Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information
Abstract Background Diffusion MRI is the preferred non-invasive in vivo modality for the study of brain white matter connections. Tractography datasets contain 3D streamlines that can be analyzed to study the main brain white matter tracts. Fiber clustering methods have been used to automatically gr...
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doaj-bfe47e77fd9f4f0bba2e5b9718a627532020-11-25T03:53:50ZengBMCBioMedical Engineering OnLine1475-925X2020-06-0119112410.1186/s12938-020-00786-zAutomatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface informationAndrea Vázquez0Narciso López-López1Josselin Houenou2Cyril Poupon3Jean-François Mangin4Susana Ladra5Pamela Guevara6Faculty of Engineering, Universidad de ConcepciónFaculty of Engineering, Universidad de ConcepciónNeuroSpin, CEA, Paris-Saclay UniversityNeuroSpin, CEA, Paris-Saclay UniversityNeuroSpin, CEA, Paris-Saclay UniversityCentro de investigación CITIC, Universidade da CoruñaFaculty of Engineering, Universidad de ConcepciónAbstract Background Diffusion MRI is the preferred non-invasive in vivo modality for the study of brain white matter connections. Tractography datasets contain 3D streamlines that can be analyzed to study the main brain white matter tracts. Fiber clustering methods have been used to automatically group similar fibers into clusters. However, due to inter-subject variability and artifacts, the resulting clusters are difficult to process for finding common connections across subjects, specially for superficial white matter. Methods We present an automatic method for labeling of short association bundles on a group of subjects. The method is based on an intra-subject fiber clustering that generates compact fiber clusters. Posteriorly, the clusters are labeled based on the cortical connectivity of the fibers, taking as reference the Desikan–Killiany atlas, and named according to their relative position along one axis. Finally, two different strategies were applied and compared for the labeling of inter-subject bundles: a matching with the Hungarian algorithm, and a well-known fiber clustering algorithm, called QuickBundles. Results Individual labeling was executed over four subjects, with an execution time of 3.6 min. An inspection of individual labeling based on a distance measure showed good correspondence among the four tested subjects. Two inter-subject labeling were successfully implemented and applied to 20 subjects and compared using a set of distance thresholds, ranging from a conservative value of 10 mm to a moderate value of 21 mm. Hungarian algorithm led to a high correspondence, but low reproducibility for all the thresholds, with 96 s of execution time. QuickBundles led to better correspondence, reproducibility and short execution time of 9 s. Hence, the whole processing for the inter-subject labeling over 20 subjects takes 1.17 h. Conclusion We implemented a method for the automatic labeling of short bundles in individuals, based on an intra-subject clustering and the connectivity of the clusters with the cortex. The labels provide useful information for the visualization and analysis of individual connections, which is very difficult without any additional information. Furthermore, we provide two fast inter-subject bundle labeling methods. The obtained clusters could be used for performing manual or automatic connectivity analysis in individuals or across subjects.http://link.springer.com/article/10.1186/s12938-020-00786-zFiber labelingClusteringFiber bundleTractographySuperficial white matter |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Andrea Vázquez Narciso López-López Josselin Houenou Cyril Poupon Jean-François Mangin Susana Ladra Pamela Guevara |
spellingShingle |
Andrea Vázquez Narciso López-López Josselin Houenou Cyril Poupon Jean-François Mangin Susana Ladra Pamela Guevara Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information BioMedical Engineering OnLine Fiber labeling Clustering Fiber bundle Tractography Superficial white matter |
author_facet |
Andrea Vázquez Narciso López-López Josselin Houenou Cyril Poupon Jean-François Mangin Susana Ladra Pamela Guevara |
author_sort |
Andrea Vázquez |
title |
Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
title_short |
Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
title_full |
Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
title_fullStr |
Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
title_full_unstemmed |
Automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
title_sort |
automatic group-wise whole-brain short association fiber bundle labeling based on clustering and cortical surface information |
publisher |
BMC |
series |
BioMedical Engineering OnLine |
issn |
1475-925X |
publishDate |
2020-06-01 |
description |
Abstract Background Diffusion MRI is the preferred non-invasive in vivo modality for the study of brain white matter connections. Tractography datasets contain 3D streamlines that can be analyzed to study the main brain white matter tracts. Fiber clustering methods have been used to automatically group similar fibers into clusters. However, due to inter-subject variability and artifacts, the resulting clusters are difficult to process for finding common connections across subjects, specially for superficial white matter. Methods We present an automatic method for labeling of short association bundles on a group of subjects. The method is based on an intra-subject fiber clustering that generates compact fiber clusters. Posteriorly, the clusters are labeled based on the cortical connectivity of the fibers, taking as reference the Desikan–Killiany atlas, and named according to their relative position along one axis. Finally, two different strategies were applied and compared for the labeling of inter-subject bundles: a matching with the Hungarian algorithm, and a well-known fiber clustering algorithm, called QuickBundles. Results Individual labeling was executed over four subjects, with an execution time of 3.6 min. An inspection of individual labeling based on a distance measure showed good correspondence among the four tested subjects. Two inter-subject labeling were successfully implemented and applied to 20 subjects and compared using a set of distance thresholds, ranging from a conservative value of 10 mm to a moderate value of 21 mm. Hungarian algorithm led to a high correspondence, but low reproducibility for all the thresholds, with 96 s of execution time. QuickBundles led to better correspondence, reproducibility and short execution time of 9 s. Hence, the whole processing for the inter-subject labeling over 20 subjects takes 1.17 h. Conclusion We implemented a method for the automatic labeling of short bundles in individuals, based on an intra-subject clustering and the connectivity of the clusters with the cortex. The labels provide useful information for the visualization and analysis of individual connections, which is very difficult without any additional information. Furthermore, we provide two fast inter-subject bundle labeling methods. The obtained clusters could be used for performing manual or automatic connectivity analysis in individuals or across subjects. |
topic |
Fiber labeling Clustering Fiber bundle Tractography Superficial white matter |
url |
http://link.springer.com/article/10.1186/s12938-020-00786-z |
work_keys_str_mv |
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