Pub Date : 2022-09-30 DOI:10.14407/jrpr.2021.00402
Zhao Peng, Ning Gao, Bingzhi Wu, Zhi Chen, X. G. Xu
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引用次数: 2

摘要

有关“数字人类建模”的令人兴奋的进展,即用于计算辐射剂量的计算幻影,与深度学习相关的最新炒作有关。涉及卷积神经网络的深度学习或人工智能(AI)技术的出现,给器官分割领域带来了前所未有的创新。此外,图形处理单元(gpu)被用作实时蒙特卡罗模拟和基于人工智能的图像分割应用程序的助推器。这些进步提供了通过层析成像创建人体解剖的三维(3D)几何细节的可行性,并使用越来越快和廉价的计算机进行蒙特卡罗辐射传输模拟。本文首先介绍了三种类型的计算人体幻影的历史:程式化医学内辐射剂量学(MIRD)幻影、体素化层析成像幻影和边界表示(BREP)变形幻影。然后,通过引入基于人工智能的器官自动分割技术,展示了人体特异性幻像的发展。其次,介绍了基于gpu的蒙特卡罗辐射剂量计算的新进展。在伦斯勒理工学院(RPI)和中国科学技术大学(USTC)的学生进行的研究项目中,介绍了将计算幻影和名为ARCHER(异构环境中的加速辐射传输计算)的新蒙特卡罗代码应用于辐射防护、成像和放疗问题的例子。最后,本文讨论了挑战和未来的研究机会。我们发现,由于最新的计算机硬件和人工智能技术,计算人体模型正在接近真实的人体解剖结构,以便准确计算辐射剂量。
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A Review of Computational Phantoms for Quality Assurance in Radiology and Radiotherapy in the Deep-Learning Era
The exciting advancement related to the “modeling of digital human” in terms of a computational phantom for radiation dose calculations has to do with the latest hype related to deep learning. The advent of deep learning or artificial intelligence (AI) technology involving convolutional neural networks has brought an unprecedented level of innovation to the field of organ segmentation. In addition, graphics processing units (GPUs) are utilized as boosters for both real-time Monte Carlo simulations and AI-based image segmentation applications. These advancements provide the feasibility of creating three-dimensional (3D) geometric details of the human anatomy from tomographic imaging and performing Monte Carlo radiation transport simulations using increasingly fast and inexpensive computers. This review first introduces the history of three types of computational human phantoms: stylized medical internal radiation dosimetry (MIRD) phantoms, voxelized tomographic phantoms, and boundary representation (BREP) deformable phantoms. Then, the development of a person-specific phantom is demonstrated by introducing AI-based organ autosegmentation technology. Next, a new development in GPU-based Monte Carlo radiation dose calculations is introduced. Examples of applying computational phantoms and a new Monte Carlo code named ARCHER (Accelerated Radiation- transport Computations in Heterogeneous EnviRonments) to problems in radiation protection, imaging, and radiotherapy are presented from research projects performed by students at the Rensselaer Polytechnic Institute (RPI) and University of Science and Technology of China (USTC). Finally, this review discusses challenges and future research opportunities. We found that, owing to the latest computer hardware and AI technology, computational human body models are moving closer to real human anatomy structures for accurate radiation dose calculations.
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