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首页> 外文期刊>IEEE Transactions on Nuclear Science >Slab-by-slab blurring model for geometric point response correction and attenuation correction using iterative reconstruction algorithms
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Slab-by-slab blurring model for geometric point response correction and attenuation correction using iterative reconstruction algorithms

机译:使用迭代重建算法的逐块模糊模型,用于几何点响应校正和衰减校正

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摘要

The distance-dependent geometric point response of a single photon emission computed tomography (SPECT) system and the attenuation effect of photons passing through the object are modeled in an iterative OS-EM reconstruction algorithm to improve both the resolution and quantitative accuracy of the reconstructed images. A specified number of neighboring vertical slices are grouped into a slab, and an efficient incremental slab-by-slab blurring model is introduced to accelerate the reconstruction. The advantage of the slab-by-slab blurring model over the slice-by-slice model is that the computational time is reduced, while still maintaining the spatial resolution and quantitative accuracy of the reconstructed images. The application of this incremental slab-by-slab blurring model with a slice-by-slice attenuation model to the image reconstruction of phantom, Monte Carlo simulated SPECT data, and patient data shows improved resolution and contrast over the images reconstructed without the corrections. The reconstruction is accelerated by a factor of about 1.4, and the projection/backprojection operation is accelerated by a factor of about 5, using the slab-by-slab convolution implementation with 8 slices in a slab compared with the slice-by-slice convolution implementation.
机译:在迭代OS-EM重建算法中对单光子发射计算机断层摄影(SPECT)系统与距离有关的几何点响应以及通过对象的光子的衰减效应进行建模,以提高重建图像的分辨率和定量精度。将指定数量的相邻垂直切片分组为一个平板,并引入有效的逐个平板增量增量模糊模型以加快重建速度。逐个片段的模糊模型优于逐个片段的模型的优点是减少了计算时间,同时仍保持了重建图像的空间分辨率和定量精度。具有逐个切片衰减模型的这种逐个逐个切片的增量模糊模型在体模的图像重建,蒙特卡洛模拟的SPECT数据和患者数据上的应用显示,与未经校正的重建图像相比,分辨率和对比度得到了改善。与逐个片段卷积相比,使用逐个片段的卷积实现方式在一个平板中具有8个切片,从而将重构加速了约1.4倍,并将投影/反投影操作加速了约5倍。实施。

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