Jin Ze, Udupa Jayaram K, Torigian Drew A
Laboratory for Future Interdisciplinary Research of Science and Technology, Institute of Innovative Research, Tokyo Institute of Technology, Tokyo, Japan.
Medical Image Processing Group, Department of Radiology, University of Pennsylvania, Philadelphia, PA, 19104, United States.
Proc SPIE Int Soc Opt Eng. 2020 Feb;11315. doi: 10.1117/12.2549827. Epub 2020 Mar 16.
Medical image processing and analysis operations, particularly segmentation, can benefit a great deal from prior information encoded to capture variations over a population in form, shape, anatomic layout, and image appearance of objects. Model/atlas-based methods are extant in medical image segmentation. Although multi-atlas/ multi-model methods have shown improved accuracy for image segmentation, if the atlases/models do not cover representatively the distinct groups, then the methods may not be generalizable to new populations. In a previous study, we have given an answer to address the following problem at image level: However, the number of models for different objects may be different, and at the image level, it may not be possible to infer the number of models needed for each object. So, the modified question to which we are now seeking an answer to in this paper is: To answer this question, we modified our method in the previous study for seeking the optimum grouping for a given population of images but focusing on the individual objects. We present our results on head and neck computed tomography (CT) scans of 298 patients.
医学图像处理与分析操作,尤其是分割,能够从编码的先验信息中受益匪浅,这些先验信息用于捕捉人群中物体在形态、形状、解剖布局及图像外观方面的变化。基于模型/图谱的方法在医学图像分割中已存在。尽管多图谱/多模型方法在图像分割方面已显示出更高的准确性,但如果图谱/模型不能代表性地涵盖不同群体,那么这些方法可能无法推广到新的人群。在之前的一项研究中,我们已给出了在图像层面解决以下问题的答案:然而,针对不同物体的模型数量可能不同,并且在图像层面,可能无法推断出每个物体所需的模型数量。所以,我们现在在本文中寻求答案的修改后的问题是:为了回答这个问题,我们在之前的研究中修改了我们的方法,以针对给定的图像群体寻找最优分组,但重点关注单个物体。我们展示了对298名患者的头部和颈部计算机断层扫描(CT)的结果。