Aortic valve disease is the third most common congenital left heart lesion, affecting 8% of all children born with heart defects. Aortic valve replacement (AVR) in children, while feasible, carries a significant early and late morbidity and mortality such that by 10 years following AVR only 47% of children are alive and without valve re-replacement. Complications of anticoagulation, infection and valve dysfunction are some of the causes of morbidity and mortality in active children. For this reason alternative procedures such as aortic valve repair (AVre), remain a preferable approach to prosthetic replacement. AVre, however, is a technically demanding procedure. Analysis of mechanisms of valve dysfunction, precise measurement of leaflet and root geometry, and decisions regarding repair patch size, must be made intra-operatively while the heart is arrested and the aorta open. In experienced centers, however, the short and long-term results of AVre are excellent but the repair rate remains suboptimal due in great part to the trial and error method applied. The main goal of AVre is to repair the geometry of the valve leaflets using non-leaflet tissue (pericardium treated with gluteraldehyde) to generate valve closure during diastole. While experienced surgeons are able to do this intra-operatively, consistent results and widespread application of AVre has been limited due to the steep """"""""learning curve"""""""" with the procedure. To address these impediments to the application of AVre more widely, we propose to utilize the recent advances in 3D ultrasound imaging combined with image processing and modeling techniques to develop a tool for pre-procedure analysis of aortic valve function, and for surgical planning. Ultimately, the goal is to have a tool that can be used in the operating room, utilizing intra-operative imaging for analysis and planning. We propose three Specific Aims:
Aim 1. Develop methodology for defining valve geometry, including: segmentation, statistical geometric models, and computational meshes.
Aim 2. Develop and validate patient-specific finite element- based simulation of aortic valve closure and of valve repair.
Aim 3. Create an interface between clinicians and technical developments to enable the work-flow for aortic valve repair planning, including end-template. To accomplish these goals we will employ a partnership with expertise in 3D ultrasound image processing, model building, and clinical aortic valve repair. This partnership has unique access to clinical care, industrial engineering and modeling, and a long track record of collaboration.

Public Health Relevance

Aortic valve disease is the third most common congenital left heart lesion, affecting 8% of all children born with heart defects and one of the most common heart valve defects in young adults. While aortic valve replacement is feasible, the long term results in children are poor. Aortic valve repair, however, avoids the need for extensive aortic root enlargement procedures to implant oversize valves, and anticoagulation, which are the main source of complications with prosthetic valve replacement. The goal of this project is to develop a tool to aid surgeons in analyzing the anatomic defect in the diseased valve and planning a patient specific repair technique. Advances in 3D ultrasound imaging and computational methods have reached a level where this technology can be implemented in the operating room.

Agency
National Institute of Health (NIH)
Institute
National Heart, Lung, and Blood Institute (NHLBI)
Type
Research Project (R01)
Project #
5R01HL110997-03
Application #
8706947
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Evans, Frank
Project Start
2012-08-06
Project End
2016-06-30
Budget Start
2014-07-01
Budget End
2015-06-30
Support Year
3
Fiscal Year
2014
Total Cost
Indirect Cost
Name
Children's Hospital Boston
Department
Type
DUNS #
City
Boston
State
MA
Country
United States
Zip Code
02115
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Hammer, Peter E; Roberts, Erin G; Emani, Sitaram M et al. (2017) Surgical reconstruction of semilunar valves in the growing child: Should we mimic the venous valve? A simulation study. J Thorac Cardiovasc Surg 153:389-396
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