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首页> 外文期刊>Medical Physics >Novel image registration quality evaluator (RQE) with an implementation for automated patient positioning in cranial radiation therapy.
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Novel image registration quality evaluator (RQE) with an implementation for automated patient positioning in cranial radiation therapy.

机译:新型图像配准质量评估器(RQE),用于在颅骨放射治疗中自动定位患者。

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摘要

In external beam radiation therapy, digitally reconstructed radiographs (DRRs) and portal images are used to verify patient setup based either on a visual comparison or, less frequently, with automated registration algorithms. A registration algorithm can be trapped in local optima due to irregularity of patient anatomy, image noise and artifacts, and/or out-of-plane shifts, resulting in an incorrect solution. Thus, human observation, which is subjective, is still required to check the registration result. We propose to use a novel image registration quality evaluator (RQE) to automatically identify misregistrations as part of an algorithm-based decision-making process for verification of patient positioning. A RQE, based on an adaptive pattern classifier, is generated from a pair of reference and target images to determine the acceptability of a registration solution given an optimization process. Here we applied our RQE to patient positioning for cranial radiation therapy. We constructed two RQEs-onefor the evaluation of intramodal registrations (i.e., portal-portal); the other for intermodal registrations (i.e., portal-DRR). Mutual information, because of its high discriminatory ability compared with other measures (i.e., correlation coefficient and partitioned intensity uniformity), was chosen as the test function for both RQEs. We adopted 1 mm translation and 1 degree rotation as the maximal acceptable registration errors, reflecting desirable clinical setup tolerances for cranial radiation therapy. Receiver operating characteristic analysis was used to evaluate the performance of the RQE, including computations of sensitivity and specificity. The RQEs showed very good performance for both intramodal and intermodal registrations using simulated and phantom data. The sensitivity and the specificity were 0.973 and 0.936, respectively, for the intramodal RQE using phantom data. Whereas the sensitivity and the specificity were 0.961 and 0.758, respectively, for the intermodal RQE using phantom data. Phantom experiments also indicated our RQEs detected out-of-plane deviations exceeding 2.5 mm and 2.50. A preliminary retrospective clinical study of the RQE on cranial portal imaging also yielded good sensitivity > or = 0.857) and specificity (> or = 0.987). Clinical implementation of a RQE could potentially reduce the involvement of the human observer for routine patient positioning verification, while increasing setup accuracy and reducing setup verification time.
机译:在外部束放射治疗中,数字重建的X射线照片(DRR)和门图像用于基于视觉比较或使用自动配准算法(较不频繁)来验证患者设置。由于患者解剖结构的不规则,图像噪声和伪影和/或平面外移动,配准算法可能会陷入局部最优状态,从而导致解决方案不正确。因此,仍然需要人类观察,这是主观的,以检查配准结果。我们建议使用一种新颖的图像配准质量评估器(RQE)自动识别套准不准,作为基于算法的决策过程的一部分,以验证患者的位置。从一对参考图像和目标图像生成基于自适应模式分类器的RQE,以在优化过程中确定配准解决方案的可接受性。在这里,我们将RQE应用于颅骨放射治疗的患者定位。我们构建了两个RQE,一个用于评估模态内注册(即门户网站门户);另一个用于联运注册(即Portal-DRR)。互惠信息由于具有比其他指标(即相关系数和分区强度均匀性)高的区分能力,因此被选作两个RQE的测试函数。我们采用1毫米平移和1度旋转作为最大可接受的套准误差,反映了颅骨放射治疗的理想临床设置公差。接收器工作特性分析用于评估RQE的性能,包括敏感性和特异性的计算。使用模拟和幻像数据,RQE在模式内和模式间配准上均显示出非常好的性能。使用体模数据,对于模态内RQE的敏感性和特异性分别为0.973和0.936。而使用幻象数据对联运RQE的敏感性和特异性分别为0.961和0.758。幻影实验还表明,我们的RQE检测到的面外偏差超过2.5毫米和2.50。 RQE在颅门成像方面的初步回顾性临床研究也产生了良好的敏感性(≥0.857)和特异性(≥0.987)。 RQE的临床实施可以潜在地减少观察员参与常规患者定位验证的过程,同时提高设置准确性并减少设置验证时间。

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