首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >Incorporating Priors on Expert Performance Parameters for Segmentation Validation and Label Fusion: A Maximum a Posteriori STAPLE
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Incorporating Priors on Expert Performance Parameters for Segmentation Validation and Label Fusion: A Maximum a Posteriori STAPLE

机译:将专家性能参数中的先验合并用于细分验证和标签融合:最大后验装订

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In order to evaluate the quality of segmentations of an image and assess intra- and inter-expert variability in segmentation performance, an Expectation Maximization (EM) algorithm for Simultaneous Truth And Performance Level Estimation (STAPLE) was recently developed. This algorithm, originally presented for segmentation validation, has since been used for many applications, such as atlas construction and decision fusion. However, the manual delineation of structures of interest is a very time consuming and burdensome task. Further, as the time required and burden of manual delineation increase, the accuracy of the delineation is decreased. Therefore, it may be desirable to ask the experts to delineate only a reduced number of structures or the segmentation of all structures by all experts may simply not be achieved. Fusion from data with some structures not segmented by each expert should be carried out in a manner that accounts for the missing information. In other applications, locally inconsistent segmentations may drive the STAPLE algorithm into an undesirable local optimum, leading to misclassifications or misleading experts performance parameters. We present a new algorithm that allows fusion with partial delineation and which can avoid convergence to undesirable local optima in the presence of strongly inconsistent segmentations. The algorithm extends STAPLE by incorporating prior probabilities for the expert performance parameters. This is achieved through a Maximum A Posteriori formulation, where the prior probabilities for the performance parameters are modeled by a beta distribution. We demonstrate that this new algorithm enables dramatically improved fusion from data with partial delineation by each expert in comparison to fusion with STAPLE.
机译:为了评估图像的分割质量并评估专家内部和专家之间的分割性能差异,最近开发了同时真实度和性能水平估计(STAPLE)的期望最大化(EM)算法。此算法最初是为进行分段验证而提出的,此后已用于许多应用程序,例如图集构建和决策融合。然而,手动描绘感兴趣的结构是非常耗时且繁重的任务。此外,随着所需时间和手动描​​绘的负担增加,描绘的准确性降低。因此,可能希望要求专家仅描绘减少数量的结构,或者可能根本无法实现所有专家对所有结构的分割。应采用考虑到缺失信息的方式,将数据与某些结构(并非由每个专家进行细分)进行融合。在其他应用程序中,局部不一致的分割可能会将STAPLE算法驱动到不理想的局部最优值,从而导致分类错误或专家性能参数产生误导。我们提出了一种新算法,该算法允许与部分轮廓融合,并且可以避免在存在强烈不一致的分割的情况下收敛到不良的局部最优。该算法通过合并专家性能参数的先验概率来扩展STAPLE。这是通过最大后验公式来实现的,其中性能参数的先验概率通过beta分布进行建模。我们证明,与与STAPLE融合相比,该新算法可以显着改善每位专家对具有部分轮廓的数据的融合。

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