Unrolled Optimization via Physics-assisted Convolutional Neural Network for MR-based Electrical Properties Tomography: a Numerical Investigation
Articolo
Data di Pubblicazione:
2024
Citazione:
Unrolled Optimization via Physics-assisted Convolutional Neural Network for MR-based Electrical Properties Tomography: a Numerical Investigation / Zumbo, S., Mandija, S., Meliadò, E.F., Stijnman, P., Meerbothe, T.G., Berg, C.A.T.v.d., Isernia, T., Bevacqua, M.T.. - In: IEEE OPEN JOURNAL OF ENGINEERING IN MEDICINE AND BIOLOGY. - ISSN 2644-1276. - 5:(2024), pp. 505-513. [10.1109/ojemb.2024.3402998]
Abstract:
Magnetic Resonance imaging based Electrical Properties Tomography (MR-EPT) is a non-invasive technique that measures the electrical properties (EPs) of biological tissues. In this work, we present and numerically investigate the performance of an unrolled, physicsassisted method for 2D MR-EPT reconstructions, where a cascade of Convolutional Neural Networks is used to compute the contrast update. Each network takes in input the EPs and the gradient descent direction (encoding the physics underlying the adopted scattering model) and returns as output the updated contrast function. The network is trained and tested in silico using 2D slices of realistic brain models at 128 MHz. Results show the capability of the proposed procedure to reconstruct EPs maps with quality comparable to that of the popular Contrast Source Inversion-EPT, while significantly reducing the computational time.
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
Zumbo, Sabrina; Mandija, Stefano; Meliadò, Ettore F.; Stijnman, Peter; Meerbothe, Thierry G.; Berg, Cornelis A. T. van den; Isernia, Tommaso; Bevacqua, Martina T.
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