基于人工神经网络的Ga-67成像散射补偿新方法

G. El Fakhri, S. Moore, P. Maksud
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引用次数: 18

摘要

设计并评价了一种基于误差反向传播的人工神经网络的Ga-67散射校正方法。该神经网络由37节点的输入层(60-370 keV范围内的37个能量通道)、18节点的隐藏层和3节点的输出层组成,用于估计93、185和300 keV光峰的无散射分布。基于分割的逼真拟人化躯干幻影,模拟了两个独立的活动和衰减分布集。第一组用于人工神经网络学习,第二组用于评估散点校正。我们的蒙特卡罗模拟模拟了病人、准直器和探测器中的所有光子相互作用。在准直器中模拟的相互作用包括康普顿散射和相干散射,以及强迫产生铅k壳x射线的光电吸收。模拟了90个非常高计数的投影,并以此为基础,为每个角度生成15个泊松噪声实现;噪声水平是注射后72小时Ga-67研究的特征。同时生成临床使用的能量窗图像(WIN)进行比较。对肺、腹部和肝脏重建体积的主要分布进行偏倚和方差计算。ANN在腹部的总体偏倚和精度分别为5.8/spl infin/2.6% (93 keV)、-0.1/spl plusmn/2.4% (185 keV)和-4.9/spl plusmn/1.8% (300 keV),所有结构的偏倚均小于19%,而WIN的偏倚为85%。对于Ga-67研究,人工神经网络是一种准确、稳健的散射校正方法。
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A new scatter compensation method for Ga-67 imaging using artificial neural networks
A new scatter correction method for Ga-67 based on artificial neural networks (ANN) with error backpropagation was designed and evaluated. The ANN consisted of a 37-node input layer (37 energy channels in the range 60-370 keV), an 18-node hidden layer, and a 3-node output layer to estimate the scatter-free distribution in the 93, 185 and 300 keV photopeaks. Two separate activity and attenuation distribution sets, based on a segmented realistic anthropomorphic torso phantom, were simulated. The first set was used for ANN learning and the second to evaluate the scatter correction. Our Monte Carlo simulation modeled all photon interactions in the patient, collimator and detector. Interactions simulated in the collimator included Compton and coherent scatter, and photoelectric absorption with forced production of lead K-shell X-rays. Ninety very-high-count projections were simulated and used as a basis for generating 15 Poisson noise realizations for each angle; noise levels were characteristic of 72-hour post-injection Ga-67 studies. The energy window images (WIN) used clinically were also generated for comparison. Bias and variance were computed with respect to the primary distributions over reconstructed volumes of interests in the lungs, abdomen and liver. ANN overall bias and precision in the abdomen were 5.8/spl infin/2.6% (93 keV), -0.1/spl plusmn/2.4% (185 keV) and -4.9/spl plusmn/1.8% (300 keV), and the bias in all structures was less than 19% as compared to 85% with WIN. ANN is an accurate and robust scatter correction method for Ga-67 studies.
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