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通过多向分析将数据标记中的不确定性纳入头皮 EEG 同步的癫痫样放电自动检测中。

Incorporating Uncertainty in Data Labeling into Automatic Detection of Interictal Epileptiform Discharges from Concurrent Scalp-EEG via Multi-way Analysis.

机构信息

School of Science and Technology, Nottingham Trent University, Nottingham, UK.

Department of Clinical Neuroscience, King's College London, London, UK.

出版信息

Int J Neural Syst. 2021 Aug;31(8):2150019. doi: 10.1142/S0129065721500192. Epub 2021 Mar 26.

DOI:10.1142/S0129065721500192
PMID:33775232
Abstract

Interictal epileptiform discharges (IEDs) are elicited from an epileptic brain, whereas they can also be due to other neurological abnormalities. The diversity in their morphologies, their strengths, and their sources within the brain cause a great deal of uncertainty in their labeling by clinicians. The aim of this study is therefore to exploit and incorporate this uncertainty (the probability of the waveform being an IED) in the IED detection system which combines spatial component analysis (SCA) with the IED probabilities referred to as SCA-IEDP-based method. For comparison, we also propose and study SCA-based method in which probability of the waveform being an IED is ignored. The proposed models are employed to detect IEDs in two different classification approaches: (1) subject-dependent and (2) subject-independent classification approaches. The proposed methods are compared with two other state-of-the-art methods namely, time-frequency features and tensor factorization methods. The proposed SCA-IEDP model has achieved superior performance in comparison with the traditional SCA and other competing methods. It achieved 79.9% and 63.4% accuracy values in subject-dependent and subject-independent classification approaches, respectively. This shows that considering the IED probabilities in designing an IED detection system can boost its performance.

摘要

发作间期癫痫样放电 (IEDs) 是由癫痫大脑引发的,而它们也可能是由于其他神经学异常引起的。它们的形态、强度和在大脑中的来源多样性导致临床医生在对其进行标记时存在很大的不确定性。因此,本研究的目的是利用和结合这种不确定性(波形为 IED 的概率),在结合空间成分分析 (SCA) 和 IED 概率的 IED 检测系统中,这种概率被称为 SCA-IEDP 方法。为了进行比较,我们还提出并研究了忽略波形为 IED 的概率的 SCA 方法。所提出的模型用于在两种不同的分类方法中检测 IED:(1)基于受试者的和(2)基于受试者的独立分类方法。与其他两种最先进的方法(即时频特征和张量分解方法)相比,所提出的方法表现更好。与传统的 SCA 和其他竞争方法相比,所提出的 SCA-IEDP 模型具有更好的性能。它在基于受试者的和基于受试者的独立分类方法中分别实现了 79.9%和 63.4%的准确率。这表明在设计 IED 检测系统时考虑 IED 概率可以提高其性能。

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