Visualizing the Correspondence of Feature Point Mapping between DICOM Images before and after Surgery

H. Noborio, Shota Uchibori, M. Koeda, Kaoru Watanabe
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Abstract

We extract feature point mapping between preoperative and postoperative Digital Imaging and Communications in Medicine (DICOM) images from magnetic resonance imaging (MRI) or from computer tomography (CT). The aim is to quantitatively investigate brain shift during intraoperative surgery. First, using 124 two-dimensional images constituting DICOM, a large number of 2D feature points are extracted as uniformly as possible inside the brain. Next, we extract one pair from the 124 preoperative images and the 124 postoperative images and construct map correspondences of similar feature points with a range of DICOM gray values. If the Euclidean distance between the two feature points in the 2D images is too large, the pair of feature points is deleted to prevent mis-mapping; brain shifts are usually less than 2-3 cm. Finally, we find image pairs with the highest number of mappings from DICOM images before and after surgery (two-dimensional stacked three-dimensional images), and generate graph representing correspondences between image pairs with the highest number. Finally, we visualize 3D correspondences between DICOM images before and after surgery.
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手术前后DICOM图像特征点映射的对应可视化
我们从磁共振成像(MRI)或计算机断层扫描(CT)中提取术前和术后数字成像和医学通信(DICOM)图像之间的特征点映射。目的是定量研究术中脑转移。首先,利用构成DICOM的124张二维图像,在大脑内部尽可能均匀地提取大量二维特征点。接下来,我们从124张术前图像和124张术后图像中提取一对,并使用DICOM灰度值范围构建相似特征点的映射对应关系。如果二维图像中两个特征点之间的欧氏距离太大,则删除这对特征点以防止误映射;脑部移位通常小于2-3厘米。最后,我们从手术前后的DICOM图像(二维叠加三维图像)中找到映射次数最多的图像对,并生成表示映射次数最多的图像对之间对应关系的图。最后,我们可视化了手术前后DICOM图像之间的三维对应关系。
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