Liu Haimo, Chakrabarti Kish, Kaczmarek Richard V, Benevides Luis, Gu Songxiang, Kyprianou Iacovos S
FDA Center for Devices and Radiological Health, Silver Spring, Maryland 20993-0002 and Department of Bioengineering, University of Maryland, College Park, Maryland 20742.
US FDA Center for Devices and Radiological Health, Silver Spring, Maryland 20993-0002.
Med Phys. 2014 May;41(5):051907. doi: 10.1118/1.4870377.
The purpose of this work is to evaluate the performance of the image acquisition chain of clinical full field digital mammography (FFDM) systems by quantifying their image quality, and how well the desired information is captured by the images.
The authors present a practical methodology to evaluate FFDM using the task specific system-model-based Fourier Hotelling observer (SMFHO) signal to noise ratio (SNR), which evaluates the signal and noise transfer characteristics of FFDM systems in the presence of a uniform polymethyl methacrylate phantom that models the attenuation of a 6 cm thick 20/80 breast (20% glandular/80% adipose). The authors model the system performance using the generalized modulation transfer function, which accounts for scatter blur and focal spot unsharpness, and the generalized noise power spectrum, both estimated with the phantom placed in the field of view. Using the system model, the authors were able to estimate system detectability for a series of simulated disk signals with various diameters and thicknesses, quantified by a SMFHO SNR map. Contrast-detail (CD) curves were generated from the SNR map and adjusted using an estimate of the human observer efficiency, without performing time-consuming human reader studies. Using the SMFHO method the authors compared two FFDM systems, the GE Senographe DS and Hologic Selenia FFDM systems, which use indirect and direct detectors, respectively.
Even though the two FFDM systems have different resolutions, noise properties, detector technologies, and antiscatter grids, the authors found no significant difference between them in terms of detectability for a given signal detection task. The authors also compared the performance between the two image acquisition modes (fine view and standard) of the GE Senographe DS system, and concluded that there is no significant difference when evaluated by the SMFHO. The estimated human observer efficiency was 30 ± 5% when compared to the SMFHO. The results showed good agreement when compared to other model observers as well as previously published human observer data.
This method generates CD curves from the SMFHO SNR that can be used as figures of merit for evaluating the image acquisition performance of clinical FFDM systems. It provides a way of creating an empirical model of the FFDM system that accounts for patient scatter, focal spot unsharpness, and detector blur. With the use of simulated signals, this method can predict system performance for a signal known exactly/background known exactly detection task with a limited number of images, therefore, it can be readily applied in a clinical environment.
本研究旨在通过量化临床全视野数字乳腺摄影(FFDM)系统的图像质量以及图像对所需信息的捕捉程度,来评估其图像采集链的性能。
作者提出了一种实用方法,使用基于任务特定系统模型的傅里叶霍特林观察者(SMFHO)信噪比(SNR)来评估FFDM,该方法在存在模拟6厘米厚20/80乳腺(20%腺体/80%脂肪)衰减的均匀聚甲基丙烯酸甲酯体模的情况下,评估FFDM系统的信号和噪声传递特性。作者使用广义调制传递函数(该函数考虑了散射模糊和焦点不清晰度)以及广义噪声功率谱对系统性能进行建模,这两者都是在体模置于视野中时进行估计的。利用该系统模型,作者能够估计一系列具有不同直径和厚度的模拟圆盘信号的系统可检测性,并通过SMFHO SNR图进行量化。对比度细节(CD)曲线由SNR图生成,并使用人类观察者效率估计值进行调整,而无需进行耗时的人类读者研究。作者使用SMFHO方法比较了两种FFDM系统,即GE Senographe DS系统和Hologic Selenia FFDM系统,它们分别使用间接探测器和直接探测器。
尽管这两种FFDM系统具有不同的分辨率、噪声特性、探测器技术和反散射栅格,但作者发现在给定信号检测任务的可检测性方面,它们之间没有显著差异。作者还比较了GE Senographe DS系统的两种图像采集模式(精细视图和标准视图)之间的性能,并得出结论,通过SMFHO评估时没有显著差异。与SMFHO相比,估计的人类观察者效率为30±5%。与其他模型观察者以及先前发表的人类观察者数据相比,结果显示出良好的一致性。
该方法从SMFHO SNR生成CD曲线,可作为评估临床FFDM系统图像采集性能的品质因数。它提供了一种创建FFDM系统经验模型的方法,该模型考虑了患者散射、焦点不清晰度和探测器模糊。通过使用模拟信号,该方法可以用有限数量的图像预测已知确切信号/已知确切背景检测任务的系统性能,因此,它可以很容易地应用于临床环境。