根据锥形束计算机断层扫描生成患者特异性合成磁共振成像,用于肝脏立体定向体放射治疗的图像引导。

Q4 Medicine Precision Radiation Oncology Pub Date : 2022-06-01 Epub Date: 2022-06-11 DOI:10.1002/pro6.1163
Zeyu Zhang, Zhuoran Jiang, Hualiang Zhong, Ke Lu, Fang-Fang Yin, Lei Ren
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引用次数: 0

摘要

目的:尽管锥形束计算机断层扫描(CBCT)非常普遍,但其软组织对比度较差,因此对肝脏肿瘤进行定位具有挑战性。我们提出了一种患者特异性深度学习模型,从 CBCT 生成合成磁共振成像(MRI),以改善肿瘤定位:一个关键的创新是使用患者特异性 CBCT-MRI 图像对来训练深度学习模型,以便从 CBCT 生成合成 MRI。具体来说,患者规划 CT 与之前的 MRI 进行变形注册,然后用模拟投影和 Feldkamp、Davis 和 Kress 重建来模拟 CBCT。这些 CBCT-MRI 图像通过平移和旋转进行增强,以生成足够的患者特定训练数据。开发并训练了一个基于 U-Net 的深度学习模型,以便从肝脏 CBCT 生成合成 MRI,然后在不同的 CBCT 数据集上进行测试。合成核磁共振成像与地面实况核磁共振成像进行了定量评估:结果:合成磁共振成像显示出极好的软组织对比度,肿瘤清晰可见。平均而言,合成磁共振成像的峰值信噪比、均方误差和结构相似性指数分别达到了 28.01、0.025 和 0.929,优于 CBCT 图像。该模型在所有三名受测患者中的表现一致:我们的研究证明了患者特异性模型从 CBCT 生成合成 MRI 用于肝脏肿瘤定位的可行性,这为在使用传统 LINAC 的诊所中实现 MRI 指导的民主化提供了可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Patient-specific synthetic magnetic resonance imaging generation from cone beam computed tomography for image guidance in liver stereotactic body radiation therapy.

Objective: Despite its prevalence, cone beam computed tomography (CBCT) has poor soft-tissue contrast, making it challenging to localize liver tumors. We propose a patient-specific deep learning model to generate synthetic magnetic resonance imaging (MRI) from CBCT to improve tumor localization.

Methods: A key innovation is using patient-specific CBCT-MRI image pairs to train a deep learning model to generate synthetic MRI from CBCT. Specifically, patient planning CT was deformably registered to prior MRI, and then used to simulate CBCT with simulated projections and Feldkamp, Davis, and Kress reconstruction. These CBCT-MRI images were augmented using translations and rotations to generate enough patient-specific training data. A U-Net-based deep learning model was developed and trained to generate synthetic MRI from CBCT in the liver, and then tested on a different CBCT dataset. Synthetic MRIs were quantitatively evaluated against ground-truth MRI.

Results: The synthetic MRI demonstrated superb soft-tissue contrast with clear tumor visualization. On average, the synthetic MRI achieved 28.01, 0.025, and 0.929 for peak signal-to-noise ratio, mean square error, and structural similarity index, respectively, outperforming CBCT images. The model performance was consistent across all three patients tested.

Conclusion: Our study demonstrated the feasibility of a patient-specific model to generate synthetic MRI from CBCT for liver tumor localization, opening up a potential to democratize MRI guidance in clinics with conventional LINACs.

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来源期刊
Precision Radiation Oncology
Precision Radiation Oncology Medicine-Oncology
CiteScore
1.20
自引率
0.00%
发文量
32
审稿时长
13 weeks
期刊最新文献
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