A.V. Vishnevsky National Medical Research Centre of Surgery, Moscow, Russia.
Pirogov Russian National Research Medical University, Moscow, Russia.
Eur Radiol. 2023 Feb;33(2):1152-1161. doi: 10.1007/s00330-022-09046-1. Epub 2022 Aug 20.
To develop diagnostic radiomic model-based algorithm for pancreatic ductal adenocarcinoma (PDAC) grade prediction.
Ninety-one patients with histologically confirmed PDAC and preoperative CT were divided into subgroups based on tumor grade. Two histology-blinded radiologists independently segmented lesions for quantitative texture analysis in all contrast enhancement phases. The ratio of densities of PDAC and unchanged pancreatic tissue, and relative tumor enhancement (RTE) in arterial, portal venous, and delayed phases of the examination were calculated. Principal component analysis was used for multivariate predictor analysis. The selection of predictors in the binary logistic model was carried out in 2 stages: (1) using one-factor logistic models (selection criterion was p < 0.1); (2) using regularization (LASSO regression after standardization of variables). Predictors were included in proportional odds models without interactions.
There were significant differences in 4, 16, and 8 texture features out of 62 for the arterial, portal venous, and delayed phases of the study, respectively (p < 0.1). After selection, the final diagnostic model included such radiomics features as DISCRETIZED HU standard, DISCRETIZED HUQ3, GLCM Correlation, GLZLM LZLGE for the portal venous phase of the contrast enhancement, and CONVENTIONAL_HUQ3 for the delayed phase of CT study. On its basis, a diagnostic model was built, showing AUC for grade ≥ 2 of 0.75 and AUC for grade 3 of 0.66.
Radiomics features vary in PDAC of different grades and increase the accuracy of CT in preoperative diagnosis. We have developed a diagnostic model, including texture features, which can be used to predict the grade of PDAC.
• A diagnostic algorithm based on CT texture features for preoperative PDAC grade prediction was developed. • The assumption that the scanning protocol can influence the results of texture analysis was confirmed and assessed. • Our results show that tumor differentiation grade can be assessed with sufficient diagnostic accuracy using CT texture analysis presented in this study.
开发基于诊断放射组学模型的算法,用于预测胰腺导管腺癌(PDAC)的分级。
将 91 例经组织学证实的 PDAC 患者和术前 CT 分为肿瘤分级亚组。两名组织学盲法的放射科医生独立对病变进行定量纹理分析,在所有增强相。计算 PDAC 和未改变胰腺组织的密度比以及检查动脉期、门静脉期和延迟期的相对肿瘤增强(RTE)。使用主成分分析进行多变量预测因子分析。在二元逻辑模型中选择预测因子分 2 个阶段进行:(1)使用单因素逻辑模型(选择标准为 p<0.1);(2)使用正则化(标准化变量后的 LASSO 回归)。没有相互作用的预测因子被纳入比例优势模型。
在动脉期、门静脉期和延迟期的研究中,分别有 4、16 和 8 个纹理特征存在统计学差异(p<0.1)。选择后,最终诊断模型包括门静脉期增强的 DISCRETIZED HU standard、DISCRETIZED HUQ3、GLCM Correlation、GLZLM LZLGE 和 CT 研究延迟期的 CONVENTIONAL_HUQ3 等放射组学特征。在此基础上建立了一个诊断模型,其用于预测等级≥2 的 AUC 为 0.75,用于预测等级 3 的 AUC 为 0.66。
不同等级 PDAC 的放射组学特征不同,提高了 CT 术前诊断的准确性。我们已经开发了一种诊断模型,包括纹理特征,可用于预测 PDAC 的分级。
• 开发了一种基于 CT 纹理特征的术前 PDAC 分级预测诊断算法。• 证实并评估了扫描方案可能影响纹理分析结果的假设。• 我们的结果表明,使用本研究中呈现的 CT 纹理分析可以足够准确地评估肿瘤分化程度。