论文标题

深度通过AI解析铅笔光束射线照相 - 原理研究证明

Depth resolved pencil beam radiography using AI -- a proof of principle study

论文作者

Häggström, Ida, Carter, Lukas M., Fuchs, Thomas J., Kesner, Adam L.

论文摘要

目的:临床X线照相成像位于通过物体通过差异KEV光子传输的原理。在临床X射线能量下,光子的散射会导致信号噪声,并且仅用于传输测量。然而,散射 - 特别是康普顿散射,是可以表征的。在这项工作中,我们假设现代辐射源和探测器与深度学习技术配对可以建设性地使用散射的光子信息来解决平面X射线成像中的叠加衰减器。方法:我们模拟了一个单声工X射线成像系统,该成像系统由位于高空间和能量分辨率检测器阵列前面的成像目标的铅笔X射线源组成。信号通过卷积神经网络分析,并得出了沿光束轴的散射材料的描述。该系统实际上是使用蒙特卡洛(Monte Carlo)加工的简单幻影处理的/测试的,这些幻影由10个伪随机堆叠的空气/骨/水材材料组成,并且通过解决分类问题来训练网络。结果:沿梁材料识别的平均准确性为0.91 +-0.01,对物体的入口/出口外围表面的精度略高。平均灵敏度和特异性分别为0.91和0.95。结论:我们的工作提供了原理证明,即深度学习技术可用于分析散射的光子模式,这些模式可以建设性地有助于放射线摄影中的信息内容,此处用于在传统的2D平面设置中推断深度信息。该原理以及我们的结果表明,康普顿散射光子中的信息可能为进一步发展提供基础。向诊所进行扩展表现的能力仍未得到探索,需要进一步研究。

AIMS: Clinical radiographic imaging is seated upon the principle of differential keV photon transmission through an object. At clinical x-ray energies the scattering of photons causes signal noise and is utilized solely for transmission measurements. However, scatter - particularly Compton scatter, is characterizable. In this work we hypothesized that modern radiation sources and detectors paired with deep learning techniques can use scattered photon information constructively to resolve superimposed attenuators in planar x-ray imaging. METHODS: We simulated a monoenergetic x-ray imaging system consisting of a pencil beam x-ray source directed at an imaging target positioned in front of a high spatial- and energy-resolution detector array. The signal was analyzed by a convolutional neural network, and a description of scattering material along the axis of the beam was derived. The system was virtually designed/tested using Monte Carlo processing of simple phantoms consisting of 10 pseudo-randomly stacked air/bone/water materials, and the network was trained by solving a classification problem. RESULTS: The average accuracy of the material identification along the beam was 0.91 +- 0.01, with slightly higher accuracy towards the entrance/exit peripheral surfaces of the object. The average sensitivity and specificity was 0.91 and 0.95, respectively. CONCLUSIONS: Our work provides proof of principle that deep learning techniques can be used to analyze scattered photon patterns which can constructively contribute to the information content in radiography, here used to infer depth information in a traditional 2D planar setup. This principle, and our results, demonstrate that the information in Compton scattered photons may provide a basis for further development. The ability to scale performance to the clinic remains unexplored and requires further study.

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