Ebrahimi Ali, Sefati Shahriar, Gehlbach Peter, Taylor Russell H, Iordachita Iulian
Department of Mechanical Engineering and also Laboratory for Computational Sensing and Robotics at the Johns Hopkins University, Baltimore, MD, 21218, USA.
Wilmer Eye Institute, Johns Hopkins Hospital, Baltimore, MD, 21287, USA.
IEEE Trans Robot. 2023 Apr;39(2):1373-1387. doi: 10.1109/tro.2022.3201393. Epub 2022 Sep 9.
Notable challenges during retinal surgery lend themselves to robotic assistance which has proven beneficial in providing a safe steady-hand manipulation. Efficient assistance from the robots heavily relies on accurate sensing of surgery states (e.g. instrument tip localization and tool-to-tissue interaction forces). Many of the existing tool tip localization methods require preoperative frame registrations or instrument calibrations. In this study using an iterative approach and by combining vision and force-based methods, we develop calibration- and registration-independent (RI) algorithms to provide online estimates of instrument stiffness (least squares and adaptive). The estimations are then combined with a state-space model based on the forward kinematics (FWK) of the Steady-Hand Eye Robot (SHER) and Fiber Brag Grating (FBG) sensor measurements. This is accomplished using a Kalman Filtering (KF) approach to improve the deflected instrument tip position estimations during robot-assisted eye surgery. The conducted experiments demonstrate that when the online RI stiffness estimations are used, the instrument tip localization results surpass those obtained from pre-operative offline calibrations for stiffness.
视网膜手术中存在的显著挑战适合采用机器人辅助,事实证明,这在提供安全的稳定手部操作方面是有益的。机器人的高效辅助在很大程度上依赖于对手术状态的准确感知(例如器械尖端定位和工具与组织的相互作用力)。许多现有的工具尖端定位方法需要术前帧配准或器械校准。在本研究中,我们采用迭代方法,结合视觉和基于力的方法,开发了独立于校准和配准(RI)的算法,以提供器械刚度的在线估计(最小二乘法和自适应法)。然后,将这些估计与基于稳定手部眼机器人(SHER)的正向运动学(FWK)和光纤布拉格光栅(FBG)传感器测量的状态空间模型相结合。这是通过卡尔曼滤波(KF)方法实现的,以改善机器人辅助眼部手术期间偏转器械尖端位置的估计。进行的实验表明,当使用在线RI刚度估计时,器械尖端定位结果超过了术前离线校准刚度所获得的结果。