Zhang Y, Huang H, Yin L, Wang Z X, Lu S Y, Wang X X, Xiang L L, Zhang Q, Zhang J L, Shan X H
School of Medicine, Jiangsu University, Zhenjiang 212013, China.
Department of Medical Imaging, High-tech Zone Hospital of Traditional Chinese Medicine, Suzhou 215000, China.
Zhonghua Zhong Liu Za Zhi. 2024 May 23;46(5):428-437. doi: 10.3760/cma.j.cn112152-20230816-00086.
This study aims to explore the predictive value of T2-weighted imaging (T2WI), apparent diffusion coefficient (ADC), and early-delayed phases enhanced magnetic resonance imaging (DCE-MRI) radiomics prediction model in determining human epidermal growth factor receptor 2 status in breast cancer. A retrospective study was conducted, involving 187 patients with confirmed breast cancer by postsurgical pathology at Zhenjiang First People's Hospital during January 2021 and May 2023. Immunohistochemistry or fluorescence in situ hybridization was used to determine the HER-2 status of these patients, with 48 cases classified as HER-2 positive and 139 cases as HER-2 negative. The training set was used to construct the prediction models and the validation set was used to verify the prediction models. Layers of T2WI, ADC, and early-delayed phase DCE-MRI images were used to delineate the volumeof interest and 960 radiomic features were extracted from each case using Pyradiomic. After screening and dimensionality reduction by intraclass correlation coefficient, Pearson correlation analysis, least absolute shrinkage, and selection operator, the radiomics labels were established. Logistic regression analysis was used to construct the T2WI radiomics model, ADC radiomics model, DCE-2 radiomics model, DCE-6 radiomics model, and the joint sequence radiomics model to predict the HER-2 expression status of breast cancer, respectively. Based on the clinical, pathological, and MRI image characteristics of patients, univariate and multivariate logistic regression analysis wasused to construct a clinicopathological MRI feature model. The radscore of every patient and the clinicopathological MRI features which were statistically significant after screening were used to construct a nomogram model. The receiver operating characteristic (ROC) curve was used to evaluate the predictive performance of each model and the decision curve analysis wasused to evaluate the clinical usefulness. The T2WI, ADC, DCE-2, DCE-6, and joint sequence radiomics models, the clinicopathological MRI feature model, and the nomogram model were successfully constructed to predict the expression status of HER-2 in breast cancer. ROC analysis showed that in the training set and validation set, the areas under the curve (AUC) of the T2WI radiomics model were 0.797 and 0.760, of the ADC radiomics model were 0.776 and 0.634, of the DCE-2 radiomics model were 0.804 and 0.759, of the DCE-6 radiomics model were 0.869 and 0.798, of the combined sequence radiomics model were 0.908 and 0.847, of the clinicopathological MRI feature model were 0.703 and 0.693, and of the nomogram model were 0.938 and 0.859, respectively. In the training set, the combined sequence radiomics model outperformed the clinicopathological features model (<0.001). In the training and validation sets, the nomogram outperformed the clinicopathological features model (<0.05). In addition, the diagnostic performance of the nomogram was better than that of the four single-modality radiomics models in the training cohort (<0.05) and was better than that of DCE-2 and ADC models in the validation cohort (<0.05). Decision curve analysis indicated that the value of individualized prediction models was higher than clinical and pathological prediction models in clinical practice. The calibration curve showed that the multimodal radiomics model had a high consistency with the actual results in predicting HER-2 expression. T2WI, ADC and early-delayed phase DCE-MRI imaging histology models for HER-2 expression status in breast cancer are expected to provide a non-invasive virtual pathological basis for decision-making on preoperative neoadjuvant regimens in breast cancer.
本研究旨在探讨T2加权成像(T2WI)、表观扩散系数(ADC)以及早期延迟期增强磁共振成像(DCE-MRI)影像组学预测模型在确定乳腺癌人表皮生长因子受体2状态中的预测价值。进行了一项回顾性研究,纳入了2021年1月至2023年5月在镇江市第一人民医院经手术病理确诊为乳腺癌的187例患者。采用免疫组织化学或荧光原位杂交法确定这些患者的HER-2状态,其中48例为HER-2阳性,139例为HER-2阴性。训练集用于构建预测模型,验证集用于验证预测模型。利用T2WI、ADC以及早期延迟期DCE-MRI图像层面勾勒感兴趣体积,并使用Pyradiomic从每个病例中提取960个影像组学特征。经组内相关系数、Pearson相关分析、最小绝对收缩和选择算子进行筛选和降维后,建立影像组学标签。采用逻辑回归分析分别构建T2WI影像组学模型、ADC影像组学模型、DCE-2影像组学模型、DCE-6影像组学模型以及联合序列影像组学模型,以预测乳腺癌的HER-2表达状态。基于患者的临床、病理和MRI图像特征,采用单因素和多因素逻辑回归分析构建临床病理MRI特征模型。将每个患者的radscore以及筛选后具有统计学意义的临床病理MRI特征用于构建列线图模型。采用受试者操作特征(ROC)曲线评估各模型的预测性能,并采用决策曲线分析评估其临床实用性。成功构建了T2WI、ADC、DCE-2、DCE-6以及联合序列影像组学模型、临床病理MRI特征模型和列线图模型,以预测乳腺癌中HER-2的表达状态。ROC分析显示,在训练集和验证集中,T2WI影像组学模型的曲线下面积(AUC)分别为0.797和0.760,ADC影像组学模型分别为0.776和0.634,DCE-2影像组学模型分别为0.804和0.759,DCE-6影像组学模型分别为0.869和0.798,联合序列影像组学模型分别为0.908和0.847,临床病理MRI特征模型分别为0.703和0.693,列线图模型分别为0.938和0.859。在训练集中,联合序列影像组学模型优于临床病理特征模型(<0.001)。在训练集和验证集中列线图均优于临床病理特征模型(<0.05)。此外,在训练队列中列线图的诊断性能优于四个单模态影像组学模型(<0.05),在验证队列中优于DCE-2和ADC模型(<0.05)。决策曲线分析表明,在临床实践中个体化预测模型的价值高于临床和病理预测模型。校准曲线显示,多模态影像组学模型在预测HER-2表达方面与实际结果具有高度一致性。用于预测乳腺癌HER-2表达状态的T2WI、ADC和早期延迟期DCE-MRI成像组织学模型有望为乳腺癌术前新辅助治疗方案的决策提供无创的虚拟病理依据。