Model weights for: Neurolit (FastSurfer-LIT) - Lesion inpainting tool for whole-brain MRI segmentation with tumors, cavities, and abnormalities

DOI

This record contains the model weights for our "neuroit" lesion inpainting tool.

Resection cavities, tumors, and other lesions can fundamentally alter brain structure and present as abnormalities in brain MRI. Specifically, quantifying subtle neuroanatomical changes in other, not directly affected regions of the brain is essential to assess the impact of tumors, surgery, chemo/radiotherapy, or drug treatments. However, only a limited number of solutions address this important task, while many standard analysis pipelines simply do not support abnormal brain images at all. In this paper, we present a method to perform sensitive neuroanatomical analysis of healthy brain regions in the presence of large lesions and cavities. Our approach called "FastSurfer Lesion Inpainting Tool" (FastSurfer-LIT) leverages the recently emerged Denoising Diffusion Probabilistic Models (DDPM) to fill lesion areas with healthy tissue that matches and extends the surrounding tissue. This enables subsequent processing with established MRI analysis methods such as the calculation of adjusted volume and surface measurements using FastSurfer or FreeSurfer. FastSurfer-LIT significantly outperforms previously proposed solutions on a large dataset of simulated brain tumors (N = 100) and synthetic multiple sclerosis lesions (N = 39) with improved Dice and Hausdorff measures, and also on a highly heterogeneous dataset with lesions and cavities in a manual assessment (N = 100). Finally, we demonstrate increased reliability to reproduce pre-operative cortical thickness estimates from corresponding post-operative temporo-mesial resection surgery MRIs. The method is publicly available at https://github.com/Deep-MI/LIT and will be integrated into the FastSurfer toolbox.

Identifier
DOI https://doi.org/10.34730/cc5ca5857a1e449f85297706ecfa8821
Source https://b2share.fz-juelich.de/records/cc5ca5857a1e449f85297706ecfa8821
Metadata Access https://b2share.fz-juelich.de/api/oai2d?verb=GetRecord&metadataPrefix=eudatcore&identifier=oai:b2share.fz-juelich.de:b2rec/cc5ca5857a1e449f85297706ecfa8821
Provenance
Creator Pollak, Clemens; Kügler, David; Bauer, Tobias; Rüber, Theodor; Reuter Martin
Publisher EUDAT B2SHARE
Publication Year 2026
Rights Apache License 2; info:eu-repo/semantics/openAccess
OpenAccess true
Representation
Format pt
Size 745.5 MB; 3 files
Discipline Other