考虑到过滤器的类型和厚度,改进了医疗成像系统所用 X 射线管辐射场中的空气动量测定方法

IF 1.6 3区 工程技术 Q3 CHEMISTRY, INORGANIC & NUCLEAR Applied Radiation and Isotopes Pub Date : 2024-08-23 DOI:10.1016/j.apradiso.2024.111481
Yanghan Miao , Shengbo Yang , Luning Lin , Youyou Zhu , Haqi Zhang , Huiting Xu , Xiaotian Pan
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引用次数: 0

摘要

在放射诊断学中,空气压模是一个重要参数。放射科医生在计算器官剂量和对患者的危害时,会考虑空气凯玛。辐射光束的强度由空气凯玛表示,空气凯玛是光子在空气中传播时浪费的能量值。由于 X 射线源的脚跟效应,整个医疗成像系统领域的空气开尔马都不尽相同。造成这种差异的一个可能因素是 X 射线管的电压。在这项研究中,我们提出了一种方法,用于预测医疗诊断成像系统中使用的 X 射线束场中任何位置的空气热玛。第一步,使用蒙特卡洛 N 粒子平台对诊断成像系统进行建模。我们使用钨靶和不同厚度的铝铍滤光片来再现 X 射线管。在工作电压为 30、50、70、90、110、130 和 150 千伏的锥形 X 射线束的不同部位测量了空气开尔马。这为训练神经网络提供了足够的数据。X 射线管的电压、滤光片类型、滤光片厚度以及用于计算空气切尔马的每个点的坐标都是 MLP 神经网络的输入。MLP 架构因其在研究和扩展应用方面的显著进步而闻名,经过训练后,它的输出是预测空气压痕的数量。具体来说,通过考虑不同厚度的 X 射线管滤波器,训练有素的 MLP 模型证明了它有能力准确预测 X 射线场内每一点的空气切尔马,适用于医疗诊断放射摄影中通常使用的 X 射线管电压范围(30-150 千伏)。
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Improved air kerma determination in the radiation field of the X-ray tube used in medical imaging systems, considering the type and thickness of the filter

In diagnostic radiology, the air kerma is an essential parameter. Radiologists consider the air kerma, when calculating organ doses and dangers to patients. The intensity of the radiation beam is represented by the air kerma, which is the value of energy wasted by a photon as it travels through air. Because of the heel effect in X-ray sources, air kerma varies throughout the field of medical imaging systems. One possible contributor to this discrepancy is the X-ray tube's voltage. In this study, an approach has been proposed for predicting the air kerma anywhere inside the field of X-ray beams utilized in medical diagnostic imaging systems. As a first step, a diagnostic imaging system was modelled using the Monte Carlo N-Particle platform. We used a tungsten target and aluminum and beryllium filters of varying thicknesses to recreate the X-ray tube. The air kerma has been measured in different parts of the conical X-ray beam that is working at 30, 50, 70, 90, 110, 130, and 150 kV. This gives enough data for training neural networks. The voltage of the X-ray tube, filter type, filter thickness, and the coordinates of each point used to calculate the air kerma were all inputs to the MLP neural network. The MLP architecture, known for its significant advancements in research and expanding applications, was trained to predict the quantity of air kerma as its output. Specifically, by considering X-ray tube filters of varying thicknesses, the trained MLP model demonstrated its capability to accurately predict the air kerma at every point within the X-ray field for a range of X-ray tube voltages typically used in medical diagnostic radiography (30–150 kV).

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来源期刊
Applied Radiation and Isotopes
Applied Radiation and Isotopes 工程技术-核科学技术
CiteScore
3.00
自引率
12.50%
发文量
406
审稿时长
13.5 months
期刊介绍: Applied Radiation and Isotopes provides a high quality medium for the publication of substantial, original and scientific and technological papers on the development and peaceful application of nuclear, radiation and radionuclide techniques in chemistry, physics, biochemistry, biology, medicine, security, engineering and in the earth, planetary and environmental sciences, all including dosimetry. Nuclear techniques are defined in the broadest sense and both experimental and theoretical papers are welcome. They include the development and use of α- and β-particles, X-rays and γ-rays, neutrons and other nuclear particles and radiations from all sources, including radionuclides, synchrotron sources, cyclotrons and reactors and from the natural environment. The journal aims to publish papers with significance to an international audience, containing substantial novelty and scientific impact. The Editors reserve the rights to reject, with or without external review, papers that do not meet these criteria. Papers dealing with radiation processing, i.e., where radiation is used to bring about a biological, chemical or physical change in a material, should be directed to our sister journal Radiation Physics and Chemistry.
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