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Evaluation of Multi-metric Registration for Online Adaptive Proton Therapy of Prostate Cancer

机译:评估前列腺癌的在线适应质子治疗的多指标注册

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Delineation of the target volume and Organs-At-Risk (OARs) is a crucial step for proton therapy dose planning of prostate cancer. Adaptive proton therapy mandates automatic delineation, as manual delineation is too time consuming while it should be fast and robust. In this study, we propose an accurate and robust automatic propagation of the delineations from the planning CT to the daily CT by means of Deformable Image Registration (DIR). The proposed algorithm is a multi-metric DIR method that jointly optimizes the registration of the bladder contours and CT images. A 3D Dilated Convolutional Neural Network (DCNN) was trained for automatic bladder segmentation of the daily CT. The network was trained and tested on prostate data of 18 patients, each having 7 to 10 daily CT scans. The network achieved a Dice Similarity Coefficient (DSC) of 92.7% ± 1.6% for automatic bladder segmentation. For the automatic contour propagation of the prostate, lymph nodes, and seminal vesicles, the system achieved a DSC of 0.87 ± 0.03, 0.89 ± 0.02, and 0.67±0.11 and Mean Surface Distance of 1.4±0.30 mm, 1.4±0.29 mm, and 1.5 ± 0.37 mm, respectively. The proposed algorithm is therefore very promising for clinical implementation in the context of online adaptive proton therapy of prostate cancer.
机译:划定目标体积和器官风险(OARS)是前列腺癌质子治疗剂量规划的关键步骤。自适应质子疗法要求自动描绘,因为手动描绘太耗时,而它应该快速且坚固。在这项研究中,我们通过可变形的图像登记(DIR)提出了从计划CT到每日CT的准确和稳健的自动传播。所提出的算法是一种多度量的DIR方法,该方法共同优化膀胱轮廓和CT图像的配准。培训3D扩张的卷积神经网络(DCNN),用于每日CT的自动膀胱分割。网络培训并在18名患者的前列腺数据上进行培训并测试,每次具有7至10日CT扫描。对于自动膀胱分割,网络实现了92.7%±1.6%的骰子相似度系数(DSC)。对于前列腺,淋巴结和精髓囊泡的自动轮廓传播,该系统达到了0.87±0.03,0.89±0.02和0.67±0.11的DSC,平均表面距离为1.4±0.30 mm,1.4±0.29 mm,和分别为1.5±0.37 mm。因此,所提出的算法非常有希望在前列腺癌的在线自适应质子治疗的背景下进行临床实施。

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