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Pancreatic neuroendocrine tumor: prediction of the tumor grade using magnetic resonance imaging findings and texture analysis with 3-T magnetic resonance

机译:胰腺神经内分泌肿瘤:使用磁共振成像发现和3-T磁共振纹理分析预测肿瘤等级

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Purpose: The purpose of this study was to evaluate the performance of magnetic resonance imaging (MRI) findings and texture parameters for prediction of the histopathologic grade of pancreatic neuroendocrine tumors (PNETs) with 3-T magnetic resonance. Patients and methods: PNETs are classified into Grade 1 (G1), Grade 2 (G2), and Grade 3 (G3) tumors based on the Ki-67 proliferation index and the mitotic activity. A total of 77 patients with pathologically confirmed PNETs met the inclusion criteria. Texture analysis (TA) was applied to T2-weighted imaging (T2WI) and diffusion-weighted imaging (DWI) maps. Patient demographics, MRI findings, and texture parameters were compared among three different histopathologic subtypes by using Fisher’s exact tests or Kruskal–Wallis test. Then, logistic regression analysis was adopted to predict tumor grades. ROC curves and AUCs were calculated to assess the diagnostic performance of MRI findings and texture parameters in prediction of tumor grades. Results: There were 31 G1, 29 G2, and 17 G3 patients. Compared with G1, G2/G3 tumors showed higher frequencies of an ill-defined margin, a predominantly solid tumor type, local invasion or metastases, hypo-enhancement at the arterial phase, and restriction diffusion. Four T2-based (inverse difference moment, energy, correlation, and differenceEntropy) and five DWI-based (correlation, contrast, inverse difference moment, maxintensity, and entropy) TA parameters exhibited statistical significance among PNETs ( P 0.001). The AUCs of six predicting models on T2WI and DWI ranged from 0.703–0.989. Conclusion: Our data indicate that MRI findings, including tumor margin, texture, local invasion or metastases, tumor enhancement, and diffusion restriction, as well as texture parameters can aid the prediction of PNETs grading.
机译:目的:本研究的目的是评估磁共振成像(MRI)结果和纹理参数的性能,以预测3-T磁共振对胰腺神经内分泌肿瘤(PNETs)的组织病理学分级。患者和方法:根据Ki-67增殖指数和有丝分裂活性,将PNETs分为1级(G1),2级(G2)和3级(G3)肿瘤。共有77例经病理证实的PNET符合纳入标准。将纹理分析(TA)应用于T2加权成像(T2WI)和扩散加权成像(DWI)图。通过使用Fisher精确检验或Kruskal–Wallis检验,比较了三种不同组织病理学亚型的患者人口统计学,MRI表现和质地参数。然后,采用逻辑回归分析来预测肿瘤等级。计算ROC曲线和AUC,以评估MRI表现和质地参数在预测肿瘤分级中的诊断性能。结果:分别有31名G1、29名G2和17名G3患者。与G1相比,G2 / G3肿瘤的边缘不明确,主要为实体瘤类型,局部浸润或转移,动脉期增强不足和限制扩散的频率更高。四个基于T2的(反差矩,能量,相关性和差熵)和五个基于DWI的(相关性,对比度,反差矩,最大强度和熵)TA参数在PNET之间表现出统计学意义(P <0.001)。 T2WI和DWI的六个预测模型的AUC在0.703-0.989之间。结论:我们的数据表明,MRI结果包括肿瘤边缘,纹理,局部浸润或转移,肿瘤增强和扩散受限以及纹理参数可以帮助预测PNET的分级。

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