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首页> 外文期刊>IEEE Transactions on Nuclear Science >Maximizing the detection and localization of Ga-67 tumors in thoracic SPECT MLEM(OSEM) reconstructions
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Maximizing the detection and localization of Ga-67 tumors in thoracic SPECT MLEM(OSEM) reconstructions

机译:在胸部SPECT MLEM(OSEM)重建中最大程度地检测和定位Ga-67肿瘤

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摘要

Iterative reconstruction algorithms are usually regularized by applying a penalty function, by post-filtering, or by halting the algorithm after some number of iterations. It is difficult to know a priori what is the optimal combination of regularization methods. One method of selection is to use a localization receiver operating characteristic (LROC) study. LROC extends ROC analysis by incorporating a search-and-localize component into the task. Using LROC, the authors investigated the combination of iteration number and 3D Gaussian filter which will maximize the detectability and localization accuracy of 1-cm gallium-avid tumors in maximum-likelihood (ordered-subset) expectation-maximization SPECT reconstructions of the chest region. In the authors' study, 5 observers read 200 images per test condition, divided equally over 2 reading sessions. In each case, the observer indicated the most probable location of the lesion in the image and provided a confidence rating (as in an ROC experiment). The best observer performance was achieved using a reconstruction with 8 iterations of MLEM followed by filtering with a 3D Gaussian filter having a 4-pixel (1.3 cm) FWHM, although the difference between this test condition and others is not significant over a broad range of the parameters considered.
机译:迭代重建算法通常通过应用惩罚函数,后滤波或在一定数量的迭代后停止算法来进行正则化。很难先验地知道正则化方法的最佳组合是什么。一种选择方法是使用本地化接收器工作特性(LROC)研究。 LROC通过将搜索和本地化组件合并到任务中来扩展ROC分析。作者使用LROC研究了迭代次数和3D高斯滤波器的组合,该组合将在胸部区域的最大似然(有序子集)期望最大化SPECT重建中最大化1 cm镓avid肿瘤的可检测性和定位精度。在作者的研究中,每个测试条件有5位观察者阅读200张图像,并在2次阅读过程中平均分配。在每种情况下,观察者都会在图像中指出病变的最可能位置,并提供置信度等级(如在ROC实验中一样)。使用MLEM的8次迭代重建,然后使用具有4像素(1.3厘米)FWHM的3D高斯滤波器进行滤波,可以获得最佳的观察者性能,尽管该测试条件与其他条件之间的差异在很大的范围内并不显着。考虑的参数。

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