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在飞行模拟器中对cEEGrid和基于固体凝胶的电极进行基准测试以分类疏忽性耳聋

Benchmarking cEEGrid and Solid Gel-Based Electrodes to Classify Inattentional Deafness in a Flight Simulator.

作者信息

Somon Bertille, Giebeler Yasmina, Darmet Ludovic, Dehais Frédéric

机构信息

Artificial and Natural Intelligence Toulouse Institute, Université de Toulouse, Toulouse, France.

Department for Aerospace Vehicles Design and Control, ISAE-SUPAERO, Université de Toulouse, Toulouse, France.

出版信息

Front Neuroergon. 2022 Jan 6;2:802486. doi: 10.3389/fnrgo.2021.802486. eCollection 2021.

Abstract

Transfer from experiments in the laboratory to real-life tasks is challenging due notably to the inability to reproduce the complexity of multitasking dynamic everyday life situations in a standardized lab condition and to the bulkiness and invasiveness of recording systems preventing participants from moving freely and disturbing the environment. In this study, we used a motion flight simulator to induce inattentional deafness to auditory alarms, a cognitive difficulty arising in complex environments. In addition, we assessed the possibility of two low-density EEG systems a solid gel-based electrode Enobio (Neuroelectrics, Barcelona, Spain) and a gel-based cEEGrid (TMSi, Oldenzaal, Netherlands) to record and classify brain activity associated with inattentional deafness (misses vs. hits to odd sounds) with a small pool of expert participants. In addition to inducing inattentional deafness (missing auditory alarms) at much higher rates than with usual lab tasks (34.7% compared to the usual 5%), we observed typical inattentional deafness-related activity in the time domain but also in the frequency and time-frequency domains with both systems. Finally, a classifier based on Riemannian Geometry principles allowed us to obtain more than 70% of single-trial classification accuracy for both mobile EEG, and up to 71.5% for the cEEGrid (TMSi, Oldenzaal, Netherlands). These results open promising avenues toward detecting cognitive failures in real-life situations, such as real flight.

摘要

从实验室实验向现实生活任务的转化具有挑战性,这主要是由于无法在标准化实验室条件下重现多任务动态日常生活情境的复杂性,以及记录系统的笨重和侵入性,使得参与者无法自由移动并干扰环境。在本研究中,我们使用了运动飞行模拟器来诱发对听觉警报的疏忽性失聪,这是一种在复杂环境中出现的认知困难。此外,我们评估了两种低密度脑电图系统——基于固体凝胶的Enobio电极(西班牙巴塞罗那的Neuroelectrics公司)和基于凝胶的cEEGrid(荷兰奥尔登扎尔的TMSi公司)——对一小群专业参与者记录和分类与疏忽性失聪相关的大脑活动(对异常声音的漏听与听到)的可能性。除了以比通常实验室任务高得多的比率诱发疏忽性失聪(漏听听觉警报)(34.7%,而通常为5%)之外,我们还观察到两种系统在时域、频域和时频域中都有典型的与疏忽性失聪相关的活动。最后,基于黎曼几何原理的分类器使我们能够在移动脑电图上获得超过70%的单次试验分类准确率,而对于cEEGrid(荷兰奥尔登扎尔的TMSi公司)则高达71.5%。这些结果为在现实生活情境(如实际飞行)中检测认知失误开辟了有前景的途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bcc3/10790867/94d38987a102/fnrgo-02-802486-g0001.jpg

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