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Superpixel and multi-atlas based fusion entropic model for the segmentation of X-ray images

机译:基于Superpixel和基于多标准的融合熵模型,用于分割X射线图像

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X-ray image segmentation is an important and crucial step for three-dimensional (3D) bone reconstruction whose final goal remains to increase effectiveness of computer-aided diagnosis, surgery and treatment plannings. However, this segmentation task is rather challenging, particularly when dealing with complicated human structures in the lower limb such as the patella, talus and pelvis. In this work, we present a multi-atlas fusion framework for the automatic segmentation of these complex bone regions from a single X-ray view. The first originality of the proposed approach lies in the use of a (training) dataset of co-registered/pre-segmented X-ray images of these aforementioned bone regions (or multi atlas) to estimate a collection of superpixels allowing us to take into account all the nonlinear and local variability of bone regions existing in the training dataset and also to simplify the superpixel map pruning process related to our strategy. The second originality is to introduce a novel label propagation step based on the entropy concept for refining the resulting segmentation map into the most likely internal regions to the final consensus segmentation. In this framework, a leave-one-out cross-validation process was performed on 31 manually segmented radiographic image dataset for each bone structure in order to rigorously evaluate the efficiency of the proposed method. The proposed method resulted in more accurate segmentations compared to the probabilistic patch-based label fusion model (PB) and the classical patch-based majority voting fusion scheme (MV) using different registration strategies. Comparison with manual (gold standard) segmentations revealed that the good classification accuracy of our unsupervised segmentation scheme is, respectively, 93.79% for the patella, 88.3% for the talus and 85.02% for the pelvis; a score that falls within the range of accuracy levels of manual segmentations (due to the intra inter/observer variability). (C) 2018 Elsevier B.V. All rights reserved.
机译:X射线图像分割是三维(3D)骨重建的重要且关键的步骤,其最终目标仍有增加计算机辅助诊断,手术和治疗计划的有效性。然而,这种分割任务相当具有挑战性,特别是在处理下肢的复杂人体结构时,例如髌骨,塔卢斯和骨盆。在这项工作中,我们为这些复合骨区的自动分割提供了一个多标准融合框架,从单个X射线视图。所提出的方法的第一个原创性在于使用这些上述骨区(或多atlas)的共登记/预分段X射线图像的(训练)数据集来估计允许我们进入的超像素的集合考虑训练数据集中存在的骨骼区域的所有非线性和局部可变性,并简化了与我们的策略相关的Superpixel地图修剪过程。第二个原创性是基于熵概念引入一种新的标签传播步骤,用于将所产生的分割图更精炼到最可能的内部区域到最终共识分割。在该框架中,对每个骨骼结构的31个手动分段的射线照相图像数据集执行休留次交叉验证过程,以便严格评估所提出的方法的效率。与基于概率贴剂的标签融合模型(PB)和使用不同的注册策略的经典贴剂的大多数投票融合方案(MV)相比,所提出的方法产生更精确的分割。与手册(黄金标准)分割的比较显示,我们无监督的分割方案的良好分类准确性分别为髌骨93.79%,对于骨盆88.3%,骨盆85.02%;落入手动分割的精度水平范围内的分数(由于帧内/观察者帧内帧内变异性)。 (c)2018 Elsevier B.v.保留所有权利。

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