AbstractThis proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum disorders by generative embedding, using dynamical system models which infer neuronal circuit mechanisms from neuroimaging data. To this end, we re-analysed an fMRI dataset of 41 patients diagnosed with schizophrenia and 42 healthy controls performing a numerical n-back working-memory task. In our generative-embedding approach, we used parameter estimates from a dynamic causal model (DCM) of a visual–parietal–prefrontal network to define a model-based feature space for the subsequent application of supervised and unsupervised learning techniques. First, using a linear support vector machine for classification, we were able to predict i...
Neuroimaging increasingly exploits machine learning techniques in an attempt to achieve clinically r...
AbstractNeuroimaging increasingly exploits machine learning techniques in an attempt to achieve clin...
Abstract—We propose a novel approach to identify the foci of a neurological disorder based on anatom...
This proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum d...
AbstractThis proof-of-concept study examines the feasibility of defining subgroups in psychiatric sp...
Despite the success of modern neuroimaging techniques in furthering our understanding of cognitive a...
Background Generative models of neuroimaging data, such as dynamic causal models (DCMs), are commonl...
Schizophrenia is a serious and chronic mental disorder, which brings not only suffering to patients,...
Functional neuroimaging has made fundamental contributions to our understanding of brain function. I...
Accurate diagnosis of psychiatric disorders plays a critical role in improving the quality of life f...
The studies in this thesis used machine learning to explore brain abnormalities and genetic variatio...
Schizophrenia is a severe mental disorder characterized by numerous subtle changes in brain structur...
Neuroimaging increasingly exploits machine learning techniques in an attempt to achieve clinically r...
AbstractNeuroimaging increasingly exploits machine learning techniques in an attempt to achieve clin...
Abstract—We propose a novel approach to identify the foci of a neurological disorder based on anatom...
This proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum d...
AbstractThis proof-of-concept study examines the feasibility of defining subgroups in psychiatric sp...
Despite the success of modern neuroimaging techniques in furthering our understanding of cognitive a...
Background Generative models of neuroimaging data, such as dynamic causal models (DCMs), are commonl...
Schizophrenia is a serious and chronic mental disorder, which brings not only suffering to patients,...
Functional neuroimaging has made fundamental contributions to our understanding of brain function. I...
Accurate diagnosis of psychiatric disorders plays a critical role in improving the quality of life f...
The studies in this thesis used machine learning to explore brain abnormalities and genetic variatio...
Schizophrenia is a severe mental disorder characterized by numerous subtle changes in brain structur...
Neuroimaging increasingly exploits machine learning techniques in an attempt to achieve clinically r...
AbstractNeuroimaging increasingly exploits machine learning techniques in an attempt to achieve clin...
Abstract—We propose a novel approach to identify the foci of a neurological disorder based on anatom...