利用人工神经网络对放射性核素成像中能谱散射分量的复杂估计

K. Ogawa, N. Nishizaki
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引用次数: 0

摘要

提出了一种利用人工神经网络估计核素成像中主光子的新方法。Tc-99m的神经网络有三层,一个输入层有五个单元,一个隐藏层有五个单元,一个输出层有两个单元。作为输入单元的输入值,使用计数比,即能量范围为125至154 keV的窄窗获得的计数与宽窗获得的总计数之比。输出是散点计数比和主计数比。利用主计数比和总计数,直接计算像素的主计数。利用蒙特卡罗法计算得到的真能谱,采用反向传播算法对神经网络进行训练。仿真结果表明,在约3%的误差范围内,实现了对主光子的准确估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A sophisticated estimation of scatter component in energy spectra using an artificial neural network in radionuclide imaging
The authors present a novel method for estimating primary photons using an artificial neural network in radionuclide imaging. The neural network for Tc-99m has three layers, one input layer with five units, one hidden layer with five units, and one output layer with two units. As input values to the input units, count ratios were used which were the ratios of the counts acquired by narrow windows to the total count acquired by a broad window with the energy range from 125 to 154 keV. The outputs were a scatter count ratio and a primary count ratio. Using the primary count ratio and the total count, the primary count of the pixel was calculated directly. The neural network was trained with a backpropagation algorithm using calculated true energy spectra obtained by a Monte Carlo method. The simulation showed that accurate estimation of primary photons was accomplished within an error ratio of about 3% for primary photons.<>
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