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Synthetic cerebral blood vessel generator for training anatomically plausible deep learning models

Kenyon, Georgia; Lau, Stephan; Perperidis, Antonis; CHAPPELL, MICHAEL; Jenkinson, Mark

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Authors

Georgia Kenyon

Stephan Lau

Antonis Perperidis

Mark Jenkinson



Abstract

Blood vessel networks, with their complex geometrical and topological characteristics, play a significant role in diagnosing and understanding various cerebrovascular diseases. Deep learning (DL) segmentation methods can aid in analysing these structures; however, models often produce anatomically implausible segmentations, overlooked by simple segmentation metrics. Extensive literature on cerebral vessel geometry rules, like branching patterns and vessel length-radius ratios, enable the creation of synthetic vessel label generators that can create data that adhere to or deviate from these rules. This data can be used to train DL networks, that score vessel label’s anatomical plausibility and implausibility. Trained networks can then be used to evaluate segmentation networks’ label outputs based on their anatomical plausibility, to go beyond commonly used, but mathematically simple, segmentation evaluation metrics. This work presents a novel synthetic cerebral vessel data generator, facilitating the generation of both anatomically plausible and implausible vasculature for the purpose of training DL models to assess the plausibility, or quality, of vessel segmentations in medical imaging.

Citation

Kenyon, G., Lau, S., Perperidis, A., CHAPPELL, M., & Jenkinson, M. (2024, July). Synthetic cerebral blood vessel generator for training anatomically plausible deep learning models. Presented at MIUA - Medical Image Understanding and Analysis - 2024, Manchester

Presentation Conference Type Edited Proceedings
Conference Name MIUA - Medical Image Understanding and Analysis - 2024
Start Date Jul 24, 2024
End Date Jul 26, 2024
Acceptance Date Jul 24, 2024
Online Publication Date Oct 7, 2024
Publication Date Oct 7, 2024
Deposit Date Oct 9, 2024
Publicly Available Date Oct 10, 2024
Peer Reviewed Not Peer Reviewed
Book Title Medical Image Understanding and Analysis, Manchester, UK
ISBN 9782832512449
DOI https://doi.org/10.3389/978-2-8325-1244-9
Public URL https://nottingham-repository.worktribe.com/output/40558593
Publisher URL https://www.frontiersin.org/books/Medical_Image_Understanding_and_Analysis/12759

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Publisher Licence URL
https://creativecommons.org/licenses/by-sa/4.0/

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The abstracts in this collection have not been subject to any Frontiers peer review or checks, and are not endorsed by Frontiers. They are made available through the Frontiers publishing platform as a service to conference organizers and presenters. The copyright in the individual abstracts is owned by the author of each abstract or their employer unless otherwise stated. Each abstract, as well as the collection of abstracts, are published under a Creative Commons CC-BY 4.0 (attribution) licence (creativecommons.org/licenses/by/4.0/ ) and may thus be reproduced, translated, adapted and be the subject of derivative works provided the authors and Frontiers are attributed.





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