From the Departments of Neuroradiology (G.J.H., D.T.G., H.R.K.) and Radiology (E.F.H.), Massachusetts General Hospital, 55 Fruit St, Gray 273a, Boston, MA 02114; and Department of Radiology Physics, Brigham and Women's Hospital, Boston, Mass (L.M.H.).
Radiology. 2014 Jan;270(1):168-75. doi: 10.1148/radiol.13122851. Epub 2013 Oct 28.
To identify a set of parameters, which are based on tissue enhancement and native iodine content obtained from a standardized triple-phase four-dimensional (4D) computed tomographic (CT) scan, that define a multinomial logistic regression model that discriminates between parathyroid adenoma (PTA) and thyroid nodules or lymph nodes.
Informed consent was waived by the institutional review board for this retrospective HIPAA-compliant study. Electronic medical records were reviewed for 102 patients with hyperparathyroidism who underwent triple-phase 4D CT and parathyroid surgery resulting in pathologically proved removal of adenoma from July 2010 through December 2011. Hounsfield units were measured in PTA, thyroid, lymph nodes, and aorta and were used to determine seven parameters characterizing tissue contrast enhancement. These were used as covariates in 10 multinomial logistic regression models. Three models with one covariate, four models with two covariates, and three models with three covariates were investigated. Receiver operating characteristic (ROC) analysis was performed to determine how well each model discriminated between adenoma and nonadenomatous tissues. Statistical differences between the areas under the ROC curves (AUCs) for each model pair were calculated, as well as sensitivity, specificity, accuracy, negative predictive value, and positive predictive value.
A total of 120 lesions were found; 112 (93.3%) lesions were weighed, and mean and median weights were 589 and 335 mg, respectively. The three-covariate models were significantly identical (P > .65), with largest AUC of 0.9913 ± 0.0037 (standard error), accuracy of 96.9%, and sensitivity, specificity, negative predictive value, and positive predictive value of 94.3%, 98.3%, 97.1%, and 96.7%, respectively. The one- and two-covariate models were significantly less accurate (P < .043).
A three-covariate multinomial logistic model derived from a triple-phase 4D CT scan can accurately provide the probability that tissue is PTA and performs significantly better than models using one or two covariates.
确定一组参数,这些参数基于从标准化三时相四维(4D)计算机断层扫描(CT)获得的组织增强和固有碘含量,定义一个多变量逻辑回归模型,以区分甲状旁腺腺瘤(PTA)和甲状腺结节或淋巴结。
本回顾性 HIPAA 合规研究经机构审查委员会豁免了知情同意。对 2010 年 7 月至 2011 年 12 月期间因甲状旁腺机能亢进接受三时相 4D CT 和甲状旁腺手术并证实病理切除腺瘤的 102 例患者的电子病历进行了回顾性分析。在 PTA、甲状腺、淋巴结和主动脉中测量了亨氏单位,并用于确定 7 个描述组织对比增强的参数。这些参数被用作 10 个多变量逻辑回归模型的协变量。研究了 3 个具有 1 个协变量的模型、4 个具有 2 个协变量的模型和 3 个具有 3 个协变量的模型。进行了接收者操作特征(ROC)分析,以确定每个模型在区分腺瘤和非腺瘤组织方面的表现。计算了每个模型对之间 ROC 曲线下面积(AUC)的差异,并计算了灵敏度、特异性、准确性、阴性预测值和阳性预测值。
共发现 120 个病灶;112 个(93.3%)病灶进行了称重,平均和中位数重量分别为 589 和 335 毫克。三协变量模型差异无统计学意义(P >.65),最大 AUC 为 0.9913 ± 0.0037(标准误差),准确率为 96.9%,灵敏度、特异性、阴性预测值和阳性预测值分别为 94.3%、98.3%、97.1%和 96.7%。一协变量和二协变量模型的准确性显著降低(P <.043)。
基于三时相 4D CT 扫描的三协变量多变量逻辑模型可以准确地提供组织为 PTA 的概率,其表现明显优于使用一个或两个协变量的模型。