医学
骨矿物
骨质疏松症
核医学
神经组阅片室
碘
碘海索
放射科
骨密度
内科学
神经学
化学
精神科
肾功能
有机化学
作者
Ferdinand Roski,Johannes Hammel,Kai Mei,Bernhard Haller,Thomas Baum,Jan S. Kirschke,Daniela Pfeiffer,Klaus Woertler,Franz Pfeiffer,Peter B. Noël,Alexandra S. Gersing,Benedikt J. Schwaiger
出处
期刊:European Radiology
[Springer Science+Business Media]
日期:2020-10-14
卷期号:31 (5): 3147-3155
被引量:27
标识
DOI:10.1007/s00330-020-07319-1
摘要
OBJECTIVES: Osteoporosis remains under-diagnosed, which may be improved by opportunistic bone mineral density (BMD) measurements on CT. However, correcting for the influence of intravenous iodine-based contrast agent is challenging. The purpose of this study was to assess the diagnostic accuracy of iodine-corrected vertebral BMD measurements derived from non-dedicated contrast-enhanced phantomless dual-layer spectral CT (DLCT) examinations. METHODS: Vertebral volumetric DLCT-BMD was measured in native, arterial, and portal-venous scans of 132 patients (63 ± 16 years; 32% women) using virtual monoenergetic images (50 and 200 keV). For comparison, conventional BMD was determined using an asynchronous QCT calibration. Additionally, iodine densities were measured in the abdominal aorta (AA), inferior vena cava, and vena portae (VP) on each CT phase to adjust for iodine-related measurement errors in multivariable linear regressions and a generalized estimated equation, and conversion equations were calculated. RESULTS: = 0.981]). CONCLUSIONS: Converted BMD derived from contrast-enhanced DLCT examinations and adjusted for individual vessel iodine concentrations showed a high agreement with non-enhanced DLCT-BMD, suggesting that opportunistic BMD measurements are feasible even in non-dedicated contrast-enhanced DLCT examinations. KEY POINTS: • Accurate BMD values can be converted from contrast-enhanced DLCT scans, independent from the used scan phase. • DLCT-BMD measurements from contrast-enhanced scans should be adjusted with iodine concentrations of portal vein and/or abdominal aorta, which significantly improves the goodness-of-fit of conversion models.
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