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基于深度学习利用纵向多区域超声预测乳腺癌患者腋窝病理完全缓解

Deep learning-based prediction of axillary pathological complete response in patients with breast cancer using longitudinal multiregional ultrasound.

作者信息

Liu Yu, Wang Ying, Huang Jiaxin, Pei Shufang, Wang Yuxiang, Cui Yanfen, Yan Lifen, Yao Mengxia, Wang Yumeng, Zhu Zejun, Huang Chunwang, Liu Zaiyi, Liang Changhong, Shi Jiayao, Li Zhenhui, Pei Xiaoqing, Wu Lei

机构信息

Department of Ultrasound, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, 510080, China.

Department of Medical Ultrasonics, The First Affiliated Hospital of Guangzhou Medical University, 151 Yanjiang West Road, 510120, China.

出版信息

EBioMedicine. 2025 Aug 27;119:105896. doi: 10.1016/j.ebiom.2025.105896.

Abstract

BACKGROUND

Noninvasive biomarkers that capture the longitudinal multiregional tumour burden in patients with breast cancer may improve the assessment of residual nodal disease and guide axillary surgery. Additionally, a significant barrier to the clinical translation of the current data-driven deep learning model is the lack of interpretability. This study aims to develop and validate an information shared-private (iShape) model to predict axillary pathological complete response in patients with axillary lymph node (ALN)-positive breast cancer receiving neoadjuvant therapy (NAT) by learning common and specific image representations from longitudinal primary tumour and ALN ultrasound images.

METHODS

A total of 1135 patients with biopsy-proven ALN-positive breast cancer who received NAT were included in this multicentre, retrospective study. The iShape was trained on a dataset of 371 patients and validated on three external validation sets (EVS1-3), with 295, 244, and 225 patients, respectively. Model performance was evaluated using the area under the receiver operating characteristic curve (AUC). The false-negative rates (FNRs) of iShape alone and in combination with sentinel lymph node biopsy (SLNB) were also evaluated. Imaging feature visualisation and RNA sequencing analysis were performed to explore the underlying basis of iShape.

FINDINGS

The iShape achieved AUCs of 0.950-0.971 for EVS 1-3, which were better than those of the clinical model and the image signatures derived from the primary tumour, longitudinal primary tumour, or ALN (P < 0.05, as per the DeLong test). The performance of iShape remained satisfactory in subgroup analyses stratified by age, menstrual status, T stage, molecular subtype, treatment regimens, and machine type (AUCs of 0.812-1.000). More importantly, the FNR of iShape was 7.7%-8.1% in the EVSs, and the FNR of SLNB decreased from 13.4% to 3.6% with the aid of iShape in patients receiving SLNB and ALN dissection. The decision-making process of iShape was explained by feature visualisation. Additionally, RNA sequencing analysis revealed that a lower deep learning score was associated with immune infiltration and tumour proliferation pathways.

INTERPRETATION

The iShape model demonstrated good performance for the precise quantification of ALN status in patients with ALN-positive breast cancer receiving NAT, potentially benefiting individualised decision-making, and avoiding unnecessary axillary lymph node dissection.

FUNDING

This study was supported by (1) Noncommunicable Chronic Diseases-National Science and Technology Major Project (No. 2024ZD0531100); (2) Key-Area Research and Development Program of Guangdong Province (No. 2021B0101420006); (3) National Natural Science Foundation of China (No. 82472051, 82471947, 82271941, 82272088); (4) National Science Foundation for Young Scientists of China (No. 82402270, 82202095, 82302190); (5) Guangzhou Municipal Science and Technology Planning Project (No. 2025A04J4773, 2025A04J4774); (6) the Natural Science Foundation of Guangdong Province of China (No. 2025A1515011607); (7) Medical Scientific Research Foundation of Guangdong Province of China (No. A2024403); (8) Guangdong Provincial Key Laboratory of Artificial Intelligence in Medical Image Analysis and Application (No. 2022B1212010011); (9) Outstanding Youth Science Foundation of Yunnan Basic Research Project (No. 202401AY070001-316); (10) Innovative Research Team of Yunnan Province (No. 202505AS350013).

摘要

背景

能够反映乳腺癌患者纵向多区域肿瘤负荷的非侵入性生物标志物,可能会改善对残留淋巴结疾病的评估,并指导腋窝手术。此外,当前数据驱动的深度学习模型在临床转化方面的一个重大障碍是缺乏可解释性。本研究旨在开发并验证一种信息共享-隐私(iShape)模型,通过从纵向原发肿瘤和腋窝淋巴结(ALN)超声图像中学习共同和特定的图像特征,来预测接受新辅助治疗(NAT)的ALN阳性乳腺癌患者的腋窝病理完全缓解情况。

方法

本多中心回顾性研究纳入了1135例经活检证实为ALN阳性且接受NAT的乳腺癌患者。iShape在一个包含371例患者的数据集上进行训练,并在三个外部验证集(EVS1 - 3)上进行验证,这三个验证集分别包含295例、244例和225例患者。使用受试者操作特征曲线下面积(AUC)评估模型性能。还评估了单独使用iShape以及iShape与前哨淋巴结活检(SLNB)联合使用时的假阴性率(FNR)。进行成像特征可视化和RNA测序分析以探索iShape的潜在基础。

结果

iShape在EVS 1 - 3上的AUC为0.950 - 0.

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