Javascript must be enabled to continue!
Enhancing Classification Performance of fNIRS-BCI by Identifying Cortically Active Channels Using the z-Score Method
View through CrossRef
A state-of-the-art brain–computer interface (BCI) system includes brain signal acquisition, noise removal, channel selection, feature extraction, classification, and an application interface. In functional near-infrared spectroscopy-based BCI (fNIRS-BCI) channel selection may enhance classification performance by identifying suitable brain regions that contain brain activity. In this study, the z-score method for channel selection is proposed to improve fNIRS-BCI performance. The proposed method uses cross-correlation to match the similarity between desired and recorded brain activity signals, followed by forming a vector of each channel’s correlation coefficients’ maximum values. After that, the z-score is calculated for each value of that vector. A channel is selected based on a positive z-score value. The proposed method is applied to an open-access dataset containing mental arithmetic (MA) and motor imagery (MI) tasks for twenty-nine subjects. The proposed method is compared with the conventional t-value method and with no channel selected, i.e., using all channels. The z-score method yielded significantly improved (p < 0.0167) classification accuracies of 87.2 ± 7.0%, 88.4 ± 6.2%, and 88.1 ± 6.9% for left motor imagery (LMI) vs. rest, right motor imagery (RMI) vs. rest, and mental arithmetic (MA) vs. rest, respectively. The proposed method is also validated on an open-access database of 17 subjects, containing right-hand finger tapping (RFT), left-hand finger tapping (LFT), and dominant side foot tapping (FT) tasks.The study shows an enhanced performance of the z-score method over the t-value method as an advancement in efforts to improve state-of-the-art fNIRS-BCI systems’ performance.
Title: Enhancing Classification Performance of fNIRS-BCI by Identifying Cortically Active Channels Using the z-Score Method
Description:
A state-of-the-art brain–computer interface (BCI) system includes brain signal acquisition, noise removal, channel selection, feature extraction, classification, and an application interface.
In functional near-infrared spectroscopy-based BCI (fNIRS-BCI) channel selection may enhance classification performance by identifying suitable brain regions that contain brain activity.
In this study, the z-score method for channel selection is proposed to improve fNIRS-BCI performance.
The proposed method uses cross-correlation to match the similarity between desired and recorded brain activity signals, followed by forming a vector of each channel’s correlation coefficients’ maximum values.
After that, the z-score is calculated for each value of that vector.
A channel is selected based on a positive z-score value.
The proposed method is applied to an open-access dataset containing mental arithmetic (MA) and motor imagery (MI) tasks for twenty-nine subjects.
The proposed method is compared with the conventional t-value method and with no channel selected, i.
e.
, using all channels.
The z-score method yielded significantly improved (p < 0.
0167) classification accuracies of 87.
2 ± 7.
0%, 88.
4 ± 6.
2%, and 88.
1 ± 6.
9% for left motor imagery (LMI) vs.
rest, right motor imagery (RMI) vs.
rest, and mental arithmetic (MA) vs.
rest, respectively.
The proposed method is also validated on an open-access database of 17 subjects, containing right-hand finger tapping (RFT), left-hand finger tapping (LFT), and dominant side foot tapping (FT) tasks.
The study shows an enhanced performance of the z-score method over the t-value method as an advancement in efforts to improve state-of-the-art fNIRS-BCI systems’ performance.
Related Results
LASSO Homotopy-Based Sparse Representation Classification for fNIRS-BCI
LASSO Homotopy-Based Sparse Representation Classification for fNIRS-BCI
Brain-computer interface (BCI) systems based on functional near-infrared spectroscopy (fNIRS) have been used as a way of facilitating communication between the brain and peripheral...
Investigation of cerebrovascular reactivity using hypercapnia and optical brain imaging
Investigation of cerebrovascular reactivity using hypercapnia and optical brain imaging
Damage to the cerebral microvasculature network that regulates cerebral blood flow (CBF) is a universal feature of aging and many neurological disorders, including Alzheimer's dise...
Exploring individual biases in BCI research and users: Does gender matter?
Exploring individual biases in BCI research and users: Does gender matter?
Objective
Brain-Computer Interface (BCI) is an interdisciplinary research field characterized by rapid technological advances and collaborative efforts to devel...
EEG-fNIRS-based hybrid image construction and classification using CNN-LSTM
EEG-fNIRS-based hybrid image construction and classification using CNN-LSTM
The constantly evolving human–machine interaction and advancement in sociotechnical systems have made it essential to analyze vital human factors such as mental workload, vigilance...
Hybrid Integrated Wearable Patch for Brain EEG-fNIRS Monitoring
Hybrid Integrated Wearable Patch for Brain EEG-fNIRS Monitoring
Synchronous monitoring electroencephalogram (EEG) and functional near-infrared spectroscopy (fNIRS) have received significant attention in brain science research for their provisio...
Enhancing classification accuracy of fNIRS-BCI using features acquired from vector-based phase analysis
Enhancing classification accuracy of fNIRS-BCI using features acquired from vector-based phase analysis
Abstract
Objective.
In this paper, a novel methodology for feature extraction to enhance classification accuracy of funct...
Neural mechanisms of training in Brain-Computer Interface : A Biophysical modeling approach
Neural mechanisms of training in Brain-Computer Interface : A Biophysical modeling approach
Abstract
Brain-Computer Interface (BCI) is a system that translates neural activity into commands, allowing direct communication between the brain and external devi...
Can vibrotactile stimulation and tDCS help inefficient BCI users?
Can vibrotactile stimulation and tDCS help inefficient BCI users?
Abstract
Brain-computer interface (BCI) has helped people by allowing them to control a computer or machine through brain activity without ac...

