Department of Paediatrics and Child Health, University of Cape Town, Cape Town, South Africa.
Center for Cognitive and Brain Health, Northeastern University, Boston, MA, USA.
Dev Cogn Neurosci. 2024 Jun;67:101396. doi: 10.1016/j.dcn.2024.101396. Epub 2024 May 27.
Electroencephalography (EEG) is an important tool in the field of developmental cognitive neuroscience for indexing neural activity. However, racial biases persist in EEG research that limit the utility of this tool. One bias comes from the structure of EEG nets/caps that do not facilitate equitable data collection across hair textures and types. Recent efforts have improved EEG net/cap design, but these solutions can be time-intensive, reduce sensor density, and are more difficult to implement in younger populations. The present study focused on testing EEG sensor net designs over infancy. Specifically, we compared EEG data quality and retention between two high-density saline-based EEG sensor net designs from the same company (Magstim EGI, Whitland, UK) within the same infants during a baseline EEG paradigm. We found that within infants, the tall sensor nets resulted in lower impedances during collection, including lower impedances in the key online reference electrode for those with greater hair heights and resulted in a greater number of usable EEG channels and data segments retained during pre-processing. These results suggest that along with other best practices, the modified tall sensor net design is useful for improving data quality and retention in infant participants with curly or tightly-coiled hair.
脑电图(EEG)是发展认知神经科学领域中的一个重要工具,用于标记神经活动。然而,脑电图研究中存在种族偏见,限制了这一工具的实用性。一种偏见来自于脑电图网/帽的结构,它不利于在不同的头发质地和类型之间进行公平的数据收集。最近的努力已经改进了脑电图网/帽的设计,但这些解决方案可能需要大量时间,降低传感器密度,并且在年轻人群中更难实施。本研究专注于测试婴儿期的脑电图传感器网设计。具体来说,我们在基线脑电图范式中,在同一婴儿体内比较了来自同一家公司(英国 Whitland 的 Magstim EGI)的两种基于盐水的高密度脑电图传感器网设计的脑电图数据质量和保留情况。我们发现,在婴儿体内,高传感器网在收集过程中导致较低的阻抗,包括对于头发较高的婴儿,关键在线参考电极的阻抗也较低,并且在预处理过程中保留了更多可用的脑电图通道和数据段。这些结果表明,除了其他最佳实践外,改良的高传感器网设计有助于提高卷发或紧密卷曲头发的婴儿参与者的数据质量和保留率。