The Hamlyn Centre for Robotic Surgery, Imperial College London, London, UK.
Med Image Anal. 2018 Feb;44:86-97. doi: 10.1016/j.media.2017.11.009. Epub 2017 Dec 1.
Real-time 3D navigation during minimally invasive procedures is an essential yet challenging task, especially when considerable tissue motion is involved. To balance image acquisition speed and resolution, only 2D images or low-resolution 3D volumes can be used clinically. In this paper, a real-time and registration-free framework for dynamic shape instantiation, generalizable to multiple anatomical applications, is proposed to instantiate high-resolution 3D shapes of an organ from a single 2D image intra-operatively. Firstly, an approximate optimal scan plane was determined by analyzing the pre-operative 3D statistical shape model (SSM) of the anatomy with sparse principal component analysis (SPCA) and considering practical constraints. Secondly, kernel partial least squares regression (KPLSR) was used to learn the relationship between the pre-operative 3D SSM and a synchronized 2D SSM constructed from 2D images obtained at the approximate optimal scan plane. Finally, the derived relationship was applied to the new intra-operative 2D image obtained at the same scan plane to predict the high-resolution 3D shape intra-operatively. A major feature of the proposed framework is that no extra registration between the pre-operative 3D SSM and the synchronized 2D SSM is required. Detailed validation was performed on studies including the liver and right ventricle (RV) of the heart. The derived results (mean accuracy of 2.19 mm on patients and computation speed of 1 ms) demonstrate its potential clinical value for real-time, high-resolution, dynamic and 3D interventional guidance.
实时 3D 导航在微创手术中是一项至关重要但极具挑战性的任务,尤其是在涉及大量组织运动时。为了平衡图像采集速度和分辨率,临床上只能使用 2D 图像或低分辨率的 3D 体数据。本文提出了一种实时、无配准的动态形状实例化框架,可推广到多个解剖应用,以便在术中从单个 2D 图像实例化器官的高分辨率 3D 形状。首先,通过稀疏主成分分析(SPCA)分析解剖结构的术前 3D 统计形状模型(SSM)并考虑实际约束,确定近似最佳扫描平面。其次,使用核偏最小二乘回归(KPLSR)学习术前 3D SSM 与从近似最佳扫描平面获得的 2D 图像构建的同步 2D SSM 之间的关系。最后,将得到的关系应用于在同一扫描平面获得的新的术中 2D 图像,以预测术中的高分辨率 3D 形状。该框架的一个主要特点是不需要在术前 3D SSM 和同步 2D SSM 之间进行额外的配准。在包括肝脏和心脏的右心室(RV)的研究中进行了详细的验证。得出的结果(在患者身上的平均准确性为 2.19 毫米,计算速度为 1 毫秒)表明其具有用于实时、高分辨率、动态和 3D 介入引导的潜在临床价值。