Niu Ruilan, Chen Ziran, Li Yueming, Fang Yongqi, Gao Jianbo, Li Junkang, Li Shiyu, Huang Sisi, Zou Xiaomeng, Fu Naiqin, Jin Zhiying, Shao Yuhong, Li Maoran, Kang Yan, Wang Zhili
School of Medicine, Nankai University, 94 Weijin Road, Tianjin 300071, China.
College of Medicine and Biological Information Engineering, Northeastern University, 195 Chuangxin Road, Shenyang 110169, China.
Ultrasound Med Biol. 2025 Nov;51(11):1945-1952. doi: 10.1016/j.ultrasmedbio.2025.06.028. Epub 2025 Aug 5.
This study aimed to develop a deep learning radiomics nomogram (DLRN) that integrated B-mode ultrasound (BMUS) and contrast-enhanced ultrasound (CEUS) images for preoperative lymphovascular invasion (LVI) prediction in invasive breast cancer (IBC).
Total 981 patients with IBC from three hospitals were retrospectively enrolled. Of 834 patients recruited from Hospital I, 688 were designated as the training cohort and 146 as the internal test cohort, whereas 147 patients from Hospitals II and III were assigned to constitute the external test cohort. Deep learning and handcrafted radiomics features of BMUS and CEUS images were extracted from breast cancer to construct a deep learning radiomics (DLR) signature. The DLRN was developed by integrating the DLR signature and independent clinicopathological parameters. The performance of the DLRN is evaluated with respect to discrimination, calibration, and clinical benefit.
The DLRN exhibited good performance in predicting LVI, with areas under the receiver operating characteristic curves (AUCs) of 0.885 (95% confidence interval [CI,0.858-0.912), 0.914 (95% CI, 0.868-0.960) and 0.914 (95% CI, 0.867-0.960) in the training, internal test, and external test cohorts, respectively. The DLRN exhibited good stability and clinical practicability, as demonstrated by the calibration curve and decision curve analysis. In addition, the DLRN outperformed the traditional clinical model and the DLR signature for LVI prediction in the internal and external test cohorts (all p < 0.05).
The DLRN exhibited good performance in predicting LVI, representing a non-invasive approach to preoperatively determining LVI status in IBC.
本研究旨在开发一种深度学习影像组学列线图(DLRN),该列线图整合了B超(BMUS)和超声造影(CEUS)图像,用于预测浸润性乳腺癌(IBC)术前的淋巴管侵犯(LVI)情况。
回顾性纳入来自三家医院的981例IBC患者。在医院I招募的834例患者中,688例被指定为训练队列,146例为内部测试队列,而来自医院II和III的147例患者被分配组成外部测试队列。从乳腺癌的BMUS和CEUS图像中提取深度学习和手工制作的影像组学特征,以构建深度学习影像组学(DLR)特征。通过整合DLR特征和独立的临床病理参数来开发DLRN。从区分度、校准度和临床效益方面评估DLRN的性能。
DLRN在预测LVI方面表现良好,训练队列、内部测试队列和外部测试队列的受试者操作特征曲线(AUC)下面积分别为0.885(95%置信区间[CI,0.858 - 0.912])、0.914(95% CI,0.868 - 0.960)和0.914(95% CI,0.867 - 0.960)。校准曲线和决策曲线分析表明DLRN具有良好的稳定性和临床实用性。此外,在内部和外部测试队列中,DLRN在LVI预测方面优于传统临床模型和DLR特征(所有p < 0.05)。
DLRN在预测LVI方面表现良好,代表了一种术前确定IBC患者LVI状态的非侵入性方法。