Yue Wenyi, Zhang Hongtao, Zhou Juan, Li Guang, Tang Zhe, Sun Zeyu, Cai Jianming, Tian Ning, Gao Shen, Dong Jinghui, Liu Yuan, Bai Xu, Sheng Fugeng
Department of Radiology, The Fifth Medical Center of Chinese PLA General Hospital, Beijing, China.
Chinese PLA General Medical School, Beijing, China.
Front Oncol. 2022 Aug 11;12:984626. doi: 10.3389/fonc.2022.984626. eCollection 2022.
In clinical work, accurately measuring the volume and the size of breast cancer is significant to develop a treatment plan. However, it is time-consuming, and inter- and intra-observer variations among radiologists exist. The purpose of this study was to assess the performance of a Res-UNet convolutional neural network based on automatic segmentation for size and volumetric measurement of mass enhancement breast cancer on magnetic resonance imaging (MRI).
A total of 1,000 female breast cancer patients who underwent preoperative 1.5-T dynamic contrast-enhanced MRI prior to treatment were selected from January 2015 to October 2021 and randomly divided into a training cohort ( = 800) and a testing cohort ( = 200). Compared with the masks named ground truth delineated manually by radiologists, the model performance on segmentation was evaluated with dice similarity coefficient (DSC) and intraclass correlation coefficient (ICC). The performance of tumor (T) stage classification was evaluated with accuracy, sensitivity, and specificity.
In the test cohort, the DSC of automatic segmentation reached 0.89. Excellent concordance (ICC > 0.95) of the maximal and minimal diameter and good concordance (ICC > 0.80) of volumetric measurement were shown between the model and the radiologists. The trained model took approximately 10-15 s to provide automatic segmentation and classified the T stage with an overall accuracy of 0.93, sensitivity of 0.94, 0.94, and 0.75, and specificity of 0.95, 0.92, and 0.99, respectively, in T1, T2, and T3.
Our model demonstrated good performance and reliability for automatic segmentation for size and volumetric measurement of breast cancer, which can be time-saving and effective in clinical decision-making.
在临床工作中,准确测量乳腺癌的体积和大小对于制定治疗方案具有重要意义。然而,这一过程耗时较长,且放射科医生之间存在观察者间和观察者内的差异。本研究的目的是评估基于自动分割的Res-UNet卷积神经网络在磁共振成像(MRI)上对乳腺肿块强化型乳腺癌进行大小和体积测量的性能。
选取2015年1月至2021年10月期间1000例治疗前接受术前1.5-T动态对比增强MRI检查的女性乳腺癌患者,随机分为训练队列(=800)和测试队列(=200)。与放射科医生手动勾勒的名为真实情况的掩码相比,使用骰子相似系数(DSC)和组内相关系数(ICC)评估模型在分割方面的性能。用准确率、敏感性和特异性评估肿瘤(T)分期分类的性能。
在测试队列中,自动分割的DSC达到0.89。模型与放射科医生之间在最大直径和最小直径方面显示出极好的一致性(ICC>0.95),在体积测量方面显示出良好的一致性(ICC>0.80)。训练后的模型提供自动分割大约需要10 - 15秒,T1、T2和T3期T分期分类的总体准确率分别为0.93、敏感性分别为0.94、0.94和0.75、特异性分别为0.95、0.92和0.99。
我们的模型在乳腺癌大小和体积测量的自动分割方面表现出良好的性能和可靠性,在临床决策中既省时又有效。