A Cumulants-Based Human Brain Decoding

Zafar, R. and Javvad Ur Rehman, M. and Alam, S. and Arslan Khan, M. and Hussain, A. and Ahmad, R.F. and Reza, F. and Jahan, R. (2022) A Cumulants-Based Human Brain Decoding. Computational Intelligence and Neuroscience, 2022. ISSN 16875265

Full text not available from this repository.
Official URL: https://www.scopus.com/inward/record.uri?eid=2-s2....

Abstract

Human cognition is influenced by the way the nervous system processes information and is linked to this mechanical explanation of the human body's cognitive function. Accuracy is the key emphasis in neuroscience which may be enhanced by utilising new hardware, mathematical, statistical, and computational methodologies. Feature extraction and feature selection also play a crucial function in gaining improved accuracy since the proper characteristics can identify brain states efficiently. However, both feature extraction and selection procedures are dependent on mathematical and statistical techniques which implies that mathematical and statistical techniques have a direct or indirect influence on prediction accuracy. The forthcoming challenges of the brain-computer interface necessitate a thorough critical understanding of the complicated structure and uncertain behavior of the brain. It is impossible to upgrade hardware periodically, and thus, an option is necessary to collect maximum information from the brain against varied actions. The mathematical and statistical combination could be the ideal answer for neuroscientists which can be utilised for feature extraction, feature selection, and classification. That is why in this research a statistical technique is offered together with specialised feature extraction and selection methods to increase the accuracy. A score fusion function is changed utilising an enhanced cumulants-driven likelihood ratio test employing multivariate pattern analysis. Functional MRI data were acquired from 12 patients versus a visual test that comprises of pictures from five distinct categories. After cleaning the data, feature extraction and selection were done using mathematical approaches, and lastly, the best match of the projected class was established using the likelihood ratio test. To validate the suggested approach, it is compared with the current methods reported in recent research. © 2022 Raheel Zafar et al.

Item Type: Article
Additional Information: cited By 0
Uncontrolled Keywords: Brain; Brain computer interface; Feature Selection; Multivariant analysis; Statistics, Brain decoding; Cumulants; Feature extraction and selection; Human brain; Human cognition; Likelihood ratio tests; Mechanical; Process information; Statistical techniques; System process, Extraction, brain; brain computer interface; cognition; human; nuclear magnetic resonance imaging; procedures; statistical model, Brain; Brain-Computer Interfaces; Cognition; Humans; Likelihood Functions; Magnetic Resonance Imaging
Depositing User: Mr Ahmad Suhairi UTP
Date Deposited: 19 Dec 2023 03:23
Last Modified: 19 Dec 2023 03:23
URI: https://khub.utp.edu.my/scholars/id/eprint/17587

Actions (login required)

View Item
View Item