首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Characterization of Cerebral Aneurysms Using 3D Moment Invariants
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Characterization of Cerebral Aneurysms Using 3D Moment Invariants

机译:使用3D矩不变量表征脑动脉瘤

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摘要

The rupture mechanism of intracranial aneurysms is still not fully understood. Although the size of the aneurysm is the shape index most commonly used to predict rupture, some controversy still exists about its adequateness as an aneurysm rupture predictor. In this work, an automatic method to geometrically characterize the shape of cerebral saccular aneurysms using 3D moment invariants is proposed. Geometric moments are efficiently computed via application of the Divergence Theorem over the aneurysm surface using a non-structured mesh. 3D models of the aneurysm and its connected parent vessels have been reconstructed from segmentations of both 3DRA and CTA images. Two alternative approaches have been used for segmentation, the first one based on isosurface deformable models, and the second one based on the level set method. Several experiments were also conducted to both assess the influence of pre-processing steps in the stability of the aneurysm shape descriptors, and to know the robustness of the proposed method. Moment invariants have proved to be a robust technique while providing a reliable way to discriminate between ruptured and unruptured aneurysms (Sensitivity=0.83, Specificity = 0.74) on a data set containing 55 aneurysms. Further investigation over larger databases is necessary to establish their adequateness as reliable predictors of rupture risk.
机译:颅内动脉瘤的破裂机制仍不完全清楚。尽管动脉瘤的大小是最常用于预测破裂的形状指标,但关于其作为动脉瘤破裂预测因子的充分性仍存在一些争议。在这项工作中,提出了一种自动方法,该方法使用3D矩不变性来几何表征脑囊性动脉瘤的形状。通过使用非结构化网格在动脉瘤表面上应用发散定理,可以有效地计算几何矩。从3DRA和CTA图像的分割中重建了动脉瘤及其相连的亲代血管的3D模型。两种替代方法已用于分割,第一种基于等值面可变形模型,第二种基于水平集方法。还进行了一些实验,以评估预处理步骤对动脉瘤形状描述符稳定性的影响,并了解所提出方法的鲁棒性。矩不变量已被证明是一种强大的技术,同时提供了一种可靠的方法来区分包含55个动脉瘤的数据集是否破裂(未破裂)(敏感度= 0.83,特异性= 0.74)。为了确定其作为破裂风险的可靠预测指标的充分性,有必要对大型数据库进行进一步调查。

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