Patient motion during magnetic resonance imaging (MRI) significantly limits our ability to produce high quality images, which is especially problematic in imaging young children unable to respond well (or at all) to verbal instructions and unable to remain still in the scanner. The images generated under these conditions are typically filled with artifacts and the data is therefore of little or no diagnostic value. In an efort to obtain useful images, sedation is routinely used in children < 8, but it is very expensive to administer and is not without potential side effects, some of which can be life-threatening. The research proposed under this application to the NIH provides a highly innovative solution to the following problem: Most young children are unable to remain motion-free long enough for existing motion measurement and correction approaches to produce diagnostically useful images with MRI. To overcome the persistent difficulties associated with imaging young children, we will develop motion-robust MRI that will 1) make trackerless motion measurements more rapidly and without patient-specific training; 2) use a novel combination of image acquisition techniques to make more efficient use of motion-free data; 3) obviate the need for sedation or anesthesia and thereby risks of mortality and morbidity associated with their use; and 4) achieve significantly lower overall costs, per patient and per scan. The computationally-driven technology developed under this proposal, motion-robust MRI, will be easily deployed in clinical settings with widely-available, standard MRI hardware; it will be simple to configure and calibrate; and it will generate images of superior resolution and diagnostic quality. To these ambitious ends, we will undertake the following Specific Aims over the 5-year period of requested support: 1) to develop, apply and evaluate real-time MRI motion measurement techniques; 2) to develop, apply and evaluate 2D/3D image reconstruction for retrospective motion correction; 3) to develop, apply, and evaluate prospective motion correction strategies utilizing motion measurements in real time; and 4) to apply and evaluate motion compensation techniques for imaging of 4-7-year-old patients. Given the fact that a significant number of children undergo MRI before age 18, and given the fact that MRI offers unrivaled diagnostic and prognostic capabilities without the potentially harmful effects of ionizing radiation associated with other modalities (e.g., x- ray, CT); the demand for improved motion compensation strategies for pediatric MRI has never been greater. This highly innovative imaging approach is therefore expected not only to create a new reference standard by which young children in particular are evaluated, diagnosed and monitored with MRI; it is also expected to have rapid translational impact for the countless pediatric diseases and disorders presently evaluated by MRI.

Public Health Relevance

In radiology today, we are frustrated daily by our inability to obtain useful diagnostic images with magnetic resonance imaging (MRI) in young children because they are unable follow verbal instructions well (or at all) and cannot remain still in the scanner. To offset uncontrolled, fast motion in children <8, we frequently must resort to the use of sedation or anesthesia, which unfortunately carries with it the possibility of serious adverse side effects and adds significantly to patient and imaging costs. Thus, there is an urgent, unmet need for an accurate, safe, reliable imaging technique that will enable the radiologist to first, ad most importantly, scan the child without the use of sedation or anesthesia; and second, produce images of superior diagnostic value leading to effective treatments and monitoring of pediatric disease. The proposed project, 'Improved Motion Robust MRI of Children,' promises to deliver a highly innovative imaging method that effectively compensates for patient motion by taking advantage of motion-free time (quiescent periods during the scanning session) and produces high quality images when the child is still. As a direct benefit arising from this novel technique, many patients will no longer need to be sedated or anesthetized during MRI, effectively eliminating potentially life- threatening side effects from the imaging equation. A secondary benefit will be a substantial reduction in overall health care costs.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
5R01EB019483-04
Application #
9475781
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Liu, Guoying
Project Start
2015-07-01
Project End
2019-04-30
Budget Start
2018-05-01
Budget End
2019-04-30
Support Year
4
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Boston Children's Hospital
Department
Type
DUNS #
076593722
City
Boston
State
MA
Country
United States
Zip Code
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