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A homotopy-based sparse representation for fast and accurate shape prior modeling in liver surgical planning

机译:一种基于同型肝脏手术规划的快速准确形状的稀疏表示

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摘要

Shape prior plays an important role in accurate and robust liver segmentation. However, liver shapes have complex variations and accurate modeling of liver shapes is challenging. Using large-scale training data can improve the accuracy but it limits the computational efficiency. In order to obtain accurate liver shape priors without sacrificing the efficiency when dealing with large-scale training data, we investigate effective and scalable shape prior modeling method that is more applicable in clinical liver surgical planning system.
机译:形状在准确且坚固的肝细分中起着重要作用。 然而,肝脏形状具有复杂的变化,并且肝脏形状的准确建模是具有挑战性的。 使用大规模培训数据可以提高准确性,但它限制了计算效率。 为了在处理大规模训练数据时获得精确的肝脏形状前导者而不牺牲效率,我们研究了更适用于临床肝手术规划系统的有效和可伸缩的形状的现有建模方法。

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