| Literature DB >> 33950323 |
Li Dong1,2,3, Lingling Zhao1, Yufan Zhang1, Xue Yu1, Fali Li1, Jianfu Li1,2,3, Yongxiu Lai1,2,3, Tiejun Liu1,2,3, Dezhong Yao4,5,6,7.
Abstract
"Bad channels" are common phenomena during scalp electroencephalography (EEG) recording that arise due to various technique-related reasons, and reconstructing signals from bad channels is an inevitable choice in EEG processing. However, current interpolation methods are all based on purely mathematical interpolation theory, ignoring the neurophysiological basis of the EEG signals, and their performance needs to be further improved, especially when there are many scattered or adjacent bad channels. Therefore, a new interpolation method, named the reference electrode standardization interpolation technique (RESIT), was developed for interpolating scalp EEG channels. Resting-state and event-related EEG datasets were used to investigate the performance of the RESIT. The main results showed that (1) assuming 10% bad channels, RESIT can reconstruct the bad channels well; (2) as the percentage of bad channels increased (from 2% to 85%), the absolute and relative errors between the true and RESIT-reconstructed signals generally increased, and the correlations between the true and RESIT signals decreased; (3) for a range of bad channel percentages (2% ~ 85%), the RESIT had lower absolute error (approximately 2.39% ~ 33.5% reduction), lower relative errors (approximately 1.3% ~ 35.7% reduction) and higher correlations (approximately 2% ~ 690% increase) than traditional interpolation methods, including neighbor interpolation (NI) and spherical spline interpolation (SSI). In addition, the RESIT was integrated into the EEG preprocessing pipeline on the WeBrain cloud platform ( https://webrain.uestc.edu.cn/ ). These results suggest that the RESIT is a promising interpolation method for both separate and simultaneous EEG preprocessing that benefits further EEG analysis, including event-related potential (ERP) analysis, EEG network analysis, and strict group-level statistics.Entities:
Keywords: Bad channels; EEG; EEG preprocessing; Interpolation; REST reference
Mesh:
Year: 2021 PMID: 33950323 PMCID: PMC8195908 DOI: 10.1007/s10548-021-00844-2
Source DB: PubMed Journal: Brain Topogr ISSN: 0896-0267 Impact factor: 3.020
Fig. 1Channel locations of the EEG system. Sixty-two EEG electrodes were distributed using the international extended 10–20 cap system
Fig. 2Results of different interpolation methods for resting-state EEG data from one example subject. In case 1, a number of scattered bad channels (10%) were randomly established, and in case 2, a set of adjacent bad channels (10%) was randomly established
Fig. 3Performance of the RESIT, SSI and NI interpolation methods for resting-state EEG data in case 1. Mean values (absolute error, relative error and correlation) with standard error across subjects are shown. Black * indicates significant differences among the RESIT, SSI and NI methods; blue * indicates significant differences between the RESIT and SSI/NI methods; gray * indicates significant differences between the NI and RESIT/SSI methods; significance was set at P < 0.005; R: correlation (Color figure online)
Fig. 4Performance of the RESIT, SSI and NI interpolation methods for resting-state EEG data in case 2. Mean values (absolute error, relative error and correlation) with standard error across subjects are shown. Black * indicates significant differences among the RESIT, SSI and NI methods; blue * indicates significant differences between the RESIT and SSI/NI methods; significance was set at P < 0.005, R: correlation (Color figure online)
Fig. 5Results of the RESIT, SSI and NI interpolation methods for resting-state EEG data from one example subject. In case 1, a number of scattered bad channels (10%) were randomly assigned, and in case 2, a set of adjacent bad channels (10%) was randomly assigned
Fig. 6Performance of the RESIT, SSI and NI interpolation methods for the P300 EEG data in case 1. Mean values (absolute error, relative error and correlation) with standard error across subjects are shown. Black * indicates significant differences among the RESIT, SSI and NI methods; blue * indicates significant differences between the RESIT and SSI/NI methods; significance was set at P < 0.005; R: correlation (Color figure online)
Fig. 7Performance of the RESIT, SSI and NI interpolation methods for the P300 EEG data in case 2. Mean values (absolute error, relative error and correlation) with standard error across subjects are shown. Black * indicates significant differences among the RESIT, SSI and NI methods; blue * indicates significant differences between the RESIT and SSI/NI methods; significance was set at P < 0.005; R: correlation (Color figure online)