The Kidneys Are Not All Normal: Investigating the Speckle Distributions of Transplanted Kidneys
Rohit Singla, Ricky Hu, Cailin Ringstrom, Victoria Lessoway, Janice, Reid, Christopher Nguan, Robert Rohling

TL;DR
This study investigates the statistical distributions of ultrasound speckle in transplanted kidneys, identifying Nakagami as a robust model across regions and patient variables, aiding in tissue characterization and potential diagnostics.
Contribution
First comprehensive analysis of speckle distributions in transplanted kidneys, comparing seven models and linking findings to tissue regions and patient factors.
Findings
Nakagami distribution fits speckle data well across regions
Significant differences in Rayleigh and Nakagami parameters between regions
Weak correlations between patient variables and speckle distribution parameters
Abstract
Modelling ultrasound speckle has generated considerable interest for its ability to characterize tissue properties. As speckle is dependent on the underlying tissue architecture, modelling it may aid in tasks like segmentation or disease detection. However, for the transplanted kidney where ultrasound is commonly used to investigate dysfunction, it is currently unknown which statistical distribution best characterises such speckle. This is especially true for the regions of the transplanted kidney: the cortex, the medulla and the central echogenic complex. Furthermore, it is unclear how these distributions vary by patient variables such as age, sex, body mass index, primary disease, or donor type. These traits may influence speckle modelling given their influence on kidney anatomy. We are the first to investigate these two aims. N=821 kidney transplant recipient B-mode images were…
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Taxonomy
TopicsMRI in cancer diagnosis
