Dor Amran1, Moran Artzi2,3,4, Orna Aizenstein3,5, Dafna Ben Bashat2,3,4, Amit H Bermano6. 1. Tel-Aviv University, School of Electrical Engineering, Tel-Aviv, Israel. 2. Tel Aviv Sourasky Medical Center, Sagol Brain Institute, Tel Aviv, Israel. 3. Tel-Aviv University, Sackler Faculty of Medicine, Tel-Aviv, Israel. 4. Tel-Aviv University, Sagol School of Neuroscience, Tel-Aviv, Israel. 5. Tel Aviv Sourasky Medical Center, Neuroradiology Unit, Imaging Department, Tel Aviv, Israel. 6. Tel-Aviv University, Blavatnik School of Computer Science, Tel-Aviv, Israel.
Abstract
Purpose: Cerebrovascular vessel segmentation is a key step in the detection of vessel pathology. Brain time-of-flight magnetic resonance angiography (TOF-MRA) is a main method used clinically for imaging of blood vessels using magnetic resonance imaging. This method is primarily used to detect narrowing, blockage of the arteries, and aneurysms. Despite its importance, TOF-MRA interpretation relies mostly on visual, subjective assessment performed by a neuroradiologist and is mostly based on maximum intensity projections reconstruction of the three-dimensional (3D) scan, thus reducing the acquired spatial resolution. Works tackling the central problem of automatically segmenting brain blood vessels typically suffer from memory and imbalance related issues. To address these issues, the spatial context of the segmentation consider by neural networks is typically restricted (e.g., by resolution reduction or analysis of environments of lower dimensions). Although efficient, such solutions hinder the ability of the neural networks to understand the complex 3D structures typical of the cerebrovascular system and to leverage this understanding for decision making. Approach: We propose a brain-vessels generative-adversarial-network (BV-GAN) segmentation model, that better considers connectivity and structural integrity, using prior based attention and adversarial learning techniques. Results: For evaluations, fivefold cross-validation experiments were performed on two datasets. BV-GAN demonstrates consistent improvement of up to 10% in vessel Dice score with each additive designed component to the baseline state-of-the-art models. Conclusions: Potentially, this automated 3D-approach could shorten analysis time, allow for quantitative characterization of vascular structures, and reduce the need to decrease resolution, overall improving diagnosis cerebrovascular vessel disorders.
Purpose: Cerebrovascular vessel segmentation is a key step in the detection of vessel pathology. Brain time-of-flight magnetic resonance angiography (TOF-MRA) is a main method used clinically for imaging of blood vessels using magnetic resonance imaging. This method is primarily used to detect narrowing, blockage of the arteries, and aneurysms. Despite its importance, TOF-MRA interpretation relies mostly on visual, subjective assessment performed by a neuroradiologist and is mostly based on maximum intensity projections reconstruction of the three-dimensional (3D) scan, thus reducing the acquired spatial resolution. Works tackling the central problem of automatically segmenting brain blood vessels typically suffer from memory and imbalance related issues. To address these issues, the spatial context of the segmentation consider by neural networks is typically restricted (e.g., by resolution reduction or analysis of environments of lower dimensions). Although efficient, such solutions hinder the ability of the neural networks to understand the complex 3D structures typical of the cerebrovascular system and to leverage this understanding for decision making. Approach: We propose a brain-vessels generative-adversarial-network (BV-GAN) segmentation model, that better considers connectivity and structural integrity, using prior based attention and adversarial learning techniques. Results: For evaluations, fivefold cross-validation experiments were performed on two datasets. BV-GAN demonstrates consistent improvement of up to 10% in vessel Dice score with each additive designed component to the baseline state-of-the-art models. Conclusions: Potentially, this automated 3D-approach could shorten analysis time, allow for quantitative characterization of vascular structures, and reduce the need to decrease resolution, overall improving diagnosis cerebrovascular vessel disorders.
Authors: Pooja Subramaniam; Tabea Kossen; Kerstin Ritter; Anja Hennemuth; Kristian Hildebrand; Adam Hilbert; Jan Sobesky; Michelle Livne; Ivana Galinovic; Ahmed A Khalil; Jochen B Fiebach; Dietmar Frey; Vince I Madai Journal: Med Image Anal Date: 2022-02-24 Impact factor: 8.545
Authors: Midas Meijs; Sjoert A H Pegge; Maria H E Vos; Ajay Patel; Sil C van de Leemput; Kevin Koschmieder; Mathias Prokop; Frederick J A Meijer; Rashindra Manniesing Journal: Radiol Artif Intell Date: 2020-07-29