* Department of Computer Science, University of Surrey, Guildford, Surrey, GU2 7XH, United Kingdom.
† School of Engineering, University of Edinburgh, EH9 3FB, United Kingdom.
Int J Neural Syst. 2018 Oct;28(8):1850009. doi: 10.1142/S0129065718500090. Epub 2018 Mar 19.
Data is often plagued by noise which encumbers machine learning of clinically useful biomarkers and electroencephalogram (EEG) data is no exemption. Intracranial EEG (iEEG) data enhances the training of deep learning models of the human brain, yet is often prohibitive due to the invasive recording process. A more convenient alternative is to record brain activity using scalp electrodes. However, the inherent noise associated with scalp EEG data often impedes the learning process of neural models, achieving substandard performance. Here, an ensemble deep learning architecture for nonlinearly mapping scalp to iEEG data is proposed. The proposed architecture exploits the information from a limited number of joint scalp-intracranial recording to establish a novel methodology for detecting the epileptic discharges from the sEEG of a general population of subjects. Statistical tests and qualitative analysis have revealed that the generated pseudo-intracranial data are highly correlated with the true intracranial data. This facilitated the detection of IEDs from the scalp recordings where such waveforms are not often visible. As a real-world clinical application, these pseudo-iEEGs are then used by a convolutional neural network for the automated classification of intracranial epileptic discharges (IEDs) and non-IED of trials in the context of epilepsy analysis. Although the aim of this work was to circumvent the unavailability of iEEG and the limitations of sEEG, we have achieved a classification accuracy of 68% an increase of 6% over the previously proposed linear regression mapping.
数据通常会受到噪声的困扰,这会影响到有临床应用价值的生物标志物的机器学习,脑电图(EEG)数据也不例外。颅内 EEG(iEEG)数据增强了人类大脑深度学习模型的训练,但由于侵入性的记录过程,通常是不可行的。一个更方便的选择是使用头皮电极记录大脑活动。然而,与头皮 EEG 数据相关的固有噪声常常阻碍了神经模型的学习过程,导致性能不佳。在这里,提出了一种用于非线性映射头皮到 iEEG 数据的集成深度学习架构。所提出的架构利用了有限数量的联合头皮-颅内记录的信息,为从一般人群的 sEEG 中检测癫痫发作建立了一种新的方法。统计测试和定性分析表明,生成的伪颅内数据与真实颅内数据高度相关。这有助于从头皮记录中检测到 IED,因为在这些记录中,这些波形并不常见。作为一个实际的临床应用,这些伪 iEEG 被卷积神经网络用于在癫痫分析的背景下自动分类颅内癫痫发作(IED)和非 IED 的试验。虽然这项工作的目的是规避 iEEG 的不可用和 sEEG 的局限性,但我们已经实现了 68%的分类准确性,比以前提出的线性回归映射提高了 6%。