Automated localization of anatomical landmark points in 3D medical images

K. Gan
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引用次数: 1

Abstract

Anatomical landmark point are 3D points in a well-defined anatomical structure in which correspondences between and within the population of the anatomical structure are preserved. Accurate delineation of the landmark points is crucial task for many medical imaging applications. However, in most current clinical applications, the anatomical landmark points are usually manually delineated by experts, which is time-consuming and irreproducible. In this study, an automated method for identification of anatomical landmark points in 3D medical images is presented. A 3D rotationally-invariant image descriptor was adopted to extract image information of pre-defined landmark points in a template image, and then use the information to identify corresponding landmark points in transformed images. This method was implemented and tested on 3D magnetic resonance images of human brain. Experimental results suggested this method can be potentially useful for identification of anatomical landmark points in 3D medical images.
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三维医学图像中解剖地标点的自动定位
解剖地标点是定义明确的解剖结构中的三维点,其中保留了解剖结构种群之间和内部的对应关系。对于许多医学成像应用来说,准确描绘地标点是至关重要的任务。然而,在目前的大多数临床应用中,解剖标志点通常由专家手动划定,耗时且不可复制。在本研究中,提出了一种自动识别三维医学图像中解剖地标点的方法。采用三维旋转不变图像描述符提取模板图像中预定义的地标点的图像信息,然后利用这些信息识别变换后图像中相应的地标点。该方法在人脑三维磁共振图像上进行了实现和测试。实验结果表明,该方法可用于三维医学图像中解剖地标点的识别。
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