Lang Yankun, Jiang Zhuoran, Sun Leshan, Xiang Liangzhong, Ren Lei
ArXiv. 2023 Aug 11:arXiv:2308.06194v1.
Protoacoustic imaging showed great promise in providing real-time 3D dose verification of proton therapy. However, the limited acquisition angle in protoacoustic imaging induces severe artifacts, which significantly impairs its accuracy for dose verification. In this study, we developed a deep learning method with a Recon- Enhance two-stage strategy for protoacoustic imaging to address the limited view issue. Specifically, in the Recon-stage, a transformer-based network was developed to reconstruct initial pressure maps from radiofrequency signals. The network is trained in a hybrid-supervised approach, where it is first trained using supervision by the iteratively reconstructed pressure map and then fine-tuned using transfer learning and self-supervision based on the data fidelity constraint. In the Enhance-stage, a 3D U-net is applied to further enhance the image quality with supervision from the ground truth pressure map. The final protoacoustic images are then converted to dose for proton verification. The results evaluated on a dataset of 126 prostate cancer patients achieved an average RMSE of 0.0292, and an average SSIM of 0.9618, significantly out-performing related start-of-the-art methods. Qualitative results also demonstrated that our approach addressed the limit-view issue with more details reconstructed. Dose verification achieved an average RMSE of 0.018, and an average SSIM of 0.9891. Gamma index evaluation demonstrated a high agreement (94.7% and 95.7% for 1%/3 mm and 1%/5 mm) between the predicted and the ground truth dose maps. Notably, the processing time was reduced to 6 seconds, demonstrating its feasibility for online 3D dose verification for prostate proton therapy.
原声学成像在提供质子治疗的实时三维剂量验证方面显示出巨大潜力。然而,原声学成像中有限的采集角度会导致严重的伪影,这显著损害了其剂量验证的准确性。在本研究中,我们开发了一种基于深度学习的方法,采用重建-增强两阶段策略用于原声学成像,以解决有限视角问题。具体而言,在重建阶段,开发了一种基于Transformer的网络,用于从射频信号重建初始压力图。该网络采用混合监督方法进行训练,首先使用迭代重建的压力图进行监督训练,然后基于数据保真度约束使用迁移学习和自监督进行微调。在增强阶段,应用三维U-Net在真实压力图的监督下进一步提高图像质量。然后将最终的原声学图像转换为剂量用于质子验证。在126例前列腺癌患者的数据集上评估的结果显示,平均均方根误差(RMSE)为0.0292,平均结构相似性指数(SSIM)为0.9618,显著优于相关的现有先进方法。定性结果还表明,我们的方法解决了有限视角问题,重建了更多细节。剂量验证的平均RMSE为0.018,平均SSIM为0.9891。伽马指数评估表明,预测剂量图与真实剂量图之间具有高度一致性(1%/3mm和1%/5mm时分别为94.7%和95.7%)。值得注意的是,处理时间缩短至6秒,证明了其用于前列腺质子治疗在线三维剂量验证的可行性。