This paper develops 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 possible time-series transition from pre-radiotherapy image states to post-radiotherapy states. The proposed method was developed using 64 oropharyngeal patients with paired FDG-PET studies before and after 20Gy delivery (2Gy/daily fraction) by 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 as in one branch, and the biological model generates post-20Gy FDG-PET image prediction in the other branch. The proposed method successfully generated post-20Gy FDG-PET image outcome prediction with breakdown illustrations of biological model components. Time-series FDG-PET image predictions were generated to demonstrate the feasibility of disease response rendering. The developed biologically guided deep learning method achieved post-20Gy FDG-PET image outcome predictions in good agreement with ground-truth results. With break-down 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.
翻译:本文根据辐射前图像和放射治疗后剂量信息,为辐射后FDG-PET图像结果预测开发了一种生物指导深度学习方法。根据传统的反射扩散机制,提议采用一个新颖的生物模型,采用部分差异方程式,将空间辐射剂量分布作为患者专用治疗信息变量。设计并培训了一个基于7层编码器脱coder的共生神经网络(CNN),以学习拟议的生物模型。因此,该模型可以产生辐射后FDG-PET图像结果预测,从辐射前图像和放射后剂量预测状态向放射后治疗状态进行时间序列转换。拟议方法采用64个或phopharyngal病人的局部差异方程式,在20GDG-PET交付前和20天后配对的治疗信息信息传播(2Gy/每日分数)。在两层深度的深层学习执行中,拟议的CNNCMEM从匹配的FDG-PET图像和空间剂量结果分布中学习具体术语,在一个分支进行时间序列,在20GAFDG预测后预测后结果模型中生成了FDG-DG-DFDADET结果结果结果,在模拟图像分析中成功地进行图像分析。