超维计算在癫痫检测中的应用

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Lulu Ge;Keshab K. Parhi
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引用次数: 3

摘要

超维计算(HD)是一种大脑启发的计算形式,可以应用于许多分类问题。以往的研究表明,采用局部二值模式(LBP)编码可以高精度地从脑电图(EEG)中检测到癫痫发作。本文探讨了基于LBP和功率谱密度(PSD)特征的二进制HD计算在Kaggle癫痫检测比赛中颅内脑电图(iEEG)数据的癫痫检测中的适用性。在PSD方法中,针对所选特征和所有特征提出了三种新的HD分类方法。它们被称为单分类器长超向量、多分类器和单分类器短超向量。为了可视化测试数据的分类质量,引入了一个超向量距离图,该图绘制了一类超向量与另一类超向量之间查询超向量的汉明距离。仿真结果表明:1)LBP法的平均检测精度为80.9%,灵敏度为71.9%,特异度为81.4%,AUC为76.6%,而PSD法的平均检测精度为91.0%,灵敏度为81.8%,特异度为92.0%,AUC为86.9%。2). LBP方法的平均癫痫检测延迟为2.5s, PSD方法的平均癫痫检测延迟为4.5s。该平均潜伏期小于5秒,是快速给药的相关参数,表明LBP和PSD方法都能及时检测到癫痫发作。使用选定的PSD特性的性能优于使用所有特性的性能。结果表明,对于LBP和PSD方法,超向量的维数可以从10000位降至1000位。此外,对于所选特征的某些方法,超向量的维数可以降至100位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applicability of Hyperdimensional Computing to Seizure Detection
Hyperdimensional (HD) computing is a form of brain-inspired computing which can be applied to numerous classification problems. In past research, it has been shown that seizures can be detected from electroencephalograms (EEG) with high accuracy using local binary pattern (LBP) encoding. This paper explores applicability of binary HD computing to seizure detection from intra-cranial EEG (iEEG) data from the Kaggle seizure detection contest based on using both LBP and power spectral density (PSD) features. In the PSD method, three novel approaches to HD classification are presented for both selected features and all features. These are referred as single classifier long hypervector , multiple classifiers , and single classifier short hypervector . To visualize the quality of classification of test data, a hypervector distance plot is introduced that plots the Hamming distance of the query hpervectors from one class hypervector vs. that from the other. Simulation results show that: 1) . LBP method offers an average 80.9% test accuracy, 71.9% sensitivity, 81.4% specificity and 76.6% test AUC whereas the PSD method can achieve an average of 91.0% test accuracy, 81.8% sensitivity, 92.0% specificity and 86.9% test AUC. 2) . The average seizure detection latency is 2.5s for LBP method and is 4.5s for the PSD methods. This average latency, less than 5s, is a relevant parameter for fast drug delivery, indicating that both LBP and PSD methods are able to detect the seizures in a timely manner. The performance using selected PSD features is better than that using all features. 3) . It is shown that the dimensionality of the hypervector can be reduced to 1, 000 bits for LBP and PSD methods from 10, 000. Futhermore, for some approaches of selected features, the dimensionality of the hypervector can be reduced to 100 bits.
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