Centre for Medical Image Computing, University College London, U.K..
Dep. of Medical Physics and Biomedical Engineering, University College London, U.K.; School of Biomedical Engineering and Imaging Science, Kings College London, U.K.
Med Image Anal. 2019 Feb;52:97-108. doi: 10.1016/j.media.2018.11.007. Epub 2018 Nov 19.
Multi-Atlas based Segmentation (MAS) algorithms have been successfully applied to many medical image segmentation tasks, but their success relies on a large number of atlases and good image registration performance. Choosing well-registered atlases for label fusion is vital for an accurate segmentation. This choice becomes even more crucial when the segmentation involves organs characterized by a high anatomical and pathological variability. In this paper, we propose a new genetic atlas selection strategy (GAS) that automatically chooses the best subset of atlases to be used for segmenting the target image, on the basis of both image similarity and segmentation overlap. More precisely, the key idea of GAS is that if two images are similar, the performances of an atlas for segmenting each image are similar. Since the ground truth of each atlas is known, GAS first selects a predefined number of similar images to the target, then, for each one of them, finds a near-optimal subset of atlases by means of a genetic algorithm. All these near-optimal subsets are then combined and used to segment the target image. GAS was tested on single-label and multi-label segmentation problems. In the first case, we considered the segmentation of both the whole prostate and of the left ventricle of the heart from magnetic resonance images. Regarding multi-label problems, the zonal segmentation of the prostate into peripheral and transition zone was considered. The results showed that the performance of MAS algorithms statistically improved when GAS is used.
基于多图谱的分割(MAS)算法已成功应用于许多医学图像分割任务,但它们的成功依赖于大量的图谱和良好的图像配准性能。选择用于标签融合的配准良好的图谱对于准确的分割至关重要。当分割涉及到具有高度解剖和病理变异性的器官时,这种选择变得更加关键。在本文中,我们提出了一种新的遗传图谱选择策略(GAS),该策略基于图像相似性和分割重叠,自动选择用于分割目标图像的最佳图谱子集。更确切地说,GAS 的关键思想是,如果两个图像相似,那么用于分割每个图像的图谱的性能也相似。由于每个图谱的真实值都是已知的,GAS 首先选择与目标图像具有预定义相似性的图像数量,然后,对于每一个图像,通过遗传算法找到一个接近最优的图谱子集。然后将所有这些接近最优的子集组合起来,用于分割目标图像。GAS 在单标签和多标签分割问题上进行了测试。在第一种情况下,我们考虑了从磁共振图像中分割整个前列腺和左心室。对于多标签问题,考虑了前列腺的分区分割为周围区和移行区。结果表明,当使用 GAS 时,MAS 算法的性能在统计上得到了提高。