Motivation: Chronic kidney disease (CKD) affects more than 500 million people. Children commonly develop CKD from urinary obstructive diseases and nephrotoxic therapies, and then suffer severe growth failure, hyper- tension, cardiovascular risks, and neurocognitive de?cits, and eventually end-stage kidney disease. Accurate renal function quanti?cation will improve clinical management of hydronephrosis (1 in 100 babies) and dos- ing/selection of chemotherapeutic regimens in oncology patients. Glomerular ?ltration rate (GFR), the biomarker of renal function, is derived from blood or urine tests. These tests only provide global GFR and are limited in accuracy, especially in children, and even more so in children with cancer. MRI offers superb anatomic delineation without ionizing radiation, and is thus ideal for pediatric kidney imaging. However, MRI has not been widely adopted for pediatric renal function evaluation due to lack of reliability and cumbersome work?ow. These hurdles stem from the fact that the critical components required for global and regional GFR calculation, including high spatiotemporal resolution, plasma ?ow and arterial input function, are dif?cult to obtain, and that accurate image segmentation of kidneys (cortex and medulla) is labor intensive. Additionally, although the same contrast agent injection can be used for obstruction evaluation, certain areas of the kidney suffer from signi?cant signal loss using standard MRI acquisition techniques due to high contrast agent concentrations. This project addresses these major challenges for automated comprehensive renal function evaluation in children. Approach: The project has three development aims, which are validated by clinical studies.
Aim 1 will enable novel free-breathing time-resolved 3D dynamic contrast enhanced MRI that simultaneously provides accurate GFR calculation and renal plasma ?ow. This is achieved by incorporating self-navigated motion compensation, fast acquisition with parallel imaging and compressed sensing, and phase-contrast ?ow imaging.
The second aim i s to develop multiple new image analysis methods to extract GFR and renal plasma ?ow (RPF) that lever- age novel ?ow data of Aim 1, as well as automated new machine-learning image processing techniques for the segmentation of kidneys and ultimately global and regional GFR calculation.
In Aim 3, we will develop and integrate ultrashort-echo-time techniques to address the MRI signal loss due to T2* effects from high contrast concentration for patients with obstruction, and further incorporate motion compensation and accelerated imag- ing methods to enable time-resolved high-resolution dynamic MRI for contrast washout kinetics analysis in the same MR exam.
Aim 4 will determine the performance of these methods in a clinical setting. Signi?cance: This work will lead to robust, automated comprehensive pediatric renal MRI for safer and more accurate renal function evaluation in children. The techniques will facilitate widespread application in the com- munity setting and permit robust evaluation of renal function, for both children and adults.

Public Health Relevance

Kidney diseases in children often stem from blockages of the urinary tract or toxicity from medications, such as antibiotics or chemotherapies. Kidney function quanti?cation is crucial for clinical management of these children. This work will develop accurate and automated pediatric MRI for quanti?cation of kidney function and diagnosis of urinary tract obstruction.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
1R01EB026136-01
Application #
9501621
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Liu, Guoying
Project Start
2018-04-05
Project End
2022-01-31
Budget Start
2018-04-05
Budget End
2019-01-31
Support Year
1
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Stanford University
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
009214214
City
Stanford
State
CA
Country
United States
Zip Code
94304