Abstract #3066
DCE-MRI Analysis using Model-Based Classification Shapes with Non-Negative Least-Squares
Zaki Ahmed 1 and Ives R Levesque 1,2
1
Medical Physics Unit, McGill University,
Montreal, Quebec, Canada,
2
Research
Institute of the McGill University Health Center,
Montreal, Quebec, Canada
We describe a new analysis method for DCE-MRI which is
based on shape analysis and uses the Tofts model to
define the classification shapes. Non-negative
least-squares (NNLS) is used to identify the weight of
these shapes in measured data. We apply this method to a
dataset of breast cancer patients undergoing neoadjuvant
chemotherapy, and show that our method can predict
pathologic complete response (pCR) in images from
pre-treatment or after one cycle of therapy. Our results
also suggest that the method is robust to inaccuracies
in the T1 and arterial input function (AIF).
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