| Literature DB >> 31163386 |
Matteo Mancini1, Sjoerd B Vos2, Vejay N Vakharia3, Aidan G O'Keeffe4, Karin Trimmel5, Frederik Barkhof6, Christian Dorfer7, Salil Soman8, Gavin P Winston9, Chengyuan Wu10, John S Duncan11, Rachel Sparks12, Sebastien Ourselin12.
Abstract
Diffusion MRI and tractography hold great potential for surgery planning, especially to preserve eloquent white matter during resections. However, fiber tract reconstruction requires an expert with detailed understanding of neuroanatomy. Several automated approaches have been proposed, using different strategies to reconstruct the white matter tracts in a supervised fashion. However, validation is often limited to comparison with manual delineation by overlap-based measures, which is limited in characterizing morphological and topological differences. In this work, we set up a fully automated pipeline based on anatomical criteria that does not require manual intervention, taking advantage of atlas-based criteria and advanced acquisition protocols available on clinical-grade MRI scanners. Then, we extensively validated it on epilepsy patients with specific focus on language-related bundles. The validation procedure encompasses different approaches, including simple overlap with manual segmentations from two experts, feasibility ratings from external multiple clinical raters and relation with task-based functional MRI. Overall, our results demonstrate good quantitative agreement between automated and manual segmentation, in most cases better performances of the proposed method in qualitative terms, and meaningful relationships with task-based fMRI. In addition, we observed significant differences between experts in terms of both manual segmentation and external ratings. These results offer important insights on how different levels of validation complement each other, supporting the idea that overlap-based measures, although quantitative, do not offer a full perspective on the similarities and differences between automated and manual methods.Entities:
Mesh:
Year: 2019 PMID: 31163386 PMCID: PMC6545442 DOI: 10.1016/j.nicl.2019.101883
Source DB: PubMed Journal: Neuroimage Clin ISSN: 2213-1582 Impact factor: 4.881
Fig. 1An overview of the pipeline used to automatically segment white matter fiber tracts: a fiber orientation distribution is reconstructed from DWI data using tissue segmentation from the T1-weighted data; then using the GIF parcellation and a list of inclusion and exclusion criteria, selected tracts are iterativelly reconstructed.
Fig. 2Fronto-lateral, posterio-lateral and superior views of the reconstructed tracts (red - AF; yellow - IFOF; green - ILF; orange - MLF; blue - UF) for a sample subject.
Fig. 3Fiber tracts (AF, IFOF, ILF, MLF, UF) from a sample subject generated by the proposed pipeline (AU) and the experts (H1, H2), with direction color-coding (blue: craniocaudal; red: right-to-left; green: anterior-to-posterior).
Fig. 4Barplot of the average overlap across subjects between automated and manual segmentations using the Cohen's kappa measure.
Fig. 5Summary chart of the ratings given to each expert (AU, H1, H2) in terms of connecting correct regions, morphology and presence of spurious streamlines. The represented score is given by the ratio between the number of positive ratings and the total number of ratings given.
Fig. 6Overlap between the automated segmentation of the fiber tracts and the streamlines obtained seeding the activated areas observed during the fMRI tasks.