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Subject Specific Shape Modeling with Incremental Mixture Models

机译:具有增量混合模型的主题特定形状建模

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Statistical shape models provide versatile tools for incorporating statistical priors for image segmentation. Difficulties arise, however, when the target anatomical shape differs significantly from the training set used for model construction. This paper presents a novel approach for fast and accurate segmentation of subject-specific geometries based on models largely derived from normal subjects. This technique is particularly suitable for analyzing complex structures such as severely abnormal patient datasets. The proposed method uses online principal component update to incorporate subject-specific geometry. Mixture models are used to estimate the latent density distribution of the data, thus enabling adequate constraining during active shape propagation. Validation based on hypertrophic cardiomyopathy (HCM) datasets with MRI shows significant improvement in overall accuracy and increased adaptation to complex structures.
机译:统计形状模型提供了一种用于掺入图像分割的统计前方的多功能工具。然而,当目标解剖形状与用于模型结构的训练集显着不同时出现困难。本文介绍了一种基于主要来自正常科目的型号的特定对象特异性几何形状的快速准确细分的新方法。该技术特别适用于分析复杂结构,例如严重异常的患者数据集。该提出的方法使用在线主体组件更新来包含特定于对象的几何体。混合模型用于估计数据的潜在密度分布,从而在主动形状传播期间能够充分限制。基于肥大心肌病(HCM)数据集的验证具有MRI的总体精度显着提高,并增加对复杂结构的适应性。

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