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Classification of Blood Flow Patterns in Cerebral Aneurysms

机译:脑动脉瘤血流模式的分类

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We present a Cerebral Aneurysm Vortex Classification (CAVOCLA) that allows to classify blood flow in cerebral aneurysms. Medical studies assume a strong relation between the progression and rupture of aneurysms and flow patterns. To understand how flow patterns impact the vessel morphology, they are manually classified according to predefined classes. However, manual classifications are time-consuming and exhibit a high inter-observer variability. In contrast, our approach is more objective and faster than manual methods. The classification of integral lines, representing steady or unsteady blood flow, is based on a mapping of the aneurysm surface to a hemisphere by calculating polar-based coordinates. The lines are clustered and for each cluster a representative is calculated. Then, the polar-based coordinates are transformed to the representative as basis for the classification. Classes are based on the flow complexity. The classification results are presented by a detail-on-demand approach using a visual transition from the representative over an enclosing surface to the associated lines. Based on seven representative datasets, we conduct an informal interview with five domain experts to evaluate the system. They confirmed that CAVOCLA allows for a robust classification of intra-aneurysmal flow patterns. The detail-on-demand visualization enables an efficient exploration and interpretation of flow patterns.
机译:我们提出了一种脑动脉瘤涡流分类(Cavocla),允许在脑动脉瘤中分类血液流动。医学研究假设动脉瘤和流动模式的进展和破裂之间存在强烈关系。要了解流程模式如何影响血管形态,根据预定义的类手动分类。但是,手动分类是耗时的,并且具有高观察室间变异性。相比之下,我们的方法比手动方法更客观且更快。整体线的分类,代表稳定或不稳定的血流,基于通过计算基于极性的坐标来基于动脉瘤表面到半球的映射。线条被聚类,并且针对每个集群计算代表。然后,基于极性的坐标被转换为代表作为分类的基础。类是基于流动复杂性。使用从代表从封闭式表面到相关线路的视觉过渡来提出分类结果。基于七个代表性数据集,我们对五个域专家进行了非正式面试,以评估系统。他们证实,Cavocla允许动脉内瘤流动模式的稳健分类。按需细节可视化使流量模式的有效探索和解释能够实现。

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