首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Parallel optimization of tumor model parameters for fast registration of brain tumor images
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Parallel optimization of tumor model parameters for fast registration of brain tumor images

机译:并行优化肿瘤模型参数以快速注册脑肿瘤图像

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The motivation of this work is to register MR brain tumor images with a brain atlas. Such a registration method can make possible the pooling of data from different brain tumor patients into a common stereotaxic space, thereby enabling the construction of statistical brain tumor atlases. Moreover, it allows the mapping of neuroanatomical brain atlases into the patient's space, for segmenting brains and thus facilitating surgical or radiotherapy treatment planning. However, the methods developed for registration of normal brain images are not directly applicable to the registration of a normal atlas with a tumor-bearing image, due to substantial dissimilarity and lack of equivalent image content between the two images, as well as severe deformation or shift of anatomical structures around the tumor. Accordingly, a model that can simulate brain tissue death and deformation induced by the tumor is considered to facilitate the registration. Such tumor growth simulation models are usually initialized by placing a small seed in the normal atlas. The shape, size and location of the initial seed are critical for achieving topological equivalence between the atlas and patient's images. In this study, we focus on the automatic estimation of these parameters, pertaining to tumor simulation. In particular, we propose an objective function reflecting feature-based similarity and elastic stretching energy and optimize it with APPSPACK (Asynchronous Parallel Pattern Search), for achieving significant reduction of the computational cost. The results indicate that the registration accuracy is high in areas around the tumor, as well as in the healthy portion of the brain.
机译:这项工作的动机是用脑图谱注册MR脑肿瘤图像。这种注册方法可以将来自不同脑肿瘤患者的数据汇集到一个共同的立体定位空间中,从而能够构建统计性脑肿瘤图集。而且,它允许将神经解剖学大脑图谱映射到患者的空间中,以分割大脑,从而促进外科手术或放射疗法的治疗计划。但是,由于两个图像之间的实质性差异和缺乏等效图像内容,以及严重变形或扭曲,开发的用于正常大脑图像配准的方法不能直接应用于带有肿瘤图像的正常地图集的配准。肿瘤周围的解剖结构转移。因此,考虑可以模拟由肿瘤引起的脑组织死亡和变形的模型以促进配准。此类肿瘤生长模拟模型通常通过将一粒小种子放入正常图谱中来初始化。初始种子的形状,大小和位置对于实现地图集和患者图像之间的拓扑等效性至关重要。在这项研究中,我们专注于这些参数的自动估计,与肿瘤模拟有关。特别是,我们提出了一个反映基于特征的相似性和弹性拉伸能量的目标函数,并使用APPSPACK(异步并行模式搜索)对其进行了优化,以实现计算成本的大幅降低。结果表明,在肿瘤周围区域以及大脑健康区域的配准准确性很高。

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