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基于弹性成像的人工智能模型可预测伴有淋巴结受累的乳腺癌新辅助化疗后的腋窝状态:一项前瞻性、多中心诊断研究。

Elastography-based AI model can predict axillary status after neoadjuvant chemotherapy in breast cancer with nodal involvement: a prospective, multicenter, diagnostic study.

作者信息

Huang Jia-Xin, Lu Yao, Tan Yu-Ting, Liu Feng-Tao, Li Yi-Liang, Wang Xue-Yan, Huang Jia-Hui, Lin Shi-Yang, Huang Gui-Ling, Zhang Yu-Ting, Pei Xiao-Qing

机构信息

Department of Liver Surgery, State Key Laboratory of Oncology in South China, Guangdong Provincial Clinical Research Center for Cancer, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, People's Republic of China.

Department of Medical Ultrasound, State Key Laboratory of Oncology in South China, Guangdong Provincial Clinical Research Center for Cancer, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, People's Republic of China.

出版信息

Int J Surg. 2025 Jan 1;111(1):221-229. doi: 10.1097/JS9.0000000000002105.

Abstract

OBJECTIVE

To develop a model for accurate prediction of axillary lymph node (LN) status after neoadjuvant chemotherapy (NAC) in breast cancer patients with nodal involvement.

METHODS

Between October 2018 and February 2024, 671 breast cancer patients with biopsy-proven LN metastasis who received NAC followed by axillary LN dissection were enrolled in this prospective, multicenter study. Preoperative ultrasound (US) images, including B-mode ultrasound (BUS) and shear wave elastography (SWE), were obtained. The included patients were randomly divided at a ratio of 8:2 into a training set and an independent test set, with five-fold cross-validation applied to the training set. The authors first identified clinicopathological characteristics and conventional US features significantly associated with the axillary LN response and developed corresponding prediction models. The authors then constructed deep learning radiomics (DLR) models based on BUS and SWE data. Models performances were compared, and a combination model was developed using significant clinicopathological data and interpreted US features with the SWE-based DLR model. Discrimination, calibration and clinical utility of this model were analyzed using the receiver operating characteristic curve, calibration curve, and decision curve, respectively.

RESULTS

Axillary pathologic complete response (pCR) was achieved in 52.41% of patients. In the test cohort, the clinicopathologic model had an accuracy of 71.30%, while radiologists' diagnoses ranged from 64.26 to 71.11%, indicating limited to moderate predictive ability for the axillary response to NAC. The SWE-based DLR model, with an accuracy of 80.81%, significantly outperformed the BUS-based DLR model, which scored 59.57%. The combination DLR model boasted an accuracy of 88.70% and a false-negative rate of 8.82%. It demonstrated strong discriminatory ability (AUC, 0.95), precise calibration ( P -value obtained by Hosmer-Lemeshow goodness-of-fit test, 0.68), and practical clinical utility (probability threshold, 2.5-97.5%).

CONCLUSIONS

The combination SWE-based DLR model can predict the axillary status after NAC in patients with node-positive breast cancer, and thus, may inform clinical decision-making to help avoid unnecessary axillary LN dissection.

摘要

目的

建立一种模型,用于准确预测有淋巴结受累的乳腺癌患者新辅助化疗(NAC)后的腋窝淋巴结(LN)状态。

方法

2018年10月至2024年2月期间,671例经活检证实有LN转移且接受NAC后行腋窝LN清扫术的乳腺癌患者纳入了这项前瞻性多中心研究。获取术前超声(US)图像,包括B型超声(BUS)和剪切波弹性成像(SWE)。纳入的患者按8:2的比例随机分为训练集和独立测试集,对训练集应用五折交叉验证。作者首先确定了与腋窝LN反应显著相关的临床病理特征和传统US特征,并建立了相应的预测模型。然后,作者基于BUS和SWE数据构建了深度学习影像组学(DLR)模型。比较模型性能,并使用显著的临床病理数据开发组合模型,并用基于SWE的DLR模型解释US特征。分别使用受试者工作特征曲线、校准曲线和决策曲线分析该模型的辨别力、校准度和临床实用性。

结果

52.41%的患者实现了腋窝病理完全缓解(pCR)。在测试队列中,临床病理模型的准确率为71.30%,而放射科医生的诊断准确率在64.26%至71.11%之间,表明对NAC腋窝反应的预测能力有限至中等。基于SWE的DLR模型准确率为80.81%,显著优于基于BUS的DLR模型,后者得分为59.57%。组合DLR模型的准确率为88.70%,假阴性率为8.82%。它显示出很强的辨别能力(AUC,0.95)、精确的校准度(通过Hosmer-Lemeshow拟合优度检验获得的P值,0.68)和实际临床实用性(概率阈值,2.5 - 97.5%)。

结论

基于SWE的组合DLR模型可以预测淋巴结阳性乳腺癌患者NAC后的腋窝状态,因此,可能为临床决策提供参考,有助于避免不必要的腋窝LN清扫。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f0d9/11745675/19a48727b9c0/js9-111-0221-g001.jpg

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