Zhou Jin, Liu Chaoxu, Shi Zhaoting, Li Xiaokang, Chang Cai, Zhi Wenxiang, Zhou Shichong
Department of Ultrasound, Fudan University Shanghai Cancer Center, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
Quant Imaging Med Surg. 2023 Oct 1;13(10):6887-6898. doi: 10.21037/qims-22-1069. Epub 2023 Sep 15.
Axillary lymph node (ALN) metastasis is seen in encapsulated papillary carcinoma (EPC), mostly with an invasive component (INV). Radiomics can offer more information beyond subjective grayscale and color Doppler ultrasound (US) image interpretation. This study aimed to develop radiomics models for predicting an INV of EPC in the breast based on US images.
This study retrospectively enrolled 105 patients (107 masses) with a pathological diagnosis of EPC from January 2016 to April 2021, and all masses had preoperative US images. Of the 107 masses, 64 were randomized to a training set and 43 to a test set. US and clinical features were analyzed to identify features associated with INVs. Then, based on the manually segmented US images to obtain radiomics features, the models to predict INVs were built with 5 ensemble machine learning classifiers. We estimated the performance of the predictive models using accuracy, the area under the receiver operating characteristic (ROC) curve (AUC), sensitivity, and specificity.
The mean age was 63.71 years (range, 31 to 85 years); the mean size of tumors was 23.40 mm (range, 9 to 120 mm). Among all clinical and US features, only shape was statistically different between EPC with INVs and those without (P<0.05). In this study, the models based on Random Under Sampling (RUS) Boost, Random Forest, XGBoost, AdaBoost, and Easy Ensemble methods had good performance, among which RUS Boost had the best performance with an AUC of 0.875 [95% confidence interval (CI): 0.750-0.974] in the test set.
Radiomics prediction models were effective in predicting the INV of EPC, whereas clinical and US features demonstrated relatively decreased predictive utility.
腋窝淋巴结(ALN)转移可见于包膜内乳头状癌(EPC),大多伴有浸润成分(INV)。影像组学能够提供超出主观灰阶和彩色多普勒超声(US)图像解读之外的更多信息。本研究旨在基于超声图像开发用于预测乳腺EPC浸润成分的影像组学模型。
本研究回顾性纳入了2016年1月至2021年4月间105例经病理诊断为EPC的患者(107个肿块),所有肿块均有术前超声图像。在这107个肿块中,64个随机分配至训练集,43个分配至测试集。分析超声和临床特征以识别与浸润成分相关的特征。然后,基于手动分割的超声图像获取影像组学特征,使用5种集成机器学习分类器构建预测浸润成分的模型。我们使用准确率、受试者操作特征(ROC)曲线下面积(AUC)、敏感性和特异性评估预测模型的性能。
平均年龄为63.71岁(范围31至85岁);肿瘤平均大小为23.40毫米(范围9至120毫米)。在所有临床和超声特征中,有浸润成分的EPC与无浸润成分的EPC之间仅形状存在统计学差异(P<0.05)。在本研究中,基于随机欠采样(RUS)提升、随机森林、XGBoost、AdaBoost和易集成方法的模型具有良好性能,其中RUS提升在测试集中表现最佳,AUC为0.875 [95%置信区间(CI):0.750 - 0.974]。
影像组学预测模型在预测EPC的浸润成分方面有效,而临床和超声特征的预测效用相对降低。