This study proposes a deep learning approach to estimate the capillary level input function(CIF) for contrast kinetic model analysis of dynamic contrast enhanced (DCE)-MRI data. Estimation of the CIF for each voxel eliminates the need for the arterial input function and allows automatic end-to-end analysis. We hypothesize that the CIF serves as a more accurate input function that could yield accurate kinetic parameter estimation, which can be used for the diagnosis between the malignant and the benign cancer in the clinical setting. This hypothesis has been tested with a numerical simulation and breast MRI data from an abbreviated exam.
This abstract and the presentation materials are available to members only; a login is required.