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A neural network based 3D∕3D image registration quality evaluator for the head-and-neck patient setup in the absence of a ground truth

机译:基于神经网络的3D ∕ 3D图像配准质量评估器用于在没有事实依据的情况下对头颈部患者进行设置

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摘要

>Purpose: To develop a neural network based registration quality evaluator (RQE) that can identify unsuccessful 3D∕3D image registrations for the head-and-neck patient setup in radiotherapy.>Methods: A two-layer feed-forward neural network was used as a RQE to classify 3D∕3D rigid registration solutions as successful or unsuccessful based on the features of the similarity surface near the point-of-solution. The supervised training and test data sets were generated by rigidly registering daily cone-beam CTs to the treatment planning fan-beam CTs of six patients with head-and-neck tumors. Two different similarity metrics (mutual information and mean-squared intensity difference) and two different types of image content (entire image versus bony landmarks) were used. The best solution for each registration pair was selected from 50 optimizing attempts that differed only by the initial transformation parameters. The distance from each individual solution to the best solution in the normalized parametrical space was compared to a user-defined error threshold to determine whether that solution was successful or not. The supervised training was then used to train the RQE. The performance of the RQE was evaluated using the test data set that consisted of registration results that were not used in training.>Results: The RQE constructed using the mutual information had very good performance when tested using the test data sets, yielding the sensitivity, the specificity, the positive predictive value, and the negative predictive value in the ranges of 0.960–1.000, 0.993–1.000, 0.983–1.000, and 0.909–1.000, respectively. Adding a RQE into a conventional 3D∕3D image registration system incurs only about 10%–20% increase of the overall processing time.>Conclusions: The authors’ patient study has demonstrated very good performance of the proposed RQE when used with the mutual information in identifying unsuccessful 3D∕3D registrations for daily patient setup. The classifier had very good generality and required only to be trained once for each implementation. When the RQE is incorporated with an automated 3D∕3D image registration system, it can improve the robustness of the system.
机译:>目的:要开发基于神经网络的注册质量评估器(RQE),它可以为放射治疗中的头颈部患者设置识别不成功的3D ∕ 3D图像注册。>方法:使用两层前馈神经网络作为RQE,根据解决方案点附近相似表面的特征将3D ∕ 3D刚性配准解决方案分类为成功还是失败。有监督的训练和测试数据集是通过将每日锥形束CT严格注册到治疗计划的6例头颈肿瘤患者的扇形束CT中而生成的。使用了两个不同的相似性度量(互信息和均方强度差)和两种不同类型的图像内容(整个图像与骨标志)。从仅初始转换参数不同的50个优化尝试中选择了每个配准对的最佳解决方案。将每个单独的解决方案到标准化参数空间中最佳解决方案的距离与用户定义的错误阈值进行比较,以确定该解决方案是否成功。然后,使用有监督的培训来训练RQE。使用包含训练中未使用的注册结果的测试数据集来评估RQE的性能。>结果:使用互信息构建的RQE在使用测试数据进行测试时具有非常好的性能。分别设置0.960–1.000、0.993–1.000、0.983–1.000和0.909–1.000范围内的灵敏度,特异性,阳性预测值和阴性预测值。在常规的3D ∕ 3D图像配准系统中添加RQE只会使整个处理时间增加大约10%–20%。>结论:作者的患者研究表明,建议的RQE的性能非常好与共同信息一起用于识别日常患者设置不成功的3D ∕ 3D注册时。分类器具有很好的通用性,并且每次实现只需训练一次。当RQE与自动3D ∕ 3D图像配准系统结合使用时,它可以提高系统的稳定性。

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