Towards Automated Brain Aneurysm Detection in TOF-MRA: Open Data, Weak Labels, and Anatomical Knowledge
-
Published:2022-08-18
Issue:1
Volume:21
Page:21-34
-
ISSN:1539-2791
-
Container-title:Neuroinformatics
-
language:en
-
Short-container-title:Neuroinform
Author:
Di Noto TommasoORCID, Marie GuillaumeORCID, Tourbier SebastienORCID, Alemán-Gómez YasserORCID, Esteban OscarORCID, Saliou GuillaumeORCID, Cuadra Meritxell BachORCID, Hagmann PatricORCID, Richiardi JonasORCID
Abstract
AbstractBrain aneurysm detection in Time-Of-Flight Magnetic Resonance Angiography (TOF-MRA) has undergone drastic improvements with the advent of Deep Learning (DL). However, performances of supervised DL models heavily rely on the quantity of labeled samples, which are extremely costly to obtain. Here, we present a DL model for aneurysm detection that overcomes the issue with “weak” labels: oversized annotations which are considerably faster to create. Our weak labels resulted to be four times faster to generate than their voxel-wise counterparts. In addition, our model leverages prior anatomical knowledge by focusing only on plausible locations for aneurysm occurrence. We first train and evaluate our model through cross-validation on an in-house TOF-MRA dataset comprising 284 subjects (170 females / 127 healthy controls / 157 patients with 198 aneurysms). On this dataset, our best model achieved a sensitivity of 83%, with False Positive (FP) rate of 0.8 per patient. To assess model generalizability, we then participated in a challenge for aneurysm detection with TOF-MRA data (93 patients, 20 controls, 125 aneurysms). On the public challenge, sensitivity was 68% (FP rate = 2.5), ranking 4th/18 on the open leaderboard. We found no significant difference in sensitivity between aneurysm risk-of-rupture groups (p = 0.75), locations (p = 0.72), or sizes (p = 0.15). Data, code and model weights are released under permissive licenses. We demonstrate that weak labels and anatomical knowledge can alleviate the necessity for prohibitively expensive voxel-wise annotations.
Funder
Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung University of Lausanne
Publisher
Springer Science and Business Media LLC
Subject
Information Systems,General Neuroscience,Software
Reference45 articles.
1. Abousamra, S., Fassler, D., Hou, L., Zhang, Y., Gupta, R., Kurc, T., Escobar-Hoyos, L. F., Samaras, D., Knudson, B., Shroyer, K., Saltz, J., & Chen, C. (2020). Weakly-supervised deep stain decomposition for multiplex IHC images. Proceedings - International Symposium on Biomedical Imaging, 481–485. https://doi.org/10.1109/ISBI45749.2020.9098652 2. Akiba, T., Sano, S., Yanase, T., Ohta, T., & Koyama, M. (2019). Optuna: a next-generation hyperparameter optimization framework. Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. https://doi.org/10.1145/3292500.3330701 3. Arimura, H., Li, Q., Korogi, Y., Hirai, T., & Abe, H. (2004). Automated computerized scheme for detection of unruptured intracranial aneurysms in three- dimensional magnetic resonance angiography 1. Academic Radiology. https://doi.org/10.1016/j.acra.2004.07.011 4. Avants, B. B., Tustison, N., & Johnson, H. (2014). Advanced Normalization Tools (ANTS). Insight J, 2(365), 1–35. https://brianavants.wordpress.com/2012/04/13/updated-ants-compile-instructions-april-12-2012/. Accessed January 2021. 5. Baumgartner, M., Jäger, P. F., Isensee, F., & Maier-Hein, K. H. (2021). nnDetection: a self-configuring method for medical object detection. MICCAI. https://github.com/MIC-DKFZ/nnDetection. Accessed July 2021.
Cited by
16 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|