基于计算机断层扫描的肾脏三维重建和3D打印

Yu Huang, J. Hsieh, Chian-Hong Lee, Yun-Chih Chen, Po-Jen Chuang
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引用次数: 1

摘要

本文提出了一种基于CT图像重建肾脏三维结构的新系统。在重建之前,应从每张CT图像中对肾脏区域进行很好的分割。本文提出了一种深度学习方法,从CT图像中粗略分割每个肾脏区域作为初始起点,指导轮廓跟踪以细化其最终边界。但由于CT的辐射风险较高,不能对患者进行密集扫描,导致CT图像在z轴上的分辨率不够好,无法进行三维重建;即层间距离大于5mm。为了解决这一问题,提出了一种新的插值方法,既提高了横切面的重建效果,又提高了纵切面的重建效果。然而,这两种观点并不完全一致。然后,在插值之前,提出了一种对齐方案,使两个视图很好地匹配。对齐后,这组CT图像可以很好地重建肾脏的细粒度三维结构,但在Z轴上分辨率较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-Dimensional Reconstruction and 3D Printing of Kidney from Computed Tomography
This paper presents a novel system to reconstruct 3D kidney structure from CT images. Before reconstruction, the kidney region should be well segmented from each CT image. This paper presents a deep learning method to segment each kidney region roughly from the CT image as initial starting points to guide a contour tracking to refine its final boundaries. However, due to the higher radiation risk from CT, a patient cannot be scanned densely so that the resolution of CT images in the Z-axis is not good enough for 3D reconstruction; that is, the distance between layers is larger than 5mm. To tackle this problem, a novel interpolation method is proposed to enhance the reconstruction results not only from the cross-section view but also the longitudinal-section view. However, the two views are not well aligned. Then, before interpolation, an alignment scheme is proposed to register the two views well. After alignment, the fine-grained 3D structure of kidney can be well reconstructed from this set of CT images with a lower-resolution in the Z axis.
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