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Automated Extraction of Surgical Needles from Tissue Phantoms

机译:自动提取组织幽灵的手术针

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We consider the surgical subtask of automated extraction of embedded suturing needles from silicone phantoms and propose a four-step algorithm consisting of calibration, needle segmentation, grasp planning, and path planning. We implement autonomous extraction of needles using the da Vinci Research Kit (dVRK). The proposed calibration method yields an average of 1.3mm transformation error between the dVRK end-effector and its overhead endoscopic stereo camera compared to 2.0mm transformation error using a standard rigid body transformation. In 143/160 images where a needle was detected, the needle segmentation algorithm planned appropriate grasp points with an accuracy of 97.20% and planned an appropriate pull trajectory to achieve extraction in 85.31% of images. For images segmented with >50% confidence, no errors in grasp or pull prediction occurred. In images segmented with 25-50% confidence, no erroneous grasps were planned, but a misdirected pull was planned in 6.45% of cases. In 100 physical trials, the dVRK successfully grasped needles in 75% of cases, and fully extracted needles in 70.7% of cases where a grasp was secured.
机译:我们考虑从硅氧烷幽灵的嵌入缝合针自动提取的手术子批次,并提出了一种由校准,针头分割,掌握规划和路径规划组成的四步算法。我们使用Da Vinci研究套件(DVRK)实施针对针的自主提取。所提出的校准方法在使用标准刚体变换的与2.0mm变换误差相比,DVRK末端效应器及其架空内窥镜立体声相机之间的平均值为1.3mm变换误差。在检测到针的143/160图像中,针分割算法计划适当的掌握点,精度为97.20%,并计划适当的拉伸轨迹以在85.31%的图像中实现提取。对于以> 50%的置信度分割的图像,不会发生掌握或拉动预测的错误。在以25-50%的信心分割的图像中,没有计划错​​误的掌握,但计划在6.45%的情况下计划误导拉动。在100个物理试验中,DVRK在75%的病例中成功掌握了针头,并在70.7%的情况下完全提取针头。

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