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Deformable templates guided discriminative models for robust 3D brain MRI segmentation

机译:可变形模板指导区分模型的鲁棒3D脑MRI分割

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摘要

Automatically segmenting anatomical structures from 3D brain MRI images is an important task in neuroimaging. One major challenge is to design and learn effective image models accounting for the large variability in anatomy and data acquisition protocols. A deformable template is a type of generative model that attempts to explicitly match an input image with a template (atlas), and thus, they are robust against global intensity changes. On the other hand, discriminative models combine local image features to capture complex image patterns. In this paper, we propose a robust brain image segmentation algorithm that fuses together deformable templates and informative features. It takes advantage of the adaptation capability of the generative model and the classification power of the discriminative models. The proposed algorithm achieves both robustness and efficiency, and can be used to segment brain MRI images with large anatomical variations. We perform an extensive experimental study on four datasets of T1-weighted brain MRI data from different sources (1,082 MRI scans in total) and observe consistent improvement over the state-of-the-art systems.
机译:从3D大脑MRI图像自动分割解剖结构是神经成像的重要任务。一个主要的挑战是设计和学习有效的图像模型,以说明解剖结构和数据采集协议的巨大差异。变形模板是一种生成模型,试图将输入图像与模板(图集)明确匹配,因此,它们对全局强度变化具有鲁棒性。另一方面,判别模型结合了局部图像特征以捕获复杂的图像模式。在本文中,我们提出了一种鲁棒的脑图像分割算法,该算法将可变形模板和信息功能融合在一起。它利用了生成模型的自适应能力和判别模型的分类能力。所提出的算法实现了鲁棒性和效率,并且可以用于分割解剖学差异较大的脑部MRI图像。我们对来自不同来源的T1加权脑MRI数据的四个数据集进行了广泛的实验研究(总共1,082次MRI扫描),并观察到了最先进系统的持续改进。

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