Abstract #0574
Clinically Practical Sparse Reconstruction for 4D Prostate DCE-MRI: Algorithm and Initial Experience
Joshua Trzasko 1 , Eric Borisch 1 , Akira Kawashima 1 , Adam Froemming 1 , Roger Grimm 1 , Armando Manduca 1 , Phillip Young 1 , and Stephen Riederer 1
1
Mayo Clinic, Rochester, MN, United States
Dynamic 3D contrast-enhanced MRI (DCE-MRI) is
increasingly used clinically for prostate cancer lesion
detection, staging, treatment planning/monitoring, and
recurrence detection. However, achieving high
spatiotemporal resolution and SNR in this application is
challenging given the target signals transiency and
glands medial location. Sparsity-driven image
reconstruction is an increasingly popular tool that
mitigate the tradeoff between resolution and SNR
(relative to conventional methods). In this work, we
present an alternating direction method-of-multipliers
(ADMM) optimization strategy specifically for our
Cartesian acquisition protocol that enables <5 minute 4D
DCE-MRI sparse reconstructions. After overviewing the
mechanics of this algorithm, we show that its results
were consistently preferred for diagnosis over the
clinical standard (SENSE) by radiologists in 19
suspected prostate cancer patient studies.
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