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基于深度分割和双平面血管造影投影的自动三维血管重建。

Automated three-dimensional vessel reconstruction based on deep segmentation and bi-plane angiographic projections.

机构信息

Korea Institute of Medical Microrobotics, Gwangju, 61011, South Korea.

Korea Institute of Medical Microrobotics, Gwangju, 61011, South Korea; Robotics Engineering Convergence, Chonnam National University, Gwangju, 61186, South Korea.

出版信息

Comput Med Imaging Graph. 2021 Sep;92:101956. doi: 10.1016/j.compmedimag.2021.101956. Epub 2021 Jul 21.

Abstract

Automated three-dimensional (3D) blood vessel reconstruction to improve vascular diagnosis and therapeutics is a challenging task in which the real-time implementation of automatic segmentation and specific vessel tracking for matching artery sequences is essential. Recently, a deep learning-based segmentation technique has been proposed; however, existing state-of-the-art deep architectures exhibit reduced performance when they are employed using real in-vivo imaging because of serious issues such as low contrast and noise contamination of the X-ray images. To overcome these limitations, we propose a novel methodology composed of the de-haze image enhancement technique as pre-processing and multi-level thresholding as post-processing to be applied to the lightweight multi-resolution U-shaped architecture. Specifically, (1) bi-plane two-dimensional (2D) vessel images were extracted simultaneously using the deep architecture, (2) skeletons of the vessels were computed via a morphology operation, (3) the corresponding skeleton structure between image sequences was matched using the shape-context technique, and (4) the 3D centerline was reconstructed using stereo geometry. The method was validated using both in-vivo and in-vitro models. The results show that the proposed technique could improve the segmentation quality, reduce computation time, and reconstruct the 3D skeleton automatically. The algorithm accurately reconstructed the phantom model and the real mouse vessel in 3D in 2 s. Our proposed technique has the potential to allow therapeutic micro-agent navigation in clinical practice, thereby providing the 3D position and orientation of the vessel.

摘要

自动三维(3D)血管重建以改善血管诊断和治疗是一项具有挑战性的任务,其中实时实现自动分割和特定血管跟踪以匹配动脉序列至关重要。最近,提出了一种基于深度学习的分割技术;然而,现有的最先进的深度学习架构在使用真实体内成像时表现出性能下降,因为 X 射线图像对比度低和噪声污染等严重问题。为了克服这些限制,我们提出了一种由去雾图像增强技术作为预处理和多级阈值处理作为后处理组成的新方法,应用于轻量级多分辨率 U 形架构。具体来说,(1)使用深度架构同时提取双平面二维(2D)血管图像,(2)通过形态操作计算血管的骨架,(3)使用形状上下文技术匹配图像序列之间的相应骨架结构,(4)使用立体几何重建 3D 中心线。该方法在体内和体外模型上进行了验证。结果表明,所提出的技术可以提高分割质量、减少计算时间并自动重建 3D 骨架。该算法可以在 2 秒内准确重建幻影模型和真实小鼠血管的 3D 结构。我们提出的技术有可能允许在临床实践中进行治疗性微剂导航,从而提供血管的 3D 位置和方向。

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