Dynamic Contrast Enhanced MRI (DCE-MRI) is one method for drug and tumor assessment. Selecting a consistent
arterial input function (AIF) is necessary to calculate tissue and tumor pharmacokinetic parameters in DCE-MRI. This
paper presents an automatic and robust method to select the AIF. The first stage is artery detection and segmentation,
where knowledge about artery structure and dynamic signal intensity temporal properties of DCE-MRI is employed. The
second stage is AIF model fitting and selection. A tri-exponential model is fitted for every candidate AIF using the
Levenberg-Marquardt method, and the best fitted AIF is selected. Our method has been applied in DCE-MRIs of four
different body parts: breast, brain, liver and prostate. The success rates in artery segmentation for 19 cases are
89.6%±15.9%. The pharmacokinetic parameters computed from the automatically selected AIFs are highly correlated
with those from manually determined AIFs (R2=0.946, P(T<=t)=0.09). Our imaging-based tri-exponential AIF model
demonstrated significant improvement over a previously proposed bi-exponential model.
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