eprintid: 18517 rev_number: 17 eprint_status: archive userid: 602 dir: disk0/00/01/85/17 datestamp: 2009-11-03 14:54:41 lastmod: 2015-07-19 03:07:03 status_changed: 2009-11-03 14:54:41 type: thesis metadata_visibility: show item_issues_count: 0 creators_name: Chen, C.-C. title: Imaging the spatial-temporal neuronal dynamics using dynamic causal modelling ispublished: unpub subjects: 26100 divisions: F83 abstract: Oscillatory brain activity is a ubiquitous feature of neuronal dynamics and the synchronous discharge of neurons is believed to facilitate integration both within functionally segregated brain areas and between areas engaged by the same task. There is growing interest in investigating the neural oscillatory networks in vivo. The aims of this thesis are to (1) develop an advanced method, Dynamic Causal Modelling for Induced Responses (DCM for IR), for modelling the brain network functions and (2) apply it to exploit the nonlinear coupling in the motor system during hand grips and the functional asymmetries during face perception. DCM for IR models the time-varying power over a range of frequencies of coupled electromagnetic sources. The model parameters encode coupling strength among areas and allows the differentiations between linear (within frequency) and nonlinear (between-frequency) coupling. I applied DCM for IR to show that, during hand grips, the nonlinear interactions among neuronal sources in motor system are essential while intrinsic coupling (within source) is very likely to be linear. Furthermore, the normal aging process alters both the network architecture and the frequency contents in the motor network. I then use the bilinear form of DCM for IR to model the experimental manipulations as the modulatory effects. I use MEG data to demonstrate functional asymmetries between forward and backward connections during face perception: Specifically, high (gamma) frequencies in higher cortical areas suppressed low (alpha) frequencies in lower areas. This finding provides direct evidence for functional asymmetries that is consistent with anatomical and physiological evidence from animal studies. Lastly, I generalize the bilinear form of DCM for IR to dissociate the induced responses from evoked ones in terms of their functional role. The backward modulatory effect is expressed as induced, but not evoked responses. date: 2009-09 vfaculties: VFBRS oa_status: green thesis_class: doctoral_open language: eng thesis_view: UCL_Thesis dart: DART-Europe primo: open primo_central: open_green full_text_status: public pages: 225 institution: UCL (University College London) department: Wellcome Department of Imaging Neuroscience thesis_type: Doctoral citation: Chen, C.-C.; (2009) Imaging the spatial-temporal neuronal dynamics using dynamic causal modelling. Doctoral thesis , UCL (University College London). Green open access document_url: https://discovery.ucl.ac.uk/id/eprint/18517/1/18517.pdf