نتایج جستجو برای: functional connectivity classification

تعداد نتایج: 1101013  

Journal: :NeuroImage: Clinical 2015
Stavros I. Dimitriadis George Zouridakis Roozbeh Rezaie Abbas Babajani-Feremi Andrew C. Papanicolaou

Mild traumatic brain injury (mTBI) may affect normal cognition and behavior by disrupting the functional connectivity networks that mediate efficient communication among brain regions. In this study, we analyzed brain connectivity profiles from resting state Magnetoencephalographic (MEG) recordings obtained from 31 mTBI patients and 55 normal controls. We used phase-locking value estimates to c...

2012
Hui Wang Chen Chen Hsieh Fushing

We employed a multi-scale clustering methodology known as "data cloud geometry" to extract functional connectivity patterns derived from functional magnetic resonance imaging (fMRI) protocol. The method was applied to correlation matrices of 106 regions of interest (ROIs) in 29 individuals with autism spectrum disorders (ASD), and 29 individuals with typical development (TD) while they complete...

2016
Jun-feng Gao Yong Yang Wen-tao Huang Pan Lin Sheng Ge Hong-mei Zheng Ling-yun Gu Hui Zhou Chen-hong Li Ni-ni Rao

To better characterize the cognitive processes and mechanisms that are associated with deception, wavelet coherence was employed to evaluate functional connectivity between different brain regions. Two groups of subjects were evaluated for this purpose: 32 participants were required to either tell the truth or to lie when facing certain stimuli, and their electroencephalogram signals on 12 elec...

2010
Gopikrishna Deshpande Zhihao Li Priya Santhanam Claire D. Coles Mary Ellen Lynch Stephan Hamann Xiaoping Hu

BACKGROUND Brain state classification has been accomplished using features such as voxel intensities, derived from functional magnetic resonance imaging (fMRI) data, as inputs to efficient classifiers such as support vector machines (SVM) and is based on the spatial localization model of brain function. With the advent of the connectionist model of brain function, features from brain networks m...

2017
Bumhee Park Jinseok Eo Hae-Jeong Park

The idea that structural white matter connectivity constrains functional connectivity (interactions among brain regions) has widely been explored in studies of brain networks; studies have mostly focused on the "average" strength of functional connectivity. The question of how structural connectivity constrains the "variability" of functional connectivity remains unresolved. In this study, we i...

2017
Regina J. Meszlényi Petra Hermann Krisztian Buza Viktor Gál Zoltán Vidnyánszky

Traditional resting-state network concept is based on calculating linear dependence of spontaneous low frequency fluctuations of the BOLD signals of different brain areas, which assumes temporally stable zero-lag synchrony across regions. However, growing amount of experimental findings suggest that functional connectivity exhibits dynamic changes and a complex time-lag structure, which cannot ...

Journal: :Cephalalgia : an international journal of headache 2017
Catherine D Chong Nathan Gaw Yinlin Fu Jing Li Teresa Wu Todd J Schwedt

Background This study used machine-learning techniques to develop discriminative brain-connectivity biomarkers from resting-state functional magnetic resonance neuroimaging ( rs-fMRI) data that distinguish between individual migraine patients and healthy controls. Methods This study included 58 migraine patients (mean age = 36.3 years; SD = 11.5) and 50 healthy controls (mean age = 35.9 years; ...

Introduction: Long-term stressful situations can drastically influence one’s mental life. However, the effect of mental stress on recognition of emotional stimuli needs to be explored. In this study, recognition of emotional stimuli in a stressful situation was investigated. Four emotional conditions, including positive and negative states in both low and high levels of arousal were analy...

Journal: :NeuroImage 2014
Paramveer S. Dhillon David A. Wolk Sandhitsu R. Das Lyle H. Ungar James C. Gee Brian B. Avants

We present a new framework for prior-constrained sparse decomposition of matrices derived from the neuroimaging data and apply this method to functional network analysis of a clinically relevant population. Matrix decomposition methods are powerful dimensionality reduction tools that have found widespread use in neuroimaging. However, the unconstrained nature of these totally data-driven techni...

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