Eck Brendan, Fahmi Rachid, Brown Kevin M, Raihani Nilgoun, Wilson David L
Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH, 44106, USA.
Philips Healthcare, Cleveland, OH, 44143, USA.
Proc SPIE Int Soc Opt Eng. 2014 Feb;9037. doi: 10.1117/12.2043335. Epub 2014 Mar 11.
Model observers were created and compared to human observers for the detection of low contrast targets in computed tomography (CT) images reconstructed with an advanced, knowledge-based, iterative image reconstruction method for low x-ray dose imaging. A 5-channel Laguerre-Gauss Hotelling Observer (CHO) was used with internal noise added to the decision variable (DV) and/or channel outputs (CO). Models were defined by parameters: DV-noise with standard deviation (std) proportional to DV std; DV-noise with constant std; CO-noise with constant std across channels; and CO-noise in each channel with std proportional to CO variance. Four-alternative forced choice (4AFC) human observer studies were performed on sub-images extracted from phantom images with and without a "pin" target. Model parameters were estimated using maximum likelihood comparison to human probability correct (PC) data. PC in human and all model observers increased with dose, contrast, and size, and was much higher for advanced iterative reconstruction (IMR) as compared to filtered back projection (FBP). Detection in IMR was better than FPB at 1/3 dose, suggesting significant dose savings. gave the best overall fit to humans across independent variables (dose, size, contrast, and reconstruction) at fixed display window. However performed better when considering model complexity using the Akaike information criterion. fit the extraordinary detectability difference between IMR and FBP, despite the different noise quality. It is anticipated that the model observer will predict results from iterative reconstruction methods having similar noise characteristics, enabling rapid comparison of methods.
创建了模型观察者,并将其与人类观察者进行比较,以检测使用先进的、基于知识的迭代图像重建方法重建的计算机断层扫描(CT)图像中的低对比度目标,该方法用于低剂量X射线成像。使用了一个5通道拉盖尔 - 高斯霍特林观察者(CHO),并在决策变量(DV)和/或通道输出(CO)中添加了内部噪声。模型由以下参数定义:标准差(std)与DV标准差成比例的DV噪声;具有恒定std的DV噪声;跨通道具有恒定std的CO噪声;以及每个通道中std与CO方差成比例的CO噪声。对从带有和不带有“针”状目标的体模图像中提取的子图像进行了四选一强制选择(4AFC)人类观察者研究。使用与人类正确概率(PC)数据的最大似然比较来估计模型参数。人类和所有模型观察者的PC随着剂量、对比度和尺寸的增加而增加,并且与滤波反投影(FBP)相比,先进迭代重建(IMR)的PC要高得多。在1/3剂量下,IMR中的检测优于FBP,这表明可以显著节省剂量。在固定显示窗口下,在各个自变量(剂量、尺寸、对比度和重建)方面, 总体上对人类的拟合最佳。然而,在使用赤池信息准则考虑模型复杂性时, 表现更好。 拟合了IMR和FBP之间异常的可检测性差异,尽管噪声质量不同。预计模型观察者将预测具有相似噪声特征的迭代重建方法的结果,从而能够快速比较各种方法。