De Robertis Riccardo, Mascarin Beatrice, Bardhi Eda, Spoto Flavio, Cardobi Nicolò, D'Onofrio Mirko
Department of Radiology, G.B. Rossi Hospital, University of Verona, Piazzale L.A. Scuro 10, Verona 37134, Italy.
Department of Radiology, University of Verona, Verona, Italy.
Eur J Radiol Open. 2025 May 6;14:100651. doi: 10.1016/j.ejro.2025.100651. eCollection 2025 Jun.
The aim of this study was to assess whether radiomics could predict histotype of pancreatic ductal adenocarcinomas (PDAC) and pancreatic neuroendocrine tumors (PNET). Contrast-enhanced CT scans of 193 patients were retrospectively reviewed, encompassing 97 PDACs and 96 PNETs. Additionally, anamnestic data and laboratory data were evaluated. A total of 107 features were extracted for both the arterial and venous phases. ROC curves were constructed for the parameters with the highest AUC, considering two groups: one including all lesions and the other including only lesions smaller than 5 cm. The following feature differences were found to be statistically significant (p < 0.05). Without considering lesion size: for the arterial phase, 16 first-order and 38 s-order features; for the venous phase, 10 first-order and 20 s-order features. When considering lesion size: for the arterial phase, 16 first-order and 52 s-order features; for the venous phase, 11 first-order and 36 s-order features. The radiomics features with the highest AUC values included ART_firstorder_RootMeanSquared (AUC = 0.896, p < 0.01) in the arterial phase and VEN_firstorder_Median (AUC = 0.737, p < 0.05) in the venous phase for all lesions, and ART_firstorder_RootMeanSquared (AUC = 0.859, p < 0.01) and VEN_firstorder_Median (AUC = 0.713, p < 0.05) for lesions smaller than 5 cm. Texture analysis of pancreatic pathology has shown good predictability in defining the PNET histotype. This analysis potentially offering a non-invasive, imaging-based method to accurately differentiate between pancreatic tumor types. Such advancements could lead to more precise and personalized treatment planning, ultimately optimizing the use of medical resources.
本研究的目的是评估放射组学是否能够预测胰腺导管腺癌(PDAC)和胰腺神经内分泌肿瘤(PNET)的组织学类型。对193例患者的增强CT扫描进行回顾性分析,其中包括97例PDAC和96例PNET。此外,还评估了既往病史数据和实验室数据。在动脉期和静脉期共提取了107个特征。针对AUC最高的参数构建ROC曲线,分为两组:一组包括所有病变,另一组仅包括直径小于5厘米的病变。发现以下特征差异具有统计学意义(p<0.05)。不考虑病变大小:动脉期有16个一阶特征和38个二阶特征;静脉期有10个一阶特征和20个二阶特征。考虑病变大小:动脉期有16个一阶特征和52个二阶特征;静脉期有11个一阶特征和36个二阶特征。AUC值最高的放射组学特征包括:所有病变在动脉期的ART_firstorder_RootMeanSquared(AUC = 0.896,p<0.01)和静脉期的VEN_firstorder_Median(AUC = 0.737,p<0.05);直径小于5厘米的病变在动脉期的ART_firstorder_RootMeanSquared(AUC = 0.859,p<0.01)和静脉期的VEN_firstorder_Median(AUC = 0.713,p<0.05)。胰腺病理的纹理分析在定义PNET组织学类型方面显示出良好的预测性。该分析可能提供一种基于成像的非侵入性方法,以准确区分胰腺肿瘤类型。这些进展可能会带来更精确和个性化的治疗方案,最终优化医疗资源的利用。