Srinivasan Ashok, Parker Robert A, Manjunathan Abhishek, Ibrahim Mohannad, Shah Gaurang V, Mukherji Suresh K
*From the Division of Neuroradiology, Department of Radiology, University of Michigan Health System; †Department of Biostatistics, School of Public Health, Michigan Institute for Clinical & Health Research; and ‡University of Michigan Ross School of Business, Ann Arbor, MI.
J Comput Assist Tomogr. 2013 Sep-Oct;37(5):666-72. doi: 10.1097/RCT.0b013e3182976365.
The objective of this study was to evaluate spectral Hounsfield unit (HU) curves and effective Z (atomic number) generated on dual-energy gemstone spectral imaging computed tomography (CT) in the differentiation of benign and malignant neck pathologic findings.
This was a retrospective review of 38 patients who underwent neck CT on a gemstone spectral imaging dual-energy CT (Lightspeed CT750 HD 64-slice CT scanner; GE Medical Systems, Milwaukee, Wis) from November 2009 to June 2012 with identifiable masses. One board-certified radiologist placed regions of interest within the mass (19 benign, 19 malignant) and in paraspinal muscles (PSMs) to create 2 spectral HU curves in each patient. The curve parameters compared between the benign and malignant groups included range (conceptually, the difference between the highest and lowest HU), asymptote, decay, and the differences and ratios (of lesion to PSM) of each of these 3 parameters. A logistic regression model was built with these parameters and effective Z.
The difference in ranges (between lesion and PSM) was the best predictor of malignancy, with a threshold of 75 or greater demonstrating 95% sensitivity, 89% specificity, and 91.8% area under the curve (AUC). Adding other spectral HU parameters and effective Z to the model did not substantially increase the AUC (93.3%, difference between the 2 models not statistically significant, P > 0.25). The effective Z showed a 79.9% AUC with 68% sensitivity and 68% specificity at an 8.80 cutoff.
The spectral HU curve is promising for differentiating benign and malignant neck pathologic findings, with the difference in range between the lesion and PSM showing the best predictive value.
本研究的目的是评估在双能宝石光谱成像计算机断层扫描(CT)上生成的光谱亨氏单位(HU)曲线和有效原子序数(Z),以鉴别颈部良性和恶性病理表现。
这是一项对38例患者的回顾性研究,这些患者在2009年11月至2012年6月期间接受了宝石光谱成像双能CT(光速CT750 HD 64层CT扫描仪;通用电气医疗系统公司,威斯康星州密尔沃基)颈部CT检查,且有可识别的肿块。一名经过委员会认证的放射科医生在肿块内(19个良性,19个恶性)和椎旁肌(PSM)内放置感兴趣区域,为每位患者创建两条光谱HU曲线。在良性和恶性组之间比较的曲线参数包括范围(概念上,最高和最低HU之间的差异)、渐近线、衰减以及这三个参数中每个参数的差异和比率(病变与PSM的)。使用这些参数和有效Z建立了一个逻辑回归模型。
范围差异(病变与PSM之间)是恶性肿瘤的最佳预测指标,阈值为75或更高时,灵敏度为95%,特异性为89%,曲线下面积(AUC)为91.8%。将其他光谱HU参数和有效Z添加到模型中并没有显著增加AUC(93.3%,两个模型之间的差异无统计学意义,P>0.25)。有效Z在截断值为8.80时,AUC为79.9%,灵敏度为68%,特异性为68%。
光谱HU曲线在鉴别颈部良性和恶性病理表现方面很有前景,病变与PSM之间的范围差异显示出最佳预测价值。