Ruth Lim1, Jinsong Ouyang1,
Matthew D. Schmitz1, Michael S. Gee1, Ranu Shailam1,
Raul N. Uppot1, Georges El Fakhri1
1Department of Radiology, Massachusetts
General Hospital / Harvard Medical School, Boston, MA, United States
We
assessed the performance of a novel generalized factor analysis of dynamic
sequences (GFADS) in dynamic, contrast-enhanced renal magnetic resonance
imaging (MRI). By detecting unique time-intensity curves for each renal
tissue/compartment type, this technique automates the creation of regions of
interest (ROIs) around and within the kidneys, and obviates the need for
manually-drawn ROIs. These time factor curves are computed from entire factor
images and are significantly less affected by noise than time-intensity
curves computed within regions of interest that span a few voxels. In this
study, we found that GFADS software can successfully, semi-automatically, and
rapidly identify the renal cortex, medulla, and collecting system on dynamic
contrast-enhanced renal MRI studies while obviating the need to use
manually-drawn regions of interest.
This enables detailed quantitative assessment of cortical and
medullary renal function in normal and abnormal kidneys.