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Computer-aided diagnosis for distinguishing pancreatic mucinous cystic neoplasms from serous oligocystic adenomas in spectral CT images

机译:在光谱CT图像中将胰腺黏液性囊性肿瘤与浆液性囊性腺瘤区别开来的计算机辅助诊断

摘要

Objective: This preliminary study aims to verify the effectiveness of the additional information provided by spectral computed tomography (CT) with the proposed computer-aided diagnosis (CAD) scheme to differentiate pancreatic serous oligocystic adenomas (SOAs) from mucinous cystic neoplasms of pancreas cystic lesions. Materials and Methods: This study was conducted from January 2010 to October 2013. Twenty-three patients (5 men and 18 women; mean age, 43.96 years old) with SOA and 19 patients (3 men and 16 women; mean age, 41.74 years old) with MCN were included in this retrospective study. Two types of features were collected by dual-energy spectral CT imaging as follows: conventional and additional quantitative spectral CT features. Classification results of the CAD scheme were compared using the conventional features and full feature data set. Important features were selected using support vector machine classification method combined with feature-selection technique. The optimal cutoff values of selected features were determined through receiver–operating characteristic curve analyses. Results: Combining conventional features with additional spectral CT features improved the overall accuracy from 88.37% to 93.02%. The selected features of the proposed CAD scheme were tumor size, contour, location, and low-energy CT values (43 keV). Iodine–water basis material pair densities in both arterial phase (AP) and portal venous phase (PP) were important factors for differential diagnosis of SOA and MCN. The optimal cutoff values of long axis, short axis, 40 keV monochromatic CT value in AP, iodine (water) density in AP, 43 keV monochromatic CT value in PP, and iodine (water) density in PP were 3.4 mm, 3.1 mm, 35.7 Hu, 0.32533 mg/mL, 39.4 Hu, and 0.348 mg/mL, respectively. Conclusion: The combination of conventional features and additional information provided by dual-energy spectral CT shows a high accuracy in the CAD scheme. The quantitative information of spectral CT may prove useful in the diagnosis and classification of SOAs and MCNs with machine learning algorithms.
机译:目的:这项初步研究旨在通过计算机辅助诊断(CAD)方案验证光谱计算机断层扫描(CT)提供的其他信息的有效性,以区分胰腺浆液性囊性腺瘤(SOA)与胰腺粘液性囊性囊性病变。材料和方法:该研究于2010年1月至2013年10月进行。23例SOA患者(5名男性和18名女性;平均年龄为43.96岁)和19例患者(3名男性和16名女性;平均年龄为41.74岁)老年患者)与MCN一起纳入这项回顾性研究。通过双能谱CT成像收集了以下两种类型的特征:常规和附加的定量谱CT特征。使用常规特征和全特征数据集比较了CAD方案的分类结果。使用支持向量机分类方法结合特征选择技术选择重要特征。选定特征的最佳截止值是通过接收器工作特性曲线分析确定的。结果:将常规功能与其他频谱CT功能相结合,将整体精度从88.37%提高到93.02%。提议的CAD方案的选定特征是肿瘤大小,轮廓,位置和低能CT值(43 keV)。动脉期(AP)和门静脉期(PP)的碘-水基物质对密度是SOA和MCN鉴别诊断的重要因素。长轴,短轴,AP的40 keV单色CT值,AP的碘(水)密度,PP的43 keV单色CT值和PP的碘(水)密度的最佳截止值分别为3.4 mm,3.1 mm,分别为35.7 Hu,0.32533 mg / mL,39.4 Hu和0.348 mg / mL。结论:传统功能和双能谱CT提供的附加信息的结合显示了CAD方案的高精度。光谱CT的定量信息可能被证明可用于通过机器学习算法对SOA和MCN进行诊断和分类。

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