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Automatic segmentation of medical images using image registration: diagnostic and simulation applications.

机译:使用图像配准自动分割医学图像:诊断和模拟应用程序。

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摘要

Automatic identification of the boundaries of significant structure (segmentation) within a medical image is an are of ongoing research. Various approaches have been proposed but only two methods have achieved widespread use: manual delineation of boundaries and segmentation using intensity values. In this paper we describe an approach based on image registration. A reference image is prepared and segmented, by hand or otherwise. A patient image is registered to the reference image and the mapping then applied to ther reference segmentation to map it back to the patient image. In general a high-resolution nonlinear mapping is required to achieve accurate segmentation. This paper describes an algorithm that can efficiently generate such mappings, and outlines the uses of this tool in two relevant applications. An important feature of the approach described in this paper is that the algorithm is independent of the segmentation problem being addresses. All knowledge about the problem at hand is contained in files of reference data. A secondary benefit is that the continuous three-dimensional mapping generated is well suited to the generation of patient-specific numerical models (e.g. finite element meshes) from the library models. Smoothness constraints in the morphing algorithm tend to maintain the geometric quality of the reference mesh.
机译:自动识别医学图像内重要结构(分割)的边界是正在进行的研究。已经提出了各种方法,但是只有两种方法得到了广泛的使用:边界的手动描绘和使用强度值的分割。在本文中,我们描述了一种基于图像配准的方法。通过手工或其他方式准备和分割参考图像。将患者图像注册到参考图像,然后将映射应用于参考分割,以将其映射回患者图像。通常,需要高分辨率的非线性映射以实现精确的分割。本文介绍了一种可以有效生成此类映射的算法,并概述了此工具在两个相关应用程序中的用法。本文描述的方法的一个重要特征是该算法与地址分割问题无关。有关当前问题的所有知识都包含在参考数据文件中。第二个好处是,生成的连续三维映射非常适合从库模型生成特定于患者的数值模型(例如,有限元网格)。变形算法中的平滑度约束倾向于维持参考网格的几何质量。

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