Department of Radiology, Cukurova University Medical School, Balcali Hospital, Adana, Turkey.
Department of Endocrinology, Cukurova University Medical School, Balcali Hospital, Adana, Turkey.
Ir J Med Sci. 2023 Jun;192(3):1155-1161. doi: 10.1007/s11845-022-03105-8. Epub 2022 Jul 25.
To investigate the possibility of distinguishing between nonfunctioning adrenal incidentalomas (NFAI) and autonomous cortisol secreting adrenal incidentalomas (ACSAI) with a model created with magnetic resonance imaging (MRI)-based radiomics and clinical features.
In this study, 100 adrenal lesions were evaluated. The lesions were segmented on unenhanced T1-weighted in-phase (IP) and opposed-phase (OP) as well as on T2-weighted (T2-W) 3Tesla MRIs. The LASSO regression model was used to select potential predictors from 108 texture features for each sequence. Subsequently, a combined radiomics score and clinical features were created and compared.
A significant difference was found between median rad-scores for ACSAI and NFAI in training and test sets (p < 0.05 for all sequences). Multivariate logistic regression analysis revealed that the length of the tumor (OR = 1.09, p = 0.007) was an independent risk factor related to ACSAI. Multivariate logistic regression analysis was used for building clinical-radiomics (combined) models. The Op, IP, and IP plus T2-W model had a higher performance with area under curve (AUC) 0.758, 0.746, and 0.721 on the test dataset, respectively.
ACSAI can be distinguished from NFAI with high accuracy on unenhanced MRI. Radiomics analysis and the model constructed by machine learning algorithms seem superior to another radiologic assessment method. The inclusion of chemical shift MRI and the length of the tumor in the radiomics model could increase the power of the test.
利用基于磁共振成像(MRI)的放射组学和临床特征创建的模型,研究区分无功能肾上腺意外瘤(NFAI)和自主皮质醇分泌肾上腺意外瘤(ACSAI)的可能性。
本研究评估了 100 个肾上腺病变。在未增强 T1 加权同相位(IP)和反相位(OP)以及 T2 加权(T2-W)3Tesla MRI 上对病变进行分割。使用 LASSO 回归模型从每个序列的 108 个纹理特征中选择潜在的预测因子。随后,创建并比较了联合放射组学评分和临床特征。
在训练集和测试集中,ACSAI 和 NFAI 的中位数 rad-scores 之间存在显著差异(所有序列的 p<0.05)。多变量逻辑回归分析显示,肿瘤长度(OR=1.09,p=0.007)是与 ACSAI 相关的独立危险因素。使用多变量逻辑回归分析构建临床放射组学(联合)模型。在测试数据集上,Op、IP 和 IP 加 T2-W 模型的 AUC 分别为 0.758、0.746 和 0.721,性能更高。
在未增强 MRI 上,ACSAI 可以与 NFAI 区分开来,具有较高的准确性。放射组学分析和基于机器学习算法构建的模型似乎优于另一种放射学评估方法。在放射组学模型中纳入化学位移 MRI 和肿瘤长度可以提高测试的效能。