Rossi Dario, Cartocci Giulia, Inguscio Bianca M S, Capitolino Giulia, Borghini Gianluca, Di Flumeri Gianluca, Ronca Vincenzo, Giorgi Andrea, Vozzi Alessia, Capotorto Rossella, Babiloni Fabio, Scorpecci Alessandro, Giannantonio Sara, Marsella Pasquale, Leone Carlo Antonio, Grassia Rosa, Galletti Francesco, Ciodaro Francesco, Galletti Cosimo, Aricò Pietro
Department of Molecular Medicine, Sapienza University of Rome, Viale Regina Elena 291, 00161 Rome, Italy.
BrainSigns srl, Via Tirso 14, 00198 Rome, Italy.
Bioengineering (Basel). 2024 Jul 24;11(8):753. doi: 10.3390/bioengineering11080753.
Cochlear implants (CI) allow deaf patients to improve language perception and improving their emotional valence assessment. Electroencephalographic (EEG) measures were employed so far to improve CI programming reliability and to evaluate listening effort in auditory tasks, which are particularly useful in conditions when subjective evaluations are scarcely appliable or reliable. Unfortunately, the presence of CI on the scalp introduces an electrical artifact coupled to EEG signals that masks physiological features recorded by electrodes close to the site of implant. Currently, methods for CI artifact removal have been developed for very specific EEG montages or protocols, while others require many scalp electrodes. In this study, we propose a method based on the Multi-channel Wiener filter (MWF) to overcome those shortcomings. Nine children with unilateral CI and nine age-matched normal hearing children (control) participated in the study. EEG data were acquired on a relatively low number of electrodes ( = 16) during resting condition and during an auditory task. The obtained results obtained allowed to characterize CI artifact on the affected electrode and to significantly reduce, if not remove it through MWF filtering. Moreover, the results indicate, by comparing the two sample populations, that the EEG data loss is minimal in CI users after filtering, and that data maintain EEG physiological characteristics.
人工耳蜗(CI)可使聋人患者改善语言感知并提升其情绪效价评估能力。到目前为止,人们采用脑电图(EEG)测量方法来提高人工耳蜗编程的可靠性,并评估听觉任务中的听力努力程度,这在主观评估难以应用或不可靠的情况下尤为有用。不幸的是,头皮上人工耳蜗的存在会引入与EEG信号耦合的电伪迹,从而掩盖了靠近植入部位的电极所记录的生理特征。目前,人工耳蜗伪迹去除方法是针对非常特定的EEG导联或方案开发的,而其他方法则需要许多头皮电极。在本研究中,我们提出一种基于多通道维纳滤波器(MWF)的方法来克服这些缺点。九名单侧人工耳蜗植入儿童和九名年龄匹配的正常听力儿童(对照组)参与了该研究。在静息状态和听觉任务期间,通过相对较少数量的电极( = 16)采集EEG数据。所获得的结果能够对受影响电极上的人工耳蜗伪迹进行表征,并通过MWF滤波显著减少(如果不能消除的话)该伪迹。此外,通过比较两个样本群体的结果表明,滤波后人工耳蜗使用者的EEG数据损失最小,并且数据保持了EEG生理特征。