Deep-learning synthetized 4DCT from 4DMRI of the abdominal site in carbon-ion radiotherapy

IF 2.7 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Physica Medica-European Journal of Medical Physics Pub Date : 2025-04-04 DOI:10.1016/j.ejmp.2025.104963
Nakas Anestis , Hladchuk Maksym , Parrella Giovanni , Vai Alessandro , Molinelli Silvia , Camagni Francesca , Vitolo Viviana , Barcellini Amelia , Imparato Sara , Pella Andrea , Ciocca Mario , Orlandi Ester , Paganelli Chiara , Baroni Guido
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Abstract

Purpose

To investigate the feasibility of deep-learning-based synthetic 4DCT (4D-sCT) generation from 4DMRI data of abdominal patients undergoing Carbon Ion Radiotherapy (CIRT).

Material and methods

A 3-channel conditional Generative Adversarial Network (cGAN) was trained and tested on twenty-six patients, using paired T1-weighted 4DMRI and 4DCT volumes. 4D-sCT data were generated via the cGAN following a 3-channels segmentation approach (air, bone, soft tissue) in two scenarios: (a) 4DCT-based approach (i.e. segmentation relying on 4DCT) and (b) 4DMRI-based approach (i.e. manual segmentation on 4DMRI, to simulate a 4DMRI-only scenario). The network was first validated on a 4D computational phantom, where a ground truth dataset was available. Subsequently, the network was tested on 6 independent held-out-of-training patients. Generated volumes were evaluated with respect to the original 4DCT based on motion analysis, similarity metrics (e.g. Mean Absolute Error (MAE), Normalized Cross Coefficient (NCC)) and dosimetric criteria, by means of recalculating clinically optimized CIRT plans on the 4D-sCT.

Results

For the phantom, similarity metrics were in line with literature results, while dose volume histogram values were below 0.9 %. 4DCT-based patient results demonstrated an accurate representation with respect to the original 4DCT images (MAE: 50.64–51.29 HU), while 4DMRI-only-based results yielded higher values (MAE: 81.15–90.22 HU). Gamma pass rates (3 %/3mm) were ∼ 97 % for the 4DCT-based scenario, showing dosimetric consistency between the compared 4DCT and 4D-sCT dose distributions. D95% values on GTV/CTV were within clinical tolerances for the 4DMRI-only scenario.

Conclusion

Deep learning-based 4D-sCT generation shows potential to support treatment planning in abdominal tumors treated with CIRT.
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碳离子放疗腹部4DMRI深度学习合成4DCT
目的探讨基于深度学习的腹部碳离子放疗(CIRT)患者4DMRI数据生成合成4DCT (4D-sCT)的可行性。材料和方法使用配对t1加权4DMRI和4DCT体积,对26例患者进行了3通道条件生成对抗网络(cGAN)的训练和测试。4D-sCT数据通过cGAN按照3通道分割方法(空气、骨骼、软组织)在两种情况下生成:(a)基于4DCT的方法(即依赖4DCT的分割)和(b)基于4DMRI的方法(即在4DMRI上手动分割,以模拟仅4DMRI的场景)。该网络首先在一个4D计算模型上进行验证,其中有一个地面真实数据集。随后,该网络在6名独立的未接受培训的患者身上进行了测试。通过在4D-sCT上重新计算临床优化的CIRT计划,基于运动分析、相似性指标(例如平均绝对误差(MAE)、归一化交叉系数(NCC))和剂量学标准,对原始4DCT的生成体积进行评估。结果幻体相似度指标与文献结果一致,剂量-体积直方图值均低于0.9%。基于4DCT的患者结果相对于原始4DCT图像表现准确(MAE: 50.64-51.29 HU),而仅基于4dmri的结果产生更高的值(MAE: 81.15-90.22 HU)。基于4DCT的方案的伽马通过率(3% /3mm)为~ 97%,显示比较的4DCT和4D-sCT剂量分布之间的剂量学一致性。GTV/CTV的D95%值在仅4dmri情况下的临床耐受范围内。结论基于深度学习的4D-sCT生成具有支持腹腔肿瘤CIRT治疗计划的潜力。
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来源期刊
CiteScore
6.80
自引率
14.70%
发文量
493
审稿时长
78 days
期刊介绍: Physica Medica, European Journal of Medical Physics, publishing with Elsevier from 2007, provides an international forum for research and reviews on the following main topics: Medical Imaging Radiation Therapy Radiation Protection Measuring Systems and Signal Processing Education and training in Medical Physics Professional issues in Medical Physics.
期刊最新文献
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