Cognizance detection during mental arithmetic task using statistical approach

被引:2
作者
Karnan, Hemalatha [1 ]
Maheswari, D. Uma [2 ]
Priyadharshini, D. [1 ]
Laushya, S. [1 ]
Thivyaprakas, T. K. [1 ]
机构
[1] SASTRA Deemed Univ, Sch Chem & Biotechnol, Dept Bioengn, Thanjavur, Tamilnadu, India
[2] SASTRA Deemed Univ, Sch Comp, Dept Comp Sci, Thanjavur, Tamilnadu, India
关键词
EEG; correlation; kernel; SVM; patterns; R-studio; COGNITIVE NEUROSCIENCE; EEG SIGNALS;
D O I
10.1080/10255842.2023.2298362
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The handheld diagnosis and analysis are highly dependent on the physiological data in the clinical sector. Detection of the defect in the neuronal-assisted activity raises the challenge to the prevailing treatment that benefits from machine learning approaches. The congregated EEG data is then utilized in design of learning applications to develop a model that classifies intricate EEG patterns into active and inactive segments. During arithmetic problem-solving EEG signal acquired from frontal lobe contributes for intelligence detection. The low intricate statistical parameters help in understanding the objective. The mean of the segmented samples and standard deviation are the features extracted for model building. The feature selection is handled using correlation and Fisher score between {Fp1 and F8} and priority ranking of the regions with enhanced activity are selected for the classifier models to the training net. The R-studio platform is used to classify the data based on active and inactive liability. The radial basis function kernel for support vector machine (SVM) is deployed to substantiate the proposed methodology. The vulnerable regions F1 and F8 for arithmetic activity can be visualized from the correlation fit performed between regions. Using SVM classifier sensitivity of 92.5% is obtained for the selected features. A wide range of clinical problems can be diagnosed using this model and used for brain-computer interface.
引用
收藏
页码:558 / 571
页数:14
相关论文
共 27 条
[11]   PhysioBank, PhysioToolkit, and PhysioNet - Components of a new research resource for complex physiologic signals [J].
Goldberger, AL ;
Amaral, LAN ;
Glass, L ;
Hausdorff, JM ;
Ivanov, PC ;
Mark, RG ;
Mietus, JE ;
Moody, GB ;
Peng, CK ;
Stanley, HE .
CIRCULATION, 2000, 101 (23) :E215-E220
[12]  
Khandpur R.S., 2014, Handbook of biomedical instrumentation
[13]   Analysis of Electroencephalography (EEG) Signals and Its Categorization - A Study [J].
Kumar, J. Satheesh ;
Bhuvaneswari, P. .
INTERNATIONAL CONFERENCE ON MODELLING OPTIMIZATION AND COMPUTING, 2012, 38 :2525-2536
[14]  
Looi C., 2016, OECD ED WORKING PAPE
[15]   A Modified Multivariable Complexity Measure Algorithm and Its Application for Identifying Mental Arithmetic Task [J].
Ma, Dizhen ;
He, Shaobo ;
Sun, Kehui .
ENTROPY, 2021, 23 (08)
[16]   Classification of Brain Activity Patterns Using Machine Learning Based on EEG Data [J].
Murtazina, Marina S. ;
Avdeenko, Tatiana, V .
2020 1ST INTERNATIONAL CONFERENCE PROBLEMS OF INFORMATICS, ELECTRONICS, AND RADIO ENGINEERING (PIERE), 2020, :219-224
[17]   Arithmetic in the developing brain: A review of brain imaging studies [J].
Peters, Lien ;
De Smedt, Bert .
DEVELOPMENTAL COGNITIVE NEUROSCIENCE, 2018, 30 :265-279
[18]   Adaptive transfer learning-based multiscale feature fused deep convolutional neural network for EEG MI multiclassification in brain-computer interface [J].
Roy, Arunabha M. .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2022, 116
[19]   An efficient multi-scale CNN model with intrinsic feature integration for motor imagery EEG subject classification in brain-machine interfaces [J].
Roy, Arunabha M. .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2022, 74
[20]  
RStudio Team, 2020, RStudio: Integrated Development for R