Meeting Banner
Abstract #2744

Rapid DCE-MRI parameter generation using principal component analysis and clustering

Martin Lowry 1 , Lawrence Kenning 2 , and Lindsay W Turnbull 1

1 Centre for MR Investigations, Hull York Medical School at University of Hull, Hull, East Yorkshire, United Kingdom, 2 Centre for MR Investigations, University of Hull, Hull, East Yorkshire, United Kingdom

Volumetric quantification of pharmacokinetic parameters for from DCE-MRI data is hampered by low SNR and computational time. An algorithm using principal component analysis and k-means clustering was developed which simultaneously alleviates both these factors to rapidly produce parameter maps with increased precision. The method reduced processing times by 60-fold with no change in mean parameter values. Maps of vb appeared more homogeneous with far fewer non fitting voxels. The proposed algorithm could remove the need for off-line processing thus making quantitative DCE-MRI more clinically acceptable

This abstract and the presentation materials are available to members only; a login is required.

Join Here