Yang Zhe-Qin, Zhang Yuan, Lu Feng, Yang Tian, Shan Jun, Jiang Quan, Lim Geok Hoon, Bertucci François, Du Hongbo, Zhu Yi-Cheng
Department of Ultrasound, Shanghai Pudong New Area People's Hospital, Shanghai, China.
Department of Ultrasound, Shuguang Hospital Affiliated to Shanghai University of Chinese Traditional Medicine, Shanghai, China.
Gland Surg. 2025 Jul 31;14(7):1348-1365. doi: 10.21037/gs-2025-223. Epub 2025 Jul 25.
Accurate preoperative assessment of sentinel lymph node (SLN) is critical for treatment planning in breast cancer (BC). While SLN biopsy (SLNB) remains the gold standard, it is invasive and may be unnecessary for all patients, particularly those with clinically node-negative disease. Combining conventional B-mode ultrasound (BMUS) and color Doppler ultrasound (CDUS) with new techniques like radiomics and deep learning may improve SLN prediction, but this approach has not been widely studied yet. This retrospective study aims to develop and validate a deep learning radiomics model that combining BMUS and CDUS imaging to noninvasively predict SLN metastasis in patients with BC.
A total of 450 women with invasive BC who were treated at 2 hospitals between October 2021 and March 2025 were retrospectively analyzed. Patients were divided into training (n=276), external validation (n=105), and testing (n=69) sets. Handcrafted features were extracted from the breast lesion areas and its surrounding areas in BMUS images. Deep learning-based features were derived by applying a fine-tuned dual-stream MobileNetV2-based model, ultrasound and color doppler network, to both BMUS and CDUS images. The extracted deep features were then subjected to dimensionality reduction using principal component analysis. Following this, both handcrafted and deep learning features underwent further feature selection and dimensionality reduction process via application of inter- and intraclass correlation coefficient filtering, Pearson correlation analysis, and least absolute shrinkage and selection operator (LASSO) regression. Three models were constructed: only handcrafted features (ONLY_HF), only deep-learning features (ONLY_DF), and combined features (COMB). Each model's performance was evaluated using the area under the curve (AUC).
The COMB model integrated ten features (six handcrafted and four deep learning) following LASSO regression. In predicting SLN metastasis between N0 and N≥1, COMB achieved a higher AUC (0.888, 0.861, and 0.837 in the training, validation, and testing sets, respectively) compared to ONLY_HF (0.792, 0.765, and 0.739) and ONLY_DF (0.781, 0.748, and 0.717). The negative prediction value of COMB was the highest (88.89%, 76.60%, and 71.23%), followed by ONLY_HF (83.33%, 72.00%, and 43.10%), and ONLY_DF (78.38%, 67.57%, and 52.69%).
By integrating BMUS and CDUS imaging with advanced deep learning techniques, the COMB model achieved a high negative predictive value, which could guide axillary treatment decisions and reducing unnecessary invasive procedures. These findings highlight the potential of multimodal imaging and machine learning strategies to serve as noninvasive, supplementary tools for personalized BC management.
前哨淋巴结(SLN)的准确术前评估对于乳腺癌(BC)的治疗规划至关重要。虽然SLN活检(SLNB)仍是金标准,但它具有侵入性,可能并非对所有患者都必要,尤其是那些临床淋巴结阴性的患者。将传统B超(BMUS)和彩色多普勒超声(CDUS)与放射组学和深度学习等新技术相结合,可能会改善SLN预测,但这种方法尚未得到广泛研究。这项回顾性研究旨在开发并验证一种深度学习放射组学模型,该模型结合BMUS和CDUS成像,以无创预测BC患者的SLN转移情况。
回顾性分析了2021年10月至2025年3月期间在两家医院接受治疗的450例浸润性BC女性患者。患者被分为训练组(n = 276)、外部验证组(n = 105)和测试组(n = 69)。从BMUS图像中的乳腺病变区域及其周围区域提取手工特征。通过应用基于微调双流MobileNetV2的模型(超声和彩色多普勒网络),从BMUS和CDUS图像中提取基于深度学习的特征。然后使用主成分分析对提取的深度特征进行降维。在此之后,通过应用组内和组间相关系数滤波、Pearson相关分析以及最小绝对收缩和选择算子(LASSO)回归,对手工特征和深度学习特征进行进一步的特征选择和降维处理。构建了三个模型:仅手工特征(ONLY_HF)、仅深度学习特征(ONLY_DF)和组合特征(COMB)。使用曲线下面积(AUC)评估每个模型的性能。
COMB模型在LASSO回归后整合了十个特征(六个手工特征和四个深度学习特征)。在预测N0和N≥1之间的SLN转移时,与ONLY_HF(训练集、验证集和测试集中分别为0.792、0.765和0.739)和ONLY_DF(0.781、0.748和0.717)相比,COMB的AUC更高(训练集、验证集和测试集中分别为0.888、0.861和0.837)。COMB的阴性预测值最高(88.89%、76.60%和71.23%),其次是ONLY_HF(83.33%、72.00%和43.10%)和ONLY_DF(78.38%、67.57%和52.69%)。
通过将BMUS和CDUS成像与先进深度学习技术相结合,COMB模型实现了较高的阴性预测值,可指导腋窝治疗决策并减少不必要的侵入性操作。这些发现凸显了多模态成像和机器学习策略作为无创、辅助工具用于个性化BC管理的潜力。