keyword
https://read.qxmd.com/read/38713969/channel-reflection-knowledge-driven-data-augmentation-for-eeg-based-brain-computer-interfaces
#21
JOURNAL ARTICLE
Ziwei Wang, Siyang Li, Jingwei Luo, Jiajing Liu, Dongrui Wu
A brain-computer interface (BCI) enables direct communication between the human brain and external devices. Electroencephalography (EEG) based BCIs are currently the most popular for able-bodied users. To increase user-friendliness, usually a small amount of user-specific EEG data are used for calibration, which may not be enough to develop a pure data-driven decoding model. To cope with this typical calibration data shortage challenge in EEG-based BCIs, this paper proposes a parameter-free channel reflection (CR) data augmentation approach that incorporates prior knowledge on the channel distributions of different BCI paradigms in data augmentation...
April 29, 2024: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/38713574/mocnn-a-multiscale-deep-convolutional-neural-network-for-erp-based-brain-computer-interfaces
#22
JOURNAL ARTICLE
Jing Jin, Ruitian Xu, Ian Daly, Xueqing Zhao, Xingyu Wang, Andrzej Cichocki
Event-related potentials (ERPs) reflect neurophysiological changes of the brain in response to external events and their associated underlying complex spatiotemporal feature information is governed by ongoing oscillatory activity within the brain. Deep learning methods have been increasingly adopted for ERP-based brain-computer interfaces (BCIs) due to their excellent feature representation abilities, which allow for deep analysis of oscillatory activity within the brain. Features with higher spatiotemporal frequencies usually represent detailed and localized information, while features with lower spatiotemporal frequencies usually represent global structures...
May 7, 2024: IEEE Transactions on Cybernetics
https://read.qxmd.com/read/38712193/a-theory-of-brain-computer-interface-learning-via-low-dimensional-control
#23
J A Menéndez, J A Hennig, M D Golub, E R Oby, P T Sadtler, A P Batista, S M Chase, B M Yu, P E Latham
A remarkable demonstration of the flexibility of mammalian motor systems is primates' ability to learn to control brain-computer interfaces (BCIs). This constitutes a completely novel motor behavior, yet primates are capable of learning to control BCIs under a wide range of conditions. BCIs with carefully calibrated decoders, for example, can be learned with only minutes to hours of practice. With a few weeks of practice, even BCIs with randomly constructed decoders can be learned. What are the biological substrates of this learning process? Here, we develop a theory based on a re-aiming strategy, whereby learning operates within a low-dimensional subspace of task-relevant inputs driving the local population of recorded neurons...
April 22, 2024: bioRxiv
https://read.qxmd.com/read/38712189/a-flexible-intracortical-brain-computer-interface-for-typing-using-finger-movements
#24
Nishal P Shah, Matthew S Willsey, Nick Hahn, Foram Kamdar, Donald T Avansino, Chaofei Fan, Leigh R Hochberg, Francis R Willett, Jaimie M Henderson
Keyboard typing with finger movements is a versatile digital interface for users with diverse skills, needs, and preferences. Currently, such an interface does not exist for people with paralysis. We developed an intracortical brain-computer interface (BCI) for typing with attempted flexion/extension movements of three finger groups on the right hand, or both hands, and demonstrated its flexibility in two dominant typing paradigms. The first paradigm is "point-and-click" typing, where a BCI user selects one key at a time using continuous real-time control, allowing selection of arbitrary sequences of symbols...
April 26, 2024: bioRxiv
https://read.qxmd.com/read/38703311/eeg-source-imaging-of-hand-movement-related-areas-an-evaluation-of-the-reconstruction-and-classification-accuracy-with-optimized-channels
#25
JOURNAL ARTICLE
Andres Soler, Eduardo Giraldo, Marta Molinas
The hand motor activity can be identified and converted into commands for controlling machines through a brain-computer interface (BCI) system. Electroencephalography (EEG) based BCI systems employ electrodes to measure the electrical brain activity projected at the scalp and discern patterns. However, the volume conduction problem attenuates the electric potential from the brain to the scalp and introduces spatial mixing to the signals. EEG source imaging (ESI) techniques can be applied to alleviate these issues and enhance the spatial segregation of information...
May 4, 2024: Brain Informatics
https://read.qxmd.com/read/38701593/attention-based-convolutional-neural-network-with-multi-modal-temporal-information-fusion-for-motor-imagery-eeg-decoding
#26
JOURNAL ARTICLE
Xinzhi Ma, Weihai Chen, Zhongcai Pei, Yue Zhang, Jianer Chen
Convolutional neural network (CNN) has been widely applied in motor imagery (MI)-based brain computer interface (BCI) to decode electroencephalography (EEG) signals. However, due to the limited perceptual field of convolutional kernel, CNN only extracts features from local region without considering long-term dependencies for EEG decoding. Apart from long-term dependencies, multi-modal temporal information is equally important for EEG decoding because it can offer a more comprehensive understanding of the temporal dynamics of neural processes...
April 24, 2024: Computers in Biology and Medicine
https://read.qxmd.com/read/38700963/an-efficient-brain-switch-for-asynchronous-brain-computer-interfaces
#27
JOURNAL ARTICLE
Daniel Valencia, Patrick P Mercier, Amir Alimohammad
Intracortical brain computer interfaces (iBCIs) utilizing extracellular recordings mainly employ in vivo signal processing application-specific integrated circuits (ASICs) to detect action potentials (spikes). Conventionally, "brain-switches" based on spiking activity have been employed to realize asynchronous (self-paced) iBCIs, estimating when the user involves in the underlying BCI task. Several studies have demonstrated that local field potentials (LFPs) can effectively replace action potentials, drastically reducing the power consumption and processing requirements of in vivo ASICs...
May 3, 2024: IEEE Transactions on Biomedical Circuits and Systems
https://read.qxmd.com/read/38698495/on-the-role-of-generative-artificial-intelligence-in-the-development-of-brain-computer-interfaces
#28
REVIEW
Seif Eldawlatly
Since their inception more than 50 years ago, Brain-Computer Interfaces (BCIs) have held promise to compensate for functions lost by people with disabilities through allowing direct communication between the brain and external devices. While research throughout the past decades has demonstrated the feasibility of BCI to act as a successful assistive technology, the widespread use of BCI outside the lab is still beyond reach. This can be attributed to a number of challenges that need to be addressed for BCI to be of practical use including limited data availability, limited temporal and spatial resolutions of brain signals recorded non-invasively and inter-subject variability...
May 2, 2024: BMC biomedical engineering
https://read.qxmd.com/read/38697881/a-two-stage-transformer-based-network-for-motor-imagery-classification
#29
JOURNAL ARTICLE
Priyanshu Chaudhary, Nischay Dhankhar, Amit Singhal, K P S Rana
Brain-computer interfaces (BCIs) are used to understand brain functioning and develop therapies for neurological and neurodegenerative disorders. Therefore, BCIs are crucial in rehabilitating motor dysfunction and advancing motor imagery applications. For motor imagery, electroencephalogram (EEG) signals are used to classify the subject's intention of moving a body part without actually moving it. This paper presents a two-stage transformer-based architecture that employs handcrafted features and deep learning techniques to enhance the classification performance on benchmarked EEG signals...
March 20, 2024: Medical Engineering & Physics
https://read.qxmd.com/read/38697588/revealing-the-spatiotemporal-brain-dynamics-of-covert-speech-compared-with-overt-speech-a-simultaneous-eeg-fmri-study
#30
JOURNAL ARTICLE
Wei Zhang, Muyun Jiang, Kok Ann Colin Teo, Raghavan Bhuvanakantham, LaiGuan Fong, Wei Khang Jeremy Sim, Zhiwei Guo, Chuan Huat Vince Foo, Rong Hui Jonathan Chua, Parasuraman Padmanabhan, Victoria Leong, Jia Lu, Balázs Gulyás, Cuntai Guan
Covert speech (CS) refers to speaking internally to oneself without producing any sound or movement. CS is involved in multiple cognitive functions and disorders. Reconstructing CS content by brain-computer interface (BCI) is also an emerging technique. However, it is still controversial whether CS is a truncated neural process of overt speech (OS) or involves independent patterns. Here, we performed a word-speaking experiment with simultaneous EEG-fMRI. It involved 32 participants, who generated words both overtly and covertly...
April 30, 2024: NeuroImage
https://read.qxmd.com/read/38694882/recruiting-neural-field-theory-for-data-augmentation-in-a-motor-imagery-brain-computer-interface
#31
JOURNAL ARTICLE
Daniel Polyakov, Peter A Robinson, Eli J Muller, Oren Shriki
We introduce a novel approach to training data augmentation in brain-computer interfaces (BCIs) using neural field theory (NFT) applied to EEG data from motor imagery tasks. BCIs often suffer from limited accuracy due to a limited amount of training data. To address this, we leveraged a corticothalamic NFT model to generate artificial EEG time series as supplemental training data. We employed the BCI competition IV '2a' dataset to evaluate this augmentation technique. For each individual, we fitted the model to common spatial patterns of each motor imagery class, jittered the fitted parameters, and generated time series for data augmentation...
2024: Frontiers in Robotics and AI
https://read.qxmd.com/read/38692190/online-continual-decoding-of-streaming-eeg-signal-with-a-balanced-and-informative-memory-buffer
#32
JOURNAL ARTICLE
Tiehang Duan, Zhenyi Wang, Fang Li, Gianfranco Doretto, Donald A Adjeroh, Yiyi Yin, Cui Tao
Electroencephalography (EEG) based Brain Computer Interface (BCI) systems play a significant role in facilitating how individuals with neurological impairments effectively interact with their environment. In real world applications of BCI system for clinical assistance and rehabilitation training, the EEG classifier often needs to learn on sequentially arriving subjects in an online manner. As patterns of EEG signals can be significantly different for different subjects, the EEG classifier can easily erase knowledge of learnt subjects after learning on later ones as it performs decoding in online streaming scenario, namely catastrophic forgetting...
April 25, 2024: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/38689706/continuous-tracking-using-deep-learning-based-decoding-for-noninvasive-brain-computer-interface
#33
JOURNAL ARTICLE
Dylan Forenzo, Hao Zhu, Jenn Shanahan, Jaehyun Lim, Bin He
Brain-computer interfaces (BCI) using electroencephalography provide a noninvasive method for users to interact with external devices without the need for muscle activation. While noninvasive BCIs have the potential to improve the quality of lives of healthy and motor-impaired individuals, they currently have limited applications due to inconsistent performance and low degrees of freedom. In this study, we use deep learning (DL)-based decoders for online continuous pursuit (CP), a complex BCI task requiring the user to track an object in 2D space...
April 2024: PNAS Nexus
https://read.qxmd.com/read/38686423/-a-review-on-electroencephalogram-based-channel-selection
#34
REVIEW
Xiangzhe Li, Dan Wang, Baiwen Zhang, Chaojie Fan, Jiaming Chen, Meng Xu, Yuanfang Chen
The electroencephalogram (EEG) signal is the key signal carrier of the brain-computer interface (BCI) system. The EEG data collected by the whole-brain electrode arrangement is conducive to obtaining higher information representation. Personalized electrode layout, while ensuring the accuracy of EEG signal decoding, can also shorten the calibration time of BCI and has become an important research direction. This paper reviews the EEG signal channel selection methods in recent years, conducts a comparative analysis of the combined effects of different channel selection methods and different classification algorithms, obtains the commonly used channel combinations in motor imagery, P300 and other paradigms in BCI, and explains the application scenarios of the channel selection method in different paradigms are discussed, in order to provide stronger support for a more accurate and portable BCI system...
April 25, 2024: Sheng Wu Yi Xue Gong Cheng Xue za Zhi, Journal of Biomedical Engineering, Shengwu Yixue Gongchengxue Zazhi
https://read.qxmd.com/read/38682423/advances-in-conductive-hydrogels-for-neural-recording-and-stimulation
#35
REVIEW
Hewan Dawit, Yuewu Zhao, Jine Wang, Renjun Pei
The brain-computer interface (BCI) allows the human or animal brain to directly interact with the external environment through the neural interfaces, thus playing the role of monitoring, protecting, improving/restoring, enhancing, and replacing. Recording electrophysiological information such as brain neural signals is of great importance in health monitoring and disease diagnosis. According to the electrode position, it can be divided into non-implantable, semi-implantable, and implantable. Among them, implantable neural electrodes can obtain the highest-quality electrophysiological information, so they have the most promising application...
April 29, 2024: Biomaterials Science
https://read.qxmd.com/read/38682224/a-modified-hybrid-brain-computer-interface-speller-based-on-steady-state-visual-evoked-potentials-and-electromyogram
#36
JOURNAL ARTICLE
Sahar Sadeghi, Ali Maleki
BACKGROUND: To enhance the information transfer rate (ITR) of a steady-state visual evoked potential (SSVEP)-based speller, more characters with flickering symbols should be used. Increasing the number of symbols might reduce the classification accuracy. A hybrid brain-computer interface (BCI) improves the overall performance of a BCI system by taking advantage of two or more control signals. In a simultaneous hybrid BCI, various modalities work with each other simultaneously, which enhances the ITR...
April 7, 2024: Journal of Integrative Neuroscience
https://read.qxmd.com/read/38680535/enhancing-brain-computer-interface-performance-by-incorporating-brain-to-brain-coupling
#37
JOURNAL ARTICLE
Tianyu Jia, Jingyao Sun, Ciarán McGeady, Linhong Ji, Chong Li
Human cooperation relies on key features of social interaction in order to reach desirable outcomes. Similarly, human-robot interaction may benefit from integration with human-human interaction factors. In this paper, we aim to investigate brain-to-brain coupling during motor imagery (MI)-based brain-computer interface (BCI) training using eye-contact and hand-touch interaction. Twelve pairs of friends (experimental group) and 10 pairs of strangers (control group) were recruited for MI-based BCI tests concurrent with electroencephalography (EEG) hyperscanning...
2024: Cyborg Bionic Syst
https://read.qxmd.com/read/38675259/ultraflexible-pedot-pss-iro-x-modified-electrodes-applications-in-behavioral-modulation-and-neural-signal-recording-in-mice
#38
JOURNAL ARTICLE
Xueying Wang, Wanqi Jiang, Huiran Yang, Yifei Ye, Zhitao Zhou, Liuyang Sun, Yanyan Nie, Tiger H Tao, Xiaoling Wei
Recent advancements in neural probe technology have become pivotal in both neuroscience research and the clinical management of neurological disorders. State-of-the-art developments have led to the advent of multichannel, high-density bidirectional neural interfaces that are adept at both recording and modulating neuronal activity within the central nervous system. Despite this progress, extant bidirectional probes designed for simultaneous recording and stimulation are beset with limitations, including elicitation of inflammatory responses and insufficient charge injection capacity...
March 27, 2024: Micromachines
https://read.qxmd.com/read/38672024/a-data-augmentation-method-for-motor-imagery-eeg-signals-based-on-dcgan-gp-network
#39
JOURNAL ARTICLE
Xiuli Du, Xiaohui Ding, Meiling Xi, Yana Lv, Shaoming Qiu, Qingli Liu
Motor imagery electroencephalography (EEG) signals have garnered attention in brain-computer interface (BCI) research due to their potential in promoting motor rehabilitation and control. However, the limited availability of labeled data poses challenges for training robust classifiers. In this study, we propose a novel data augmentation method utilizing an improved Deep Convolutional Generative Adversarial Network with Gradient Penalty (DCGAN-GP) to address this issue. We transformed raw EEG signals into two-dimensional time-frequency maps and employed a DCGAN-GP network to generate synthetic time-frequency representations resembling real data...
April 12, 2024: Brain Sciences
https://read.qxmd.com/read/38672017/electroencephalographic-signal-data-augmentation-based-on-improved-generative-adversarial-network
#40
JOURNAL ARTICLE
Xiuli Du, Xinyue Wang, Luyao Zhu, Xiaohui Ding, Yana Lv, Shaoming Qiu, Qingli Liu
EEG signals combined with deep learning play an important role in the study of human-computer interaction. However, the limited dataset makes it challenging to study EEG signals using deep learning methods. Inspired by the GAN network in image generation, this paper presents an improved generative adversarial network model L-C-WGAN-GP to generate artificial EEG data to augment training sets and improve the application of BCI in various fields. The generator consists of a long short-term memory (LSTM) network and the discriminator consists of a convolutional neural network (CNN) which uses the gradient penalty-based Wasserstein distance as the loss function in model training...
April 9, 2024: Brain Sciences
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