Department of Medical Engineering, Wenzhou Medical University First Affiliated Hospital, Shangcai Village, Wenzhou, 325000, People's Republic of China.
Department of Gynecology, Shanghai First Maternal and Infant Hospital, Tongji University School of Medicine, Shanghai, 200126, People's Republic of China.
J Digit Imaging. 2022 Aug;35(4):983-992. doi: 10.1007/s10278-022-00620-z. Epub 2022 Mar 30.
Ultrasound (US) imaging has been recognized and widely used as a screening and diagnostic imaging modality for cervical cancer all over the world. However, few studies have investigated the U-net-based automatic segmentation models for cervical cancer on US images and investigated the effects of automatic segmentations on radiomics features. A total of 1102 transvaginal US images from 796 cervical cancer patients were collected and randomly divided into training (800), validation (100) and test sets (202), respectively, in this study. Four U-net models (U-net, U-net with ResNet, context encoder network (CE-net), and Attention U-net) were adapted to segment the target of cervical cancer automatically on these US images. Radiomics features were extracted and evaluated from both manually and automatically segmented area. The mean Dice similarity coefficient (DSC) of U-net, Attention U-net, CE-net, and U-net with ResNet were 0.88, 0.89, 0.88, and 0.90, respectively. The average Pearson coefficients for the evaluation of the reliability of US image-based radiomics were 0.94, 0.96, 0.94, and 0.95 for U-net, U-net with ResNet, Attention U-net, and CE-net, respectively, in their comparison with manual segmentation. The reproducibility of the radiomics parameters evaluated by intraclass correlation coefficients (ICC) showed robustness of automatic segmentation with an average ICC coefficient of 0.99. In conclusion, high accuracy of U-net-based automatic segmentations was achieved in delineating the target area of cervical cancer US images. It is feasible and reliable for further radiomics studies with features extracted from automatic segmented target areas.
超声(US)成像已被全球公认为宫颈癌的筛查和诊断成像方式。然而,很少有研究调查基于 U 网的宫颈癌 US 图像自动分割模型,并研究自动分割对放射组学特征的影响。本研究共收集了 796 例宫颈癌患者的 1102 例经阴道超声图像,并将其随机分为训练集(800 例)、验证集(100 例)和测试集(202 例)。本研究将四个 U 网模型(U 网、带 ResNet 的 U 网、上下文编码器网络(CE 网)和注意力 U 网)应用于这些 US 图像,自动分割宫颈癌目标。从手动和自动分割区域提取并评估放射组学特征。U 网、注意力 U 网、CE 网和带 ResNet 的 U 网的平均 Dice 相似系数(DSC)分别为 0.88、0.89、0.88 和 0.90。U 网、带 ResNet 的 U 网、注意力 U 网和 CE 网与手动分割的平均 Pearson 系数分别为 0.94、0.96、0.94 和 0.95,用于评估基于 US 图像的放射组学的可靠性。通过组内相关系数(ICC)评估的放射组学参数的可重复性显示出自动分割的稳健性,平均 ICC 系数为 0.99。总之,基于 U 网的自动分割在勾画宫颈癌 US 图像目标区域方面达到了较高的准确性。从自动分割目标区域提取特征进行进一步的放射组学研究是可行且可靠的。