) Clinical implementation of new technology and processes for patient treatment in radiotherapy is a demanding and time-intensive process. The cooperative efforts of physicists, physicians, and technologists must be combined, possibly with engineering and computer support, to successfully realize the transfer of new systems from research into clinical use. Furthermore, careful data tracking of new treatments requires efforts beyond those needed for routine operation of a clinic. Success of the proposed program depends on the ability to rapidly transfer proven research technology to the clinic, and to gather and analyze data resulting from clinical procedures. Core B will implement and perform treatments for the various clinical protocols involved in the program project, as well as provide technical feedback and evaluation of new features and technology for the projects and cores. Goals of the core include providing a cross-functional automated treatment planning/delivery team to implement new procedures and technology related to automated treatment and setup, supporting protocol treatments, and gathering high quality data for analysis in the projects. This support will include initial characterization of systems, process development for clinical implementation, initial clinical treatments, and evaluation and training of clinic staff for routine use of new technology. In addition, Core B will provide support to the projects and cores for evaluation of the impact of improvements due to new technology and procedures in comparison to existing standards of practice.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Program Projects (P01)
Project #
2P01CA059827-06A1
Application #
6405326
Study Section
Subcommittee E - Prevention &Control (NCI)
Project Start
1993-04-09
Project End
2005-07-31
Budget Start
Budget End
Support Year
6
Fiscal Year
2000
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Type
DUNS #
791277940
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
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Johansson, Adam; Balter, James; Cao, Yue (2018) Rigid-body motion correction of the liver in image reconstruction for golden-angle stack-of-stars DCE MRI. Magn Reson Med 79:1345-1353
Johansson, Adam; Balter, James M; Cao, Yue (2018) Abdominal DCE-MRI reconstruction with deformable motion correction for liver perfusion quantification. Med Phys 45:4529-4540
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