School of Physics, Mathematics and Computing, University of Western Australia, Perth, Western Australia, Australia.
Department of Radiation Oncology, Sir Charles Gairdner Hospital, Perth, Western Australia, Australia.
Phys Med Biol. 2024 Jan 30;69(3). doi: 10.1088/1361-6560/ad1cfc.
. Clinical implementation of synthetic CT (sCT) from cone-beam CT (CBCT) for adaptive radiotherapy necessitates a high degree of anatomical integrity, Hounsfield unit (HU) accuracy, and image quality. To achieve these goals, a vision-transformer and anatomically sensitive loss functions are described. Better quantification of image quality is achieved using the alignment-invariant Fréchet inception distance (FID), and uncertainty estimation for sCT risk prediction is implemented in a scalable plug-and-play manner.. Baseline U-Net, generative adversarial network (GAN), and CycleGAN models were trained to identify shortcomings in each approach. The proposed CycleGAN-Best model was empirically optimized based on a large ablation study and evaluated using classical image quality metrics, FID, gamma index, and a segmentation analysis. Two uncertainty estimation methods, Monte-Carlo Dropout (MCD) and test-time augmentation (TTA), were introduced to model epistemic and aleatoric uncertainty.. FID was correlated to blind observer image quality scores with a Correlation Coefficient of -0.83, validating the metric as an accurate quantifier of perceived image quality. The FID and mean absolute error (MAE) of CycleGAN-Best was 42.11 ± 5.99 and 25.00 ± 1.97 HU, compared to 63.42 ± 15.45 and 31.80 HU for CycleGAN-Baseline, and 144.32 ± 20.91 and 68.00 ± 5.06 HU for the CBCT, respectively. Gamma 1%/1 mm pass rates were 98.66 ± 0.54% for CycleGAN-Best, compared to 86.72 ± 2.55% for the CBCT. TTA and MCD-based uncertainty maps were well spatially correlated with poor synthesis outputs.. Anatomical accuracy was achieved by suppressing CycleGAN-related artefacts. FID better discriminated image quality, where alignment-based metrics such as MAE erroneously suggest poorer outputs perform better. Uncertainty estimation for sCT was shown to correlate with poor outputs and has clinical relevancy toward model risk assessment and quality assurance. The proposed model and accompanying evaluation and risk assessment tools are necessary additions to achieve clinically robust sCT generation models.
. 为了实现自适应放疗,需要从锥形束 CT(CBCT)中生成合成 CT(sCT),以实现高度的解剖完整性、亨氏单位(HU)准确性和图像质量。为了实现这些目标,描述了一种基于视觉转换器和解剖敏感损失函数的方法。通过使用不变的 Fréchet 初始距离(FID)对齐来更好地量化图像质量,并以可扩展的即插即用方式实现 sCT 风险预测的不确定性估计。基于大型消融研究,对基线 U-Net、生成对抗网络(GAN)和 CycleGAN 模型进行了训练,以识别每种方法的不足之处。基于大量的消融研究,对所提出的 CycleGAN-Best 模型进行了实证优化,并使用经典的图像质量指标、FID、伽马指数和分割分析进行了评估。引入了两种不确定性估计方法,即蒙特卡罗随机失活(MCD)和测试时增强(TTA),以分别对认知不确定性和随机性不确定性进行建模。FID 与盲观察者图像质量评分具有 -0.83 的相关性,验证了该指标作为感知图像质量的准确量化器。CycleGAN-Best 的 FID 和平均绝对误差(MAE)分别为 42.11±5.99 和 25.00±1.97 HU,而 CycleGAN-Baseline 分别为 63.42±15.45 和 31.80 HU,CBCT 分别为 144.32±20.91 和 68.00±5.06 HU。CycleGAN-Best 的伽马 1%/1mm 通过率为 98.66±0.54%,而 CBCT 为 86.72±2.55%。基于 TTA 和 MCD 的不确定性图与较差的合成输出具有良好的空间相关性。通过抑制 CycleGAN 相关的伪影来实现解剖准确性。FID 更好地区分了图像质量,而基于对齐的指标(如 MAE)错误地表明较差的输出表现更好。sCT 的不确定性估计被证明与较差的输出相关,并且对模型风险评估和质量保证具有临床相关性。所提出的模型和伴随的评估和风险评估工具是实现临床稳健的 sCT 生成模型的必要补充。