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用于有源手持式显微神经外科手术器械虚拟夹具的实时血管分割与重建。

Real-time vessel segmentation and reconstruction for virtual fixtures for an active handheld microneurosurgical instrument.

作者信息

Venugopal Aravind, Moccia Sara, Foti Simone, Routray Arpita, MacLachlan Robert A, Perin Alessandro, Mattos Leonardo S, Yu Alexander K, Leonardo Jody, De Momi Elena, N Riviere Cameron

机构信息

Department of Computer Science, BITS Pilani, Pilani, Goa, India.

The BioRobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy.

出版信息

Int J Comput Assist Radiol Surg. 2022 Jun;17(6):1069-1077. doi: 10.1007/s11548-022-02584-5. Epub 2022 Mar 16.

Abstract

PURPOSE

Complications related to vascular damage such as intra-operative bleeding may be avoided during neurosurgical procedures such as petroclival meningioma surgery. To address this and improve the patient's safety, we designed a real-time blood vessel avoidance strategy that enables operation on deformable tissue during petroclival meningioma surgery using Micron, a handheld surgical robotic tool.

METHODS

We integrated real-time intra-operative blood vessel segmentation of brain vasculature using deep learning, with a 3D reconstruction algorithm to obtain the vessel point cloud in real time. We then implemented a virtual-fixture-based strategy that prevented Micron's tooltip from entering a forbidden region around the vessel, thus avoiding damage to it.

RESULTS

We achieved a median Dice similarity coefficient of 0.97, 0.86, 0.87 and 0.77 on datasets of phantom blood vessels, petrosal vein, internal carotid artery and superficial vessels, respectively. We conducted trials with deformable clay vessel phantoms, keeping the forbidden region 400 [Formula: see text]m outside and 400 [Formula: see text]m inside the vessel. Micron's tip entered the forbidden region with a median penetration of just 8.84 [Formula: see text]m and 9.63 [Formula: see text]m, compared to 148.74 [Formula: see text]m and 117.17 [Formula: see text]m without our strategy, for the former and latter trials, respectively.

CONCLUSION

Real-time control of Micron was achieved at 33.3 fps. We achieved improvements in real-time segmentation of brain vasculature from intra-operative images and showed that our approach works even on non-stationary vessel phantoms. The results suggest that by enabling precise, real-time control, we are one step closer to using Micron in real neurosurgical procedures.

摘要

目的

在诸如岩斜区脑膜瘤手术等神经外科手术过程中,可避免与血管损伤相关的并发症,如术中出血。为解决这一问题并提高患者安全性,我们设计了一种实时血管避让策略,该策略可使用手持手术机器人工具Micron在岩斜区脑膜瘤手术期间对可变形组织进行手术操作。

方法

我们将使用深度学习的脑脉管系统实时术中血管分割与三维重建算法相结合,以实时获取血管点云。然后,我们实施了一种基于虚拟夹具的策略,该策略可防止Micron的工具尖端进入血管周围的禁区,从而避免对其造成损伤。

结果

我们在虚拟血管、岩静脉、颈内动脉和浅表血管数据集上分别实现了0.97、0.86、0.87和0.77的中位骰子相似系数。我们使用可变形黏土血管模型进行试验,将禁区设置在血管外部400 [公式:见原文]m和内部400 [公式:见原文]m处。与未采用我们策略时分别为148.74 [公式:见原文]m和117.17 [公式:见原文]m的穿透深度相比,在前后两次试验中,Micron的尖端进入禁区的中位穿透深度分别仅为8.84 [公式:见原文]m和9.63 [公式:见原文]m。

结论

以33.3帧/秒的速度实现了对Micron的实时控制。我们在从术中图像进行脑脉管系统实时分割方面取得了改进,并表明我们的方法即使在非静止血管模型上也有效。结果表明,通过实现精确的实时控制,我们离在实际神经外科手术中使用Micron又近了一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e9f0/11285625/e3d12ec465dd/nihms-1999800-f0001.jpg

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