A tractogram is a virtual representation of the brain white matter. It is composed of millions of virtual fibers, encoded as 3D polylines, which approximate the white matter axonal pathways. To date, tractograms are the most accurate white matter representation and thus are used for tasks like presurgical planning and investigations of neuroplasticity, brain disorders, or brain networks. However, it is a well-known issue that a large portion of tractogram fibers is not anatomically plausible and can be considered artifacts of the tracking procedure. With Verifyber, we tackle the problem of filtering out such non-plausible fibers using a novel fullysupervised learning approach. Differently from other approaches based on signal reconstruction...
In this work, we explore the various Brain Neuron tracking techniques, one of the most significant a...
Tractography is the only non-invasive technique which is used to reconstruct the white mat- ter stru...
International audienceDeep learning-based convolutional neural networks have recently proved their e...
A tractogram is a virtual representation of the brain white matter. It is composed of millions of vi...
Tractograms are virtual representations of the white matter fibers of the brain. They are of primary...
Accepted at MICCAI2020Tractograms are virtual representations of the white matter fibers of the brai...
Preprint. Paper under reviewCurrent brain white matter fiber tracking techniques show a number of pr...
We propose a novel and efficient algorithm to model high-level topological structures of neuronal fi...
International audienceCurrent brain white matter fiber tracking techniques show a number of problems...
The reconstruction of white matter fiber bundles using non-invasive diffusion-weighted magnetic reso...
Quantitative analysis of white matter fiber tracts from diffusion Magnetic Resonance Imaging (dMRI) ...
Abstract. Diffusion tensor imaging allows for the non-invasive in vivo mapping of the brain tractogr...
Tractography has become an indispensable part of brain connectivity studies. However, it is currentl...
We show that deep learning techniques can be applied successfully to fiber tractography. Specificall...
Tractography data (fibers) obtained from diffusion MRI present several challenges.In this thesis, we...
In this work, we explore the various Brain Neuron tracking techniques, one of the most significant a...
Tractography is the only non-invasive technique which is used to reconstruct the white mat- ter stru...
International audienceDeep learning-based convolutional neural networks have recently proved their e...
A tractogram is a virtual representation of the brain white matter. It is composed of millions of vi...
Tractograms are virtual representations of the white matter fibers of the brain. They are of primary...
Accepted at MICCAI2020Tractograms are virtual representations of the white matter fibers of the brai...
Preprint. Paper under reviewCurrent brain white matter fiber tracking techniques show a number of pr...
We propose a novel and efficient algorithm to model high-level topological structures of neuronal fi...
International audienceCurrent brain white matter fiber tracking techniques show a number of problems...
The reconstruction of white matter fiber bundles using non-invasive diffusion-weighted magnetic reso...
Quantitative analysis of white matter fiber tracts from diffusion Magnetic Resonance Imaging (dMRI) ...
Abstract. Diffusion tensor imaging allows for the non-invasive in vivo mapping of the brain tractogr...
Tractography has become an indispensable part of brain connectivity studies. However, it is currentl...
We show that deep learning techniques can be applied successfully to fiber tractography. Specificall...
Tractography data (fibers) obtained from diffusion MRI present several challenges.In this thesis, we...
In this work, we explore the various Brain Neuron tracking techniques, one of the most significant a...
Tractography is the only non-invasive technique which is used to reconstruct the white mat- ter stru...
International audienceDeep learning-based convolutional neural networks have recently proved their e...