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Analysis of Neovascularization of Atherosclerotic Carotid Plaques in Contrast Enhanced Ultrasound

机译:形成血管牙龈斑块的新生血管中的斑块与造影强化超声

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Intraplaque neovascularization (IPN) is linked to progressive atherosclerotic disease and plaque instability. Contrast enhanced ultrasound (CEUS) can detect these microvessels. Quantification of IPN may allow early detection of vulnerable plaques. We developed a semiautomatic quantification of IPN in CEUS, with motion compensation, contrast spot detection, tracking and classification, and vascular tree reconstruction. Side-by-side CEUS and B-mode carotid images were analyzed (Philips iU22, L9-3 linear array). The plaque motion pattern was obtained from B-mode with block matching (BM) and multidimensional dynamic programming (MDP) and applied to CEUS images for motion correction. In BM, a 6x4mm fixed template was scanned over a 6x2mm search region and normalized correlation coefficients were used in MDP to find the optimal 2D displacement path over time. Image sequences were divided into sets of 10 frames with 80% overlap. In frame 1 of each set, artificial bubble templates detect contrast bubbles within plaque. Templates of 1.3x1.3mm around detected objects were tracked over 10 frames using BM and MDP. Tracks were classified as moving bubbles or artifacts based on their motion. From the overlapping sets, tracks were merged and vessel paths quantified. Automated detection/ tracking / grading of IPN were validated against manual tracking and visual grading by two physicians in 28 plaques. Our algorithm detected 101 of 104 visually identified contrast spots. In 90 of 101 objects (89%), mean error between automated and manual tracking was < 0.5mm. 81 detected objects (78%) were correctly classified into artifacts and microvessels. Two physicians independently scored plaques into 4 grades of IPN. Automated IPN score was identical to visual scoring in 64%, 1 grade difference in 27% and 2 grades in 9%, which is very comparable to the interobserver differences (68%, 25%, 7%). Our algorithm can successfully detect and track contrast bubbles, classify objects into microvessels and artifacts, and reconstruct microvessel trees. The automated IPN score is equivalent to an expert visual score.
机译:颅内新血管形成(IPN)与进行性动脉粥样硬化疾病和斑块不稳定性相关联。对比度增强超声(CEU)可以检测这些微型镜头。 IPN的量化可能允许早期检测易受攻击的斑块。我们在CEU中开发了一个半自动量化,具有运动补偿,对比点检测,跟踪和分类,以及血管树重建。分析了并排CEU和B模式颈动脉图像(飞利浦IU22,L9-3线性阵列)。从B模式获得斑块运动模式,具有块匹配(BM)和多维动态编程(MDP),并应​​用于用于运动校正的CEUS图像。在BM中,在6x2mm搜索区域上扫描6x4mm固定模板,并在MDP中使用归一化相关系数,以找到最佳的2D位移路径。图像序列分为10帧的组,具有80%重叠。在每个组的框架1中,人工泡沫模板在斑块内检测对比气泡。使用BM和MDP跟踪检测到对象周围的1.3x1.3mm的模板。曲目被归类为基于其动作的移动泡沫或伪影。从重叠集中,轨道被合并,量化船舶路径。 IPN的自动检测/跟踪/分级验证了28个PLAQUES的28个医生的手动跟踪和视觉分级。我们的算法检测到101中的101个可视识别对比点。在101个物体(89%)的90中,自动化和手动跟踪之间的平均误差<0.5mm。 81检测到的物体(78%)被正确分类为伪影和微孔。两个医生独立得分斑块进入4级IPN。自动化IPN得分与64%,1年级差异的视觉评分相同,27%和2级差异为9%,与interobserver差异相比(68%,25%,7%)。我们的算法可以成功地检测和跟踪对比泡沫,将物体分类为微孔镜头和工件,并重建微型胶带树。自动IPN分数相当于专家视觉评分。

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