Mathematical Modeling and Data Analysis of Nmr Experiments Using Hyperpolarized 13C Metabolites
Author(s) -
Guilhem Pagès,
Philip W. Kuchel
Publication year - 2013
Publication title -
magnetic resonance insights
Language(s) - English
Resource type - Journals
ISSN - 1178-623X
DOI - 10.4137/mri.s11084
Subject(s) - relaxation (psychology) , nuclear magnetic resonance , polarization (electrochemistry) , hyperpolarization (physics) , kinetics , kinetic energy , nuclear magnetic resonance spectroscopy , chemistry , materials science , biological system , computer science , physics , psychology , social psychology , quantum mechanics , biology
Rapid-dissolution dynamic nuclear polarization (DNP) has made significant impact in the characterization and understanding of metabolism that occurs on the sub-minute timescale in several diseases. While significant efforts have been made in developing applications, and in designing rapid-imaging radiofrequency (RF) and magnetic field gradient pulse sequences, very few groups have worked on implementing realistic mathematical/kinetic/relaxation models to fit the emergent data. The critical aspects to consider when modeling DNP experiments depend on both nuclear magnetic resonance (NMR) and (bio)chemical kinetics. The former constraints are due to the relaxation of the NMR signal and the application of 'read' RF pulses, while the kinetic constraints include the total amount of each molecular species present. We describe the model-design strategy we have used to fit and interpret our DNP results. To our knowledge, this is the first report on a systematic analysis of DNP data.
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