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脑机接口中公共运动想象与执行数据集综述。

Review of public motor imagery and execution datasets in brain-computer interfaces.

作者信息

Gwon Daeun, Won Kyungho, Song Minseok, Nam Chang S, Jun Sung Chan, Ahn Minkyu

机构信息

School of Electrical Engineering and Computer Science, Handong Global University, Pohang-si, Republic of Korea.

School of Electrical Engineering and Computer Science, Gwangju Institute of Science and Technology, Gwangju, Republic of Korea.

出版信息

Front Hum Neurosci. 2023 Mar 30;17:1134869. doi: 10.3389/fnhum.2023.1134869. eCollection 2023.

Abstract

The demand for public datasets has increased as data-driven methodologies have been introduced in the field of brain-computer interfaces (BCIs). Indeed, many BCI datasets are available in various platforms or repositories on the web, and the studies that have employed these datasets appear to be increasing. Motor imagery is one of the significant control paradigms in the BCI field, and many datasets related to motor tasks are open to the public already. However, to the best of our knowledge, these studies have yet to investigate and evaluate the datasets, although data quality is essential for reliable results and the design of subject- or system-independent BCIs. In this study, we conducted a thorough investigation of motor imagery/execution EEG datasets recorded from healthy participants published over the past 13 years. The 25 datasets were collected from six repositories and subjected to a meta-analysis. In particular, we reviewed the specifications of the recording settings and experimental design, and evaluated the data quality measured by classification accuracy from standard algorithms such as Common Spatial Pattern (CSP) and Linear Discriminant Analysis (LDA) for comparison and compatibility across the datasets. As a result, we found that various stimulation types, such as text, figure, or arrow, were used to instruct subjects what to imagine and the length of each trial also differed, ranging from 2.5 to 29 s with a mean of 9.8 s. Typically, each trial consisted of multiple sections: pre-rest (2.38 s), imagination ready (1.64 s), imagination (4.26 s, ranging from 1 to 10 s), the post-rest (3.38 s). In a meta-analysis of the total of 861 sessions from all datasets, the mean classification accuracy of the two-class (left-hand vs. right-hand motor imagery) problem was 66.53%, and the population of the BCI poor performers, those who are unable to reach proficiency in using a BCI system, was 36.27% according to the estimated accuracy distribution. Further, we analyzed the CSP features and found that each dataset forms a cluster, and some datasets overlap in the feature space, indicating a greater similarity among them. Finally, we checked the minimal essential information (continuous signals, event type/latency, and channel information) that should be included in the datasets for convenient use, and found that only 71% of the datasets met those criteria. Our attempts to evaluate and compare the public datasets are timely, and these results will contribute to understanding the dataset's quality and recording settings as well as the use of using public datasets for future work on BCIs.

摘要

随着数据驱动方法被引入脑机接口(BCI)领域,对公共数据集的需求有所增加。确实,许多BCI数据集可在网络上的各种平台或存储库中获取,并且使用这些数据集的研究似乎也在增加。运动想象是BCI领域重要的控制范式之一,许多与运动任务相关的数据集已经向公众开放。然而,据我们所知,尽管数据质量对于获得可靠结果以及设计独立于受试者或系统的BCI至关重要,但这些研究尚未对数据集进行调查和评估。在本研究中,我们对过去13年发表的、从健康参与者记录的运动想象/执行脑电图数据集进行了全面调查。这25个数据集从六个存储库收集,并进行了荟萃分析。特别是,我们审查了记录设置和实验设计的规范,并评估了通过诸如共同空间模式(CSP)和线性判别分析(LDA)等标准算法的分类准确率来衡量的数据质量,以便在各数据集之间进行比较和兼容。结果,我们发现使用了各种刺激类型,如文本、图形或箭头,来指示受试者想象的内容,并且每个试验的时长也有所不同,范围从2.5秒到29秒,平均为9.8秒。通常,每个试验由多个部分组成:休息前(2.38秒)、想象准备(1.64秒)、想象(4.26秒,范围从1秒到10秒)、休息后(3.38秒)。在对所有数据集总共861个会话的荟萃分析中,两类(左手与右手运动想象)问题的平均分类准确率为66.53%,根据估计的准确率分布,BCI表现不佳者(即那些无法熟练使用BCI系统的人)的比例为36.27%。此外,我们分析了CSP特征,发现每个数据集形成一个聚类,并且一些数据集在特征空间中重叠,表明它们之间具有更大的相似性。最后,我们检查了数据集中为方便使用应包含的最小基本信息(连续信号、事件类型/潜伏期和通道信息),发现只有71%的数据集符合这些标准。我们评估和比较公共数据集的尝试很及时,这些结果将有助于了解数据集的质量和记录设置,以及在未来BCI工作中使用公共数据集。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1f09/10101208/7a7d5b89b92f/fnhum-17-1134869-g001.jpg

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