Building a Synthetic Vascular Model: Evaluation in an Intracranial Aneurysms Detection Scenario.

Rafic Nader, Florent Autrusseau, Vincent L'Allinec, Romain Bourcier
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Abstract

We hereby present a full synthetic model, able to mimic the various constituents of the cerebral vascular tree, including the cerebral arteries, bifurcations and intracranial aneurysms. This model intends to provide a substantial dataset of brain arteries which could be used by a 3D convolutional neural network to efficiently detect Intra-Cranial Aneurysms. The cerebral aneurysms most often occur on a particular structure of the vascular tree named the Circle of Willis. Various studies have been conducted to detect and monitor the aneurysms and those based on Deep Learning achieve the best performance. Specifically, in this work, we propose a full synthetic 3D model able to mimic the brain vasculature as acquired by Magnetic Resonance Angiography, Time Of Flight principle. Among the various MRI modalities, this latter allows for a good rendering of the blood vessels and is non-invasive. Our model has been designed to simultaneously mimic the arteries' geometry, the aneurysm shape, and the background noise. The vascular tree geometry is modeled thanks to an interpolation with 3D Spline functions, and the statistical properties of the background noise is collected from angiography acquisitions and reproduced within the model. In this work, we thoroughly describe the synthetic vasculature model, we build up a neural network designed for aneurysm segmentation and detection, finally, we carry out an in-depth evaluation of the performance gap gained thanks to the synthetic model data augmentation.

建立合成血管模型:在颅内动脉瘤检测场景中进行评估。
我们在此提出一个完整的合成模型,能够模拟脑血管树的各个组成部分,包括脑动脉、分叉和颅内动脉瘤。该模型旨在提供大量脑动脉数据集,三维卷积神经网络可利用这些数据集有效检测颅内动脉瘤。脑动脉瘤最常发生在血管树的一个特殊结构上,即威利斯环。针对动脉瘤的检测和监控已经开展了多项研究,其中基于深度学习的研究取得了最佳效果。具体来说,在这项工作中,我们提出了一个全合成三维模型,该模型能够模仿通过飞行时间原理磁共振血管造影术获取的脑血管结构。在各种核磁共振成像模式中,后者可以很好地渲染血管,而且是非侵入性的。我们设计的模型可同时模拟动脉的几何形状、动脉瘤的形状和背景噪声。血管树的几何形状是通过三维样条函数插值建模的,背景噪声的统计特性是从血管造影采集的数据中收集的,并在模型中再现。在这项工作中,我们详细描述了合成血管模型,建立了一个用于动脉瘤分割和检测的神经网络,最后,我们对合成模型数据增强后的性能差距进行了深入评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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