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首页> 外文期刊>Investigative radiology >Quantification of roughness of calcific deposits in computed tomography scans of human coronary arteries.
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Quantification of roughness of calcific deposits in computed tomography scans of human coronary arteries.

机译:在人的冠状动脉的计算机断层扫描中量化钙化沉积物的粗糙度。

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OBJECTIVES: The incidence of coronary artery disease has been shown to be greater in patients with calcific deposits than in those without. It has been suggested that the pattern of distribution of coronary calcific deposits within coronary arteries is of greater predictive value for acute coronary events than the overall quantity. Whether roughness of calcific deposits is a predictor of acute coronary events is not known. We derived and tested an algorithm, Voxel-Based Bosselation (VBB), for noninvasive quantification of roughness of calcific deposits in human coronary arteries imaged by computed tomography (CT). METHODS AND RESULTS: VBB was tested on 213 coronary calcific deposits from electron beam CT scans of 27 patients. This algorithm evaluates the 3-dimensional connectedness of surface voxels of each deposit: smooth masses have low VBB and rough masses high VBB. The algorithm was calibrated with artificially generated phantoms as well as background noise mimicking calcific deposits and surrounding heart tissue. The VBB algorithm is applicable to calcific deposits of all scales and gradations. The VBB values of the deposits in this study did not correlate with deposit size further supporting its validity as a measurement of roughness. The VBB index corresponded directly with visual reconstruction using Phong-shaded algorithms. CONCLUSIONS: The VBB index, derived here, is a noninvasive method of quantifying the roughness of calcific deposits in CT scan data which can now be used in future clinical studies to determine possible correlations with increased plaque vulnerability and major acute coronary events.
机译:目的:显示钙化沉积物患者的冠状动脉疾病发生率比无钙化沉积物的患者高。有人提出,冠状动脉钙化沉积物的分布模式对急性冠状动脉事件的预测价值要高于其总量。钙化沉积物的粗糙度是否是急性冠状动脉事件的预测因子尚不清楚。我们推导并测试了一种基于体素的Bosselation(VBB)算法,用于通过计算机断层扫描(CT)成像对人冠状动脉钙化沉积物的粗糙度进行非侵入式量化。方法和结果:对27例患者进行了电子束CT扫描,对213例冠状钙化沉积物进行了VBB检测。该算法评估每个沉积物的表面体素的三维连接性:光滑块具有低VBB,粗糙块具有高VBB。该算法使用人工生成的体模以及模仿钙化沉积物和周围心脏组织的背景噪声进行了校准。 VBB算法适用于所有规模和层次的钙化矿床。这项研究中的沉积物的VBB值与沉积物的大小无关,进一步支持了其作为粗糙度测量的有效性。 VBB指数直接与使用Phong阴影算法的视觉重建相对应。结论:此处得出的VBB指数是一种无创方法,可量化CT扫描数据中钙化沉积物的粗糙度,现在可用于将来的临床研究中,以确定与斑块易损性增加和主要急性冠脉事件的可能相关性。

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