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首页> 外文期刊>The International journal of robotics research >Robot-assisted Long Bone Fracture Reduction
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Robot-assisted Long Bone Fracture Reduction

机译:机器人辅助的长骨骨折复位

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The preferred treatment of femoral (thigh bone) shaft fractures nowadays is the minimally invasive technique of intramedullary nailing. However, in addition to its advantages, this technique also has a number of disadvantages, such as the frequent occurrence of malaligned fracture reductions and high X-ray exposure, especially to the operating team. The aim of our research is to overcome these shortcomings by utilizing modern techniques such as three-dimensional (3D) imaging, navigation, and robotics. In this paper we present the current state of our interdisciplinary research project. We first introduce a telemanipulated fracture reduction procedure, which is based on 3D imaging data. This set-up is improved one step further towards an automated fracture reduction procedure. Finally, two drilling tasks, namely the opening of the medullar cavity and the distal locking of the intramedullary nail, are presented, which are supported by automated X-ray-based image analysis and robot-assisted drill guidance. We show that high reduction accuracies can be achieved with our robotic system. Furthermore, the robot-assisted drill guidance achieves superior results with respect to increased precision and decreased X-ray exposure compared with the conventional procedure. We conclude that this surgical procedure benefits conspicuously from the support of robotic assistance systems and that further research and development in this field is worthwhile.
机译:如今,股骨(大腿骨)干骨折的首选治疗方法是髓内钉的微创技术。然而,除了其优点之外,该技术还具有许多缺点,例如频繁发生不正确的骨折复位和高X射线暴露,特别是对操作团队而言。我们研究的目的是通过利用诸如三维(3D)成像,导航和机器人技术之类的现代技术来克服这些缺点。在本文中,我们介绍了我们的跨学科研究项目的现状。我们首先介绍基于3D影像数据的远距骨折复位程序。朝着自动减少骨折的程序进一步改善了这一设置。最后,提出了两个钻孔任务,即髓腔的打开和髓内钉的远侧锁定,这些任务由基于自动X射线的图像分析和机器人辅助的钻孔指导来支持。我们证明,使用我们的机器人系统可以实现较高的还原精度。此外,与传统程序相比,在提高精度和减少X射线曝光方面,机器人辅助的钻机引导获得了卓越的结果。我们得出的结论是,这种手术程序明显受益于机器人辅助系统的支持,值得在该领域进行进一步的研究和开发。

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