Optical Fiber -Based Needle Shape Sensing: Three-channel Single Core vs. Multicore Approaches.

Alexandra Cheng, Dimitri A Lezcano, Jin Seob Kim, Iulian I Iordachita
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引用次数: 1

Abstract

Bevel-tip needles are commonly utilized in percutaneous medical interventions where a curved insertion trajectory is required. To avoid deviation from the intended trajectory, needle shape sensing and tip localization is crucial in providing the operator with feedback. There is an abundance of previous work that investigate the medical application of fiber Bragg grating (FBG) sensors, but most works select only one specific type of fiber among the many available sensor options to integrate into their hardware designs. In this work, we compare two different types of FBG sensors under identical conditions and application, namely, acting as the sensor for needle insertion shape reconstruction. We built a three-channel single core needle and a seven-channel multicore fiber (MCF) needle and discuss the pros and cons of both constructions for shape sensing experiments into constant curvature jigs. The overall needle tip error is 1.23 mm for the single core needle and 2.08 mm for the multicore needle.

基于光纤的针形传感:三通道单核与多核方法。
斜头针通常用于经皮医疗干预,其中需要弯曲的插入轨迹。为了避免偏离预定轨迹,针形传感和针尖定位在向操作员提供反馈方面至关重要。以前有大量研究光纤布拉格光栅(FBG)传感器的医疗应用的工作,但大多数工作只选择一种特定类型的光纤在许多可用的传感器选项中集成到他们的硬件设计中。在这项工作中,我们比较了两种不同类型的FBG传感器在相同的条件和应用下,即作为针插入形状重建的传感器。我们构建了一个三通道单芯针和一个七通道多芯光纤(MCF)针,并讨论了两种结构的优缺点,用于恒曲率夹具的形状传感实验。单芯针的总针尖误差为1.23 mm,多芯针的总针尖误差为2.08 mm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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