Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China; State Key Laboratory of Ultrasound in Medicine and Engineering, College of Biomedical Engineering, Chongqing Medical University, Chongqing 400016, China.
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China.
Eur J Radiol. 2024 Aug;177:111556. doi: 10.1016/j.ejrad.2024.111556. Epub 2024 Jun 9.
To conduct the fusion of radiomics and deep transfer learning features from the intratumoral and peritumoral areas in breast DCE-MRI images to differentiate between benign and malignant breast tumors, and to compare the diagnostic accuracy of this fusion model against the assessments made by experienced radiologists.
This multi-center study conducted a retrospective analysis of DCE-MRI images from 330 women diagnosed with breast cancer, with 138 cases categorized as benign and 192 as malignant. The training and internal testing sets comprised 270 patients from center 1, while the external testing cohort consisted of 60 patients from center 2. A fusion feature set consisting of radiomics features and deep transfer learning features was constructed from both intratumoral (ITR) and peritumoral (PTR) areas. The Least absolute shrinkage and selection operator (LASSO) based support vector machine was chosen as the classifier by comparing its performance with five other machine learning models. The diagnostic performance and clinical usefulness of fusion model were verified and assessed through the area under the receiver operating characteristics (ROC) and decision curve analysis. Additionally, the performance of the fusion model was compared with the diagnostic assessments of two experienced radiologists to evaluate its relative accuracy. The study strictly adhered to CLEAR and METRICS guidelines for standardization to ensure rigorous and reproducible methods.
The findings show that the fusion model, utilizing radiomics and deep transfer learning features from the ITR and PTR, exhibited exceptional performance in classifying breast tumors, achieving AUCs of 0.950 in the internal testing set and 0.921 in the external testing set. This performance significantly surpasses that of models relying on singular regional radiomics or deep transfer learning features alone. Moreover, the fusion model demonstrated superior diagnostic accuracy compared to the evaluations conducted by two experienced radiologists, thereby highlighting its potential to support and enhance clinical decision-making in the differentiation of benign and malignant breast tumors.
The fusion model, combining multi-regional radiomics with deep transfer learning features, not only accurately differentiates between benign and malignant breast tumors but also outperforms the diagnostic assessments made by experienced radiologists. This underscores the model's potential as a valuable tool for improving the accuracy and reliability of breast tumor diagnosis.
在乳腺 DCE-MRI 图像的瘤内和瘤周区域融合放射组学和深度迁移学习特征,以区分良性和恶性乳腺肿瘤,并比较该融合模型与经验丰富的放射科医生评估的诊断准确性。
这项多中心研究对 330 名经诊断患有乳腺癌的女性的 DCE-MRI 图像进行了回顾性分析,其中 138 例为良性,192 例为恶性。训练和内部测试集由中心 1 的 270 名患者组成,外部测试队列由中心 2 的 60 名患者组成。从瘤内(ITR)和瘤周(PTR)区域构建了一个包含放射组学特征和深度迁移学习特征的融合特征集。通过比较其性能与其他五种机器学习模型,选择基于最小绝对收缩和选择算子(LASSO)的支持向量机作为分类器。通过接收者操作特征(ROC)曲线下面积和决策曲线分析验证和评估融合模型的诊断性能和临床实用性。此外,还将融合模型的性能与两名经验丰富的放射科医生的诊断评估进行了比较,以评估其相对准确性。该研究严格遵循 CLEAR 和 METRICS 标准化指南,以确保严格和可重复的方法。
研究结果表明,融合模型利用 ITR 和 PTR 的放射组学和深度迁移学习特征,在对乳腺肿瘤进行分类方面表现出色,在内部测试集和外部测试集的 AUC 分别为 0.950 和 0.921。与仅依赖单一区域放射组学或深度迁移学习特征的模型相比,这一表现显著提高。此外,融合模型的诊断准确性优于两名经验丰富的放射科医生的评估,这突出了其在支持和增强良性和恶性乳腺肿瘤鉴别中的临床决策方面的潜力。
融合模型结合了多区域放射组学和深度迁移学习特征,不仅可以准确区分良性和恶性乳腺肿瘤,而且优于经验丰富的放射科医生的诊断评估。这突出了该模型作为提高乳腺肿瘤诊断准确性和可靠性的有价值工具的潜力。