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Deep Scatter Estimation (DSE): Feasibility of Using a Deep Convolutional Neural Network for Real-Time X-Ray Scatter Prediction in Cone-Beam CT

机译:深度散射估计(DSE):在锥束CT中使用深度卷积神经网络进行实时X射线散射预测的可行性

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The contribution of scattered x-rays to the acquired projection data is a severe issue in cone-beam CT (CBCT). Due to the large cone angle, scatter-to-primary ratios may easily be in the order of 1. The corresponding artifacts which appear as cupping or dark streaks in the CT reconstruction may impair the diagnostic value of the CT examination. Therefore, appropriate scatter correction is essential. The gold standard is to use a Monte Carlo photon transport code to predict the distribution of scattered x-rays which can be subtracted from the measurement subsequently. However, long processing times of Monte Carlo simulations prohibit them to be used routinely. To enable fast and accurate scatter estimation we propose the deep scatter estimation (DSE). It uses a deep convolutional neural network which is trained to reproduce the output of Monte Carlo simulations using only the acquired projection data as input. Once the network is trained, DSE performs in real-time. In the present study we demonstrate the feasibility of DSE using simulations of CBCT head scans at different tube voltages. The performance is tested on data sets that significantly differ from the training data. Thereby, the scatter estimates deviate less than 2% from the Monte Carlo ground truth. A comparison to kernel-based scatter estimation techniques, as they are used today, clearly shows superior performance of DSE while being similar in terms of processing time.
机译:在锥束CT(CBCT)中,散射的X射线对采集的投影数据的贡献是一个严重的问题。由于较大的锥角,散射与原始的比率可能很容易约为1。在CT重建中显示为拔罐或深色条纹的相应伪影可能会损害CT检查的诊断价值。因此,适当的散射校正是必不可少的。黄金标准是使用蒙特卡洛光子传输代码来预测散射x射线的分布,然后可以从测量中减去这些x射线。但是,蒙特卡洛模拟的处理时间较长,因此无法常规使用它们。为了实现快速准确的散射估计,我们提出了深度散射估计(DSE)。它使用了深度卷积神经网络,该网络经过训练可以仅使用获取的投影数据作为输入来重现蒙特卡洛模拟的输出。训练好网络后,DSE就会实时执行。在本研究中,我们通过在不同的管电压下使用CBCT头部扫描模拟来证明DSE的可行性。在与训练数据明显不同的数据集上测试了性能。因此,散射估计值与蒙特卡洛基本事实的偏差小于2%。与当今使用的基于内核的分散估计技术进行比较,可以清楚地显示DSE的卓越性能,同时在处理时间方面也是如此。

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