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Characterization of spectral x-ray imaging for dental cone-beam computed tomography

机译:牙科X射线计算机断层扫描的X射线光谱成像特性

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The recent advancement in detector technology contributed towards the development of photon counting detectors with the ability to discriminate photons according to their energy on reaching the detector. This provides spectral information about the acquired object; thus, giving additional data on the type of material as well as its density. In this paper, we investigate possible reduction of dental artifacts in cone-beam CT (CBCT) via integration of spectral information into a penalized maximum log-likelihood algorithm. For this investigation we simulated (with Monte-Carlo CT simulator) a virtual jaw phantom, which replicates components of a real jaw such as soft-tissue, bone, teeth and gold crowns. A maximum-likelihood basis-component decomposition technique was used to calculate sinograms of the individual materials. The decomposition revealed the spatial as well as material density of the dental implant. This information was passed on as prior information into the penalized maximum log-likelihood algorithm. The resulting reconstructions showed significant reduced streaking artifacts. The overall image quality is improved such that the contrast-to-noise ratio increased compared to the conventional FBP reconstruction. In this work we presented a new algorithm that makes use of spectral information to provide a prior for a penalized maximum log-likelihood algorithm.
机译:检测器技术的最新进展促进了光子计数检测器的发展,该检测器具有根据光子到达检测器时的能量来区分光子的能力。这提供了有关所获取对象的光谱信息;因此,可以提供有关材料类型及其密度的其他数据。在本文中,我们研究了通过将光谱信息集成到惩罚最大对数似然算法中来减少锥束CT(CBCT)中的牙齿假象的可能性。对于此研究,我们模拟了(使用Monte-Carlo CT模拟器)虚拟的下颌模型,该模型可复制真实下颌的组件,例如软组织,骨骼,牙齿和金冠。使用最大似然基础成分分解技术来计算各个材料的正弦图。分解显示出牙齿植入物的空间以及材料密度。该信息作为先验信息传递到受罚的最大对数似然算法中。所得的重建结果显示出明显减少的条纹伪影。与传统的FBP重建相比,整体图像质量得到了改善,从而使对比度噪声比得以提高。在这项工作中,我们提出了一种新的算法,该算法利用频谱信息为惩罚的最大对数似然算法提供了先验。

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