首页> 外文会议>Conference on Medical Imaging: Biomedical Applications in Molecular, Structural, and Functional Imaging >Residual Mask Scoring Regional Convolutional Neural Network for Multi-Organ Segmentation in Head-and-Neck CT
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Residual Mask Scoring Regional Convolutional Neural Network for Multi-Organ Segmentation in Head-and-Neck CT

机译:用于头部颈部CT的多器官分割区域卷积神经网络的残余面膜

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The delineation of target and organs-at-risk (OARs) is a necessary step in radiotherapy treatment planning. The accuracy of the target and OAR contours directly affects the quality of radiotherapy plans. Manual contouring of OARs is the routine procedure at present, which, however, is very time-consuming and requires significant expertise, especially for those head-and-neck (HN) cancer cases, where OARs densely distribute around tumors with complex anatomical structures. In this study, we propose a deep learning-based fully automated delineation method, namely, mask scoring regional convolutional neural network (MS-RCNN), to obtain consistent and reliable OAR contours in HN CT. In the model, MR images were synthesized by a cycle-consistent generative adversarial network given CT images. A backbone network was utilized to extract features from MRI and CT independently. The high bony-structure contrast in CT and soft-tissue contrast in MRI are complementary in nature. Through combining those complementary contrasts, the accuracy of OAR delineation is expected to be improved. Due to the ability of various object detection and classification, ResNet 101 was used as backbone in MS-RCNN. Quantities including Dice similarity coefficient (DSC), 95th percentile Hausdorff distance (HD95), mean surface distance (MSD), and residual mean square distance (RMS) were calculated to evaluate the performance of the proposed method. An average DSC, HD95, MSD and RMS of 0.78 (0.58 - 0.89), 4.88 mm (2.79 mm - 7.46 mm), 1.39 mm (0.69 mm - 1.99 mm), and 2.23 mm (1.30 mm - 3.23 mm), were respectively achieved across all of the 12 OARs by our proposed method. The proposed method is promising in facilitating auto-contouring for radiotherapy treatment planning.
机译:划分的目标和器官 - 风险(OARS)是放射治疗计划的必要步骤。目标和OAR轮廓的准确性直接影响放射治疗计划的质量。桨的手动轮廓是目前的常规程序,但是,这是非常耗时的,并且需要具有重要专业知识,特别是对于那些头颈(HN)癌症病例,其中啤酒少量分布在具有复杂解剖结构的肿瘤周围。在这项研究中,我们提出了一种基于深度学习的全自动描绘方法,即掩码评分区域卷积神经网络(MS-RCNN),以获得HN CT的一致和可靠的OAR轮廓。在该模型中,通过给定CT图像的循环一致的生成的对抗网络合成MR图像。骨干网络用于独立提取MRI和CT的特征。 MRI中CT和软组织对比度的高骨结构对比度是自然互补的。通过组合那些互补对比,预计OAR描绘的准确性将得到改善。由于各种对象检测和分类的能力,RESET 101用作MS-RCNN中的骨干。计算包括骰子相似系数(DSC),95百分位数Hausdorff距离(HD95),平均表面距离(MSD)和残余平均方距离(RMS)以评估所提出的方法的性能。平均DSC,HD95,MSD和RMS为0.78(0.58 - 0.89),4.88 mm(2.79 mm - 7.46mm),1.39 mm(0.69 mm - 1.99mm)和2.23 mm(1.30 mm - 3.23mm)通过我们提出的方法在所有12个桨中实现。该提出的方法在有助于促进用于放射治疗计划的自动化轮廓。

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