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Optimal MAP Parameters Estimation in STAPLE - Learning from Performance Parameters versus Image Similarity Information

机译:STAPLE中的最佳MAP参数估计-从性能参数与图像相似性信息中学习

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In many medical imaging applications, merging segmentations obtained from multiple reference images (i.e., templates) has become a standard practice for improving the accuracy as well as reliability. Simultaneous Truth And Performance Level Estimation (STAPLE) is a widely used fusion algorithm that simultaneously estimates both performance parameters for each template, and the output segmentation; a more accurate estimation of performance parameters consequently results in more accurate output segmentations. In this paper, we propose a new approach for learning prior knowledge about the performance pa-rameters of each template, and for incorporating it into the Maximum-a-Posteriori (MAP) formulation of the STAPLE, so that more accurate output segmentations can be obtained. More specifically, we propose a new approach to learn, for each structure to be segmented, the relationships between the performance parameters (viz. sensitivity and specificity) and the intensity similarities; we also propose a methodology for transferring this prior knowledge about the performance parameters into the STAPLE algorithm through optimal setting of the MAP parameters. The proposed approach is evaluated for the segmentation of structures in the brain MR images. These experiments have clearly demonstrated the advantages of incorporating such prior knowledge.
机译:在许多医学成像应用中,合并从多个参考图像(即,模板)获得的分割已经成为提高准确性和可靠性的标准实践。真相和性能水平同时估算(STAPLE)是一种广泛使用的融合算法,可以同时估算每个模板的性能参数和输出分段。因此,对性能参数的更准确的估计会导致更准确的输出细分。在本文中,我们提出了一种新方法,用于学习有关每个模板的性能参数的先验知识,并将其合并到STAPLE的Maximum-a-Posteriori(MAP)公式中,以便可以进行更准确的输出细分获得。更具体地说,我们提出了一种新的方法来学习要分割的每个结构的性能参数(即灵敏度和特异性)与强度相似性之间的关系。我们还提出了一种通过优化设置MAP参数将有关性能参数的先验知识转移到STAPLE算法中的方法。针对脑MR图像中的结构分割,评估了所提出的方法。这些实验已经清楚地证明了结合这种先验知识的优点。

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