Department of Radiology, Fudan University Shanghai Cancer Center, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
Br J Cancer. 2024 Nov;131(10):1613-1622. doi: 10.1038/s41416-024-02871-9. Epub 2024 Oct 9.
To explore the value of whole tumour- and subregion-based radiomics of contrast-enhanced mammography (CEM) in differentiating the HER2 expression status of breast cancers.
352 patients underwent preoperative CEM from two centres were consecutively enroled and divided into the training, internal validation, and external validation cohorts. The lesions were divided into HER2-positive and HER2-negative groups. Besides the radiological features, radiomics features capturing the whole tumour-based (wITH) and subregion-based intratumoral heterogeneity (sITH) were extracted from the craniocaudal view of CEM recombined images. The XGBoost classifier was applied to develop the radiological, sITH, and wITH models. A combined model was constructed by fusing the prediction results of the three models.
The mean age of the patients was 51.1 ± 10.7 years. Two radiological features, four wITH features, and three sITH features were selected to establish the models. The combined model significantly improved the AUC to 0.80 ± 0.03 (95% CI: 0.73-0.86), 0.79 ± 0.06 (95% CI: 0.67-0.90), and 0.79 ± 0.05 (95% CI: 0.69-0.89) in the training, internal validation, and external validation cohorts, respectively (All P < 0.05). The combined model showed good agreement between the predicted and observed probabilities and favourable net clinical benefit in the validation cohorts.
Both whole tumour- and subregion-based ITH radiomics features of CEM exhibited potential for differentiating the HER2 expression status. Combining conventional radiological features and ITH features can improve the model's performance.
探讨对比增强乳腺摄影术(CEM)全肿瘤和亚区放射组学在鉴别乳腺癌 HER2 表达状态中的价值。
连续纳入来自两个中心的 352 例术前 CEM 患者,将病变分为 HER2 阳性和 HER2 阴性组。除了影像学特征外,还从 CEM 重组图像的头尾位提取全肿瘤(wITH)和肿瘤内异质性(sITH)的放射组学特征。应用 XGBoost 分类器建立放射学、sITH 和 wITH 模型。通过融合三个模型的预测结果构建联合模型。
患者的平均年龄为 51.1±10.7 岁。选择了两个放射学特征、四个 wITH 特征和三个 sITH 特征来建立模型。联合模型在训练、内部验证和外部验证队列中显著提高了 AUC 至 0.80±0.03(95%CI:0.73-0.86)、0.79±0.06(95%CI:0.67-0.90)和 0.79±0.05(95%CI:0.69-0.89)(均 P<0.05)。联合模型在验证队列中预测概率与观察概率之间具有良好的一致性,且净临床获益较好。
CEM 的全肿瘤和亚区 ITH 放射组学特征均具有鉴别 HER2 表达状态的潜力。结合常规放射学特征和 ITH 特征可以提高模型性能。