a School of Control Science and Engineering , Shandong University , Jinan , China.
b CNRS, INSERM, TIMC-IMAG , University Grenoble-Alpes , Grenoble , France.
Comput Assist Surg (Abingdon). 2017 Dec;22(sup1):26-35. doi: 10.1080/24699322.2017.1378777. Epub 2017 Sep 22.
Worldwide propagation of minimally invasive surgeries (MIS) is hindered by their drawback of indirect observation and manipulation, while monitoring of surgical instruments moving in the operated body required by surgeons is a challenging problem. Tracking of surgical instruments by vision-based methods is quite lucrative, due to its flexible implementation via software-based control with no need to modify instruments or surgical workflow.
A MIS instrument is conventionally split into a shaft and end-effector portions, while a 2D/3D tracking-by-detection framework is proposed, which performs the shaft tracking followed by the end-effector one. The former portion is described by line features via the RANSAC scheme, while the latter is depicted by special image features based on deep learning through a well-trained convolutional neural network.
The method verification in 2D and 3D formulation is performed through the experiments on ex-vivo video sequences, while qualitative validation on in-vivo video sequences is obtained.
The proposed method provides robust and accurate tracking, which is confirmed by the experimental results: its 3D performance in ex-vivo video sequences exceeds those of the available state-of -the-art methods. Moreover, the experiments on in-vivo sequences demonstrate that the proposed method can tackle the difficult condition of tracking with unknown camera parameters. Further refinements of the method will refer to the occlusion and multi-instrumental MIS applications.
微创外科手术(MIS)在全球范围内的推广受到其间接观察和操作的缺点的阻碍,而外科医生所需的对在手术部位移动的手术器械的监测是一个具有挑战性的问题。基于视觉的手术器械跟踪方法具有很大的优势,因为它可以通过基于软件的控制灵活实现,而无需修改器械或手术流程。
传统上将 MIS 器械分为轴和末端执行器两部分,提出了一种 2D/3D 基于检测的跟踪框架,该框架首先进行轴跟踪,然后进行末端执行器跟踪。前者通过 RANSAC 方案用线特征描述,而后者通过基于深度学习的特殊图像特征进行描述,该特征通过经过良好训练的卷积神经网络获得。
通过对离体视频序列的实验对该方法进行了 2D 和 3D 形式的验证,并通过体内视频序列获得了定性验证。
所提出的方法提供了稳健和准确的跟踪,实验结果证实了这一点:其在离体视频序列中的 3D 性能优于现有的最先进方法。此外,对体内序列的实验表明,该方法可以解决跟踪未知相机参数的困难条件。该方法的进一步改进将涉及到器械遮挡和多器械 MIS 应用。