Connectivity of neural signals to the primary motor area during preparatory periods for movement following external and internal cues.

Somatosens Mot Res

Department of Integrative Health Sciences, School of Health Sciences, Faculty of Medicine, Nagoya University, Nagoya, Japan.

Published: February 2024

AI Article Synopsis

  • The study examined how neural signals connect from movement-related areas to the primary motor area (M1) before movement.
  • Participants performed wrist extensions with different types of cues, and neural activity was recorded to analyze connectivity.
  • Results showed that connectivity patterns differed depending on whether participants received internal or external cues, indicating that pre-movement brain activity varies based on the type of task.

Article Abstract

Purpose: We investigated the connectivity of neural signals from movement-related cortical areas to the primary motor area (M1) in the hemisphere contralateral to the movement side during the period of movement-related magnetic fields before movement.

Materials And Methods: Participants were 13 healthy adults, and nerual signals were recorded using magnetoencephalography. Spontaneous extension of the right wrist was performed at the participant's own pace and following a visual cue in internal (IC) and external (EC) cue tasks. The connectivity of neural signals to M1 from each movement-related motor area was assessed by Granger causality analysis (GCA). The GCA was performed on the neural activity elicited in a frequency band between 7.8 and 46.9 Hz during the pre-movement periods, which occurred durng the readiness field (RF) and the negative slope prime (NSp). F-values, as connectivity values obtained by GCA, were compared between the EC and IC cue tasks.

Results: For NSp periods, the connectivity of neural signals from the left superior frontal area (SF-L) to M1 was dominant in the IC task, whereas that from the left superior parietal area (SP-L) to M1 was dominant in the EC task. The F value in the GCA from SP-L to M1 was greater in the EC task during RF than in the IC task during equivalent periods.

Conslusions: In the present study, there were differences in the connectivity of neural signals to M1 between IC and EC tasks. The present results suggested that the pattern of pre-movement neural activity that resulted in a movement was not uniform but differed between movement tasks just before the movement.

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Source
http://dx.doi.org/10.1080/08990220.2024.2319592DOI Listing

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