Qiu Xiaoying, Jiang Yongluo, Zhao Qiyu, Yan Chunhong, Huang Min, Jiang Tian'an
Departments of Ultrasonography, First Affiliated Hospital, College of Medicine, Zhejiang University, Hangzhou, China.
State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, China.
J Ultrasound Med. 2020 Oct;39(10):1897-1905. doi: 10.1002/jum.15294. Epub 2020 Apr 24.
This work aimed to investigate whether quantitative radiomics imaging features extracted from ultrasound (US) can noninvasively predict breast cancer (BC) metastasis to axillary lymph nodes (ALNs).
Presurgical B-mode US data of 196 patients with BC were retrospectively studied. The cases were divided into the training and validation cohorts (n = 141 versus 55). The elastic net regression technique was used for selecting features and building a signature in the training cohort. A linear combination of the selected features weighted by their respective coefficients produced a radiomics signature for each individual. A radiomics nomogram was established based on the radiomics signature and US-reported ALN status. In a receiver operating characteristic curve analysis, areas under the curves (AUCs) were determined for assessing the accuracy of the prediction model in predicting ALN metastasis in both cohorts. The clinical value was assessed by a decision curve analysis.
In all, 843 radiomics features per case were obtained from expert-delineated lesions on US imaging in this study. Through radiomics feature selection, 21 features were selected to constitute the radiomics signature for predicting ALN metastasis. Area under the curve values of 0.778 and 0.725 were obtained in the training and validation cohorts, respectively, indicating moderate predictive ability. The radiomics nomogram comprising the radiomics signature and US-reported ALN status showed the best performance for ALN detection in the training cohort (AUC, 0.816) but moderate performance in the validation cohort (AUC, 0.759). The decision curve showed that both the radiomics signature and nomogram displayed good clinical utility.
This pilot radiomics study provided a noninvasive method for predicting presurgical ALN metastasis status in BC.
本研究旨在探讨从超声(US)提取的定量放射组学成像特征能否无创预测乳腺癌(BC)向腋窝淋巴结(ALN)的转移。
回顾性研究196例BC患者的术前B超数据。病例分为训练组和验证组(n = 141对55)。弹性网回归技术用于在训练组中选择特征并构建特征模型。所选特征与其各自系数加权后的线性组合为每个个体生成一个放射组学特征模型。基于放射组学特征模型和超声报告的ALN状态建立放射组学列线图。在受试者工作特征曲线分析中,确定曲线下面积(AUC)以评估预测模型在两个队列中预测ALN转移的准确性。通过决策曲线分析评估临床价值。
在本研究中,通过专家在超声成像上勾勒的病变,每例共获得843个放射组学特征。通过放射组学特征选择,选择了21个特征来构成预测ALN转移的放射组学特征模型。训练组和验证组的曲线下面积值分别为0.778和0.725,表明具有中等预测能力。包含放射组学特征模型和超声报告的ALN状态的放射组学列线图在训练组中对ALN检测表现最佳(AUC,0.816),但在验证组中表现中等(AUC,0.759)。决策曲线表明,放射组学特征模型和列线图均显示出良好的临床实用性。
这项初步的放射组学研究提供了一种无创方法来预测BC术前ALN转移状态。