Computational and Mathematical Methods in Medicine

Computational Intelligence Methods for Brain-Machine Interfacing or Brain-Computer Interfacing


Publishing date
01 Nov 2020
Status
Closed
Submission deadline
03 Jul 2020

Lead Editor

1Jiangnan University, Wuxi, China

2PDPM Indian Institute of Information Technology Design and Manufacturing, Jabalpur, India

3China University of Mining Technology, Xuzhou, China

4University of South Florida, Tampa, USA

5Tongji University, Shanghai, China

This issue is now closed for submissions.

Computational Intelligence Methods for Brain-Machine Interfacing or Brain-Computer Interfacing

This issue is now closed for submissions.

Description

Brain-machine interfacing or brain-computer interfacing (BMI/BCI) is an emerging and challenging technology used in engineering and neuroscience, with the end goal of providing a pathway from the brain to the external world via mapping, assisting, augmenting, or repairing human cognitive or sensory-motor functions. Recently, many computational intelligence methods have appeared, such as deep learning and transfer learning. Deep learning methods have achieved great success in areas such as image and video analysis, natural language processing, and speech recognition and have also started to find applications in BMI/BCI. Transfer learning makes use of data or knowledge gained in solving one problem to help solve a different, albeit related, problem and can be particularly useful in BMI/BCI to cope with variability across individuals or tasks, accelerating learning and improving performance. Deep learning and transfer learning can also be integrated to take advantage of both domains.

Although the study of brain-machine interfaces using computational intelligence methods has become more popular, there are many unsolved fundamental problems, such as deep learning representation of some EEG-based BMI/BCI data from multiple modalities, mapping data from one modality to another to achieve cross-source BMI/BCI data analysis, identifying and utilizing relations between elements from two or more different signal sources for comprehensive BMI/BCI data analysis, fusing information from two or more signal sources to perform a more accurate prediction, transferring knowledge between modalities and their representations, and recovering missing modality data given the observed ones.

In the past decade, several EEG-based BMI/BCI methods and technologies have been developed and have shown promising results in real-world applications such as neuroscience, medicine, and rehabilitation. This has led to a proliferation of papers showing and comparing the accuracy and performance of these technologies; however, many of these have not advanced to real-time translation or application. For all the reasons mentioned above, it is important to exploit and develop effective computational intelligence algorithms for addressing fundamental issues in the field of BMI/BCI.

This Special Issue aims to provide a forum for researchers from BMI/BCI and computational intelligence to present recent progress in computational intelligence research with applications to BMI/BCI data. We welcome original research articles that contain detailed experimental analysis and related clinical translations, as well as related review articles discussing the current state of the art.

Potential topics include but are not limited to the following:

  • Computational intelligence methods for BMI/BCI signal processing, for example, Independent Component Analysis (ICA), Common Spatial Pattern (CSP), Canonical Correlation Analysis (CCA), and so forth
  • Computational intelligence methods for BMI/BCI feature extraction, for example, time-domain, frequency domain, time-frequency domain, spatiotemporal features, and so forth
  • Computational intelligence methods for BMI/BCI pattern recognition, for example, deep learning, transfer learning, ensemble learning, reinforcement learning, multitask learning, multiview learning, and so forth
  • Invasive and noninvasive BCIs
  • Online and offline BCI applications
  • Different modalities of BCIs, for example, Electroencephalogram (EEG), Magnetoencephalography (MEG), Functional Magnetic Resonance Imaging (fMRI), Functional Near-infrared Spectroscopy (fNIRS), Electrocorticography (ECoG), Spikes, Local Field Potentials (LFPs), and so forth

Articles

  • Special Issue
  • - Volume 2020
  • - Article ID 9343461
  • - Research Article

A Fast Subpixel Registration Algorithm Based on Single-Step DFT Combined with Phase Correlation Constraint in Multimodality Brain Image

Jianguo Li | Quanhai Ma
  • Special Issue
  • - Volume 2020
  • - Article ID 4519483
  • - Research Article

A Novel Radial Basis Neural Network-Leveraged Fast Training Method for Identifying Organs in MR Images

Min Xu | Pengjiang Qian | ... | Raymond F. Muzic
  • Special Issue
  • - Volume 2020
  • - Article ID 3187268
  • - Research Article

A Combined Ultrasonic Backscatter Parameter for Bone Status Evaluation in Neonates

Weiying Mao | Yang Du | ... | Rong Zhang
  • Special Issue
  • - Volume 2020
  • - Article ID 2598140
  • - Research Article

Epilepsy Detection in EEG Using Grassmann Discriminant Analysis Method

Hongbin Yu | Chao Fan | Yunting Zhang
  • Special Issue
  • - Volume 2020
  • - Article ID 1747413
  • - Research Article

A Modified Skip-Gram Algorithm for Extracting Drug-Drug Interactions from AERS Reports

Li Wang | Wenjie Pan | ... | Yuanpeng Zhang
  • Special Issue
  • - Volume 2020
  • - Article ID 9497369
  • - Research Article

Evaluating the Acute Effect of Stereoscopic Recovery by Dichoptic Stimulation Using Electroencephalogram

Wei Shi | Luyang He | ... | Tongning Wu
  • Special Issue
  • - Volume 2020
  • - Article ID 4097829
  • - Research Article

Evaluation of Cerebral Blood Flow Dynamics in Transient Ischemic Attacks Patients with Fast Cine Phase Contrast Magnetic Resonance Angiography

Yuzhao Wang | Duo Gao | Huaijun Liu
  • Special Issue
  • - Volume 2020
  • - Article ID 9689821
  • - Research Article

A Novel Deep Neural Network for Robust Detection of Seizures Using EEG Signals

Wei Zhao | Wenbing Zhao | ... | Guokai Zhang
  • Special Issue
  • - Volume 2020
  • - Article ID 1405647
  • - Research Article

Magnetic Resonance Image Denoising Algorithm Based on Cartoon, Texture, and Residual Parts

Yanqiu Zeng | Baocan Zhang | ... | Yimin Ding
  • Special Issue
  • - Volume 2020
  • - Article ID 1876073
  • - Research Article

Bayesian Estimation of Gumbel Type-II Distribution under Type-II Censoring with Medical Applications

Kamran Abbas | Zamir Hussain | ... | Dost Muhammad Khan

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