Academic Thesis

Basic information

Name OKUYAMA Kohei
Belonging department
Occupation name
researchmap researcher code R000040548
researchmap agency Bukkyo University

Title

Neural Oscillatory Mechanisms Underlying Step Accuracy: Integrating Microstate Segmentation with eLORETA-Independent Component Analysis

Bibliography Type

Joint Author

Author

Kohei Okuyama
Kota Maeda
Ryosuke Yamauchi
Daichi Harada
Takayuki Kodama

OwnerRoles

Summary

Abstract: Background/Objectives<!--[if !supportAnnotations]-->: Precise stepping control is fundamental to human mobility, and impairments increase fall risk in older adults and individuals with neurological conditions. This study investigated the cortical networks underlying stepping accuracy using mobile brain/body imaging with electroencephalography (EEG)-based exact low-resolution electromagnetic tomography-independent component analysis (eLORETA-ICA) and microstate segmentation analysis (MSA). Methods: Sixteen healthy male participants performed a precision stepping task while wearing a mobile EEG system. Step performance was quantified using error distance, measuring deviation between target and heel contact points. Preprocessed EEG data were analyzed using eLORETA-ICA and MSA, with participants categorized into high- and low-performing groups. Results: Seven microstate clusters were identified, with the anterior cingulate cortex (ACC) showing the highest microstate probability (21.15%). The high-performing group exhibited amplified theta-band activity in the ACC, enhanced activity in the precuneus and postcentral gyrus, and suppressed mu- and beta-band activity in the paracentral lobules. Conclusions: Stepping accuracy relies on a distributed neural network, with the ACC playing a central role in performance monitoring. We propose an integrated framework comprising the following systems: error monitoring (ACC), sensorimotor integration (paracentral lobules), and visuospatial processing (precuneus and occipital regions). These findings highlight the importance of neural oscillatory mechanisms in precise motor control and offer insights for rehabilitation strategies and fall prevention programs. <!--[if !supportAnnotations]--> 

Magazine(name)

Brain Sciences

Publisher

MDPI

Volume

15

Number Of Pages

4

StartingPage

356

EndingPage

Date of Issue

2025/03/29

Referee

Exist

Invited

Not exist

Language

English

Thesis Type

Research papers (academic journals)

International Journal

International

International Collaboration

Not International Collabolation

ISSN

eISSN

ISBN

DOI

https://doi.org/10.3390/brainsci15040356

NAID

Cinii Books Id

PMID

40309852

PMCID

PMC12026195

Format

Url

Download

Downloadable

J-GLOBAL ID

arXiv ID

ORCID Put Code

DBLP ID

Categories

Author

Major Achivement

Main Achievement