Ahrends, C., Vidaurre, D. (2023) Predicting individual traits from models of brain dynamics accurately and reliably using the Fisher kernel. bioRxiv:530638.
Beauchamp MS (2015) The social mysteries of the superior temporal sulcus. Trends Cogn Sci 19:489–490
Article PubMed PubMed Central Google Scholar
Bencivenga F, Sulpizio V, Tullo MG, Galati G (2021) Assessing the effective connectivity of premotor areas during real vs imagined grasping: a DCM-PEB approach. Neuroimage 230:117806
Bishop CM, Nasrabadi NM (2006) Pattern recognition and machine learning. Springer
Burianová H, Marstaller L, Sowman P, Tesan G, Rich AN, Williams M, Savage G, Johnson BW (2013) Multimodal functional imaging of motor imagery using a novel paradigm. Neuroimage 71:50–58
Capotosto P, Tosoni A, Spadone S, Sestieri C, Perrucci MG, Romani GL, Della Penna S, Corbetta M (2013) Anatomical segregation of visual selection mechanisms in human parietal cortex. J Neurosci 33:6225–6229
Article CAS PubMed PubMed Central Google Scholar
Cho H, Ahn M, Ahn S, Kwon M, Jun SC (2017) EEG datasets for motor imagery brain–computer interface. GigaScience 6:gix034
Confalonieri L, Pagnoni G, Barsalou LW, Rajendra J, Eickhoff SB, Butler AJ. (2012) Brain activation in primary motor and somatosensory cortices during motor imagery correlates with motor imagery ability in stroke patients. International Scholarly Research Notices, 2012
Daeglau M, Zich C, Emkes R, Welzel J, Debener S, Kranczioch C (2020) Investigating priming effects of physical practice on motor imagery-induced event-related desynchronization. Front Psychol 11:57
Article PubMed PubMed Central Google Scholar
Decety J (1996) The neurophysiological basis of motor imagery. Behav Brain Res 77:45–52
Article CAS PubMed Google Scholar
Duc NT, Lee B (2020) Decoding brain dynamics in speech perception based on EEG microstates decomposed by multivariate Gaussian hidden Markov model. IEEE Access 8:146770–146784
Eichenbaum H (2017) Prefrontal–hippocampal interactions in episodic memory. Nat Rev Neurosci 18:547–558
Article CAS PubMed Google Scholar
Fadel W, Wahdow M, Kollod C, Marton G, Ulbert I (2020) Chessboard EEG images classification for BCI systems using deep neural network. Bio-inspired Information and Communication Technologies. In: 12th EAI International Conference,97–104
Fallgatter AJ, Mueller TJ, Strik WK (1997) Neurophysiological correlates of mental imagery in different sensory modalities. Int J Psychophysiol 25:145–153
Article CAS PubMed Google Scholar
Gao Q, Duan X, Chen H (2011) Evaluation of effective connectivity of motor areas during motor imagery and execution using conditional Granger causality. Neuroimage 54:1280–1288
Gao X, Wang Y, Chen X, Gao S (2021) Interface, interaction, and intelligence in generalized brain–computer interfaces. Trends Cogn Sci 25:671–684
Goldberger AL, Amaral LA, Glass L, Hausdorff JM, Ivanov PC, Mark RG, Mietus JE, Moody GB, Peng C-K, Stanley HE (2000) PhysioBank, physiotoolkit, and physionet: components of a new research resource for complex physiologic signals. Circulation 101:e215–e220
Article CAS PubMed Google Scholar
Guillot A, Di Rienzo F, Collet C (2014) The neurofunctional architecture of motor imagery. Advanced brain neuroimaging topics in health and disease-methods and applications, 433–456
Hétu S, Grégoire M, Saimpont A, Coll M-P, Eugène F, Michon P-E, Jackson PL (2013) The neural network of motor imagery: an ALE meta-analysis. Neurosci Biobehav Rev 37:930–949
Hindriks R, Adhikari MH, Murayama Y, Ganzetti M, Mantini D, Logothetis NK, Deco G (2016) Can sliding-window correlations reveal dynamic functional connectivity in resting-state fMRI? Neuroimage 127:242–256
Article CAS PubMed Google Scholar
Hunyadi B, Woolrich MW, Quinn AJ, Vidaurre D, De Vos M (2019) A dynamic system of brain networks revealed by fast transient EEG fluctuations and their fMRI correlates. Neuroimage 185:72–82
Article CAS PubMed Google Scholar
Javaheripour N, Colic L, Opel N, Li M, Maleki Balajoo S, Chand T, Van der Meer J, Krylova M, Izyurov I, Meller T, Goltermann J, Winter NR, Meinert S, Grotegerd D, Jansen A, Alexander N, Usemann P, Thomas-Odenthal F, Evermann U, Wroblewski A, Brosch K, Stein F, Hahn T, Straube B, Krug A, Nenadić I, Kircher T, Croy I, Dannlowski U, Wagner G, Walter M (2023) Altered brain dynamic in major depressive disorder: state and trait features. Transl Psychiatry 13:261
Article CAS PubMed PubMed Central Google Scholar
Kang J-H, Jo YC, Kim S-P (2018) Electroencephalographic feature evaluation for improving personal authentication performance. Neurocomputing 287:93–101
Kang J-H, Youn J, Kim S-H, Kim J (2021) Effects of frontal theta rhythms in a prior resting state on the subsequent motor imagery brain-computer interface performance. Front Neurosci 15:663101
Article PubMed PubMed Central Google Scholar
Khademi Z, Ebrahimi F, Kordy HM (2023) A review of critical challenges in MI-BCI: from conventional to deep learning methods. J Neurosci Methods 383:109736
Khan MA, Das R, Iversen HK, Puthusserypady S (2020) Review on motor imagery based BCI systems for upper limb post-stroke neurorehabilitation: From designing to application. Comput Biol Med 123:103843
Kiernan J (2012) Anatomy of the temporal lobe. Epilepsy research and treatment, 2012.
Kohli V, Tripathi U, Chamola V, Rout BK, Kanhere SS (2022) A review on virtual reality and augmented reality use-cases of brain computer interface based applications for smart cities. Microprocess Microsyst 88:104392
Lebon F, Horn U, Domin M, Lotze M (2018) Motor imagery training: kinesthetic imagery strategy and inferior parietal fMRI activation. Hum Brain Mapp 39:1805–1813
Article PubMed PubMed Central Google Scholar
Lember J, Gasbarra D, Koloydenko A, Kuljus K (2019) Estimation of viterbi path in bayesian hidden Markov models. Metron 77:137–169
Li Y, Lei MY, Guo Y, Hu Z, Wei HL (2018) Time-varying nonlinear causality detection using regularized orthogonal least squares and multi-wavelets with applications to EEG. IEEE Access 6:17826–17840
Li F, Yi C, Song L, Jiang Y, Peng W, Si Y, Zhang T, Zhang R, Yao D, Zhang Y (2019) Brain network reconfiguration during motor imagery revealed by a large-scale network analysis of scalp EEG. Brain Topogr 32:304–314
Li P, Li C, Bore JC, Si Y, Li F, Cao Z, Zhang Y, Wang G, Zhang Z, Yao D, Xu P (2022) L1-norm based time-varying brain neural network and its application to dynamic analysis for motor imagery. J Neural Eng 19:026019
Lin P, Zang S, Bai Y, Wang H (2022) Reconfiguration of brain network dynamics in autism spectrum disorder based on hidden markov model. Front Hum Neurosci 16:774921
Article PubMed PubMed Central Google Scholar
Liu K, Lai Q, Li P, Yu Z, Xiao B, Guan C, Wu W (2022) Robust bayesian estimation of eeg-based brain causality networks. In: IEEE transactions on biomedical engineering
Madan CR, Singhal A (2012) Motor imagery and higher-level cognition: four hurdles before research can sprint forward. Cogn Process 13:211–229
Maruff P, Wilson PH, Fazio JD, Cerritelli B, Hedt A, Currie J (1999) Asymmetries between dominant and non-dominanthands in real and imagined motor task performance. Neuropsychologia 37:379–384
Article CAS PubMed Google Scholar
Maya-Piedrahita MC, Herrera-Gomez PM, Berrío-Mesa L, Cárdenas-Peña DA, Orozco-Gutierrez AA (2022) Supported diagnosis of attention deficit and hyperactivity disorder from EEG based on interpretable kernels for hidden Markov models. Int J Neural Syst 32:2250008
Article CAS PubMed Google Scholar
Milton J, Small SL, Solodkin A (2008) Imaging motor imagery: methodological issues related to expertise. Methods 45:336–341
Article CAS PubMed PubMed Central Google Scholar
Mulder T, Zijlstra S, Zijlstra W, Hochstenbach J (2004) The role of motor imagery in learning a totally novel movement. Exp Brain Res 154:211–217
Munzert J, Lorey B, Zentgraf K (2009) Cognitive motor processes: the role of motor imagery in the study of motor representations. Brain Res Rev 60:306–326
Neuper, C., Pfurtscheller, G., Guillot, A., Collet, C. (2010) Electroencephalographic characteristics during motor imagery. The Neurophysiol Found Ment Mot Imag, 65–81
Nolde SF, Johnson MK, Raye CL (1998) The role of prefrontal cortex during tests of episodic memory. Trends Cogn Sci 2:399–406
Article CAS PubMed Google Scholar
Ogawa T, Shimobayashi H, Hirayama J-I, Kawanabe M (2022) Asymmetric directed functional connectivity within the frontoparietal motor network during motor imagery and execution. Neuroimage 247:118794
Olsson CJ, Nyberg L (2010) Motor imagery: if you can’t do it, you won’t think it. Scand J Med Sci Sports 20:711–715
Parbat D, Chakraborty M (2021) A novel methodology to study the cognitive load induced EEG complexity changes: chaos, fractal and entropy based approach. Biomed Signal Process Control 64:102277
留言 (0)