Enhancing image quality in fast neutron-based range verification of proton therapy using a deep learning-based prior in LM-MAP-EM reconstruction.

IF 3.3 3区 医学 Q2 ENGINEERING, BIOMEDICAL
Lena M Setterdahl, Kyrre Skjerdal, Hunter N Ratliff, Kristian Smeland Ytre-Hauge, William R B Lionheart, Sean Holman, Helge E S Pettersen, Francesco Blangiardi, Danny Lathouwers, Ilker Meric
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Abstract

Objective.This study investigates the use of list-mode (LM) maximuma posteriori(MAP) expectation maximization (EM) incorporating prior information predicted by a convolutional neural network for image reconstruction in fast neutron (FN)-based proton therapy range verification.Approach. A conditional generative adversarial network (pix2pix) was trained on progressively noisier data, where detector resolution effects were introduced gradually to simulate realistic conditions. FN data were generated using Monte Carlo simulations of an 85 MeV proton pencil beam in a computed tomography-based lung cancer patient model, with range shifts emulating weight gain and loss. The network was trained to estimate the expected two-dimensional ground truth FN production distribution from simple back-projection images. Performance was evaluated using mean squared error, structural similarity index (SSIM), and the correlation between shifts in predicted distributions and true range shifts.Main results. Our results show that pix2pix performs well on noise-free data but suffers from significant degradation when detector resolution effects are introduced. Among the LM-MAP-EM approaches tested, incorporating a mean prior estimate into the reconstruction process improved performance, with LM-MAP-EM using a mean prior estimate outperforming naïve LM maximum likelihood EM (LM-MLEM) and conventional LM-MAP-EM with a smoothing quadratic energy function in terms of SSIM.Significance. Findings suggest that deep learning techniques can enhance iterative reconstruction for range verification in proton therapy. However, the effectiveness of the model is highly dependent on data quality, limiting its robustness in high-noise scenarios.

在LM-MAP-EM重建中使用基于深度学习的先验增强质子治疗的快中子范围验证的图像质量。
目的:本研究探讨了结合卷积神经网络预测的先验信息的列表模式(LM)最大后验(MAP)期望最大化(EM)在基于快中子(FN)的质子治疗范围验证中的图像重建方法。在逐步噪声数据上训练条件生成对抗网络(pix2pix),其中逐渐引入检测器分辨率效应以模拟现实条件。FN数据是在基于计算机断层扫描(CT)的肺癌患者模型中使用蒙特卡罗模拟85 MeV质子铅笔束生成的,范围位移模拟体重的增加和减少。该网络经过训练,可以从简单的反向投影图像中估计期望的二维(2D)地面真值FN生产分布。使用均方误差(MSE)、结构相似指数(SSIM)以及预测分布偏移与真实范围偏移之间的相关性来评估性能。& # xD;主要结果。我们的研究结果表明,pix2pix在无噪声数据上表现良好,但当引入检测器分辨率效应时,其性能会显著下降。在测试的LM- map -EM方法中,将平均先验估计结合到重建过程中提高了性能,使用平均先验估计的LM- map -EM优于naïve LM最大似然EM (LM- mlem)和基于SSIM的平滑二次能量函数的传统LM- map -EM。& # xD;意义。研究结果表明,深度学习技术可以增强质子治疗范围验证的迭代重建。然而,该模型的有效性高度依赖于数据质量,限制了其在高噪声场景下的鲁棒性。 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Physics in medicine and biology
Physics in medicine and biology 医学-工程:生物医学
CiteScore
6.50
自引率
14.30%
发文量
409
审稿时长
2 months
期刊介绍: The development and application of theoretical, computational and experimental physics to medicine, physiology and biology. Topics covered are: therapy physics (including ionizing and non-ionizing radiation); biomedical imaging (e.g. x-ray, magnetic resonance, ultrasound, optical and nuclear imaging); image-guided interventions; image reconstruction and analysis (including kinetic modelling); artificial intelligence in biomedical physics and analysis; nanoparticles in imaging and therapy; radiobiology; radiation protection and patient dose monitoring; radiation dosimetry
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