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Development and application of a channelized Hotelling observer for DBT optimization on structured background test images with mass simulating targets

机译:具有质量模拟目标的结构化背景测试图像上用于DBT优化的通道化Hotelling观测器的开发和应用

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Digital breast tomosynthesis (DBT) is a 3D mammography technique that promises better visualization of low contrast lesions than conventional 2D mammography. A wide range of parameters influence the diagnostic information in DBT images and a systematic means of DBT system optimization is needed. The gold standard for image quality assessment is to perform a human observer experiment with experienced readers. Using human observers for optimization is time consuming and not feasible for the large parameter space of DBT. Our goal was to develop a model observer (MO) that can predict human reading performance for standard detection tasks of target objects within a structured phantom and subsequently apply it in a first comparative study. The phantom consists of an acrylic semi-cylindrical container with acrylic spheres of different sizes and the remaining space filled with water. Three types of lesions were included: 3D printed spiculated and non-spiculated mass lesions along with calcification groups. The images of the two mass lesion types were reconstructed with 3 different reconstruction methods (FBP, FBP with SRSAR, MLTR_(pr)) and read by human readers. A Channelized Hotelling model observer was created for the non-spiculated lesion detection task using five Laguerre-Gauss channels, tuned for better performance. For the non-spiculated mass lesions a linear relation between the MO and human observer results was found, with correlation coefficients of 0.956 for standard FBP, 0.998 for FBP with SRSAR and 0.940 for MLTR_(pr). Both the MO and human observer percentage correct results for the spiculated masses were close to 100%, and showed no difference from each other for every reconstruction algorithm.
机译:数字乳腺断层合成(DBT)是一种3D乳腺X线摄影技术,与传统的2D乳腺X线摄影相比,它有望更好地显示低对比度病变。各种各样的参数会影响DBT图像中的诊断信息,因此需要DBT系统优化的系统方法。图像质量评估的金标准是与经验丰富的读者进行人类观察者实验。使用人类观察者进行优化是耗时的,并且对于DBT的大参数空间而言是不可行的。我们的目标是开发一种模型观察器(MO),该模型观察器可以预测结构化体模中目标对象的标准检测任务的人类阅读性能,并将其应用于首次比较研究中。幻影由一个丙烯酸半圆柱形容器组成,该容器具有不同大小的丙烯酸球体,剩余空间充满水。包括三种类型的病变:3D打印的假性和非特殊性肿块以及钙化组。使用3种不同的重建方法(FBP,带SRSAR的FBP,MLTR_(pr))重建两种肿块类型的图像,并由人类读者阅读。使用五个Laguerre-Gauss通道创建了Channelized Hotelling模型观察器,用于未发现的病变检测任务,并对其进行了调整以提高性能。对于未观察到的块状病变,在MO和人类观察者结果之间发现线性关系,标准FBP的相关系数为0.956,带有SRSAR的FBP的相关系数为0.998,而MLTR_(pr)的相关系数为0.940。 MO和人类观察者对弥漫性肿块的正确率百分比均接近100%,并且对于每种重建算法而言,彼此之间没有显示出差异。

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