Department of Medical Physics, University of Wisconsin School of Medicine and Public Health, 1111 Highland Avenue, Madison, WI, 53705, USA.
Department of Radiology, University of Wisconsin School of Medicine and Public Health, 600 Highland Avenue, Madison, WI, 53792, USA.
Med Phys. 2017 Sep;44(9):4496-4505. doi: 10.1002/mp.12404. Epub 2017 Jul 18.
Although a variety of mathematical observer models have been developed to predict human observer performance for low contrast lesion detection tasks, their predictive power for high contrast and high spatial resolution discrimination imaging tasks, including those in CT bone imaging, could be limited. The purpose of this work was to develop a modified observer model that has improved correlation with human observer performance for these tasks.
The proposed observer model, referred to as the modified ideal observer model (MIOM), uses a weight function to penalize components in the task function that have less contribution to the actual human observer performance for high contrast and high spatial resolution discrimination tasks. To validate MIOM, both human observer and observer model studies were performed, each using exactly the same CT imaging task [discrimination of a connected component in a high contrast (1000 HU) high spatial resolution bone fracture model (0.3 mm)] and experimental CT image data. For the human observer studies, three physicist observers rated the connectivity of the fracture model using a five-point Likert scale; for the observer model studies, a total of five observer models, including both conventional models and the proposed MIOM, were used to calculate the discrimination capability of the CT images in resolving the connected component. Images used in the studies encompassed nine different reconstruction kernels. Correlation between human and observer model performance for these kernels were quantified using the Spearman rank correlation coefficient (ρ). After the validation study, an example application of MIOM was presented, in which the observer model was used to select the optimal reconstruction kernel for a High-Resolution (Hi-Res, GE Healthcare) CT scan technique.
The performance of the proposed MIOM correlated well with that of the human observers with a Spearman rank correlation coefficient ρ of 0.88 (P = 0.003). In comparison, the value of ρ was 0.05 (P = 0.904) for the ideal observer, 0.05 (P = 0.904) for the non-prewhitening observer, -0.18 (P = 0.634) for the non-prewhitening observer with eye filter and internal noise, and 0.30 (P = 0.427) for the prewhitening observer with eye filter and internal noise. Using the validated MIOM, the optimal reconstruction kernel for the Hi-Res mode to perform high spatial resolution and high contrast discrimination imaging tasks was determined to be the HD Ultra kernel at the center of the scan field of view (SFOV), or the Lung kernel at the peripheral region of the SFOV. This result was consistent with visual observations of nasal CT images of an in vivo canine subject.
Compared with other observer models, the proposed modified ideal observer model provides significantly improved correlation with human observers for high contrast and high spatial resolution CT imaging tasks.
尽管已经开发出多种数学观测器模型来预测人类观测者在低对比度病变检测任务中的表现,但它们对高对比度和高空间分辨率分辨成像任务(包括 CT 骨成像中的任务)的预测能力可能有限。本研究的目的是开发一种改进的观测器模型,该模型与这些任务中人类观测者的表现具有更好的相关性。
所提出的观测器模型,称为改进的理想观测器模型(MIOM),使用权重函数来惩罚任务函数中对高对比度和高空间分辨率分辨任务中实际人类观测者表现贡献较小的成分。为了验证 MIOM,进行了人类观测者和观测者模型研究,每个研究都使用完全相同的 CT 成像任务[区分高对比度(1000 HU)高空间分辨率骨骨折模型(0.3 mm)中的连接组件]和实验 CT 图像数据。对于人类观测者研究,三位物理学家观测者使用五点 Likert 量表评估骨折模型的连通性;对于观测者模型研究,总共使用了五种观测者模型,包括传统模型和所提出的 MIOM,用于计算 CT 图像在分辨连接组件方面的分辨能力。研究中使用的图像涵盖了九个不同的重建核。使用 Spearman 秩相关系数(ρ)量化这些核中人类和观测者模型性能之间的相关性。在验证研究之后,提出了 MIOM 的一个示例应用,其中观测器模型用于为 High-Resolution(Hi-Res,GE Healthcare)CT 扫描技术选择最佳重建核。
所提出的 MIOM 的性能与人类观测者的性能相关性良好,Spearman 秩相关系数ρ为 0.88(P = 0.003)。相比之下,理想观测器的ρ值为 0.05(P = 0.904),非预白化观测器为 0.05(P = 0.904),具有眼滤波器和内部噪声的非预白化观测器为-0.18(P = 0.634),具有眼滤波器和内部噪声的预白化观测器为 0.30(P = 0.427)。使用经过验证的 MIOM,确定用于执行高空间分辨率和高对比度分辨成像任务的 Hi-Res 模式的最佳重建核是中心视野(SFOV)的 HD Ultra 核,或 SFOV 外围区域的 Lung 核。这一结果与对体内犬科动物鼻 CT 图像的直观观察一致。
与其他观测器模型相比,所提出的改进的理想观测器模型为高对比度和高空间分辨率 CT 成像任务提供了与人类观测者更显著的相关性。