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首页> 外文期刊>Radiotherapy and oncology: Journal of the European Society for Therapeutic Radiology and Oncology >MRI-only brain radiotherapy: Assessing the dosimetric accuracy of synthetic CT images generated using a deep learning approach
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MRI-only brain radiotherapy: Assessing the dosimetric accuracy of synthetic CT images generated using a deep learning approach

机译:仅限MRI脑放射治疗:评估使用深度学习方法产生的合成CT图像的剂量准确度

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Purpose: This study assessed the dosimetric accuracy of synthetic CT images generated from magnetic resonance imaging (MRI) data for focal brain radiation therapy, using a deep learning approach. Material and methods: We conducted a study in 77 patients with brain tumors who had undergone both MRI and computed tomography (CT) imaging as part of their simulation for external beam treatment planning. We designed a generative adversarial network (GAN) to generate synthetic CT images from MRI images. We used Mutual Information (MI) as the loss function in the generator to overcome the misalignment between MRI and CT images (unregistered data). The model was trained using all MRI slices with corresponding CT slices from each training subject's MRI/CT pair. Results: The proposed GAN method produced an average mean absolute error (MAE) of 47.2 +/- 11.0 HU over 5-fold cross validation. The overall mean Dice similarity coefficient between CT and synthetic CT images was 80% +/- 6% in bone for all test data. Though training a GAN model may take several hours, the model only needs to be trained once. Generating a complete synthetic CT volume for each new patient MRI volume using a trained GAN model took only one second. Conclusions: The GAN model we developed produced highly accurate synthetic CT images from conventional, single-sequence MRI images in seconds. Our proposed method has strong potential to perform well in a clinical workflow for MRI-only brain treatment planning. (C) 2019 Published by Elsevier B. V. Radiotherapy and Oncology
机译:目的:本研究评估了使用深度学习方法的磁共振成像(MRI)数据产生的合成CT图像的编号准确度。材料和方法:我们在77例脑肿瘤患者进行了一项研究,该脑肿瘤经历了MRI和计算机断层扫描(CT)成像,作为外部梁治疗计划的模拟的一部分。我们设计了一种生成的对抗性网络(GaN)以从MRI图像生成合成CT图像。我们使用互信息(MI)作为发电机中的损耗功能,以克服MRI和CT图像(未注册数据)之间的错位。使用来自每个训练主体的MRI / CT对的所有MRI切片接受了所有MRI切片培训。结果:拟议的GaN方法产生了47.2 +/- 11.0 HU的平均平均绝对误差(MAE)超过5倍交叉验证。对于所有测试数据,CT和合成CT图像之间的总体平均骰子相似性系数为80%+/- 6%。虽然训练GaN模型可能需要几个小时,但型号只需要培训一次。使用培训的GaN模型为每个新患者MRI卷产生完整的合成CT体积仅取一秒。结论:GaN模型我们在几秒钟内从常规,单序MRI图像开发了高精度的合成CT图像。我们所提出的方法在临床工作流程中具有很强的潜力,以获得MRI的脑治疗计划。 (c)2019年由Elsevier B. V. v.Radiotherapy和肿瘤发表

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