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首页> 外文期刊>Medical Physics >Automated 3D geometry segmentation of the healthy and diseased carotid artery in free‐hand, probe tracked ultrasound images
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Automated 3D geometry segmentation of the healthy and diseased carotid artery in free‐hand, probe tracked ultrasound images

机译:自动化和患病颈动脉的自动化3D几何分割,探测跟踪超声图像

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摘要

Purpose Rupture of an arterosclerotic plaque in the carotid artery is a major cause of stroke. Biomechanical analysis of plaques is under development aiming to aid the clinician in the assessment of plaque vulnerability. Patient‐specific three‐dimensional (3D) geometry assessment of the carotid artery, including the bifurcation, is required as input for these biomechanical models. This requires a high‐resolution, 3D, noninvasive imaging modality such as ultrasound (US). In this study, a high‐resolution two‐dimensional (2D) linear array in combination with a magnetic probe tracking device and automatic segmentation method was used to assess the geometry of the carotid artery. The advantages of using this system over a 3D ultrasound probe are its higher resolution (spatial and temporal) and its larger field of view. Methods A slow sweep (v?=?±?5?mm/s) was made over the subject’s neck so that the full geometry of the bifurcated geometry of the carotid artery is captured. An automated segmentation pipeline was developed. First, the Star‐Kalman method was used to approximate the center and size of the vessels for every frame. Images were filtered with a Gaussian high‐pass filter before conversion into the 2D monogenic signals, and multiscale asymmetry features were extracted from these data, enhancing low lateral wall‐lumen contrast. These images, in combination with the initial ellipse contours, were used for an active deformable contour model to segment the vessel lumen. To segment the lumen–plaque boundary, Otsu’s automatic thresholding method was used. Distension of the wall due to the change in blood pressure was removed using a filter approach. Finally, the contours were converted into a 3D hexahedral mesh for a patient‐specific solid mechanics model of the complete arterial wall. Results The method was tested on 19 healthy volunteers and on 3 patients. The results were compared to manual segmentation performed by three experienced observers. Results showed an average Hausdorff distance of 0.86?mm and an average similarity index of 0.91 for the common carotid artery (CCA) and 0.88 for the internal and external carotid artery. For the total algorithm, the success rate was 89%, in 4 out of 38 datasets the ICA and ECA were not sufficient visible in the US images. Accurate 3D hexahedral meshes were successfully generated from the segmented images . Conclusions With this method, a subject‐specific biomechanical model can be constructed directly from a hand‐held 2D US measurement, within 10?min, with a minimal user input. The performance of the proposed segmentation algorithm is comparable to or better than algorithms previously described in literature. Moreover, the algorithm is able to segment the CCA, ICA, and ECA including the carotid bifurcation in transverse B‐mode images in both healthy and diseased arteries.
机译:颈动脉的斑块arterosclerotic目的破裂是中风的主要诱因。斑块的生物力学分析正在开发旨在帮助临床医生易损斑块的评估。颈动脉,包括分叉的患者特异性的三维(3D)几何形状的评估,需要为这些生物力学模型的输入。这需要高的分辨率,3D,非侵入性的成像模态,例如超声(US)。在这项研究中,高分辨率二维(2D)直线与磁性探测跟踪装置和自动分割方法组合阵列被用来评估颈动脉的几何形状。使用该系统通过3D超声探头的优点是其较高的分辨率(空间和时间)和其较大的视场。方法的慢扫描(V =?±→5→毫米/秒)中的被检者的颈部,以使颈动脉的分叉几何结构的整个几何捕获制成。自动分割流水线的开发。首先,使用星卡尔曼算法来近似血管针对每个帧的中心和大小。图像用高斯高通滤波器滤波转换之前进入2D单基因的信号,并从这些数据中提取多尺度不对称特征加强低侧壁腔对比度。这些图像中,在与初始椭圆轮廓组合,分别用于有源变形轮廓模型来分割血管管腔。到段内腔斑块边界,使用了大津的自动阈值方法。使用过滤器的方法除去由于在血压变化的壁的膨胀。最后,轮廓被转换成3D六面体网格的完整动脉壁的患者特定的固体力学模型。结果该方法对19名健康志愿者和在3名患者进行试验。该结果与由三位经验丰富的观察员进行手动分割。结果表明:0.86?毫米的平均Hausdorff距离和0.91的颈总动脉(CCA)和0.88的内部和外部颈动脉的平均相似性指数。对于总的算法,成功率为89%,在4出38个集的ICA和ECA不足以可见美国的图像。精确的三维六面体网格已成功地从分割图像生成。结论用这种方法,一个特定主题的生物力学模型可以直接从手持2D US测量构造,10?分钟内,以最小的用户输入。所提出的分割算法的性能相当或比以前在文献中所描述的算法更好。此外,该算法能够段CCA,ICA和ECA包括在健康和患病的动脉横向B模式图像中的颈动脉分叉。

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