Huang Zhibin, Wang Mengyun, Kong Yao, Li Guoqiu, Tian Hongtian, Wu Huaiyu, Zheng Jing, Mo Sijie, Xu Jinfeng, Dong Fajin
Department of Ultrasound, The Second Clinical Medical College, Jinan University (Shenzhen People's Hospital), Shenzhen 518020, Guangdong, China (Z.H., M.W., Y.K., G.L., H.T., H.W., J.Z., S.M., J.X., F.D.); The Second Clinical Medical College, Jinan University, Shenzhen 518020, China (Z.H., M.W., Y.K., G.L., H.T., H.W., J.Z., S.M., J.X., F.D.).
Department of Ultrasound, The Second Clinical Medical College, Jinan University (Shenzhen People's Hospital), Shenzhen 518020, Guangdong, China (Z.H., M.W., Y.K., G.L., H.T., H.W., J.Z., S.M., J.X., F.D.); The Second Clinical Medical College, Jinan University, Shenzhen 518020, China (Z.H., M.W., Y.K., G.L., H.T., H.W., J.Z., S.M., J.X., F.D.).
Acad Radiol. 2025 May;32(5):2422-2434. doi: 10.1016/j.acra.2024.10.036. Epub 2024 Nov 20.
This study investigated the preoperative predictive efficiency of radiomics derived from photoacoustic (PA) imaging, integrated with the clinical features of Ki-67 expression in malignant breast cancer (BC), with a focus on both intratumoral and peritumoral regions.
This study involved 359 patients, divided into a training set (n = 251) and a testing set (n = 108). Radiomic features were extracted from intratumoral and peritumoral regions using PA imaging. Multivariate logistic regression was employed to identify significant clinical factors. LASSO regression was used to select the features extracted from the training set. The selected radiomics features were combined with clinical features to develop a radiomics nomogram. The predictive efficiency of the model was assessed using the area under the receiver operating characteristic curve (AUC), and its clinical utility and accuracy were evaluated through decision curve analysis and calibration curves, respectively.
The developed nomogram combined 6 mm peritumoral data with intratumoral and clinical features and showed excellent diagnostic performance, achieving an AUC of 0.899 in the testing set. They both showed good calibrations. The outperformed models based solely on clinical features or other radiomics methods, with the 6 mm surrounding tumor area proving most effective in identifying Ki-67 status in BC patients.
Integrating PA radiomics with clinical features offers a robust preoperative tool for predicting Ki-67 status in BC, optimizing the delineation of peritumoral regions for enhanced diagnostic precision. The model's strong performance supports its potential as a non-invasive adjunct to traditional biopsy methods, aiding in the personalized management of BC treatment.
本研究调查了源自光声(PA)成像的放射组学与恶性乳腺癌(BC)中Ki-67表达的临床特征相结合的术前预测效率,重点关注肿瘤内和肿瘤周围区域。
本研究纳入359例患者,分为训练集(n = 251)和测试集(n = 108)。使用PA成像从肿瘤内和肿瘤周围区域提取放射组学特征。采用多变量逻辑回归确定显著的临床因素。使用LASSO回归选择从训练集中提取的特征。将选定的放射组学特征与临床特征相结合,构建放射组学列线图。使用受试者操作特征曲线(AUC)下的面积评估模型的预测效率,并分别通过决策曲线分析和校准曲线评估其临床实用性和准确性。
所构建的列线图将6mm肿瘤周围数据与肿瘤内及临床特征相结合,显示出优异的诊断性能,在测试集中AUC达到0.899。两者均显示出良好的校准。该模型优于仅基于临床特征或其他放射组学方法的模型,其中肿瘤周围6mm区域在识别BC患者的Ki-67状态方面最为有效。
将PA放射组学与临床特征相结合,为预测BC患者的Ki-67状态提供了一种强大的术前工具,优化肿瘤周围区域的划定以提高诊断精度。该模型的强大性能支持其作为传统活检方法的非侵入性辅助手段的潜力,有助于BC治疗的个性化管理。