首页> 外文会议>International Work-Conference on Artificial Neural Networks(IWANN 2007); 20070620-22; San Sebastian(ES) >Incidence Position Estimation in a PET Detector Using a Discretized Positioning Circuit and Neural Networks
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Incidence Position Estimation in a PET Detector Using a Discretized Positioning Circuit and Neural Networks

机译:使用离散化定位电路和神经网络的PET检测器中的事件位置估计

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摘要

The correct determination of the position of incident photons is a crucial issue in PET imaging. In this paper we study the use of Neural Networks (NNs) for position estimation of photons impinging on gamma-ray detector modules for PET cameras based on continuous scintillators and Multi-Anode Photomultiplier Tubes (MA-PMTs). We have performed a thorough analysis of the NN architecture and training procedures, using realistic simulated inputs, in order to achieve the best results in terms of spatial resolution and bias correction. The results confirm that NNs can partially model and correct the non-uniform detector response using only the position-weighted signals from a simple 2D Discretized Positioning Circuit (DPC).Linearity degradation for oblique incidence is also investigated. Finally, the NN can be implemented in hardware for parallel real time corrected Line-of-Response (LOR) estimation.
机译:正确确定入射光子的位置是PET成像中的关键问题。在本文中,我们研究了基于连续闪烁体和多阳极光电倍增管(MA-PMT)的神经网络(NNs)对撞击在PET相机伽马射线探测器模块上的光子位置估计的使用。我们使用逼真的模拟输入对NN体系结构和训练过程进行了彻底的分析,以便在空间分辨率和偏差校正方面获得最佳结果。结果表明,NNs可以仅使用来自简单2D离散定位电路(DPC)的位置加权信号来部分建模和校正非均匀检测器响应。还研究了斜入射的线性下降。最终,可以在硬件中实现NN,以进行并行实时校正的响应线(LOR)估计。

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