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胰腺神经内分泌肿瘤:利用CT表现和计算机纹理分析预测肿瘤分级

Pancreatic neuroendocrine tumor: prediction of the tumor grade using CT findings and computerized texture analysis.

作者信息

Choi Tae Won, Kim Jung Hoon, Yu Mi Hye, Park Sang Joon, Han Joon Koo

机构信息

1 Department of Radiology, Seoul National University Hospital, Seoul, Republic of Korea.

2 Institute of Radiation Medicine, Seoul National University College of Medicine, Seoul, Republic of Korea.

出版信息

Acta Radiol. 2018 Apr;59(4):383-392. doi: 10.1177/0284185117725367. Epub 2017 Aug 2.

Abstract

Background Pancreatic neuroendocrine tumors (PNET) include heterogeneous tumors with a variable degree of inherent biologic aggressiveness represented by the histopathologic grade. Although several studies investigated the computed tomography (CT) characteristics which can predict the histopathologic grade of PNET, accurate prediction of the PNET grade by CT examination alone is still limited. Purpose To investigate the important CT findings and CT texture variables for prediction of grade of PNET. Material and Methods Sixty-six patients with pathologically confirmed PNETs (grade 1 = 45, grades 2/3 = 21) underwent preoperative contrast-enhanced CT. Two reviewers determined the presence of predefined CT findings. CT texture was also analyzed on arterial and portal phase using both two-dimensional (2D) and three-dimensional (3D) analysis. Multivariate logistic regression analysis was performed in order to identify significant predictors for tumor grade. Results Among CT findings and CT texture variables, the significant predictors for grade 2/3 tumors were an ill-defined margin (odds ratio [OR] = 7.273), lower sphericity (OR = 0.409) on arterial 2D analysis, higher skewness (OR = 1.972) and lower sphericity (OR = 0.408) on arterial 3D analysis, lower kurtosis (OR = 0.436) and lower sphericity (OR = 0.420) on portal 2D analysis, and a larger surface area (OR = 2.007) and lower sphericity (OR = 0.503) on portal 3D analysis ( P < 0.05). Diagnostic performance of texture analysis was superior to CT findings (AUC = 0.774 vs. 0.683). Conclusion CT is useful for predicting grade 2/3 PNET using not only the imaging findings including an ill-defined margin, but also the CT texture variables such as lower sphericity, higher skewness, and lower kurtosis.

摘要

背景 胰腺神经内分泌肿瘤(PNET)包括具有不同程度固有生物学侵袭性的异质性肿瘤,其侵袭性由组织病理学分级表示。尽管多项研究调查了可预测PNET组织病理学分级的计算机断层扫描(CT)特征,但仅通过CT检查准确预测PNET分级仍存在局限性。目的 探讨用于预测PNET分级的重要CT表现及CT纹理变量。材料与方法 66例经病理证实的PNET患者(1级 = 45例,2/3级 = 21例)术前行增强CT检查。两名阅片者确定预设CT表现的存在情况。还在动脉期和门静脉期使用二维(2D)和三维(3D)分析对CT纹理进行分析。进行多变量逻辑回归分析以确定肿瘤分级的重要预测因素。结果 在CT表现和CT纹理变量中,2/3级肿瘤的重要预测因素包括边界不清(优势比[OR] = 7.273)、动脉期2D分析中球形度较低(OR = 0.409)、动脉期3D分析中偏度较高(OR = 1.972)和球形度较低(OR = 0.408)、门静脉期2D分析中峰度较低(OR = 0.436)和球形度较低(OR = 0.420),以及门静脉期3D分析中表面积较大(OR = 2.007)和球形度较低(OR = 0.503)(P < 0.05)。纹理分析的诊断性能优于CT表现(曲线下面积[AUC] = 0.774对0.683)。结论 CT不仅可通过边界不清等影像学表现,还可通过球形度较低、偏度较高和峰度较低等CT纹理变量来预测2/3级PNET。

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