Guo Yuan, Xie Xiaotong, Tang Wenjie, Chen Siyi, Wang Mingyu, Fan Yaheng, Lin Chuxuan, Hu Wenke, Yang Jing, Xiang Jialin, Jiang Kuiming, Wei Xinhua, Huang Bingsheng, Jiang Xinqing
Department of Radiology, Guangzhou First People's Hospital, South China University of Technology, Guangzhou, Guangdong, 510180, China.
School of Life Science, South China Normal University, Guangzhou, 510631, China.
Eur Radiol. 2024 Feb;34(2):899-913. doi: 10.1007/s00330-023-09990-6. Epub 2023 Aug 19.
This study aimed to establish a MRI-based deep learning radiomics (DLR) signature to predict the human epidermal growth factor receptor 2 (HER2)-low-positive status and further verified the difference in prognosis by the DLR model.
A total of 481 patients with breast cancer who underwent preoperative MRI were retrospectively recruited from two institutions. Traditional radiomics features and deep semantic segmentation feature-based radiomics (DSFR) features were extracted from segmented tumors to construct models separately. Then, the DLR model was constructed to assess the HER2 status by averaging the output probabilities of the two models. Finally, a Kaplan‒Meier survival analysis was conducted to explore the disease-free survival (DFS) in patients with HER2-low-positive status. The multivariate Cox proportional hazard model was constructed to further determine the factors associated with DFS.
First, the DLR model distinguished between HER2-negative and HER2-overexpressing patients with AUCs of 0.868 and 0.763 in the training and validation cohorts, respectively. Furthermore, the DLR model distinguished between HER2-low-positive and HER2-zero patients with AUCs of 0.855 and 0.750, respectively. Cox regression analysis showed that the prediction score obtained using the DLR model (HR, 0.175; p = 0.024) and lesion size (HR, 1.043; p = 0.009) were significant, independent predictors of DFS.
We successfully constructed a DLR model based on MRI to noninvasively evaluate the HER2 status and further revealed prospects for predicting the DFS of patients with HER2-low-positive status.
The MRI-based DLR model could noninvasively identify HER2-low-positive status, which is considered a novel prognostic predictor and therapeutic target.
• The DLR model effectively distinguished the HER2 status of breast cancer patients, especially the HER2-low-positive status. • The DLR model was better than the traditional radiomics model or DSFR model in distinguishing HER2 expression. • The prediction score obtained using the model and lesion size were significant independent predictors of DFS.
本研究旨在建立一种基于磁共振成像(MRI)的深度学习放射组学(DLR)特征,以预测人表皮生长因子受体2(HER2)低阳性状态,并进一步验证DLR模型在预后方面的差异。
从两家机构回顾性招募了481例术前行MRI检查的乳腺癌患者。从分割后的肿瘤中提取传统放射组学特征和基于深度语义分割特征的放射组学(DSFR)特征,分别构建模型。然后,通过对两个模型的输出概率求平均值来构建DLR模型,以评估HER2状态。最后,进行Kaplan-Meier生存分析,以探讨HER2低阳性状态患者的无病生存期(DFS)。构建多变量Cox比例风险模型,以进一步确定与DFS相关的因素。
首先,DLR模型在训练队列和验证队列中分别以0.868和0.763的曲线下面积(AUC)区分HER2阴性和HER2过表达患者。此外,DLR模型分别以0.855和0.750的AUC区分HER2低阳性和HER2零表达患者。Cox回归分析表明,使用DLR模型获得的预测评分(风险比[HR],0.175;P = 0.024)和病变大小(HR,1.043;P = 0.009)是DFS的显著独立预测因素。
我们成功构建了一种基于MRI的DLR模型,用于无创评估HER2状态,并进一步揭示了预测HER2低阳性状态患者DFS的前景。
基于MRI的DLR模型可以无创识别HER2低阳性状态,这被认为是一种新的预后预测指标和治疗靶点。
• DLR模型有效区分了乳腺癌患者的HER2状态,尤其是HER2低阳性状态。• DLR模型在区分HER2表达方面优于传统放射组学模型或DSFR模型。• 使用该模型获得的预测评分和病变大小是DFS的显著独立预测因素。