Two-Steps Neural Networks for an Automated Cerebrovascular Landmark Detection
- URL: http://arxiv.org/abs/2507.02349v1
- Date: Thu, 03 Jul 2025 06:23:38 GMT
- Title: Two-Steps Neural Networks for an Automated Cerebrovascular Landmark Detection
- Authors: Rafic Nader, Vincent L'Allinec, Romain Bourcier, Florent Autrusseau,
- Abstract summary: Intracranial aneurysms (ICA) commonly occur in specific segments of the Circle of Willis (CoW)<n>We introduce a fully automated landmark detection approach for CoW bifurcations using a two-step neural networks process.
- Score: 0.8749675983608172
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Intracranial aneurysms (ICA) commonly occur in specific segments of the Circle of Willis (CoW), primarily, onto thirteen major arterial bifurcations. An accurate detection of these critical landmarks is necessary for a prompt and efficient diagnosis. We introduce a fully automated landmark detection approach for CoW bifurcations using a two-step neural networks process. Initially, an object detection network identifies regions of interest (ROIs) proximal to the landmark locations. Subsequently, a modified U-Net with deep supervision is exploited to accurately locate the bifurcations. This two-step method reduces various problems, such as the missed detections caused by two landmarks being close to each other and having similar visual characteristics, especially when processing the complete MRA Time-of-Flight (TOF). Additionally, it accounts for the anatomical variability of the CoW, which affects the number of detectable landmarks per scan. We assessed the effectiveness of our approach using two cerebral MRA datasets: our In-House dataset which had varying numbers of landmarks, and a public dataset with standardized landmark configuration. Our experimental results demonstrate that our method achieves the highest level of performance on a bifurcation detection task.
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