The estimation of time varying networks for functional magnetic resonance imaging data sets is of increasing importance and interest. We formulate the problem in a high dimensional time series framework and introduce a data‐driven method, namely network change points detection, which detects change points in the network structure of a multivariate time series, with each component of the time series represented by a node in the network. Network change points detection is applied to various simulated data and a resting state functional magnetic resonance imaging data set. This new methodology also allows us to identify common functional states within and across subjects. Finally, network change points detection promises to offer a deep insigh...
In many applications there are dynamic changes in the dependency structure between mul-tivariate tim...
This thesis gives an overview on how to estimate changes in functional brain networks using graph th...
We present a new approach to detecting functional networks in fMRI time series data. Functional netw...
Spectral clustering is a computationally feasible and model-free method widely used in the identific...
Recent understanding that the brain at rest does not remain in a single state but transiently visits...
Dynamic resting state functional connectivity (RSFC) characterizes fluctuations that occur over time...
Evidence of the non stationary behavior of functional connectivity (FC) networks has been observed i...
Evidence of networks in the resting-brain reflecting the spontaneous brain activity is perhaps the m...
We consider the challenges in estimating the state-related changes in brain connectivity networks wi...
Functionalmagnetic resonance imaging (fMRI) is now a well-established technique for studying the bra...
Functional connectivity provides an informative and powerful framework for exploring brain organizat...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
Approximately 20% of the body’s energy consumption is ongoingly consumed by the brain, where the mai...
AbstractMining dynamic and non-trivial patterns of interactions of functional brain networks has gai...
In many applications there are dynamic changes in the dependency structure between mul-tivariate tim...
This thesis gives an overview on how to estimate changes in functional brain networks using graph th...
We present a new approach to detecting functional networks in fMRI time series data. Functional netw...
Spectral clustering is a computationally feasible and model-free method widely used in the identific...
Recent understanding that the brain at rest does not remain in a single state but transiently visits...
Dynamic resting state functional connectivity (RSFC) characterizes fluctuations that occur over time...
Evidence of the non stationary behavior of functional connectivity (FC) networks has been observed i...
Evidence of networks in the resting-brain reflecting the spontaneous brain activity is perhaps the m...
We consider the challenges in estimating the state-related changes in brain connectivity networks wi...
Functionalmagnetic resonance imaging (fMRI) is now a well-established technique for studying the bra...
Functional connectivity provides an informative and powerful framework for exploring brain organizat...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
Approximately 20% of the body’s energy consumption is ongoingly consumed by the brain, where the mai...
AbstractMining dynamic and non-trivial patterns of interactions of functional brain networks has gai...
In many applications there are dynamic changes in the dependency structure between mul-tivariate tim...
This thesis gives an overview on how to estimate changes in functional brain networks using graph th...
We present a new approach to detecting functional networks in fMRI time series data. Functional netw...