Marian Smoluchowski Institute of Physics, Jagiellonian University, Kraków, Poland.
Phys Med Biol. 2022 Jul 21;67(15). doi: 10.1088/1361-6560/ac71f2.
Online monitoring of dose distribution in proton therapy is currently being investigated with the detection of prompt gamma (PG) radiation emitted from a patient during irradiation. The SiPM and scintillation Fiber based Compton Camera (SiFi-CC) setup is being developed for this aim.A machine learning approach to recognize Compton events is proposed, reconstructing the PG emission profile during proton therapy. The proposed method was verified on pseudo-data generated by aGeant4 simulation for a single proton beam impinging on a polymethyl methacrylate (PMMA) phantom. Three different models including the boosted decision tree (BDT), multilayer perception (MLP) neural network, and k-nearest neighbour (k-NN) were trained using 10-fold cross-validation and then their performances were assessed using the receiver operating characteristic (ROI) curves. Subsequently, after event selection by the most robust model, a software based on the List-Mode Maximum Likelihood Estimation Maximization (LM-MLEM) algorithm was applied for the reconstruction of the PG emission distribution profile.It was demonstrated that the BDT model excels in signal/background separation compared to the other two. Furthermore, the reconstructed PG vertex distribution after event selection showed a significant improvement in distal falloff position determination.A highly satisfactory agreement between the reconstructed distal edge position and that of the simulated Compton events was achieved. It was also shown that a position resolution of 3.5 mm full width at half maximum (FWHM) in distal edge position determination is feasible with the proposed setup.
目前,研究人员正在通过检测质子放疗过程中患者发出的瞬发伽马(PG)辐射,对质子治疗中的剂量分布进行在线监测。为实现这一目标,正在开发基于硅光电倍增管(SiPM)和闪烁光纤的康普顿相机(SiFi-CC)设备。
提出了一种用于识别康普顿事件的机器学习方法,用于重建质子治疗过程中的 PG 发射轮廓。该方法使用 Geant4 模拟生成的单束质子撞击聚甲基丙烯酸甲酯(PMMA)幻影的伪数据进行了验证。使用 10 折交叉验证训练了三个不同的模型,包括提升决策树(BDT)、多层感知机(MLP)神经网络和 K-最近邻(k-NN),然后使用接收者操作特征(ROI)曲线评估它们的性能。随后,在通过最稳健的模型进行事件选择之后,应用基于列表模式最大似然估计最大化(LM-MLEM)算法的软件对 PG 发射分布轮廓进行重建。
结果表明,与其他两种模型相比,BDT 模型在信号/背景分离方面表现出色。此外,经过事件选择后的重建 PG 顶点分布在确定远端下降位置方面有了显著的改进。重建的远端边缘位置与模拟康普顿事件的远端边缘位置之间的一致性非常高。结果还表明,使用所提出的设备可以实现 3.5mm 全宽半高最大值(FWHM)的远端边缘位置确定的位置分辨率。