首页> 外文期刊>Radiology >Renal stone assessment with dual-energy multidetector CT and advanced postprocessing techniques: improved characterization of renal stone composition--pilot study.
【24h】

Renal stone assessment with dual-energy multidetector CT and advanced postprocessing techniques: improved characterization of renal stone composition--pilot study.

机译:使用双能多能CT和先进的后处理技术对肾结石进行评估:改善肾结石成分的表征-中试研究。

获取原文
获取原文并翻译 | 示例
           

摘要

PURPOSE: To prospectively evaluate the capability of noninvasive, simultaneous dual-energy (DE) multidetector computed tomography (CT) to improve characterization of human renal calculi in an anthropomorphic DE renal phantom by introducing advanced postprocessing techniques, with ex vivo renal stone spectroscopy as the reference standard. MATERIALS AND METHODS: Fifty renal calculi were assessed: Thirty stones were of pure crystalline composition (uric acid, cystine, struvite, calcium oxalate, calcium phosphate, brushite), and 20 were of polycrystalline composition. DE CT was performed with a 64-detector CT unit. A postprocessing algorithm (DECT(Slope)) was proposed as a pixel-by-pixel approach to generate Digital Imaging and Communications in Medicine dataset gray-scale-encoding ratios of relative differences in attenuation values of low- and high-energy DE CT. Graphic analysis, in which clusters of equal composition were identified, was performed by sorting attenuation values of color composition-encoded calculi in an ascending sequence. Multivariate general linear model analysis was used to determine level of significance to differentiate composition on native and postprocessed DE CT images. RESULTS: Graphic analysis of native DE CT images was used to identify clusters for uric acid (453-629 HU for low-energy CT, 443-615 HU for high-energy CT), cystine (725-832 HU for low-energy CT, 513-747 HU for high-energy CT), and struvite (1337-1530 HU for low-energy CT, 1007-1100 HU for high-energy CT) stones; high-energy clusters showed attenuation value overlap. Polycrystalline calcium oxalate and calcium phosphate calculi were found throughout the entire spectrum, and dense brushite had attenuation values of more than 1500 HU for low-energy CT and more than 1100 HU for high-energy CT. The DE CT algorithm was used to generate specific identifiers for uric acid (77-80 U(Slope), one outlier), cystine (70-71 U(Slope)), struvite (56-60 U(Slope)), calcium oxalate and calcium phosphate (17-59 U(Slope)),and brushite (4-15 U(Slope)) stones. Statistical analysis showed that all compositions were identified unambiguously with the DECT(Slope) algorithm. CONCLUSION: DE multidetector CT with advanced postprocessing techniques improves characterization of renal stone composition beyond that achieved with single-energy multidetector CT acquisitions with basic attenuation assessment.
机译:目的:通过引入先进的后处理技术,以离体肾结石光谱作为研究对象,前瞻性地评估无创,同时双能(DE)多探测器计算机断层扫描(CT)改善拟人化DE肾幻象中人肾结石的特征的能力。参考标准。材料与方法:评估了五十个肾结石:三十个结石具有纯的结晶成分(尿酸,胱氨酸,鸟粪石,草酸钙,磷酸钙,透钙磷石),二十个结石具有多晶成分。 DE CT用64台CT扫描仪进行。提出了一种后处理算法(DECT(Slope))作为逐像素方法,以生成低能和高能DE CT衰减值的相对差异的数字成像和医学数据集灰度编码比。通过以升序对颜色成分编码的结石的衰减值进行排序,进行图形分析,确定组成相同的簇。多变量一般线性模型分析用于确定显着性水平,以区分天然和后处理的DE CT图像上的成分。结果:通过对原始DE CT图像的图形分析,可以识别出尿酸(低能CT为453-629 HU,高能CT为443-615 HU),胱氨酸(低能CT为725-832 HU)的簇,513-747 HU(用于高能CT)和鸟粪石(1337-1530 HU(用于低能CT),1007-1100 HU(用于高能CT));高能簇显示衰减值重叠。在整个光谱中发现了多草酸钙和磷酸钙结石,致密的透钙磷石对于低能CT的衰减值大于1500 HU,对于高能CT的衰减值大于1100 HU。 DE CT算法用于生成尿酸(77-80 U(斜率),一个异常值),胱氨酸(70-71 U(斜率)),鸟粪石(56-60 U(斜率)),草酸钙的特定标识符磷酸钙(17-59 U(坡度))和透钙磷石(4-15 U(坡度))。统计分析表明,使用DECT(Slope)算法可以明确识别所有成分。结论:采用先进的后处理技术的DE多探测器CT可以改善肾结石成分的表征,超过采用基本衰减评估的单能多探测器CT采集所获得的特征。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号