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Fast Approach to Evaluate MAP Reconstruction for Lesion Detection and Localization

机译:评估MAP重建以进行病变检测和定位的快速方法

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Lesion detection is an important task in emission tomography. Localization ROC (LROC) studies are often used to analyze the lesion detection and localization performance. Most researchers rely on Monte Carlo reconstruction samples to obtain LROC curves, which can be very time-consuming for iterative algorithms. In this paper we develop a fast approach to obtain LROC curves that does not require Monte Carlo reconstructions. We use a channelized Hotelling observer model to search for lesions, and the results can be easily extended to other numerical observers. We theoretically analyzed the mean and covariance of the observer output. Assuming the observer outputs are multivariate Gaussian random variables, an LROC curve can be directly generated by integrating the conditional probability density functions. The high-dimensional integrals are calculated using a Monte Carlo method. The proposed approach is very fast because no iterative reconstruction is involved. Computer simulations show that the results of the proposed method match well with those obtained using the tradition LROC analysis.
机译:病变检测是放射断层扫描中的重要任务。定位ROC(LROC)研究通常用于分析病变检测和定位性能。大多数研究人员依靠蒙特卡洛重构样本来获得LROC曲线,这对于迭代算法可能非常耗时。在本文中,我们开发了一种不需要蒙特卡洛重构的快速方法来获得LROC曲线。我们使用通道化的Hotelling观测器模型来搜索病变,结果可以很容易地扩展到其他数值观测器。我们从理论上分析了观察者输出的均值和协方差。假设观察者输出是多元高斯随机变量,则可以通过对条件概率密度函数进行积分来直接生成LROC曲线。高维积分是使用蒙特卡洛方法计算的。由于不涉及迭代重建,因此所提出的方法非常快速。计算机仿真表明,该方法的结果与使用传统LROC分析获得的结果非常吻合。

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