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衰老对基于统计和时间特征的视觉脑电图Oddball范式分类性能的影响

On the Influence of Aging on Classification Performance in the Visual EEG Oddball Paradigm Using Statistical and Temporal Features.

作者信息

Omejc Nina, Peskar Manca, Miladinović Aleksandar, Kavcic Voyko, Džeroski Sašo, Marusic Uros

机构信息

Department of Knowledge Technologies, Jožef Stefan Institute, 1000 Ljubljana, Slovenia.

Jožef Stefan International Postgraduate School, 1000 Ljubljana, Slovenia.

出版信息

Life (Basel). 2023 Jan 31;13(2):391. doi: 10.3390/life13020391.

Abstract

The utilization of a non-invasive electroencephalogram (EEG) as an input sensor is a common approach in the field of the brain-computer interfaces (BCI). However, the collected EEG data pose many challenges, one of which may be the age-related variability of event-related potentials (ERPs), which are often used as primary EEG BCI signal features. To assess the potential effects of aging, a sample of 27 young and 43 older healthy individuals participated in a visual oddball study, in which they passively viewed frequent stimuli among randomly occurring rare stimuli while being recorded with a 32-channel EEG set. Two types of EEG datasets were created to train the classifiers, one consisting of amplitude and spectral features in time and another with extracted time-independent statistical ERP features. Among the nine classifiers tested, linear classifiers performed best. Furthermore, we show that classification performance differs between dataset types. When temporal features were used, maximum individuals' performance scores were higher, had lower variance, and were less affected overall by within-class differences such as age. Finally, we found that the effect of aging on classification performance depends on the classifier and its internal feature ranking. Accordingly, performance will differ if the model favors features with large within-class differences. With this in mind, care must be taken in feature extraction and selection to find the correct features and consequently avoid potential age-related performance degradation in practice.

摘要

将无创脑电图(EEG)用作输入传感器是脑机接口(BCI)领域的一种常见方法。然而,收集到的EEG数据带来了许多挑战,其中之一可能是与年龄相关的事件相关电位(ERP)变异性,而ERP常被用作EEG BCI的主要信号特征。为了评估衰老的潜在影响,27名年轻健康个体和43名老年健康个体参与了一项视觉Oddball研究,在研究中,他们在随机出现的罕见刺激中被动观看频繁出现的刺激,同时使用32通道EEG设备进行记录。创建了两种类型的EEG数据集来训练分类器,一种由时间上的幅度和频谱特征组成,另一种由提取的与时间无关的统计ERP特征组成。在所测试的九个分类器中,线性分类器表现最佳。此外,我们表明不同数据集类型的分类性能存在差异。使用时间特征时,大多数个体的性能得分更高、方差更低,并且总体上受年龄等类内差异的影响较小。最后,我们发现衰老对分类性能的影响取决于分类器及其内部特征排序。因此,如果模型青睐类内差异大的特征,性能将会不同。考虑到这一点,在特征提取和选择时必须谨慎,以找到正确的特征,从而在实践中避免潜在的与年龄相关的性能下降。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d05/9965040/ff20ece17b98/life-13-00391-g0A1.jpg

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