首页> 外文会议>International conference on medical image computing and computer assisted interventions;International workshop on clinical image-based procedures >Partitioned Shape Modeling with On-the-Fly Sparse Appearance Learning for Anterior Visual Pathway Segmentation
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Partitioned Shape Modeling with On-the-Fly Sparse Appearance Learning for Anterior Visual Pathway Segmentation

机译:具有动态稀疏外观学习的分割形状模型,用于前路视觉通路分割

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MRI quantification of cranial nerves such as anterior visual pathway (AVP) in MRI is challenging due to their thin small size, structural variation along its path, and adjacent anatomic structures. Segmentation of pathologically abnormal optic nerve (e.g. optic nerve glioma) poses additional challenges due to changes in its shape at unpredictable locations. In this work, we propose a partitioned joint statistical shape model approach with sparse appearance learning for the segmentation of healthy and pathological AVP. Our main contributions are: (1) optimally partitioned statistical shape models for the AVP based on regional shape variations for greater local flexibility of statistical shape model; (2) refinement model to accommodate pathological regions as well as areas of subtle variation by training the model on-the-fly using the initial segmentation obtained in (1); (3) hierarchical deformable framework to incorporate scale information in partitioned shape and appearance models. Our method, entitled PAScAL (PArtitioned Shape and Appearance Learning), was evaluated on 21 MRI scans (15 healthy + 6 glioma cases) from pediatric patients (ages 2-17). The experimental results show that the proposed localized shape and sparse appearance-based learning approach significantly outperforms segmentation approaches in the analysis of pathological data.
机译:MRI定量分析颅神经,如MRI中的前视觉通路(AVP),由于其细小,沿其路径的结构变化以及邻近的解剖结构而具有挑战性。病理异常的视神经(例如视神经神经胶质瘤)的分割由于其形状的变化在不可预测的位置而提出了另外的挑战。在这项工作中,我们提出了一种具有稀疏外观学习的分区联合统计形状模型方法,用于健康和病理性AVP的分割。我们的主要贡献是:(1)基于区域形状变化的AVP最优分区统计形状模型,以提高统计形状模型的局部灵活性; (2)通过使用在(1)中获得的初始分割对模型进行动态训练来适应病理区域和细微变化区域的细化模型; (3)分层的可变形框架,将比例信息合并到分区的形状和外观模型中。我们的方法,名为PAScAL(有形状和外观学习),是对来自小儿患者(2-17岁)的21例MRI扫描(15例健康+ 6例神经胶质瘤病例)进行了评估。实验结果表明,在病理数据分析中,基于局部形状和稀疏外观的学习方法明显优于分割方法。

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