基于多中心数据集深度学习的盆腔病例合成 CT 生成。

IF 3.3 2区 医学 Q2 ONCOLOGY
Xianan Li, Lecheng Jia, Fengyu Lin, Fan Chai, Tao Liu, Wei Zhang, Ziquan Wei, Weiqi Xiong, Hua Li, Min Zhang, Yi Wang
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引用次数: 0

摘要

背景和目的:研究利用生成式对抗网络(GANs)从多中心数据集中的磁共振(MR)图像合成计算机断层扫描(CT)图像用于直肠癌单纯MR放疗的可行性:北京大学人民医院的 90 名直肠癌患者和公共数据集中的 19 名患者的常规 T2 加权 MR 和 CT 图像。本研究提出了一种结合对比学习损失和一致性正则化损失的新模型,以增强多中心盆腔 MRI-CT 合成模型的泛化能力。通过计算平均绝对误差(MAE)、峰值信噪比(SNRpeak)、结构相似性指数(SSIM)和泛化性能(GP)来评估 CT 到 SCT 图像的相似性。根据基于 CT 的光子计划剂量分布验证了合成 CT 的剂量准确性。计算了计划目标体积和危险器官的相对剂量差异:我们的模型具有出色的泛化能力,在未见数据集上的 GP 值为 0.911,优于普通 CycleGAN,其中 MAE 从 47.129 降至 42.344,SNRpeak 从 25.167 升至 26.979,SSIM 从 0.978 升至 0.992。剂量学分析表明,合成 CT 与真实 CT 在剂量和容积直方图(DVH)指标上的相对差异大多小于 1%:所提出的模型能根据 T2w-MR 图像在多中心数据集中生成精确的合成 CT。大多数剂量学差异都在光子放疗临床可接受的标准范围内,这证明了只用核磁共振成像治疗直肠癌患者的工作流程的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic CT generation for pelvic cases based on deep learning in multi-center datasets.

Background and purpose: To investigate the feasibility of synthesizing computed tomography (CT) images from magnetic resonance (MR) images in multi-center datasets using generative adversarial networks (GANs) for rectal cancer MR-only radiotherapy.

Materials and methods: Conventional T2-weighted MR and CT images were acquired from 90 rectal cancer patients at Peking University People's Hospital and 19 patients in public datasets. This study proposed a new model combining contrastive learning loss and consistency regularization loss to enhance the generalization of model for multi-center pelvic MRI-to-CT synthesis. The CT-to-sCT image similarity was evaluated by computing the mean absolute error (MAE), peak signal-to-noise ratio (SNRpeak), structural similarity index (SSIM) and Generalization Performance (GP). The dosimetric accuracy of synthetic CT was verified against CT-based dose distributions for the photon plan. Relative dose differences in the planning target volume and organs at risk were computed.

Results: Our model presented excellent generalization with a GP of 0.911 on unseen datasets and outperformed the plain CycleGAN, where MAE decreased from 47.129 to 42.344, SNRpeak improved from 25.167 to 26.979, SSIM increased from 0.978 to 0.992. The dosimetric analysis demonstrated that most of the relative differences in dose and volume histogram (DVH) indicators between synthetic CT and real CT were less than 1%.

Conclusion: The proposed model can generate accurate synthetic CT in multi-center datasets from T2w-MR images. Most dosimetric differences were within clinically acceptable criteria for photon radiotherapy, demonstrating the feasibility of an MRI-only workflow for patients with rectal cancer.

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来源期刊
Radiation Oncology
Radiation Oncology ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
6.50
自引率
2.80%
发文量
181
审稿时长
3-6 weeks
期刊介绍: Radiation Oncology encompasses all aspects of research that impacts on the treatment of cancer using radiation. It publishes findings in molecular and cellular radiation biology, radiation physics, radiation technology, and clinical oncology.
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