利用高通滤波和漫反射增强针刺检测。

IF 2.9 Q2 ROBOTICS
Frontiers in Robotics and AI Pub Date : 2025-05-06 eCollection Date: 2025-01-01 DOI:10.3389/frobt.2025.1429327
Rachael L'Orsa, Anupam Bisht, Linhui Yu, Kartikeya Murari, Garnette R Sutherland, David T Westwick, Katherine J Kuchenbecker
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引用次数: 0

摘要

胸部创伤或疾病进展可导致紧张性气胸,这种情况下,胸膜腔(胸壁和肺之间的空间)的压力不断增加,可迅速导致心脏骤停。在院前环境中,张力性气胸的治疗是通过穿过胸壁的针向胸膜腔放气。然而,据报道院前针头减压失败率非常高(高达94.1%),并且由于该过程是盲目进行的,因此可能导致意外穿刺胸部关键组织。仪表化的针头可以帮助操作人员更可靠地识别工具何时进入目标空间。方法:探讨提供此类支持的技术途径;我们创建了一个实验系统,该系统可以获取针的力和位置信号,以及通过两根孔内光纤从针的尖端传输和收集的白光的漫反射反射。数据收集是在两名实验者将一根斜尖经皮针插入模拟人类胸部解剖的离体猪肋骨切片时进行的。文献中的四种数据驱动的刺孔检测(DDPD)算法适用于手动插入产生的可变工具速度,并将其应用于离线生成的数据集。在关键信号处理参数中进行网格搜索,应用高通滤波器(hpf)来检查它们对穿刺检测的影响,并首次探索了多模态(集成)方法。结果:将高通滤波器与DDPD方法相结合,使力信号产生的最大整体精度(MOP)提高2.7倍(从8.2%提高到21.9%)。将HPF + DDPD方案应用于反射率数据流的峰值MOP为36.4%,反射率与力相结合的总体MOP最佳(42.1%);与传统应用DDPD算法产生的最佳MOP相比,这些结果分别提高了4.4倍和5.1倍。讨论:这些结果有力地支持高通滤波器与仅反射和多模态反射加力数据驱动的针刺检测方案相结合,用于针头减压应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing needle puncture detection using high-pass filtering and diffuse reflectance.

Introduction: Chest trauma or disease progression can lead to tension pneumothorax, a condition where mounting pressurization of the pleural cavity (the space between the chest wall and the lungs) leads rapidly to cardiac arrest. In pre-hospital settings, tension pneumothorax is treated by venting the pleural cavity via a needle introduced through the chest wall. Very high failure rates (up to 94.1%) have been reported for pre-hospital needle decompression, however, and the procedure can result in the accidental puncture of critical thoracic tissues because it is performed blind. Instrumented needles could help operators more reliably identify when the tool has entered the target space.

Methods: This paper investigates technical approaches to provide such support; we created an experimental system that acquires needle force and position signals, as well as the diffuse backscattered reflectance from white light carried to and collected from the needle's tip via two in-bore optical fibers. Data collection occurred while two experimenters inserted a bevel-tipped percutaneous needle into an ex vivo porcine rib section simulating human chest anatomy. Four data-driven puncture-detection (DDPD) algorithms from the literature, which are appropriate for use with the variable tool velocities produced by manual insertions, were applied to the resulting data set offline. Grid search was performed across key signal-processing parameters, high-pass filters (HPFs) were applied to examine their impact on puncture detection, and a first exploration of multimodal (ensemble) methods was performed.

Results: Combining high-pass filters with DDPD methods resulted in a 2.7-fold improvement (from 8.2% to 21.9%) in the maximum overall precision (MOP) produced by force signals. Applying this HPF + DDPD scheme to reflectance data streams yielded a peak MOP of 36.4%, and combining reflectance with force generated the best MOP overall (42.1%); these results represent 4.4-fold and 5.1-fold improvements, respectively, over the best MOP produced by the traditional application of DDPD algorithms to force signals alone.

Discussion: These results strongly support the utility of high-pass filters combined with both reflectance-only and multimodal reflectance-plus-force data-driven puncture-detection schemes for needle decompression applications.

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来源期刊
CiteScore
6.50
自引率
5.90%
发文量
355
审稿时长
14 weeks
期刊介绍: Frontiers in Robotics and AI publishes rigorously peer-reviewed research covering all theory and applications of robotics, technology, and artificial intelligence, from biomedical to space robotics.
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