Comparing methods of detecting and segmenting unruptured intracranial aneurysms on TOF-MRAS: The ADA...
Comparing methods of detecting and segmenting unruptured intracranial aneurysms on TOF-MRAS: The ADAM challenge
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Author / Creator
Timmins, Kimberley M. , van der Schaaf, Irene C. , Bennink, Edwin , Ruigrok, Ynte M. , An, Xingle , Baumgartner, Michael , Bourdon, Pascal , De Feo, Riccardo , Noto, Tommaso Di , Dubost, Florian , Fava-Sanches, Augusto , Feng, Xue , Giroud, Corentin , Group, Inteneural , Hu, Minghui , Jaeger, Paul F. , Kaiponen, Juhana , Klimont, Michał , Li, Yuexiang , Li, Hongwei , Lin, Yi , Loehr, Timo , Ma, Jun , Maier-Hein, Klaus H. , Marie, Guillaume , Menze, Bjoern , Richiardi, Jonas , Rjiba, Saifeddine , Shah, Dhaval , Shit, Suprosanna , Tohka, Jussi , Urruty, Thierry , Walińska, Urszula , Yang, Xiaoping , Yang, Yunqiao , Yin, Yin , Velthuis, Birgitta K. and Kuijf, Hugo J.
Publisher
Amsterdam: Elsevier Inc
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Language
English
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Publisher
Amsterdam: Elsevier Inc
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Scope and Contents
Contents
Accurate detection and quantification of unruptured intracranial aneurysms (UIAs) is important for rupture risk assessment and to allow an informed treatment decision to be made. Currently, 2D manual measures used to assess UIAs on Time-of-Flight magnetic resonance angiographies (TOF-MRAs) lack 3D information and there is substantial inter-observer variability for both aneurysm detection and assessment of aneurysm size and growth. 3D measures could be helpful to improve aneurysm detection and quantification but are time-consuming and would therefore benefit from a reliable automatic UIA detection and segmentation method. The Aneurysm Detection and segMentation (ADAM) challenge was organised in which methods for automatic UIA detection and segmentation were developed and submitted to be evaluated on a diverse clinical TOF-MRA dataset.
A training set (113 cases with a total of 129 UIAs) was released, each case including a TOF-MRA, a structural MR image (T1, T2 or FLAIR), annotation of any present UIA(s) and the centre voxel of the UIA(s). A test set of 141 cases (with 153 UIAs) was used for evaluation. Two tasks were proposed: (1) detection and (2) segmentation of UIAs on TOF-MRAs. Teams developed and submitted containerised methods to be evaluated on the test set. Task 1 was evaluated using metrics of sensitivity and false positive count. Task 2 was evaluated using dice similarity coefficient, modified hausdorff distance (95th percentile) and volumetric similarity. For each task, a ranking was made based on the average of the metrics.
In total, eleven teams participated in task 1 and nine of those teams participated in task 2. Task 1 was won by a method specifically designed for the detection task (i.e. not participating in task 2). Based on segmentation metrics, the top two methods for task 2 performed statistically significantly better than all other methods. The detection performance of the top-ranking methods was comparable to visual inspection for larger aneurysms. Segmentation performance of the top ranking method, after selection of true UIAs, was similar to interobserver performance. The ADAM challenge remains open for future submissions and improved submissions, with a live leaderboard to provide benchmarking for method developments at https://adam.isi.uu.nl/....
Alternative Titles
Full title
Comparing methods of detecting and segmenting unruptured intracranial aneurysms on TOF-MRAS: The ADAM challenge
Authors, Artists and Contributors
Author / Creator
van der Schaaf, Irene C.
Bennink, Edwin
Ruigrok, Ynte M.
An, Xingle
Baumgartner, Michael
Bourdon, Pascal
De Feo, Riccardo
Noto, Tommaso Di
Dubost, Florian
Fava-Sanches, Augusto
Feng, Xue
Giroud, Corentin
Group, Inteneural
Hu, Minghui
Jaeger, Paul F.
Kaiponen, Juhana
Klimont, Michał
Li, Yuexiang
Li, Hongwei
Lin, Yi
Loehr, Timo
Ma, Jun
Maier-Hein, Klaus H.
Marie, Guillaume
Menze, Bjoern
Richiardi, Jonas
Rjiba, Saifeddine
Shah, Dhaval
Shit, Suprosanna
Tohka, Jussi
Urruty, Thierry
Walińska, Urszula
Yang, Xiaoping
Yang, Yunqiao
Yin, Yin
Velthuis, Birgitta K.
Kuijf, Hugo J.
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Primary Identifiers
Record Identifier
TN_cdi_doaj_primary_oai_doaj_org_article_dca4f5da06bc407783d684467324f4e5
Permalink
https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_doaj_primary_oai_doaj_org_article_dca4f5da06bc407783d684467324f4e5
Other Identifiers
ISSN
1053-8119
E-ISSN
1095-9572
DOI
10.1016/j.neuroimage.2021.118216