Department of Nuclear Medicine, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, No. 197 Ruijin Er Road, Shanghai 200025, China.
Department of Radiology, Fudan University Shanghai Cancer Center, Shanghai, China.
Acad Radiol. 2020 Jun;27(6):815-823. doi: 10.1016/j.acra.2019.07.012. Epub 2019 Aug 20.
To evaluate the value of texture analysis on preoperative magnetic resonance imaging (MRI) for identifying nonfunctional pancreatic neuroendocrine neoplasms (NF-PNENs) and solid pseudopapillary neoplasms (SPNs).
This retrospective study included 119 patients who underwent MRI, including T2-weighted imaging with fat-suppression, diffusion-weighted imaging (DWI), apparent diffusion coefficient, precontrast T1-weighted imaging with fat-suppression (TWI+fs), and dynamic contrast-enhanced (DCE)-TWI+fs. Raw data analysis, principal component analysis, linear discriminant analysis, and nonlinear discriminant analysis (NDA) were used to classify NF-PNENs and SPNs. The results are reported as misclassification rates. The images were simultaneously evaluated by an experienced senior radiologist without knowledge of the pathological results. The misclassification rate of the radiologist was compared to the MaZda (texture analysis software) results. Neural network classifier testing was used for validation. In addition, 30 textures for each MRI sequence were investigated.
The misclassification rate of NDA was lower than that of other analyses. In NDA, DWI obtained the lowest value of 7.92%, but there was no significant difference among the sequences. The misclassification rate of the radiologist (34.65%) was significantly higher than that of NDA for all sequences. The validation results were good in the arterial phase and delayed phase. In the training set, entropy and sum entropy were optimal texture features on DWI and precontrast TWI+fs, while the mean and percentile seemed to be the more discriminative features on DCE-TWI+fs.
Texture analysis can sensitively distinguish between NF-PNENs and SPNs on MRI, and percentile and mean of DCE-TWI+fs images were informative for differentiation of neoplasms.
评估磁共振成像(MRI)术前纹理分析在识别无功能性胰腺神经内分泌肿瘤(NF-PNENs)和实性假乳头状肿瘤(SPNs)中的价值。
本回顾性研究纳入 119 例行 MRI 检查的患者,包括 T2 加权成像(T2WI)、脂肪抑制弥散加权成像(DWI)、表观弥散系数(ADC)、抑脂 T1WI 平扫(TWI+fs)、动态对比增强(DCE)-TWI+fs。采用原始数据分析、主成分分析、线性判别分析和非线性判别分析(NDA)对 NF-PNENs 和 SPNs 进行分类。结果以分类错误率表示。由一位有经验的资深放射科医生进行图像评估,该医生不了解病理结果。将放射科医生的分类错误率与 MaZda(纹理分析软件)的结果进行比较。采用神经网络分类器测试进行验证。此外,对每个 MRI 序列均进行了 30 个纹理的分析。
NDA 的分类错误率低于其他分析方法。在 NDA 中,DWI 的分类错误率最低,为 7.92%,但各序列之间无显著差异。所有序列中,放射科医生的分类错误率(34.65%)均显著高于 NDA。在动脉期和延迟期验证结果良好。在训练集中,DWI 和 TWI+fs 平扫的最佳纹理特征为熵和总和熵,而 DCE-TWI+fs 的最佳特征为均值和百分位数。
MRI 上的纹理分析能敏感地区分 NF-PNENs 和 SPNs,DCE-TWI+fs 图像的百分位数和均值对于肿瘤的鉴别具有信息价值。