Author/Authors :
Demertzi، نويسنده , , Athena and Gَmez، نويسنده , , Francisco and Crone، نويسنده , , Julia Sophia and Vanhaudenhuyse، نويسنده , , Audrey and Tshibanda، نويسنده , , Luaba and Noirhomme، نويسنده , , Quentin and Thonnard، نويسنده , , Marie and Charland-Verville، نويسنده , , Vanessa and Kirsch، نويسنده , , Murielle and Laureys، نويسنده , , Steven and Soddu، نويسنده , , Andrea، نويسنده ,
Abstract :
AbstractIntroduction
lthy conditions, group-level fMRI resting state analyses identify ten resting state networks (RSNs) of cognitive relevance. Here, we aim to assess the ten-network model in severely brain-injured patients suffering from disorders of consciousness and to identify those networks which will be most relevant to discriminate between patients and healthy subjects.
s
RI volumes were obtained in 27 healthy controls and 53 patients in minimally conscious state (MCS), vegetative state/unresponsive wakefulness syndrome (VS/UWS) and coma. Independent component analysis (ICA) reduced data dimensionality. The ten networks were identified by means of a multiple template-matching procedure and were tested on neuronality properties (neuronal vs non-neuronal) in a data-driven way. Univariate analyses detected between-group differences in networksʹ neuronal properties and estimated voxel-wise functional connectivity in the networks, which were significantly less identifiable in patients. A nearest-neighbor “clinical” classifier was used to determine the networks with high between-group discriminative accuracy.
s
y controls were characterized by more neuronal components compared to patients in VS/UWS and in coma. Compared to healthy controls, fewer patients in MCS and VS/UWS showed components of neuronal origin for the left executive control network, default mode network (DMN), auditory, and right executive control network. The “clinical” classifier indicated the DMN and auditory network with the highest accuracy (85.3%) in discriminating patients from healthy subjects.
sions
ultiple-network resting state connectivity is disrupted in severely brain-injured patients suffering from disorders of consciousness. When performing ICA, multiple-network testing and control for neuronal properties of the identified RSNs can advance fMRI system-level characterization. Automatic data-driven patient classification is the first step towards future single-subject objective diagnostics based on fMRI resting state acquisitions.
Keywords :
Coma , Resting state , Independent Component Analysis , Machine Learning , FMRI