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      PP-MPI: A deep plug-and-play prior for magnetic particle imaging reconstruction

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      Author(s)
      Aşkın, Barış
      Güngör, Alper
      Alptekin Soydan, D.
      Sarıtaş, Emine Ülkü
      Top, C. B.
      Çukur, Tolga
      Editor
      Haq, Nandinee
      Maier, Andreas
      Qin, Chen
      Johnson, Patricia
      Würfl, Tobias
      Yoo, Jaejun
      Date
      2022-09
      Source Title
      Machine Learning for Medical Image Reconstruction
      Publisher
      Springer Cham
      Volume
      13587
      Pages
      105 - 114
      Language
      English
      Type
      Conference Paper
      Item Usage Stats
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      Series
      Lecture Notes in Computer Science;
      Abstract
      Magnetic particle imaging (MPI) is a recent modality that enables high contrast and frame-rate imaging of the magnetic nanoparticle (MNP) distribution. Based on a measured system matrix, MPI reconstruction can be cast as an inverse problem that is commonly solved via regularized iterative optimization. Yet, hand-crafted regularization terms can elicit suboptimal performance. Here, we propose a novel MPI reconstruction “PP-MPI” based on a deep plug-and-play (PP) prior embedded in a model-based iterative optimization. We propose to pre-train the PP prior based on a residual dense convolutional neural network (CNN) on an MPI-friendly dataset derived from magnetic resonance angiograms. The PP prior is then embedded into an alternating direction method of multiplier (ADMM) optimizer for reconstruction. A fast implementation is devised for 3D image reconstruction by fusing the predictions from 2D priors in separate rectilinear orientations. Our demonstrations show that PP-MPI outperforms state-of-the-art iterative techniques with hand-crafted regularizers on both simulated and experimental data. In particular, PP-MPI achieves on average 3.10 dB higher peak signal-to-noise ratio than the top-performing baseline under variable noise levels, and can process 12 frames/sec to permit real-time 3D imaging.
      Keywords
      Deep learning
      Magnetic particle imaging
      Plug and play
      Reconstruction
      Permalink
      http://hdl.handle.net/11693/111367
      Published Version (Please cite this version)
      https://doi.org/10.1007/978-3-031-17247-2_11
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      • Department of Electrical and Electronics Engineering 4011
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