Tapiovaara M J, Wagner R F
Finnish Centre for Radiation and Nuclear Safety, Helsinki.
Phys Med Biol. 1993 Jan;38(1):71-92. doi: 10.1088/0031-9155/38/1/006.
A method of measuring the image quality of medical imaging equipment is considered within the framework of statistical decision theory. In this approach, images are regarded as random vectors and image quality is defined in the context of the image information available for performing a specified detection or discrimination task. The approach provides a means of measuring image quality, as related to the detection of an image detail of interest, without reference to the actual physical mechanisms involved in image formation and without separate measurements of signal transfer characteristics or image noise. The measurement does not, however, consider deterministic errors in the image; they need a separate evaluation for imaging modalities where they are of concern. The detectability of an image detail can be expressed in terms of the ideal observer's signal-to-noise ratio (SNR) at the decision level. Often a good approximation to this SNR can be obtained by employing sub-optimal observers, whose performance correlates well with the performance of human observers as well. In this paper the measurement of SNR is based on implementing algorithmic realizations of specified observers and analysing their responses while actually performing a specified detection task of interest. Three observers are considered: the ideal prewhitening matched filter, the non-prewhitening matched filter, and the DC-suppressing non-prewhitening matched filter. The construction of the ideal observer requires an impractical amount of data and computing, except for the most simple imaging situations. Therefore, the utilization of sub-optimal observers is advised and their performance in detecting a specified signal is discussed. Measurement of noise and SNR has been extended to include temporally varying images and dynamic imaging systems.
一种测量医学成像设备图像质量的方法是在统计决策理论的框架内进行考虑的。在这种方法中,图像被视为随机向量,并且图像质量是在可用于执行特定检测或辨别任务的图像信息的背景下定义的。该方法提供了一种测量图像质量的手段,它与感兴趣的图像细节的检测相关,而无需参考图像形成中涉及的实际物理机制,也无需单独测量信号传输特性或图像噪声。然而,该测量并未考虑图像中的确定性误差;对于那些关注确定性误差的成像模态,需要进行单独评估。图像细节的可检测性可以用决策水平上理想观察者的信噪比(SNR)来表示。通常,通过采用次优观察者可以获得对该信噪比的良好近似,其次优观察者的性能也与人类观察者的性能密切相关。在本文中,信噪比的测量基于实现特定观察者的算法实现,并在实际执行感兴趣的特定检测任务时分析其响应。考虑了三种观察者:理想白化匹配滤波器、非白化匹配滤波器和直流抑制非白化匹配滤波器。除了最简单的成像情况外,理想观察者的构建需要大量不切实际的数据和计算量。因此,建议使用次优观察者,并讨论了它们在检测特定信号方面的性能。噪声和信噪比的测量已扩展到包括随时间变化的图像和动态成像系统。