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Non-local statistical label fusion for multi-atlas segmentation.

机译:非本地统计标签融合用于多图集细分。

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Multi-atlas segmentation provides a general purpose, fully-automated approach for transferring spatial information from an existing dataset ("atlases") to a previously unseen context ("target") through image registration. The method to resolve voxelwise label conflicts between the registered atlases ("label fusion") has a substantial impact on segmentation quality. Ideally, statistical fusion algorithms (e.g., STAPLE) would result in accurate segmentations as they provide a framework to elegantly integrate models of rater performance. The accuracy of statistical fusion hinges upon accurately modeling the underlying process of how raters err. Despite success on human raters, current approaches inaccurately model multi-atlas behavior as they fail to seamlessly incorporate exogenous intensity information into the estimation process. As a result, locally weighted voting algorithms represent the de facto standard fusion approach in clinical applications. Moreover, regardless of the approach, fusion algorithms are generally dependent upon large atlas sets and highly accurate registration as they implicitly assume that the registered atlases form a collectively unbiased representation of the target. Herein, we propose a novel statistical fusion algorithm, Non-Local STAPLE (NLS). NLS reformulates the STAPLE framework from a non-local means perspective in order to learn what label an atlas would have observed, given perfect correspondence. Through this reformulation, NLS (1) seamlessly integrates intensity into the estimation process, (2) provides a theoretically consistent model of multi-atlas observation error, and (3) largely diminishes the need for large atlas sets and very high-quality registrations. We assess the sensitivity and optimality of the approach and demonstrate significant improvement in two empirical multi-atlas experiments.
机译:多图集分割提供了一种通用的全自动方法,用于通过图像配准将空间信息从现有数据集(“图集”)传输到以前看不见的上下文(“目标”)。解决注册地图集之间的三维像素标记冲突的方法(“标记融合”)对分割质量有重大影响。理想地,统计融合算法(例如,STAPLE)将提供准确的分段,因为它们提供了优雅地集成评估者性能模型的框架。统计融合的准确性取决于准确建模评估者错误的基本过程。尽管人类评估者取得了成功,但当前的方法无法对多图册行为进行建模,因为它们无法将外源强度信息无缝地整合到估算过程中。结果,局部加权投票算法代表了临床应用中的事实上的标准融合方法。此外,无论采用哪种方法,融合算法通常都依赖于大型地图集和高度精确的配准,因为它们隐含地认为已配准的地图集构成了目标的总体无偏表示。在此,我们提出了一种新颖的统计融合算法,即非本地订书钉(NLS)。 NLS从非本地均值的角度重新构造了STAPLE框架,以便了解给定完美对应关系的图集将观察到的标签。通过这种重新构造,NLS(1)将强度无缝地集成到估计过程中;(2)提供了多图集观测误差的理论上一致的模型;(3)大大减少了对大图集和非常高质量的配准的需求。我们评估了该方法的敏感性和最佳性,并在两个经验丰富的多图集实验中证明了显着的改进。

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