Image Statistics of Brain MRI
Systematic differences between perceptually-relevant image statistics of brain MRI and natural images
Yueyang Xu, Ashish Raj and Jonathan Victor
Front. Neuroinform. 13:46. doi: 10.3389/fninf.2019.00046 (2019)
Abstract
It is well-known that the human visual system is adapted to the statistical structure
of natural scenes. Yet there are important classes of images -- for example, medical
images -- that are not natural scenes, and therefore, that are expected to have
statistical properties that deviate from the class of images that shaped the evolution
and development of human vision. Here, focusing on structural brain MRI images,
we quantify and characterize these deviations in terms of a set of local image statistics
to which human visual sensitivity has been well-characterized, and that has previously
been used for natural image analysis. We analyzed MRI images in multiple databases
including T1-weighted and FLAIR sequence types, and simulated MRI images based
on a published image simulation procedure for T1 images, which we also modified to
generate FLAIR images. We first computed the power spectra of MRI images; spectral
slopes were in the range -2.6 to -3.1 for T1 sequences, and -2.2 to -2.7 for FLAIR
sequences. Analysis of local image statistics was then carried out on whitened images.
For all of the databases as well as for the simulated images, we found that the threepoint
correlations contributed substantially to the differences between the "texture"
of randomly selected ROIs. The informative nature of three-point correlations for brain
MRI was greater than for natural images, and also disproportionate to human visual
sensitivity. As this finding was consistent across databases, it is likely to result from
brain geometry at the scale of brain MRI resolution, rather than characteristics of specific
imaging and reconstruction methods.
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