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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Automatic Detection of Lumbar Anatomy in Ultrasound Images of Human Subjects
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Automatic Detection of Lumbar Anatomy in Ultrasound Images of Human Subjects

机译:人体超声图像中腰椎解剖结构的自动检测

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Ultrasound has been proposed for aiding epidural needle insertion, but challenges remain in differentiating spinal structures due to noise, artifacts, and inexperience by anesthesiologists in ultrasound interpretation. Moreover, the anesthesiologist needs to measure relevant distances while preserving sterile conditions; therefore, interaction with the ultrasound controls must be minimal. Automated measurement is needed. Beam-steered ultrasound images are captured and spatial compounding is used to improve image quality. Phase symmetry is used to enhance bone (lamina) and ligamentum flavum (LF) ridges. A lamina template is matched to this ridge map using Pearson''s cross-correlation, and the most likely lamina positions are found. Then, the lamina is traversed using a LF template with the Pearson''s cross-correlation, and the location of the LF is obtained. Tests are performed on 39 sets of compounded ultrasound images in the L2–3 and L3–4 levels of the spine in the paramedian plane. The proposed algorithm can detect the laminas in 38 of the 39 images, and the LF in 34 of the 39 images. In successful detections, the automatic detections versus manual segmentation has an rms error of 0.64 mm and average error 0.04 mm, versus independent sonographer-measured depth has a root-mean-squared error of 3.7 mm and average error 2.5 mm, and versus the actual needle insertion depth has a root-mean-squared of 5.1 mm and average error $-$2.8 mm. The computational time is 4.3 s on a typical personal computer. The accuracy, reliability, and speed suggest this method may be valuable for helping guide epidurals in conjunction with the traditional loss-of-resistance method.
机译:已经提出了超声来辅助硬膜外针的插入,但是由于噪声,伪影以及麻醉医师在超声解释中的经验不足,在区分脊柱结构方面仍然存在挑战。此外,麻醉师需要在保持无菌条件的同时测量相关距离。因此,与超声控制的交互作用必须最小。需要自动测量。捕获束控超声图像,并使用空间混合来改善图像质量。相对称用于增强骨骼(椎板)和黄韧带(LF)脊。使用Pearson的互相关将薄片模板与该脊图匹配,并找到最可能的薄片位置。然后,使用具有Pearson互相关的LF模板遍历层板,并获得LF的位置。在正中平面的脊柱的L2-3和L3-4水平上,对39组复合超声图像进行了测试。所提出的算法可以检测39幅图像中38幅的层板和39幅图像中34幅的LF。在成功的检测中,自动检测与手动分割的均方根误差为0.64 mm,平均误差为0.04 mm,而独立超声医师测得的深度的均方根误差为3.7 mm,平均误差为2.5 mm,与实际针插入深度的均方根为5.1毫米,平均误差为$-$ 2.8毫米。在典型的个人计算机上,计算时间为4.3 s。准确性,可靠性和速度表明,该方法对于结合传统的阻力损失方法有助于引导硬膜外麻醉可能是有价值的。

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