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Multi-atlas segmentation with joint label fusion and corrective learning—an open source implementation

机译:具有联合标签融合和纠正性学习的多图集细分-一种开源实施

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摘要

Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques for medical image segmentation. This technique transfers segmentations from expert-labeled images, called atlases, to a novel image using deformable image registration. Errors produced by label transfer are further reduced by label fusion that combines the results produced by all atlases into a consensus solution. Among the proposed label fusion strategies, weighted voting with spatially varying weight distributions derived from atlas-target intensity similarity is a simple and highly effective label fusion technique. However, one limitation of most weighted voting methods is that the weights are computed independently for each atlas, without taking into account the fact that different atlases may produce similar label errors. To address this problem, we recently developed the joint label fusion technique and the corrective learning technique, which won the first place of the 2012 MICCAI Multi-Atlas Labeling Challenge and was one of the top performers in 2013 MICCAI Segmentation: Algorithms, Theory and Applications (SATA) challenge. To make our techniques more accessible to the scientific research community, we describe an Insight-Toolkit based open source implementation of our label fusion methods. Our implementation extends our methods to work with multi-modality imaging data and is more suitable for segmentation problems with multiple labels. We demonstrate the usage of our tools through applying them to the 2012 MICCAI Multi-Atlas Labeling Challenge brain image dataset and the 2013 SATA challenge canine leg image dataset. We report the best results on these two datasets so far.
机译:基于标签融合的多图集分割已被证明是医学图像分割中最有竞争力的技术之一。该技术使用可变形的图像配准将分割从专家标记的图像(称为地图集)转移到新图像。标签融合将所有地图集产生的结果合并到一个共识解决方案中,从而进一步减少了标签转移产生的错误。在提出的标签融合策略中,从地图集-目标强度相似性得出的具有空间变化权重分布的加权投票是一种简单且高效的标签融合技术。但是,大多数加权投票方法的局限性在于,对每个地图集的权重是独立计算的,而没有考虑不同地图集可能产生相似标签错误的事实。为了解决这个问题,我们最近开发了联合标签融合技术和纠正性学习技术,该技术在2012年MICCAI多图集标签挑战赛中获得第一名,并且是2013年MICCAI细分市场中表现最好的之一:算法,理论和应用(SATA)挑战。为了使我们的技术更易于科学研究,我们介绍了基于Insight-Toolkit的标签融合方法的开源实现。我们的实现扩展了我们的方法,以处理多模态成像数据,并且更适合于具有多个标签的分割问题。我们通过将其应用于2012 MICCAI多图集标签挑战大脑图像数据集和2013 SATA挑战犬腿图像数据集来演示我们工具的用法。到目前为止,我们报告了这两个数据集的最佳结果。

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