Jackson Russell C, Desai Viraj, Castillo Jean P, Çavuşoğlu M Cenk
Department of Electrical Engineering and Computer Science (EECS) at Case Western Reserve University in Cleveland, OH, USA.
Rep U S. 2016 Oct;2016:3659-3664. doi: 10.1109/IROS.2016.7759539.
Robotically Assisted Minimally Invasive Surgery (RAMIS) offers many advantages over manual surgical techniques. Most of the limitations of RAMIS stem from its non-intuitive user interface and costs. One way to mitigate some of the limitations is to automate surgical subtasks (e.g. suturing) such that they are performed faster while allowing the surgeon to plan the next step of the procedure. One component of successful suture automation is minimizing the internal tissue deformation forces generated by driving a needle through tissue. Minimizing the internal tissue forces requires segmenting the tissue deformation forces from other components of the needle tissue interaction (e.g. friction force). This paper proposes an Unscented Kalman Filter which can successfully model the force components, in particular the internal deformation force, generated by a needle as it is driven through a sample of tissue.
机器人辅助微创手术(RAMIS)相对于手动手术技术具有许多优势。RAMIS的大多数局限性源于其不直观的用户界面和成本。减轻某些局限性的一种方法是使手术子任务(例如缝合)自动化,以便更快地执行这些任务,同时允许外科医生规划手术的下一步。成功实现缝合自动化的一个要素是将穿刺组织时驱动针产生的内部组织变形力降至最低。最小化内部组织力需要将组织变形力与针-组织相互作用的其他分量(例如摩擦力)区分开来。本文提出了一种无迹卡尔曼滤波器,它可以成功地对针穿刺组织样本时产生的力分量,特别是内部变形力进行建模。