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使用深度学习进行容积调强弧形治疗的虚拟预处理患者特异性质量保证。

Virtual pretreatment patient-specific quality assurance of volumetric modulated arc therapy using deep learning.

机构信息

Department of Radiation Oncology, National Center for Cancer Care & Research (NCCCR), Hamad Medical Corporation, Doha, Qatar.

出版信息

Med Phys. 2023 Dec;50(12):7891-7903. doi: 10.1002/mp.16567. Epub 2023 Jun 28.

Abstract

BACKGROUND

Automatic patient-specific quality assurance (PSQA) is recently explored using artificial intelligence approaches, and several studies reported the development of machine learning models for predicting the gamma pass rate (GPR) index only.

PURPOSE

To develop a novel deep learning approach using a generative adversarial network (GAN) to predict the synthetic measured fluence.

METHODS AND MATERIALS

A novel training method called "dual training," which involves the training of the encoder and decoder separately, was proposed and evaluated for cycle GAN (cycle-GAN) and conditional GAN (c-GAN). A total of 164 VMAT treatment plans, including 344 arcs (training data: 262, validation data: 30, and testing data: 52) from various treatment sites, were selected for prediction model development. For each patient, portal-dose-image-prediction fluence from TPS was used as input, and measured fluence from EPID was used as output/response for model training. Predicted GPR was derived by comparing the TPS fluence with the synthetic measured fluence generated by the DL models using gamma evaluation of criteria 2%/2 mm. The performance of dual training was compared against the traditional single-training approach. In addition, we also developed a separate classification model specifically designed to detect automatically three types of errors (rotational, translational, and MU-scale) in the synthetic EPID-measured fluence.

RESULTS

Overall, the dual training improved the prediction accuracy of both cycle-GAN and c-GAN. Predicted GPR results of single training were within 3% for 71.2% and 78.8% of test cases for cycle-GAN and c-GAN, respectively. Moreover, similar results for dual training were 82.7% and 88.5% for cycle-GAN and c-GAN, respectively. The error detection model showed high classification accuracy (>98%) for detecting errors related to rotational and translational errors. However, it struggled to differentiate the fluences with "MU scale error" from "error-free" fluences.

CONCLUSION

We developed a method to automatically generate the synthetic measured fluence and identify errors within them. The proposed dual training improved the PSQA prediction accuracy of both the GAN models, with c-GAN demonstrating superior performance over the cycle-GAN. Our results indicate that the c-GAN with dual training approach combined with error detection model, can accurately generate the synthetic measured fluence for VMAT PSQA and identify the errors. This approach has the potential to pave the way for virtual patient-specific QA of VMAT treatments.

摘要

背景

最近使用人工智能方法探索了自动患者特异性质量保证(PSQA),并且已经有几项研究报告了开发用于预测伽马通过率(GPR)指数的机器学习模型。

目的

使用生成对抗网络(GAN)开发一种新的深度学习方法来预测合成测量的通量。

方法与材料

提出并评估了一种新的训练方法,称为“双重训练”,它涉及分别训练编码器和解码器。从各种治疗部位选择了总共 164 个 VMAT 治疗计划,包括 344 个弧(训练数据:262,验证数据:30,测试数据:52),用于预测模型开发。对于每个患者,从 TPS 中使用端口剂量图像预测通量作为输入,从 EPID 中使用测量通量作为输出/响应进行模型训练。通过使用标准 2%/2mm 的伽马评估来比较 TPS 通量和由 DL 模型生成的合成测量通量,得出预测的 GPR。比较了双重训练与传统的单一训练方法的性能。此外,我们还开发了一个单独的分类模型,专门用于自动检测合成 EPID 测量通量中的三种类型的错误(旋转,平移和 MU 刻度)。

结果

总体而言,双重训练提高了循环 GAN 和 c-GAN 的预测准确性。对于循环 GAN 和 c-GAN,单一训练的预测 GPR 结果分别为 71.2%和 78.8%的测试案例在 3%以内。此外,对于循环 GAN 和 c-GAN,双重训练的结果分别为 82.7%和 88.5%。错误检测模型在检测与旋转和平移误差相关的误差方面表现出较高的分类准确性(>98%)。但是,它难以区分具有“MU 刻度误差”的通量与“无误差”的通量。

结论

我们开发了一种自动生成合成测量通量并识别其中误差的方法。所提出的双重训练提高了 GAN 模型的 PSQA 预测准确性,c-GAN 的性能优于循环 GAN。我们的结果表明,具有双重训练方法的 c-GAN 与错误检测模型相结合,可以准确地生成 VMAT PSQA 的合成测量通量并识别误差。这种方法有可能为 VMAT 治疗的虚拟患者特异性 QA 铺平道路。

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