Iterative reconstruction of SPECT data with adaptive regularization

C. Riddell, I. Buvat, A. Savi, M. Gilardi, F. Fazio
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引用次数: 9

Abstract

A least-square reconstruction criterion is proposed for simultaneously estimating a SPECT (Single Photon Emission Computed Tomography) emission distribution corrected for attenuation together with its degree of regularization. Only a regularization trend has to be defined and tuned once for all on a reference study. Given this regularization trend, the precise regularization weight, which is usually fixed a priori, is automatically computed for each data set to adapt to the noise content of the data. We demonstrate that this adaptive process yields better results when the noise conditions change than when the regularization weight is kept constant. This adaptation is illustrated on simulated cardiac data for noise variations due to changes in the acquisition duration, in the background intensity and in the attenuation map.
基于自适应正则化的SPECT数据迭代重建
提出了一种最小二乘重建准则,用于同时估计经衰减校正的单光子发射断层扫描(SPECT)发射分布及其正则化程度。在参考研究中,只需要定义和调整正则化趋势一次。根据这种正则化趋势,自动计算每个数据集的精确正则化权值(通常是先验固定的),以适应数据的噪声含量。结果表明,当噪声条件发生变化时,这种自适应过程比正则化权值保持不变时效果更好。由于采集时间、背景强度和衰减图的变化,这种适应性在模拟心脏数据中得到了说明。
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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