Pan Guihai, Pan Zejun, Chen Wubiao, Wu Yongjun, Di Xiaoqing, Zhou Fei, Liao Yuting
Department of Radiology, Affiliated Hospital of Guangdong Medical University, Zhanjiang 524001, China.
Department of Pathology, Affiliated Hospital of Guangdong Medical University, Zhanjiang 524001, China.
Magn Reson Imaging. 2025 May;118:110339. doi: 10.1016/j.mri.2025.110339. Epub 2025 Jan 27.
Accurate preoperative prediction of vascular invasion in breast cancer is crucial for surgical planning and patient management. MRI radiomics has shown promise in enhancing diagnostic precision. This study aims to evaluate the effectiveness of integrating MRI radiomic features with clinical data using a deep learning approach to predict vascular invasion in breast cancer patients.
A retrospective analysis was conducted on 102 patients with invasive breast cancer confirmed by surgical pathology. Using the MR750 3.0 T as the examination device, the subject underwent the examination in standard breast positions and sequences. Diffusion-weighted imaging (DWI) was performed with two selected b-values, specifically 0 and 1000 s/mm. Following the injection of the contrast agent, dynamic scans were conducted across six phases, and delayed phase sagittal images were acquired using the VIBRANT sequence. Texture features were extracted from MRI images, and key radiomic and clinical features were selected using variance thresholding, correlation filtering, and logistic regression. A predictive model was developed combining these features, and its performance was evaluated through sensitivity, specificity, and area under the curve (AUC) metrics.
The univariate models based on individual MRI sequences or clinical data demonstrated variable diagnostic performance. In contrast, the multifactorial model that combined radiomic features with clinical data achieved significantly higher accuracy, with an AUC of 0.829, sensitivity of 76.9 %, and specificity of 83.3 %.
Integrating MRI radiomics and clinical data enhances the preoperative prediction of vascular invasion in breast cancer. This approach can improve diagnostic accuracy, providing valuable insights for clinical decision-making and personalized treatment strategies.
准确术前预测乳腺癌血管侵犯对于手术规划和患者管理至关重要。MRI放射组学在提高诊断精度方面已显示出前景。本研究旨在评估使用深度学习方法将MRI放射组学特征与临床数据相结合来预测乳腺癌患者血管侵犯的有效性。
对102例经手术病理确诊的浸润性乳腺癌患者进行回顾性分析。以MR750 3.0 T作为检查设备,受试者在标准乳腺体位和序列下接受检查。采用两个选定的b值(具体为0和1000 s/mm²)进行扩散加权成像(DWI)。注射造影剂后,进行六个时相的动态扫描,并使用VIBRANT序列采集延迟期矢状位图像。从MRI图像中提取纹理特征,并使用方差阈值法、相关滤波法和逻辑回归法选择关键的放射组学和临床特征。结合这些特征建立预测模型,并通过灵敏度、特异度和曲线下面积(AUC)指标评估其性能。
基于单个MRI序列或临床数据的单因素模型显示出不同的诊断性能。相比之下,将放射组学特征与临床数据相结合的多因素模型具有显著更高的准确性,AUC为0.829,灵敏度为76.9%,特异度为83.3%。
整合MRI放射组学和临床数据可增强乳腺癌血管侵犯的术前预测。这种方法可提高诊断准确性,为临床决策和个性化治疗策略提供有价值的见解。