Paper
21 March 2007 Perceptual difference model (Case-PDM) for evaluation of MR images: validation and calibration
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Abstract
There is an extraordinary number of fast MR imaging techniques, especially for parallel imaging. When one considers multiple reconstruction algorithms, reconstruction parameters, coil configurations, acceleration factors, noise levels, and multiple test images, one can easily create 1000's of test images for image quality evaluation. We have found the perceptual difference model (Case-PDM) to be quite useful as a means of rapid quantitative image quality evaluation in such experiments, and have applied it to keyhole, spiral, SENSE, and GRAPPA applications. In this study, we have compared human evaluation of MR images from multiple organs and from multiple image reconstruction algorithms to Case-PDM. We compared human DSCQS (Double Stimulus Continuous Quality Scale) scoring against Case-PDM measurements for 3 different image types and 3 different image reconstruction algorithms. We found that Case-PDM linearly correlated (r > 0.9) with human subject ratings over a very large range of image quality. We also compared Case-PDM to other image quality evaluation methods. Case-PDM generally performed better than NASA's DCTune, MITRE's IQM, Zhou Wang's NR models and mean square error (MSE) method, by showing a higher Pearson correlation coefficient, higher Spearman rank-order correlation and lower root-mean-squared error. All three models (Case-PDM, Sarnoff's IDM, and Zhou Wang's SSIM) performed very similarly in this experiment. To focus on high quality reconstructions, we performed a 2-AFC (Alternate Forced Choice) experiment to determine the "just perceptible difference" between two images. We found that threshold Case-PDM scores changed little (0.6-1.8) with 2 different image types and 3 degradation patterns, and results with Case-PDM were much tighter than the other methods (IDM and MSE) by showing a lower ratio of mean to standard deviation value. We conclude that Case-PDM can correctly predict the ordering of image quality over a large range of image quality. Case-PDM can also be used to screen the images which are "perceptually equal" to the original image. Although Case-PDM is a very useful tool for comparing "similar raw images with similar processing," one should be careful when interpreting Case-PDM scores across MR images.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jun Miao, Donglai Huo, and David Wilson "Perceptual difference model (Case-PDM) for evaluation of MR images: validation and calibration", Proc. SPIE 6515, Medical Imaging 2007: Image Perception, Observer Performance, and Technology Assessment, 651515 (21 March 2007); https://doi.org/10.1117/12.710102
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Cited by 3 scholarly publications.
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KEYWORDS
Image quality

Magnetic resonance imaging

Human subjects

Reconstruction algorithms

Data modeling

Image restoration

Image processing

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