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用于区域麻醉的超声图像中神经检测的基于相位的概率活动轮廓模型

Phase-based probabilistic active contour for nerve detection in ultrasound images for regional anesthesia.

作者信息

Hafiane Adel, Vieyres Pierre, Delbos Alain

机构信息

INSA Centre Val de Loire, Univ. Orléans, PRISME EA 4229, 88 boulevard Lahitolle, F-18022 Bourges, France.

IUT de Bourges, Univ. Orléans, PRISME EA 4229, 63 Avenue de Lattre de Tassigny, F-18020 Bourges, France.

出版信息

Comput Biol Med. 2014 Sep;52:88-95. doi: 10.1016/j.compbiomed.2014.06.001. Epub 2014 Jun 16.

DOI:10.1016/j.compbiomed.2014.06.001
PMID:25016592
Abstract

Ultrasound guided regional anesthesia (UGRA) is steadily growing in popularity, owing to advances in ultrasound imaging technology and the advantages that this technique presents for safety and efficiency. The aim of this work is to assist anaesthetists during the UGRA procedure by automatically detecting the nerve blocks in the ultrasound images. The main disadvantage of ultrasound images is the poor quality of the images, which are also affected by the speckle noise. Moreover, the nerve structure is not salient amid the other tissues, which makes its detection a challenging problem. In this paper we propose a new method to tackle the problem of nerve zone detection in ultrasound images. The method consists in a combination of three approaches: probabilistic, edge phase information and active contours. The gradient vector flow (GVF) is adopted as an edge-based active contour. The phase analysis of the monogenic signal is used to provide reliable edges for the GVF. Then, a learned probabilistic model reduces the false positives and increases the likelihood energy term of the target region. It yields a new external force field that attracts the active contour toward the desired region of interest. The proposed scheme has been applied to sciatic nerve regions. The qualitative and quantitative evaluations show a high accuracy and a significant improvement in performance.

摘要

由于超声成像技术的进步以及该技术在安全性和效率方面所具有的优势,超声引导区域麻醉(UGRA)正日益受到欢迎。这项工作的目的是通过自动检测超声图像中的神经阻滞,在UGRA手术过程中协助麻醉师。超声图像的主要缺点是图像质量差,且受斑点噪声影响。此外,神经结构在其他组织中并不突出,这使得其检测成为一个具有挑战性的问题。在本文中,我们提出了一种新方法来解决超声图像中神经区域检测的问题。该方法由三种方法组合而成:概率法、边缘相位信息法和活动轮廓法。采用梯度向量流(GVF)作为基于边缘的活动轮廓。单基因信号的相位分析用于为GVF提供可靠的边缘。然后,一个经过学习的概率模型减少误报,并增加目标区域的似然能量项。它产生一个新的外力场,将活动轮廓吸引到所需的感兴趣区域。所提出的方案已应用于坐骨神经区域。定性和定量评估显示出高精度和性能上的显著提高。

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Br J Anaesth. 2024 May;132(5):1049-1062. doi: 10.1016/j.bja.2024.01.036. Epub 2024 Mar 5.
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Artificial Intelligence: Innovation to Assist in the Identification of Sono-anatomy for Ultrasound-Guided Regional Anaesthesia.
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