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一种基于神经网络的用于小儿患者在体外放射治疗中摆位的二维/三维图像配准质量评估器。

A neural network-based 2D/3D image registration quality evaluator for pediatric patient setup in external beam radiotherapy.

作者信息

Wu Jian, Su Zhong, Li Zuofeng

机构信息

University of Florida.

出版信息

J Appl Clin Med Phys. 2016 Jan 8;17(1):22-33. doi: 10.1120/jacmp.v17i1.5235.

Abstract

Our purpose was to develop a neural network-based registration quality evaluator (RQE) that can improve the 2D/3D image registration robustness for pediatric patient setup in external beam radiotherapy. Orthogonal daily setup X-ray images of six pediatric patients with brain tumors receiving proton therapy treatments were retrospectively registered with their treatment planning computed tomography (CT) images. A neural network-based pattern classifier was used to determine whether a registration solution was successful based on geometric features of the similarity measure values near the point-of-solution. Supervised training and test datasets were generated by rigidly registering a pair of orthogonal daily setup X-ray images to the treatment planning CT. The best solution for each registration task was selected from 50 optimizing attempts that differed only by the randomly generated 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 tolerance to determine whether that solution was acceptable. A supervised training was then used to train the RQE. Performance of the RQE was evaluated using test dataset consisting of registration results that were not used in training. The RQE was integrated with our in-house 2D/3D registration system and its performance was evaluated using the same patient dataset. With an optimized sampling step size (i.e., 5 mm) in the feature space, the RQE has the sensitivity and the specificity in the ranges of 0.865-0.964 and 0.797-0.990, respectively, when used to detect registration error with mean voxel displacement (MVD) greater than 1 mm. The trial-to-acceptance ratio of the integrated 2D/3D registration system, for all patients, is equal to 1.48. The final acceptance ratio is 92.4%. The proposed RQE can potentially be used in a 2D/3D rigid image registration system to improve the overall robustness by rejecting unsuccessful registration solutions. The RQE is not patient-specific, so a single RQE can be constructed and used for a particular application (e.g., the registration for images acquired on the same anatomical site). Implementation of the RQE in a 2D/3D registration system is clinically feasible.

摘要

我们的目的是开发一种基于神经网络的配准质量评估器(RQE),以提高儿童患者在体外放射治疗中进行二维/三维图像配准的稳健性。对六名接受质子治疗的脑肿瘤儿童患者的每日正交设置X射线图像与他们的治疗计划计算机断层扫描(CT)图像进行了回顾性配准。基于神经网络的模式分类器用于根据解点附近相似性度量值的几何特征来确定配准解决方案是否成功。通过将一对正交的每日设置X射线图像与治疗计划CT进行刚性配准,生成了监督训练和测试数据集。从50次仅因随机生成初始变换参数而不同的优化尝试中选择每个配准任务的最佳解决方案。将归一化参数空间中每个单独解决方案与最佳解决方案的距离与用户定义的误差容限进行比较,以确定该解决方案是否可接受。然后使用监督训练来训练RQE。使用由未用于训练的配准结果组成的测试数据集评估RQE的性能。将RQE与我们内部的二维/三维配准系统集成,并使用相同的患者数据集评估其性能。在特征空间中采用优化的采样步长(即5毫米)时,当用于检测平均体素位移(MVD)大于1毫米的配准误差时,RQE的灵敏度和特异性分别在0.865 - 0.964和0.797 - 0.990范围内。对于所有患者而言,集成的二维/三维配准系统的试验接受率等于1.48,最终接受率为92.4%。所提出的RQE可潜在地用于二维/三维刚性图像配准系统,通过拒绝不成功的配准解决方案来提高整体稳健性,RQE不是特定于患者的,因此可以构建单个RQE并将其用于特定应用(例如,在相同解剖部位获取的图像的配准)。在二维/三维配准系统中实施RQE在临床上是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1f8e/5690212/2b74d6300af2/ACM2-17-022-g001.jpg

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