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Metric-guided regularisation parameter selection for statistical iterative reconstruction in computed tomography

机译:用于计算机断层摄影中统计迭代重建的度量指导正则化参数选择

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摘要

As iterative reconstruction in Computed Tomography (CT) is an ill-posed problem, additional prior information has to be used to get a physically meaningful result (close to ground truth if available). However, the amount of influence of the regularisation prior is crucial to the outcome of the reconstruction. Therefore, we propose a scheme for tuning the strength of the prior via a certain image metric. In this work, the parameter is tuned for minimal histogram entropy in selected regions of the reconstruction as histogram entropy is a very basic approach to characterise the information content of data. We performed a sweep over different regularisation parameters showing that the histogram entropy is a suitable metric as it is well behaved over a wide range of parameters. The parameter determination is a feedback loop approach we applied to numerically simulated FORBILD phantom data and verified with an experimental measurement of a micro-CT device. The outcome is evaluated visually and quantitatively by means of root mean squared error (RMSE) and structural similarity (SSIM) for the simulation and visually for the measured sample (no ground truth available). The final reconstructed images exhibit noise-suppressed iterative reconstruction. For both datasets, the optimisation is robust where its initial value is concerned. The parameter tuning approach shows that the proposed metric-driven feedback loop is a promising tool for finding a suitable regularisation parameter in statistical iterative reconstruction.
机译:由于计算机断层扫描(CT)中的迭代重建是一个不适的问题,因此必须使用其他先验信息来获得物理上有意义的结果(如果可用,则应接近地面真实性)。但是,正则化先验的影响量对于重建结果至关重要。因此,我们提出了一种用于通过特定图像度量调整先验强度的方案。在这项工作中,由于直方图熵是表征数据信息内容的一种非常基本的方法,因此在重构的选定区域中将参数调整为最小直方图熵。我们对不同的正则化参数进行了扫描,结果表明直方图熵是一个合适的指标,因为它在各种参数上表现良好。参数确定是一种反馈回路方法,我们将其应用于数值模拟的FORBILD体模数据,并通过微CT设备的实验测量进行了验证。通过均方根误差(RMSE)和结构相似度(SSIM)进行可视化和定量评估,以进行仿真,并通过可视化方式评估被测样品(没有可用的地面真实性)。最终的重建图像表现出噪声抑制的迭代重建。对于两个数据集,在涉及其初始值的情况下,优化都是健壮的。参数调整方法表明,所提出的度量驱动反馈回路是一种有希望的工具,可用于在统计迭代重建中找到合适的正则化参数。

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