| Literature DB >> 28955197 |
Yuan Yang1,2, Bekir Guliyev1, Alfred C Schouten1,3.
Abstract
Mechanical perturbations applied to the wrist joint typically evoke a stereotypical sequence of cortical and muscle responses. The early cortical responses (<100 ms) are thought be involved in the "rapid" transcortical reaction to the perturbation while the late cortical responses (>100 ms) are related to the "slow" transcortical reaction. Although previous studies indicated that both responses involve the primary motor cortex, it remains unclear if both responses are engaged by the same effective connectivity in the cortical network. To answer this question, we investigated the effective connectivity cortical network after a "ramp-and-hold" mechanical perturbation, in both the early (<100 ms) and late (>100 ms) periods, using dynamic causal modeling. Ramp-and-hold perturbations were applied to the wrist joint while the subject maintained an isometric wrist flexion. Cortical activity was recorded using a 128-channel electroencephalogram (EEG). We investigated how the perturbation modulated the effective connectivity for the early and late periods. Bayesian model comparisons suggested that different effective connectivity networks are engaged in these two periods. For the early period, we found that only a few cortico-cortical connections were modulated, while more complicated connectivity was identified in the cortical network during the late period with multiple modulated cortico-cortical connections. The limited early cortical network likely allows for a rapid muscle response without involving high-level cognitive processes, while the complexity of the late network may facilitate coordinated responses.Entities:
Keywords: EEG; dynamic causal modeling; effective connectivity; sensorimotor network; sensory feedback; stretch response
Year: 2017 PMID: 28955197 PMCID: PMC5601387 DOI: 10.3389/fnins.2017.00518
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
MNI coordinates (mm) of eight sources in the cortical sensorimotor network: left (L) and right (R) primary somatosensory cortex (S1), left and right primary motor cortex (M1), left and right bilateral premotor cortex (PM), and supplementary motor area (SMA), posterior parietal cortex (PPC).
| S1 L | −26 −40 68 |
| S1 R | 26 −40 68 |
| M1 L | −33 −28 70 |
| M1 R | 33 −28 70 |
| PM L | −54 −2 46 |
| PM R | 54 −2 46 |
| SMA | −4 −10 64 |
| PPC | −4 −46 68 |
Figure 1Eight selected cortical regions: left and right primary somatosensory cortex (S1), left and right primary motor cortex (M1), left and right bilateral premotor cortex (PM), and supplementary motor area (SMA), posterior parietal cortex (PPC).
Figure 2Six biologically plausible models for perturbation-modulated network. All of the models, the left S1 (marked in red) is the source receiving the external input (stretch of the flexor muscles of the right wrist). Model spaces are created using two attributes: partially (P) vs. fully (F) modulated by the stimulus, and left lateralized (L) vs. symmetric (S).
Figure 3Results of Bayesian model selection. Comparison of the pooled log-evidences of the six models indicates: (A) Model 5 is the best model (log-evidence = −7,600) for the period of 20–100 ms and (B) Model 6 is the best model (log-evidence = −1,440) for the period of 100–350 ms.
Figure 4Modulatory effects of wrist muscle stretch on effective connectivity in the best model for (A) the period 20–100 ms post-perturbation and (B) the period of 100–350 ms post-perturbation. The significantly modulated effective connectivity and associated brain areas are highlighted in bold. The increased connectivity is indicated in blue, while the reduced connectivity is given in red. We also provide percentages of coupling change and p-value (in parentheses) for all the significantly modulated connectivity. The S1 (marked in red circle) is the source receiving the external input (stretch of right wrist).