Department of Radiology, Renji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
Central Research Institute, United Imaging Healthcare, Shanghai, China.
Eur Radiol. 2023 May;33(5):3312-3321. doi: 10.1007/s00330-023-09412-7. Epub 2023 Feb 4.
Pituitary adenomas can exhibit aggressive behavior, characterized by rapid growth, resistance to conventional treatment, and early recurrence. This study aims to evaluate the clinical value of shape-related features combined with textural features based on conventional MRI in evaluating the aggressiveness of pituitary adenomas and develop the best diagnostic model.
Two hundred forty-six pituitary adenoma patients (84 aggressive, 162 non-aggressive) who underwent preoperative MRI were retrospectively reviewed. The patients were divided into training (n = 193) and testing (n = 53) sets. Clinical information, shape-related, and textural features extracted from the tumor volume on contrast-enhanced T1-weighted images (CE-T1WI), were compared between aggressive and non-aggressive groups. Variables with significant differences were enrolled into Pearson's correlation analysis to weaken multicollinearity. Logistic regression models based on the selected features were constructed to predict tumor aggressiveness under fivefold cross-validation.
Sixty-five imaging features, including five shape-related and sixty textural features, were extracted from volumetric CE-T1WI. Forty-seven features were significantly different between aggressive and non-aggressive groups (all p values < 0.05). After feature selection, four features (SHAPE_Sphericity, SHAPE_Compacity, DISCRETIZED_Q3, and DISCRETIZED_Kurtosis) were put into logistic regression analysis. Based on the combination of these features and Knosp grade, the model yielded an area under the curve value of 0.935, with a sensitivity of 94.4% and a specificity of 82.9%, to discriminate between aggressive and non-aggressive pituitary adenomas in the testing set.
The radiomic model based on tumor shape and textural features study from CE-T1WI might potentially assist in the preoperative aggressiveness diagnosis of pituitary adenomas.
• Pituitary adenomas with aggressive behavior exhibit rapid growth, resistance to conventional treatment, and early recurrence despite gross resection and may require multiline treatments. • Shape-related features and texture features based on CE-T1WI were significantly correlated with the Ki-67 labeling index, mitotic count, and p53 expression, and the proposed model achieved a favorable prediction of the aggressiveness of PAs with an AUC value of 0.935. • The prediction model might provide valuable guidance for individualized treatment in patients with PAs.
垂体腺瘤可表现出侵袭性行为,其特征为生长迅速、对常规治疗有抵抗性且早期复发。本研究旨在评估基于常规 MRI 的形态相关特征与纹理特征相结合在评估垂体腺瘤侵袭性方面的临床价值,并建立最佳诊断模型。
回顾性分析 246 例(84 例侵袭性,162 例非侵袭性)接受术前 MRI 检查的垂体腺瘤患者的临床资料。将患者分为训练集(n=193)和测试集(n=53)。比较侵袭性和非侵袭性肿瘤在增强 T1 加权像(CE-T1WI)肿瘤体积上的形态相关和纹理特征。对有显著差异的变量进行 Pearson 相关性分析以削弱多重共线性。基于所选特征构建逻辑回归模型,在五重交叉验证下预测肿瘤侵袭性。
从容积 CE-T1WI 中提取了 65 个影像学特征,包括 5 个形态相关特征和 60 个纹理特征。侵袭性和非侵袭性肿瘤之间有 47 个特征存在显著差异(均 P 值<0.05)。经特征选择后,将 4 个特征(SHAPE_Sphericity、SHAPE_Compacity、DISCRETIZED_Q3 和 DISCRETIZED_Kurtosis)纳入逻辑回归分析。基于这些特征与 Knosp 分级的结合,该模型在测试集中区分侵袭性和非侵袭性垂体腺瘤的曲线下面积值为 0.935,其灵敏度为 94.4%,特异性为 82.9%。
基于 CE-T1WI 的肿瘤形态和纹理特征研究的放射组学模型可能有助于垂体腺瘤术前侵袭性诊断。
尽管行大体全切除,但具有侵袭性行为的垂体腺瘤仍会迅速生长,对常规治疗有抵抗性,且早期复发,可能需要多线治疗。
基于 CE-T1WI 的形态相关特征和纹理特征与 Ki-67 标记指数、有丝分裂计数和 p53 表达显著相关,所提出的模型对 PA 的侵袭性具有良好的预测效果,AUC 值为 0.935。
预测模型可为 PA 患者的个体化治疗提供有价值的指导。