Pineda Angel R, Barrett Harrison H
University of Arizona, Radiology Research Building 211, 1609 North Warren, Tucson, Arizona 85724, USA.
Med Phys. 2004 Feb;31(2):359-67. doi: 10.1118/1.1631427.
The current paradigm for evaluating detectors in digital radiography relies on Fourier methods. Fourier methods rely on a shift-invariant and statistically stationary description of the imaging system. The theoretical justification for the use of Fourier methods is based on a uniform background fluence and an infinite detector. In practice, the background fluence is not uniform and detector size is finite. We study the effect of stochastic blurring and structured backgrounds on the correlation between Fourier-based figures of merit and Hotelling detectability. A stochastic model of the blurring leads to behavior similar to what is observed by adding electronic noise to the deterministic blurring model. Background structure does away with the shift invariance. Anatomical variation makes the covariance matrix of the data less amenable to Fourier methods by introducing long-range correlations. It is desirable to have figures of merit that can account for all the sources of variation, some of which are not stationary. For such cases, we show that the commonly used figures of merit based on the discrete Fourier transform can provide an inaccurate estimate of Hotelling detectability.
当前数字射线照相中评估探测器的范式依赖于傅里叶方法。傅里叶方法依赖于成像系统的平移不变性和统计平稳性描述。使用傅里叶方法的理论依据基于均匀的背景注量和无限大的探测器。在实际中,背景注量并不均匀且探测器尺寸是有限的。我们研究了随机模糊和结构化背景对基于傅里叶的品质因数与霍特林可探测性之间相关性的影响。模糊的随机模型导致的行为类似于通过向确定性模糊模型添加电子噪声所观察到的行为。背景结构消除了平移不变性。解剖学变异通过引入长程相关性使数据的协方差矩阵不太适合傅里叶方法。期望有能够考虑所有变异源的品质因数,其中一些变异源并非平稳的。对于这种情况,我们表明基于离散傅里叶变换的常用品质因数可能会对霍特林可探测性提供不准确的估计。