Ji Hangjie, Lafata Kyle, Mowery Yvonne, Brizel David, Bertozzi Andrea L, Yin Fang-Fang, Wang Chunhao
Department of Mathematics, North Carolina State University, Raleigh, NC, United States.
Department of Radiation Oncology, Duke University Medical Center, Durham, NC, United States.
Front Oncol. 2022 May 13;12:895544. doi: 10.3389/fonc.2022.895544. eCollection 2022.
To develop a method of biologically guided deep learning for post-radiation FDG-PET image outcome prediction based on pre-radiation images and radiotherapy dose information.
Based on the classic reaction-diffusion mechanism, a novel biological model was proposed using a partial differential equation that incorporates spatial radiation dose distribution as a patient-specific treatment information variable. A 7-layer encoder-decoder-based convolutional neural network (CNN) was designed and trained to learn the proposed biological model. As such, the model could generate post-radiation FDG-PET image outcome predictions with breakdown biological components for enhanced explainability. The proposed method was developed using 64 oropharyngeal patients with paired FDG-PET studies before and after 20-Gy delivery (2 Gy/day fraction) by intensity-modulated radiotherapy (IMRT). In a two-branch deep learning execution, the proposed CNN learns specific terms in the biological model from paired FDG-PET images and spatial dose distribution in one branch, and the biological model generates post-20-Gy FDG-PET image prediction in the other branch. As in 2D execution, 718/233/230 axial slices from 38/13/13 patients were used for training/validation/independent test. The prediction image results in test cases were compared with the ground-truth results quantitatively.
The proposed method successfully generated post-20-Gy FDG-PET image outcome prediction with breakdown illustrations of biological model components. Standardized uptake value (SUV) mean values in FDG high-uptake regions of predicted images (2.45 ± 0.25) were similar to ground-truth results (2.51 ± 0.33). In 2D-based Gamma analysis, the median/mean Gamma Index (<1) passing rate of test images was 96.5%/92.8% using the 5%/5 mm criterion; such result was improved to 99.9%/99.6% when 10%/10 mm was adopted.
The developed biologically guided deep learning method achieved post-20-Gy FDG-PET image outcome predictions in good agreement with ground-truth results. With the breakdown biological modeling components, the outcome image predictions could be used in adaptive radiotherapy decision-making to optimize personalized plans for the best outcome in the future.
基于放疗前图像和放疗剂量信息,开发一种用于预测放疗后FDG - PET图像结果的生物引导深度学习方法。
基于经典的反应扩散机制,使用一个包含空间辐射剂量分布作为患者特异性治疗信息变量的偏微分方程,提出了一种新型生物模型。设计并训练了一个基于7层编码器 - 解码器的卷积神经网络(CNN)来学习所提出的生物模型。这样,该模型可以生成放疗后FDG - PET图像结果预测,并分解生物成分以增强可解释性。所提出的方法是利用64例口咽癌患者在接受强度调制放疗(IMRT)、20 Gy照射(每日分次照射2 Gy)前后的配对FDG - PET研究开发的。在双分支深度学习执行中,所提出的CNN在一个分支中从配对的FDG - PET图像和空间剂量分布中学习生物模型中的特定项,而生物模型在另一个分支中生成20 Gy后的FDG - PET图像预测。与二维执行一样,来自38/13/13例患者的718/233/230个轴向切片用于训练/验证/独立测试。对测试病例中的预测图像结果与真实结果进行了定量比较。
所提出的方法成功生成了20 Gy后的FDG - PET图像结果预测,并分解展示了生物模型成分。预测图像中FDG高摄取区域的标准化摄取值(SUV)平均值(2.45±0.25)与真实结果(2.51±0.33)相似。在基于二维的伽马分析中,使用5%/5 mm标准时,测试图像的伽马指数(<1)中位数/平均值通过率分别为96.5%/92.8%;当采用10%/10 mm标准时,该结果提高到99.9%/99.6%。
所开发的生物引导深度学习方法实现了20 Gy后的FDG - PET图像结果预测,与真实结果高度一致。通过分解生物建模成分,结果图像预测可用于自适应放疗决策,以优化个性化计划,在未来实现最佳结果。