FastSurferVINN

DOI

Training checkpoints for FastSurferVINN (https://github.com/Deep-MI/FastSurfer) - please cite the paper when using this resource (https://doi.org/10.1016/j.neuroimage.2022.118933).

Leading neuroimaging studies have pushed 3T MRI acquisition resolutions below 1.0 mm for improved structure definition and morphometry. Yet, only few, time-intensive automated image analysis pipelines have been validated for high-resolution (HiRes) settings. Efficient deep learning approaches, on the other hand, rarely support more than one fixed resolution (usually 1.0 mm). Furthermore, the lack of a standard submillimeter resolution as well as limited availability of diverse HiRes data with sufficient coverage of scanner, age, diseases, or genetic variance poses additional, unsolved challenges for training HiRes networks. Incorporating resolution-independence into deep learning-based segmentation, i.e., the ability to segment images at their native resolution across a range of different voxel sizes, promises to overcome these challenges, yet no such approach currently exists. We now fill this gap by introducing a Voxel-size Independent Neural Network (VINN) for resolution-independent segmentation tasks and present FastSurferVINN, which (i) establishes and implements resolution-independence for deep learning as the first method simultaneously supporting 0.7–1.0 mm whole brain segmentation, (ii) significantly outperforms state-of-the-art methods across resolutions, and (iii) mitigates the data imbalance problem present in HiRes datasets. Overall, internal resolution-independence mutually benefits both HiRes and 1.0 mm MRI segmentation. With our rigorously validated FastSurferVINN we distribute a rapid tool for morphometric neuroimage analysis. The VINN architecture, furthermore, represents an efficient resolution-independent segmentation method for wider application.

Identifier
DOI https://doi.org/10.34730/e4b32f61be1d4888963771642711d559
Source https://b2share.fz-juelich.de/records/e4b32f61be1d4888963771642711d559
Related Identifier https://doi.org/10.1016/j.neuroimage.2022.118933
Metadata Access https://b2share.fz-juelich.de/api/oai2d?verb=GetRecord&metadataPrefix=eudatcore&identifier=oai:b2share.fz-juelich.de:b2rec/e4b32f61be1d4888963771642711d559
Provenance
Creator Leonie Henschel
Publisher EUDAT B2SHARE
Publication Year 2022
Rights Apache License 2; info:eu-repo/semantics/openAccess
OpenAccess true
Contact leonie.henschel(at)dzne.de
Representation
Format pkl
Size 67.2 MB; 3 files
Discipline 4.1.17 → Computer sciences → Artificial intelligence; 3.1.27 → Biology → Neuroscience