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首页> 外文期刊>Shiraz University of Medical Sciences >Extracting Material Information from the CT Numbers by Artificial Neural Networks for Use in the Monte Carlo Simulations of Different Tissue Types in Brachytherapy
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Extracting Material Information from the CT Numbers by Artificial Neural Networks for Use in the Monte Carlo Simulations of Different Tissue Types in Brachytherapy

机译:通过人工神经网络从CT编号中提取材料信息,用于近距离放射治疗中不同组织类型的蒙特卡罗模拟

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Background: The artificial neural networks (ANNs) are useful in solving nonlinear processes, without the need for mathematical models of the parameters. Since the relationship between the CT numbers and material compositions is not linear, ANN can be used for obtaining tissue density and composition. Objective: The aim of this study is to utilize ANN for determination of the composition and mass density of different tissues to be used in Monte Carlo simulation in treatment planning of brachytherapy. Methods: The ANN were used for mass density calibration. The density and composition of several human body tissues, along with their corresponding CT numbers are used as the training samples. Finally, when the ANN is trained, the neural network would give us the material information, i.e. mass density, electron density, and material composition, by entering the CT numbers of different tissues into the network as its input. The tissue compositions and densities predicted by the ANN for each CT number were compared with the real values of such parameters. The tissue parameters predicted by the ANN were used as the phantom materials for obtaining the dose at different distances from Pd-103 and Cs-137 brachytherapy sources. Finally, the doses at different distances of the real phantoms were compared with doses inside the phantoms predicted by Neural Network. Results: According to the results of these studies, the Neural Network algorithm used in this investigation can be used for accurate prediction of the material compositions of different tissues. For example, it can give the mass densities of bone, muscle, and water with the percentage differences of 0.52%, -0.95%, and 0% respectively. Comparison of the dose distribution inside the water phantom predicted by ANN and the real water phantom shows a percentage difference of less than 0.66% and 2% for Cs-137 and Pd-103, respectively. Conclusion: The results of this study indicate that the Artificial Neural Networks are applicable in determination of tissue density and material compositions from the CT images data, and the material compositions and density of the phantoms (bone, muscle, and water) obtained by this method can be used for material definition in Monte Carlo simulations.
机译:背景:人工神经网络(ANN)可用于求解非线性过程,而无需参数的数学模型。由于CT数与材料成分之间的关​​系不是线性的,因此ANN可用于获得组织密度和成分。目的:本研究的目的是利用人工神经网络确定不同组织的组成和质量密度,以用于近距离放射治疗计划的蒙特卡罗模拟。方法:将人工神经网络用于质量密度校准。几种人体组织的密度和成分,以及它们相应的CT数均用作训练样本。最后,当训练ANN时,神经网络会通过将不同组织的CT编号输入到网络中作为输入,从而为我们提供材料信息,即质量密度,电子密度和材料成分。将由ANN为每个CT数预测的组织组成和密度与此类参数的实际值进行比较。 ANN预测的组织参数被用作幻影材料,以获取距Pd-103和Cs-137近距离放射治疗源不同距离的剂量。最后,将真实体模在不同距离处的剂量与神经网络预测的体模内部剂量进行比较。结果:根据这些研究的结果,本研究中使用的神经网络算法可用于准确预测不同组织的物质组成。例如,它可以给出骨骼,肌肉和水的质量密度,其百分比差异分别为0.52%,-0.95%和0%。通过人工神经网络和真实水体模型预测的水体模型内部剂量分布的比较表明,Cs-137和Pd-103的百分比差异分别小于0.66%和2%。结论:这项研究的结果表明,人工神经网络可用于从CT图像数据确定组织密度和材料成分,以及通过这种方法获得的体模(骨骼,肌肉和水)的材料成分和密度。可用于蒙特卡洛模拟中的材料定义。

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