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Improvements of the ML-EL-algorithm for reconstruction of positron emission tomography images

机译:ML-EL算法在正电子发射断层扫描图像重建中的改进

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Positron emission tomography (PET) is a technique that has opened new facilities to study the metabolic activity of the human body. In the last years many algorithms have been developed for reconstructing tomography images. The often used maximum likelihood expectation maximization algorithm (ML-EM) seems to be a stable method and was developed by Shepp and Vardi in 1982. However, the ML-EM algorithm causes some serious problems in the context of the application considered. It is an iterative procedure and converges to a stationary point, however, the reconstructed image seems to be distorted by superposed high frequency noise. It is shown, that the ML-EM-algorithm is not based on significant statistical properties in our problem, which has been verified by investigations. As a consequence of these results the algorithm has been modified in two ways. First, the expectation step has been replaced by a deterministic algorithm with accelerated convergence behaviour. Second, prior information is used to improve the statistical performance of the algorithm. Consequently, the algorithm has been changed to a maximum a posteriori estimator.
机译:正电子发射断层扫描(PET)是一项打开了研究人体代谢活性的新设施的技术。在最近几年中,已经开发了许多用于重建断层图像的算法。经常使用的最大似然期望最大化算法(ML-EM)似乎是一种稳定的方法,由Shepp和Vardi于1982年开发。但是,ML-EM算法在所考虑的应用程序上下文中引起了一些严重的问题。这是一个迭代过程,并且收敛到一个固定点,但是,重建的图像似乎由于叠加的高频噪声而失真。结果表明,ML-EM算法不是基于我们问题中的重要统计特性,这已通过调查得到了验证。由于这些结果,该算法已通过两种方式进行了修改。首先,期望步骤已被具有加速收敛行为的确定性算法所取代。第二,先验信息用于改善算法的统计性能。因此,该算法已更改为最大后验估计量。

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