An outlier detection-based method for artifact removal of few-channel EEGs.
He ChenHao ZhangChuancai LiuYifan ChaiXiao-Li LiPublished in: Journal of neural engineering (2022)
Objective. The electroencephalogram (EEG) is one of the most important brain-imaging tools. The few-channel EEG is more suitable and affordable for practical use as a wearable device. Removing artifacts from collected EEGs is a prerequisite for accurately interpreting brain function and state. Previous studies proposed methods combining signal decomposition with the blind source separation (BSS) algorithms, but most of them used threshold-based criteria for artifact rejection, resulting in a lack of effectiveness in removing specific artifacts and the excessive suppression of brain activities. In this study, we proposed an outlier detection-based method for artifact removal under the few-channel condition. Approach . The underlying components (sources) were extracted using the decomposition-BSS schema. Based on our assumptions that in the feature space, the artifact-related components are dispersed, while the components related to brain activities are closely distributed, the artifact-related components were identified and rejected using one-class support vector machine. The assumptions were validated by visualizing the distribution of clusters of components. Main results . In quantitative analyses with semisimulated data, the proposed method outperformed the threshold-based methods for various artifacts, including muscle artifact, ocular artifact, and power line noise. With a real dataset and an event-related potential dataset, the proposed method demonstrated good performance in real-life situations. Significance . This study provided a fully data-driven and adaptive method for removing various artifacts in a single process without excessive suppression of brain activities.
Keyphrases
- image quality
- resting state
- functional connectivity
- white matter
- dual energy
- computed tomography
- machine learning
- cerebral ischemia
- deep learning
- randomized controlled trial
- high resolution
- systematic review
- air pollution
- working memory
- multiple sclerosis
- drinking water
- heart rate
- blood pressure
- magnetic resonance
- electronic health record
- case control
- living cells
- single molecule
- data analysis