4.8 Article

DeepSPIO: Super Paramagnetic Iron Oxide Particle Quantification Using Deep Learning in Magnetic Resonance Imaging

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2020.3012103

关键词

Machine learning; deep learning; neural networks; MRI; quantification; susceptibility; QSM; SPIO

资金

  1. ANID [PIA-Anillo ACT1416, ACT192064, Fondecyt 1191710]
  2. Millenium Science Initiative of the Ministry of Economy, Development, and Tourism, grantNucleus for CardiovascularMagnetic Resonance

向作者/读者索取更多资源

In this study, a new Deep Learning method was proposed to quantify the distribution of SPIO concentration. The method utilized a novel data acquisition sequence and multiple decoders to improve gradient flow. The accuracy of the method was demonstrated through tests with simulated images and actual scan data.
The susceptibility of super paramagnetic iron oxide (SPIO) particles makes them a useful contrast agent for different purposes in MRI. These particles are typically quantified with relaxometry or by measuring the inhomogeneities they produced. These methods rely on the phase, which is unreliable for high concentrations. We present in this study a novel Deep Learning method to quantify the SPIO concentration distribution. We acquired the data with a new sequence called View Line in which the field map information is encoded in the geometry of the image. The novelty of our network is that it uses residual blocks as the bottleneck and multiple decoders to improve the gradient flow in the network. Each decoder predicts a different part of the wavelet decomposition of the concentration map. This decomposition improves the estimation of the concentration, and also it accelerates the convergence of the model. We tested our SPIO concentration reconstruction technique with simulated images and data from actual scans from phantoms. The simulations were done using images from the IXI dataset, and the phantoms consisted of plastic cylinders containing agar with SPIO particles at different concentrations. In both experiments, the model was able to quantify the distribution accurately.

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