Ma Changjun, Zhao Ying, Song Qingling, Meng Xing, Xu Qihao, Tian Shifeng, Chen Lihua, Wang Nan, Song Qingwei, Lin Liangjie, Wang Jiazheng, Liu Ailian
Department of Radiology, First Affiliated Hospital, Dalian Medical University, Dalian, China.
Medical Imaging Articial Intelligence Engineering Technology Research Center, Dalian, China.
Front Oncol. 2023 Dec 15;13:1280022. doi: 10.3389/fonc.2023.1280022. eCollection 2023.
To develop and validate multi-parametric MRI (MP-MRI)-based radiomics models for the prediction of biological characteristics in endometrial cancer (EC).
A total of 292 patients with EC were divided into LVSI ( = 208), DMI ( = 292), MSI ( = 95), and Her-2 ( = 198) subsets. Total 2316 radiomics features were extracted from MP-MRI (TWI, DWI, and ADC) images, and clinical factors (age, FIGO stage, differentiation degree, pathological type, menopausal state, and irregular vaginal bleeding) were included. Intra-class correlation coefficient (ICC), spearman's rank correlation test, univariate logistic regression, and least absolute shrinkage and selection operator (LASSO) were used to select radiomics features; univariate and multivariate logistic regression were used to identify clinical independent risk factors. Five classifiers were applied (logistic regression, random forest, decision tree, K-nearest neighbor, and Bayes) to construct radiomics models for predicting biological characteristics. The clinical model was built based on the clinical independent risk factors. The combined model incorporating the radiomics score (radscore) and the clinical independent risk factors was constructed. The model was evaluated by ROC curve, calibration curve (H-L test), and decision curve analysis (DCA).
In the training cohort, the RF radiomics model performed best among the five classifiers for the three subsets (MSI, LVSI, and DMI) according to AUC values (AUC: 0.844; AUC: 0.952; AUC: 0.840) except for Her-2 subset (Decision tree: AUC=0.714), and the combined model had higher AUC than the clinical model in each subset (MSI: AUC =0.907, AUC =0.755; LVSI: AUC =0.959, AUC =0.835; DMI: AUC = 0.883, AUC =0.796; Her-2: AUC =0.812, AUC =0.717; all <0.05). Nevertheless, in the validation cohort, significant differences between the two models (combined vs. clinical model) were found only in the DMI and LVSI subsets (DMI: AUC =0.803, AUC =0.698; LVSI: AUC =0.926, AUC =0.796; all <0.05).
The radiomics analysis based on MP-MRI and clinical independent risk factors can potentially predict multiple biological features of EC, including DMI, LVSI, MSI, and Her-2, and provide valuable guidance for clinical decision-making.
开发并验证基于多参数MRI(MP-MRI)的影像组学模型,以预测子宫内膜癌(EC)的生物学特征。
将292例EC患者分为LVSI(=208)、DMI(=292)、MSI(=95)和Her-2(=198)亚组。从MP-MRI(TWI、DWI和ADC)图像中提取总共2316个影像组学特征,并纳入临床因素(年龄、国际妇产科联盟(FIGO)分期、分化程度、病理类型、绝经状态和不规则阴道出血)。采用组内相关系数(ICC)、斯皮尔曼等级相关检验、单因素逻辑回归和最小绝对收缩和选择算子(LASSO)来选择影像组学特征;采用单因素和多因素逻辑回归来识别临床独立危险因素。应用五种分类器(逻辑回归、随机森林、决策树、K近邻和贝叶斯)构建预测生物学特征的影像组学模型。基于临床独立危险因素建立临床模型。构建结合影像组学评分(radscore)和临床独立危险因素的联合模型。通过ROC曲线、校准曲线(H-L检验)和决策曲线分析(DCA)对模型进行评估。
在训练队列中,根据AUC值,除Her-2亚组(决策树:AUC =0.714)外,RF影像组学模型在五个分类器中对三个亚组(MSI、LVSI和DMI)的表现最佳(AUC:0.844;AUC:0.952;AUC:0.840),并且联合模型在每个亚组中的AUC均高于临床模型(MSI:AUC =0.907,AUC =0.755;LVSI:AUC =0.959,AUC =0.835;DMI:AUC = 0.883,AUC =0.796;Her-2:AUC =0.812,AUC =0.717;均P<0.05)。然而,在验证队列中,仅在DMI和LVSI亚组中发现两种模型(联合模型与临床模型)之间存在显著差异(DMI:AUC =0.803,AUC =0.698;LVSI:AUC =0.926,AUC =0.796;均P<0.05)。
基于MP-MRI和临床独立危险因素的影像组学分析能够潜在地预测EC的多种生物学特征,包括DMI、LVSI MSI和Her-;2,并为临床决策提供有价值的指导。