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A Cross-Stitch Architecture for Joint Registration and Segmentation in Adaptive Radiotherapy

机译:适应放疗中的联合登记和分段的交叉针脚架构

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Recently, joint registration and segmentation has been formulated in a deep learning setting, by the definition of joint loss functions. In this work, we investigate joining these tasks at the architectural level. We propose a registration network that integrates segmentation propagation between images, and a segmentation network to predict the segmentation directly. These networks are connected into a single joint architecture via so-called cross-stitch units, allowing information to be exchanged between the tasks in a learnable manner. The proposed method is evaluated in the context of adaptive image-guided radiotherapy, using daily prostate CT imaging. Two datasets from different institutes and manufacturers were involved in the study. The first dataset was used for training (12 patients) and validation (6 patients), while the second dataset was used as an independent test set (14 patients). In terms of mean surface distance, our approach achieved $1.06 pm 0.3$ mm, $0.91 pm 0.4$ mm, $1.27 pm 0.4$ mm, and $1.76 pm 0.8$ mm on the validation set and $1.82 pm 2.4$ mm, $2.45 pm 2.4$ mm, $2.45 pm 5.0$ mm, and $2.57 pm 2.3$ mm on the test set for the prostate, bladder, seminal vesicles, and rectum, respectively. The proposed multi-task network outperformed single-task networks, as well as a network only joined through the loss function, thus demonstrating the capability to leverage the individual strengths of the segmentation and registration tasks. The obtained performance as well as the inference speed make this a promising candidate for daily re-contouring in adaptive radiotherapy, potentially reducing treatment-related side effects and improving quality-of-life after treatment.
机译:最近,通过联合损失职能的定义,联合登记和分割已在深度学习环境中制定。在这项工作中,我们调查在建筑层面加入这些任务。我们提出了一个注册网络,该网络集成了图像之间的分割传播,以及分段网络直接预测分段。这些网络通过所谓的交叉针脚单元连接到单个联合体系结构中,允许以学习方式在任务之间交换信息。在使用每日前列腺CT成像的情况下,在适应性图像引导放射治疗的背景下评估所提出的方法。来自不同机构和制造商的两个数据集参与了该研究。第一个数据集用于培训(12名患者)和验证(6名患者),而第二个数据集用作独立的测试集(14名患者)。在平均表面距离方面,我们的方法实现了$ 1.06 PM 0.3 $ mm,0.91毫安0.4 $ mm,$ 1.27 PM 0.4 $ mm,$ 1.76 pm 0.8 $ mm在验证集中,$ 1.82 pm 2.4 $ mm, $ 2.45 PM 2.4 $ mm,$ 2.45 PM 5.0 $ mm,以及$ 2.57 PM 2.3 $ MM,用于前列腺,膀胱,精液和直肠的测试设置。所提出的多任务网络优于表现优于单任务网络,以及仅通过损耗功能加入的网络,从而展示了利用分割和注册任务的各个优势的能力。所获得的性能以及推理速度使得这是每天在适应放疗中的日常重新剥离的有希望的候选者,可能降低治疗后的治疗副作用和改善治疗后的寿命质量。

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