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MAVEN: An Algorithm for Multi-Parametric Automated Segmentation of Brain Veins From Gradient Echo Acquisitions

机译:MAVEN:一种基于梯度回波采集的脑静脉多参数自动分割算法

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摘要

Cerebral vein analysis provides a chance to study, from an unusual viewpoint, an entire class of brain diseases, including neurodegenerative disorders and traumatic brain injuries. Manual segmentation approaches can be used to assess vascular anatomy, but they are observer-dependent and time-consuming; therefore, automated approaches are desirable, as they also improve reproducibility. In this paper, a new, fully automated algorithm, based on structural, morphological, and relaxometric information, is proposed to segment the entire cerebral venous system from MR images. The algorithm for multi-parametric automated segmentation of brain VEiNs (MAVEN) is based on a combined investigation of multi-parametric information that allows for rejection of false positives and detection of thin vessels. The method is tested on gradient echo brain data sets acquired at 1.5, 3, and 7 T. It is compared to previous methods against manual segmentation, and its inter-scan reproducibility is assessed. The achieved accuracy and reproducibility are good, meaning that MAVEN outperforms previous methods on both quantitative and qualitative analyses. It is usable at all the field strengths explored, showing comparable accuracy scores, with no need for algorithm parameter adjustments, and thus, it is a promising candidate for the characterization of the venous tree topology.
机译:脑静脉分析为从不寻常的角度研究整类脑疾病提供了机会,包括神经退行性疾病和脑外伤。手动分割方法可用于评估血管解剖结构,但它们依赖于观察者且耗时;因此,自动化方法是理想的,因为它们还可以提高可重复性。在本文中,提出了一种基于结构,形态和张弛量度信息的新型全自动算法,用于从MR图像中分割整个脑静脉系统。用于脑VEiN的多参数自动分割的算法(MAVEN)是基于对多参数信息的综合研究而得出的,该信息允许拒绝误报和检测细血管。该方法在1.5、3和7 T下获取的梯度回波大脑数据集上进行了测试。将其与以前的方法进行了手动分割比较,并评估了其扫描间可重复性。获得的准确性和可重复性都很好,这意味着MAVEN在定量和定性分析方面都优于以前的方法。它可在所有探索的场强下使用,显示出相当的精度得分,而无需调整算法参数,因此,它是表征静脉树拓扑结构的有希望的候选者。

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