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Differential diagnosis of pancreatic serous oligocystic adenoma and mucinous cystic neoplasm with spectral CT imaging: Initial results

机译:光谱CT成像鉴别诊断胰腺浆液性囊性腺瘤和粘液性囊性肿瘤的初步结果

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AIM: To investigate the imaging characteristics of pancreatic serous oligocystic adenoma (SOA) and mucinous cystic neoplasms (MCNs) using spectral computed tomography (CT) and to evaluate whether quantitative information derived from spectral imaging can improve the differential diagnosis of these diseases.MATERIALS AND METHODS: From February 2010 to June 2013, 44 patients (24 SOAs and 20 MCNs) who underwent spectral CT imaging were included in the study. Conventional characteristics and quantitative parameters were compared between the two disease groups. Logistic regression was used for multiparametric analysis. The receiver-operating characteristic curve was used to evaluate the diagnostic performance of single parameter and multi-parametric analysis. Two radiologists diagnosed the diseases blinded and independently, without and with the information of the statistical analysis.RESULTS: Tumour location, contour, size, and monochromatic CT values at 40 keV to 70 keV, iodine concentration, and effective atomic number (effective-Z) in the late arterial phase were the independent factors correlated with category. Multiparametric analysis with logistic regression showed that tumour size, location, and contour were the most effective variations, and obtained an area under the ROC curve (AUC) of 0.934. With the knowledge of statistical analysis, the accuracy of the first reader increased from 70.5% to 86.4%, and the accuracy of the second reader increased from 81.8% to 90.9%.CONCLUSIONS: Although CT spectral imaging provided additional information and multiparametric analysis obtained better performance than single-parameter analysis in differentiating MCNs from SOAs, multiparametric analysis with the combination of quantitative parameters derived from CT spectral imaging did not improve the diagnostic performance. Tumour size, location, and contour played an important role in differentiating MCNs from SOAs.
机译:目的:利用光谱计算机断层扫描(CT)技术研究胰腺浆液性囊性囊性腺瘤(SOA)和粘液性囊性肿瘤(MCN)的影像学特征,并评估从光谱影像学中获得的定量信息是否可以改善这些疾病的鉴别诊断。方法:2010年2月至2013年6月,研究对象包括44例接受了光谱CT成像的患者(24个SOA和20个MCN)。比较两个疾病组的常规特征和定量参数。 Logistic回归用于多参数分析。接收器工作特性曲线用于评估单参数和多参数分析的诊断性能。两名放射科医生在没有和有统计分析信息的情况下独立且独立地诊断了疾病。结果:40 keV至70 keV的肿瘤位置,轮廓,大小和单色CT值,碘浓度和有效原子序数(有效Z )在动脉晚期是与类别相关的独立因素。采用逻辑回归的多参数分析显示,肿瘤的大小,位置和轮廓是最有效的变异,并且ROC曲线下的面积(AUC)为0.934。借助统计分析知识,第一个阅读器的准确性从70.5%提高到86.4%,第二个阅读器的准确性从81.8%提高到90.9%。结论:尽管CT光谱成像提供了更多信息,但多参数分析获得了更好的结果在区分MCN和SOA方面,性能比单参数分析高,而多参数分析与CT光谱成像得出的定量参数相结合并不能提高诊断性能。肿瘤大小,位置和轮廓在区分MCN和SOA中起着重要作用。

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