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Multi-atlas based neonatal brain extraction using a two-level patch-based label fusion strategy

机译:基于二级图谱的标签融合策略基于多图谱的新生儿脑提取

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Compared to adults, brain extraction from magnetic resonance (MR) images of newborn infants is particularly challenging due to their smaller brain size, which causes lower spatial resolution, lower tissue contrast and ambiguous tissue intensity distribution. In this work, a multi-atlas patch-based label fusion method is presented for automatic brain extraction from neonatal head MR images. In this method, a number of atlases are first selected uniformly among a set of training images. After nonlinear alignment of the selected atlas images to the target image, a probabilistic gray level-coded brain mask is created and used to assign brainon-brain labels to voxels with different degree of uncertainty using a modified non-local patch-based label fusion method based on the integration of low-level and in-depth search patch selection strategies. Experiments with 40 neonates aged between 37 and 44 weeks showed an average Dice, Jaccard and Conformity coefficients of 0.993, 0.986 and 0.986, respectively. We compared the performance of the proposed method with two multi atlas-based methods, i.e. NLPB and MASS, and two popular non-learning-based methods, i.e. BSE and BET. Compared to these methods, our method achieved higher accuracy with brain masks very close to manually extracted ones and produced lower false negative and false positive rates. Our proposed method allows for accurate and efficient brain extraction, a crucial step in brain MRI applications such as brain tissue segmentation and volume estimation in neonates. (C) 2019 Elsevier Ltd. All rights reserved.
机译:与成年人相比,由于新生儿的大脑较小,因此从新生儿的磁共振(MR)图像中提取大脑尤其具有挑战性,这会导致较低的空间分辨率,较低的组织对比度和模糊的组织强度分布。在这项工作中,提出了一种基于多图集补丁的标签融合方法,用于从新生儿头部MR图像中自动提取大脑。在这种方法中,首先在一组训练图像中统一选择多个地图集。在将选定的地图集图像与目标图像进行非线性对齐之后,将创建概率灰度编码的脑罩,并使用修改后的基于非局部面片的标签将脑/非脑标签分配给具有不同不确定度的体素融合方法基于低层次和深度搜索补丁选择策略的集成。对40名年龄在37至44周之间的新生儿进行的实验显示,平均骰子,雅卡德(Jaccard)和合格系数分别为0.993、0.986和0.986。我们将提出的方法的性能与两种基于多图谱的方法(即NLPB和MASS)以及两种流行的基于非学习方法的方法(即BSE和BET)进行了比较。与这些方法相比,我们的方法使用与人工提取的面具非常接近的面具获得了更高的准确性,并且产生了较低的假阴性和假阳性率。我们提出的方法可以进行准确有效的脑部提取,这是脑MRI应用(例如新生儿的脑组织分割和体积估计)中的关键步骤。 (C)2019 Elsevier Ltd.保留所有权利。

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