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Assistive system based on nerve detection and needle navigation in ultrasound images for regional anesthesia

机译:基于神经检测和针头导航的超声图像区域麻醉辅助系统

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The development of Ultrasound-Guided Regional Anesthesia (UGRA) is of great help to practitioners of regional anesthesia as it enables real time visualization of the needle, the targeted nerve, and different anatomic structures. However, the clinician has to perform a complex hand coordination to keep the needle, the nerve and some key regions visible in the ultrasound image plane. Daily clinical practice therefore requires a high degree of training and practical skill to identify the nerve block and steer the needle to it There are two critical steps in UGRA: the recognition of anatomical structures and steering the needle to the target region. An intelligent system, with the ability to identify the regions of interest and to provide the needle insertion trajectory in ultrasound images, can significantly improve UGRA practice and generalize it to medical facilities that lack practitioners. It would also make the UGRA procedure safer (i.e., reducing the risk of nerve trauma). This work presents the first fully automatic system for the detection of regions of interest and generation of the needle trajectory for UGRA. Several problems were addressed, in two stages. The first one consisted in the automatic localization and segmentation of the nerve (target) and arteries (obstacles) in ultrasound images. A new method based on a machine learning algorithm with a multi-model classification process using a sliding window for localization, then an active contour was applied to delineate the localized regions. In the second stage, an algorithm for path planning was also developed to obtain the optimal trajectory for needle insertion based on the result of the first stage (target and obstacle detection). To check the effectiveness of the proposed system, firstly, experiments were performed over individual modules of the detection framework. Secondly, a comparison between the overall framework and the existing method was performed. Two data-sets were acquired in real conditions at different times to prove the robustness of our method. The first data-set contained eight patients and the second data-set, acquired one year later, contained five patients. Experimental results demonstrate the robustness of the proposed scheme and the feasibility of such an assistive system. (C) 2016 Elsevier Ltd. All rights reserved.
机译:超声引导区域麻醉(UGRA)的发展对区域麻醉从业人员有很大帮助,因为它可以实时显示针头,目标神经和不同解剖结构。但是,临床医生必须执行复杂的手部协调操作,以使针,神经和一些关键区域在超声图像平面中可见。因此,日常临床实践需要高度的培训和实践技能,以识别神经阻滞并将针引导至神经阻滞。UGRA中有两个关键步骤:解剖结构的识别和将针引导至目标区域。具有识别感兴趣区域并在超声图像中提供针头插入轨迹的能力的智能系统可以显着改善UGRA实践并将其推广到缺乏执业医师的医疗机构。这也将使UGRA程序更安全(即减少神经外伤的风险)。这项工作提出了第一个全自动系统,用于检测感兴趣的区域并生成UGRA的针迹。分两个阶段解决了几个问题。第一个包括超声图像中神经(目标)和动脉(障碍物)的自动定位和分段。一种基于机器学习算法的新方法,该方法具有使用滑窗进行定位的多模型分类过程,然后使用活动轮廓来描绘局部区域。在第二阶段,还开发了用于路径规划的算法,以便根据第一阶段的结果(目标和障碍物检测)获得最佳的针头插入轨迹。为了检查所提出系统的有效性,首先,对检测框架的各个模块进行了实验。其次,对整个框架与现有方法进行了比较。在不同时间的实际条件下获取了两个数据集,以证明我们方法的鲁棒性。第一个数据集包含八位患者,一年后获取的第二个数据集包含五位患者。实验结果证明了所提方案的鲁棒性和这种辅助系统的可行性。 (C)2016 Elsevier Ltd.保留所有权利。

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