Assessment of clinical feasibility:offline adaptive radiotherapy for lung cancer utilizing kV iCBCT and UNet++ based deep learning model

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Applied Clinical Medical Physics Pub Date : 2024-11-29 DOI:10.1002/acm2.14582
Hongwei Zeng, Qi Chen, Xiangyu E, Yue Feng, Minghe Lv, Su Zeng, Wenhao Shen, Wenhui Guan, Yang Zhang, Ruping Zhao, Shaobin Wang, Jingping Yu
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Abstract

Background

Lung cancer poses a significant global health challenge. Adaptive radiotherapy (ART) addresses uncertainties due to lung tumor dynamics. We aimed to investigate a comprehensively and systematically validated offline ART regimen with high clinical feasibility for lung cancer.

Methods

This study enrolled 102 lung cancer patients, who underwent kV iterative cone-beam computed tomography (iCBCT). Data collection included iCBCT and planning CT (pCT) scans. Among these, data from 70 patients were employed for training the UNet++ based deep learning model, while 15 patients were allocated for testing the model. The model transformed iCBCT into adaptive CT (aCT). Clinical radiotherapy feasibility was verified in 17 patients. The dosimetric evaluation encompassed GTV, organs at risk (OARs), and monitor units (MU), while delivery accuracy was validated using ArcCHECK and thermoluminescent dosimeter (TLD) detectors.

Results

The UNet++ based deep learning model substantially improved image quality, reducing mean absolute error (MAE) by 70.05%, increasing peak signal-to-noise ratio (PSNR) by 17.97%, structural similarity (SSIM) by 7.41%, and the Hounsfield Units (HU) of aCT approaching a closer proximity to pCT compared to kV iCBCT. There were no significant differences observed in the dosimetric parameters of GTV and OARs between the aCT and pCT plans, confirming the accuracy of the dose maps in ART plans. Similarly, MU manifested no notable disparities, underscoring the consistency in treatment efficiency. Gamma passing rates for intensity-modulated radiation therapy (IMRT) and volumetric-modulated arc therapy (VMAT) plans derived from aCT and pCT exceeded 98%, while the deviations in TLD measurements (within 2% to 7%) also exhibited no significant differences, thus corroborating the precision of dose delivery.

Conclusion

An offline ART regimen utilizing kV iCBCT and UNet++ based deep learning model is clinically feasible for lung cancer treatment. This approach provides enhanced image quality, comparable treatment plans to pCT, and precise dose delivery.

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基于kV iCBCT和unet++深度学习模型的肺癌离线自适应放疗临床可行性评估
背景:肺癌是一项重大的全球健康挑战。适应性放疗(ART)解决了由于肺肿瘤动力学的不确定性。我们的目的是研究一种全面、系统地验证的、具有高临床可行性的肺癌离线ART治疗方案。方法:本研究纳入102例肺癌患者,接受了kV迭代锥束计算机断层扫描(iCBCT)。数据收集包括iCBCT和计划CT (pCT)扫描。其中,70例患者的数据用于训练基于UNet++的深度学习模型,15例患者用于测试模型。该模型将iCBCT转化为自适应CT (aCT)。对17例患者进行临床放疗可行性验证。剂量学评估包括GTV、危险器官(OARs)和监测单位(MU),同时使用ArcCHECK和热释光剂量计(TLD)探测器验证递送准确性。结果:基于UNet++的深度学习模型显著提高了图像质量,平均绝对误差(MAE)降低了70.05%,峰值信噪比(PSNR)提高了17.97%,结构相似性(SSIM)提高了7.41%,aCT的Hounsfield单位(HU)比kV iCBCT更接近pCT。aCT计划和pCT计划在GTV和OARs的剂量学参数上没有观察到显著差异,证实了ART计划中剂量图的准确性。同样,MU也没有表现出显著的差异,强调了治疗效率的一致性。基于aCT和pCT的调强放射治疗(IMRT)和体积调制电弧治疗(VMAT)方案的伽马通过率超过98%,而TLD测量的偏差(在2%至7%之间)也没有显着差异,从而证实了剂量传递的准确性。结论:利用kV iCBCT和基于UNet++的深度学习模型进行离线ART治疗肺癌在临床上是可行的。这种方法提供了增强的图像质量,与pCT相当的治疗方案,以及精确的剂量递送。
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来源期刊
CiteScore
3.60
自引率
19.00%
发文量
331
审稿时长
3 months
期刊介绍: Journal of Applied Clinical Medical Physics is an international Open Access publication dedicated to clinical medical physics. JACMP welcomes original contributions dealing with all aspects of medical physics from scientists working in the clinical medical physics around the world. JACMP accepts only online submission. JACMP will publish: -Original Contributions: Peer-reviewed, investigations that represent new and significant contributions to the field. Recommended word count: up to 7500. -Review Articles: Reviews of major areas or sub-areas in the field of clinical medical physics. These articles may be of any length and are peer reviewed. -Technical Notes: These should be no longer than 3000 words, including key references. -Letters to the Editor: Comments on papers published in JACMP or on any other matters of interest to clinical medical physics. These should not be more than 1250 (including the literature) and their publication is only based on the decision of the editor, who occasionally asks experts on the merit of the contents. -Book Reviews: The editorial office solicits Book Reviews. -Announcements of Forthcoming Meetings: The Editor may provide notice of forthcoming meetings, course offerings, and other events relevant to clinical medical physics. -Parallel Opposed Editorial: We welcome topics relevant to clinical practice and medical physics profession. The contents can be controversial debate or opposed aspects of an issue. One author argues for the position and the other against. Each side of the debate contains an opening statement up to 800 words, followed by a rebuttal up to 500 words. Readers interested in participating in this series should contact the moderator with a proposed title and a short description of the topic
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