Rapid Optimization of SPECT Scatter Correction Using Model LROC Observers.

Santosh Kulkarni, Parmeshwar Khurd, Lili Zhou, Gene Gindi
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引用次数: 2

Abstract

The problem we address is the optimization and comparison of window-based scatter correction (SC) methods in SPECT for maximum a posteriori reconstructions. While sophisticated reconstruction-based SC methods are available, the commonly used window-based SC methods are fast, easy to use, and perform reasonably well. Rather than subtracting a scatter estimate from the measured sinogram and then reconstructing, we use an ensemble approach and model the mean scatter sinogram in the likelihood function. This mean scatter sinogram estimate, computed from satellite window data, is itself inexact (noisy). Therefore two sources of noise, that due to Poisson noise of unscattered photons and that due to the model error in the scatter estimate, are propagated into the reconstruction. The optimization and comparison is driven by a figure of merit, the area under the LROC curve (ALROC) that gauges performance in a signal detection plus localization task. We use model observers to perform the task. This usually entails laborious generation of many sample reconstructions, but in this work, we instead develop a theoretical approach that allows one to rapidly compute ALROC given known information about the imaging system and the scatter correction scheme. A critical step in the theory approach is to predict additional (above that due to to the propagated Poisson noise of the primary photons) contributions to the reconstructed image covariance due to scatter (model error) noise. Simulations show that our theory method yields, for a range of search tolerances, LROC curves and ALROC values in close agreement to that obtained using model observer responses obtained from sample reconstruction methods. This opens the door to rapid comparison of different window-based SC methods and to optimizing the parameters (including window placement and size, scatter sinogram smoothing kernel) of the SC method.

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基于模型LROC观测器的SPECT散射校正快速优化。
本文研究的问题是SPECT中基于窗口的散射校正方法的优化和比较,以获得最大的后验重建。虽然有复杂的基于重建的SC方法,但常用的基于窗口的SC方法快速、易于使用并且性能相当好。我们不是从测量的正弦图中减去散点估计然后重建,而是使用集合方法在似然函数中对平均散点正弦图进行建模。从卫星窗口数据计算得出的平均散射正弦图估计本身是不精确的(有噪声的)。因此,两个噪声源,即由于未散射光子的泊松噪声和由于散射估计中的模型误差,被传播到重建中。优化和比较是由一个价值值驱动的,即LROC曲线下的面积(ALROC),用于衡量信号检测和定位任务中的性能。我们使用模型观察者来执行任务。这通常需要费力地生成许多样本重建,但在这项工作中,我们开发了一种理论方法,允许人们在给定有关成像系统和散射校正方案的已知信息的情况下快速计算ALROC。理论方法中的一个关键步骤是预测由于散射(模型误差)噪声对重构图像协方差的额外贡献(以上是由于主光子的传播泊松噪声)。仿真结果表明,在搜索容限范围内,我们的理论方法得到的LROC曲线和ALROC值与使用从样本重建方法获得的模型观察者响应得到的结果非常吻合。这为快速比较不同的基于窗口的SC方法以及优化SC方法的参数(包括窗口的位置和大小,散射sinogram smoothing kernel)打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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