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Eigenvector decomposition of full-spectrum x-ray computed tomography

机译:X射线计算机断层扫描的特征向量分解

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摘要

Energy-discriminated x-ray computed tomography (CT) data were projected onto a set of basis functions to suppress the noise in filtered back-projection (FBP) reconstructions. The x-ray CT data were acquired using a novel x-ray system which incorporated a single-pixel photon-counting x-ray detector to measure the x-ray spectrum for each projection ray. A matrix of the spectral response of different materials was decomposed using eigenvalue decomposition to form the basis functions. Projection of FBP onto basis functions created a de facto image segmentation of multiple contrast agents. Final reconstructions showed significant noise suppression while preserving important energy-axis data. The noise suppression was demonstrated by a marked improvement in the signal-to-noise ratio (SNR) along the energy axis for multiple regions of interest in the reconstructed images. Basis functions used on a more coarsely sampled energy axis still showed an improved SNR. We conclude that the noiseresolution trade off along the energy axis was significantly improved using the eigenvalue decomposition basis functions.
机译:能量分散的X射线计算机断层扫描(CT)数据被投影到一组基函数上,以抑制滤波反投影(FBP)重建中的噪声。使用新颖的X射线系统获取X射线CT数据,该系统结合了一个单像素光子计数X射线检测器,以测量每个投影射线的X射线光谱。使用特征值分解分解不同材料的光谱响应矩阵,以形成基函数。 FBP投影到基本函数上创建了多个造影剂的实际图像分割。最终的重建显示出显着的噪声抑制效果,同时保留了重要的能量轴数据。对于重构图像中多个感兴趣区域,沿着能量轴的信噪比(SNR)有了显着改善,从而证明了噪声抑制。在更粗略采样的能量轴上使用的基函数仍显示出改善的SNR。我们得出的结论是,使用特征值分解基函数可以显着改善沿能量轴的噪声分辨率。

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