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锥形束 CT 数字重建影像(CBCT-DRRs)优于 CT 数字重建影像(CT-DRRs),适用于胰腺 SBRT 的靶区追踪应用。

CBCT-DRRs superior to CT-DRRs for target-tracking applications for pancreatic SBRT.

机构信息

Northern Sydney Cancer Centre, Royal North Shore Hospital, St Leonards, NSW, 2065, Australia.

Centre for Medical Radiation Physics, Faculty of Engineering and Information Sciences, University of Wollongong, University of Wollongong, NSW, 2522, Australia.

出版信息

Biomed Phys Eng Express. 2024 Apr 26;10(3). doi: 10.1088/2057-1976/ad3bb9.

Abstract

In current radiograph-based intra-fraction markerless target-tracking, digitally reconstructed radiographs (DRRs) from planning CTs (CT-DRRs) are often used to train deep learning models that extract information from the intra-fraction radiographs acquired during treatment. Traditional DRR algorithms were designed for patient alignment (bone matching) and may not replicate the radiographic image quality of intra-fraction radiographs at treatment. Hypothetically, generating DRRs from pre-treatment Cone-Beam CTs (CBCT-DRRs) with DRR algorithms incorporating physical modelling of on-board-imagers (OBIs) could improve the similarity between intra-fraction radiographs and DRRs by eliminating inter-fraction variation and reducing image-quality mismatches between radiographs and DRRs. In this study, we test the two hypotheses that intra-fraction radiographs are more similar to CBCT-DRRs than CT-DRRs, and that intra-fraction radiographs are more similar to DRRs from algorithms incorporating physical models of OBI components than DRRs from algorithms omitting these models.DRRs were generated from CBCT and CT image sets collected from 20 patients undergoing pancreas stereotactic body radiotherapy. CBCT-DRRs and CT-DRRs were generated replicating the treatment position of patients and the OBI geometry during intra-fraction radiograph acquisition. To investigate whether the modelling of physical OBI components influenced radiograph-DRR similarity, four DRR algorithms were applied for the generation of CBCT-DRRs and CT-DRRs, incorporating and omitting different combinations of OBI component models. The four DRR algorithms were: a traditional DRR algorithm, a DRR algorithm with source-spectrum modelling, a DRR algorithm with source-spectrum and detector modelling, and a DRR algorithm with source-spectrum, detector and patient material modelling. Similarity between radiographs and matched DRRs was quantified using Pearson's correlation and Czekanowski's index, calculated on a per-image basis. Distributions of correlations and indexes were compared to test each of the hypotheses. Distribution differences were determined to be statistically significant when Wilcoxon's signed rank test and the Kolmogorov-Smirnov two sample test returned≤ 0.05 for both tests.Intra-fraction radiographs were more similar to CBCT-DRRs than CT-DRRs for both metrics across all algorithms, with all≤ 0.007. Source-spectrum modelling improved radiograph-DRR similarity for both metrics, with all< 10. OBI detector modelling and patient material modelling did not influence radiograph-DRR similarity for either metric.Generating DRRs from pre-treatment CBCT-DRRs is feasible, and incorporating CBCT-DRRs into markerless target-tracking methods may promote improved target-tracking accuracies. Incorporating source-spectrum modelling into a treatment planning system's DRR algorithms may reinforce the safe treatment of cancer patients by aiding in patient alignment.

摘要

在当前基于放射影像的分次内无标记目标跟踪中,通常使用来自计划 CT(CT-DRR)的数字重建放射影像(DRR)来训练从治疗期间获取的分次内放射影像中提取信息的深度学习模型。传统的 DRR 算法是专为患者配准(骨骼匹配)设计的,可能无法复制治疗时分次内放射影像的射线照相图像质量。假设使用包含在线成像仪(OBI)物理建模的预处理锥形束 CT(CBCT-DRR)生成 DRR 算法,可以通过消除分次间变化和减少放射影像与 DRR 之间的图像质量不匹配,提高分次内放射影像与 DRR 之间的相似性。在这项研究中,我们检验了两个假设,即分次内放射影像与 CBCT-DRR 比与 CT-DRR 更相似,并且包含 OBI 组件物理模型的算法生成的分次内放射影像与 DRR 比不包含这些模型的算法生成的 DRR 更相似。我们从接受胰腺立体定向体放射治疗的 20 名患者的 CBCT 和 CT 图像集中生成了 DRR。生成 CBCT-DRR 和 CT-DRR 以复制患者在分次内放射影像采集期间的治疗位置和 OBI 几何形状。为了研究物理 OBI 组件的建模是否会影响射线照相-DRR 相似性,我们应用了四种 DRR 算法来生成 CBCT-DRR 和 CT-DRR,其中包括和不包括 OBI 组件模型的不同组合。这四种 DRR 算法是:传统的 DRR 算法、具有源谱建模的 DRR 算法、具有源谱和探测器建模的 DRR 算法以及具有源谱、探测器和患者材料建模的 DRR 算法。使用 Pearson 相关系数和 Czekanowski 指数在逐图像的基础上定量比较了放射影像和匹配的 DRR 之间的相似性。比较了分布相关性和索引,以检验每个假设。当 Wilcoxon 符号秩检验和 Kolmogorov-Smirnov 两样本检验对于两种检验都返回≤0.05 时,确定分布差异具有统计学意义。对于所有算法,两种度量标准下,分次内放射影像与 CBCT-DRR 的相关性均高于 CT-DRR,所有均<0.007。源谱建模提高了两种度量标准的射线照相-DRR 相似性,所有均<10。OBI 探测器建模和患者材料建模对两种度量标准的射线照相-DRR 相似性均无影响。从预处理的 CBCT-DRR 生成 DRR 是可行的,并且将 CBCT-DRR 纳入无标记目标跟踪方法中可能会提高目标跟踪的准确性。将源谱建模纳入治疗计划系统的 DRR 算法中,通过帮助患者配准,可能会增强癌症患者治疗的安全性。

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