动检测算法的存在,以帮助神经科医生准确地分类不同类型的癫痫发作。Roy等人[10]使用不同的机器学习技术,使用2 s窗口获得了平均f1分数0.561,而Vanabelle等人[11]使用1 s窗口获得了51.33%的准确率,这表明减少时间窗口也会降低分类的准确率。本文旨在展示NLP可以用于分层分类,这是继早期将简单部分性癫痫发作和复杂部分性癫痫发作结合起来的工作之后的成果[9]。第二个目标是展示一个管道,可以使用神经网络将癫痫发作分离回其原始标签。这种方法快速,有效,并且需要较少的训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seizure Classification Using BERT NLP and a Comparison of Source Isolation Techniques with Two Different Time-Frequency Analysis
Epilepsy is one of the most common neurological disorders in the world [1], affecting about 50 million people worldwide [2]. Epileptic seizures occur when millions of neurons are synchronously excited, resulting in a wave of electrical activity in the cerebral cortex [3]. Electroencephalography (EEG) is a noninvasive tool that measures cortical activity with millisecond temporal resolution. EEGs record the electrical potentials generated by the cerebral cortex nerve cells [4]. Therefore, this tool is commonly used for the analysis and detection of seizures [5]. Epilepsy causes many difficulties in relation to the quality of life of the patient. It is therefore vital that automatic detection algorithms exist to aid neurologists to accurately classify the different types of seizures. Roy et al. [10] used different machine learning techniques to achieve an average F1-score of 0.561 using 2 s windows whilst Vanabelle et al. [11] used 1 s windows and achieved an accuracy of 51.33%, which shows that reducing the time window would also decrease the accuracy of classification. This paper aims to show that an NLP can be used for hierarchical classification, following upon an earlier work on combining simple partial and complex partial seizures [9]. The second aim is to show a pipeline that can be used to separate the seizures back into their original labels using neural networks. This method is quick, effective, and requires less training.
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