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Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease

Recent literature suggests that tri-exponential models may provide additional information and fit liver intravoxel incoherent motion (IVIM) data more accurately than conventional bi-exponential models. However, voxel-wise fitting of IVIM results in noisy and unreliable parameter maps. For bi-exponen...

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Autores principales: Troelstra, Marian A., Van Dijk, Anne-Marieke, Witjes, Julia J., Mak, Anne Linde, Zwirs, Diona, Runge, Jurgen H., Verheij, Joanne, Beuers, Ulrich H., Nieuwdorp, Max, Holleboom, Adriaan G., Nederveen, Aart J., Gurney-Champion, Oliver J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9485997/
https://www.ncbi.nlm.nih.gov/pubmed/36148303
http://dx.doi.org/10.3389/fphys.2022.942495
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author Troelstra, Marian A.
Van Dijk, Anne-Marieke
Witjes, Julia J.
Mak, Anne Linde
Zwirs, Diona
Runge, Jurgen H.
Verheij, Joanne
Beuers, Ulrich H.
Nieuwdorp, Max
Holleboom, Adriaan G.
Nederveen, Aart J.
Gurney-Champion, Oliver J.
author_facet Troelstra, Marian A.
Van Dijk, Anne-Marieke
Witjes, Julia J.
Mak, Anne Linde
Zwirs, Diona
Runge, Jurgen H.
Verheij, Joanne
Beuers, Ulrich H.
Nieuwdorp, Max
Holleboom, Adriaan G.
Nederveen, Aart J.
Gurney-Champion, Oliver J.
author_sort Troelstra, Marian A.
collection PubMed
description Recent literature suggests that tri-exponential models may provide additional information and fit liver intravoxel incoherent motion (IVIM) data more accurately than conventional bi-exponential models. However, voxel-wise fitting of IVIM results in noisy and unreliable parameter maps. For bi-exponential IVIM, neural networks (NN) were able to produce superior parameter maps than conventional least-squares (LSQ) generated images. Hence, to improve parameter map quality of tri-exponential IVIM, we developed an unsupervised physics-informed deep neural network (IVIM(3)-NET). We assessed its performance in simulations and in patients with non-alcoholic fatty liver disease (NAFLD) and compared outcomes with bi-exponential LSQ and NN fits and tri-exponential LSQ fits. Scanning was performed using a 3.0T free-breathing multi-slice diffusion-weighted single-shot echo-planar imaging sequence with 18 b-values. Images were analysed for visual quality, comparing the bi- and tri-exponential IVIM models for LSQ fits and NN fits using parameter-map signal-to-noise ratios (SNR) and adjusted R (2). IVIM parameters were compared to histological fibrosis, disease activity and steatosis grades. Parameter map quality improved with bi- and tri-exponential NN approaches, with a significant increase in average parameter-map SNR from 3.38 to 5.59 and 2.45 to 4.01 for bi- and tri-exponential LSQ and NN models respectively. In 33 out of 36 patients, the tri-exponential model exhibited higher adjusted R (2) values than the bi-exponential model. Correlating IVIM data to liver histology showed that the bi- and tri-exponential NN outperformed both LSQ models for the majority of IVIM parameters (10 out of 15 significant correlations). Overall, our results support the use of a tri-exponential IVIM model in NAFLD. We show that the IVIM(3)-NET can be used to improve image quality compared to a tri-exponential LSQ fit and provides promising correlations with histopathology similar to the bi-exponential neural network fit, while generating potentially complementary additional parameters.
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spelling pubmed-94859972022-09-21 Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease Troelstra, Marian A. Van Dijk, Anne-Marieke Witjes, Julia J. Mak, Anne Linde Zwirs, Diona Runge, Jurgen H. Verheij, Joanne Beuers, Ulrich H. Nieuwdorp, Max Holleboom, Adriaan G. Nederveen, Aart J. Gurney-Champion, Oliver J. Front Physiol Physiology Recent literature suggests that tri-exponential models may provide additional information and fit liver intravoxel incoherent motion (IVIM) data more accurately than conventional bi-exponential models. However, voxel-wise fitting of IVIM results in noisy and unreliable parameter maps. For bi-exponential IVIM, neural networks (NN) were able to produce superior parameter maps than conventional least-squares (LSQ) generated images. Hence, to improve parameter map quality of tri-exponential IVIM, we developed an unsupervised physics-informed deep neural network (IVIM(3)-NET). We assessed its performance in simulations and in patients with non-alcoholic fatty liver disease (NAFLD) and compared outcomes with bi-exponential LSQ and NN fits and tri-exponential LSQ fits. Scanning was performed using a 3.0T free-breathing multi-slice diffusion-weighted single-shot echo-planar imaging sequence with 18 b-values. Images were analysed for visual quality, comparing the bi- and tri-exponential IVIM models for LSQ fits and NN fits using parameter-map signal-to-noise ratios (SNR) and adjusted R (2). IVIM parameters were compared to histological fibrosis, disease activity and steatosis grades. Parameter map quality improved with bi- and tri-exponential NN approaches, with a significant increase in average parameter-map SNR from 3.38 to 5.59 and 2.45 to 4.01 for bi- and tri-exponential LSQ and NN models respectively. In 33 out of 36 patients, the tri-exponential model exhibited higher adjusted R (2) values than the bi-exponential model. Correlating IVIM data to liver histology showed that the bi- and tri-exponential NN outperformed both LSQ models for the majority of IVIM parameters (10 out of 15 significant correlations). Overall, our results support the use of a tri-exponential IVIM model in NAFLD. We show that the IVIM(3)-NET can be used to improve image quality compared to a tri-exponential LSQ fit and provides promising correlations with histopathology similar to the bi-exponential neural network fit, while generating potentially complementary additional parameters. Frontiers Media S.A. 2022-09-06 /pmc/articles/PMC9485997/ /pubmed/36148303 http://dx.doi.org/10.3389/fphys.2022.942495 Text en Copyright © 2022 Troelstra, Van Dijk, Witjes, Mak, Zwirs, Runge, Verheij, Beuers, Nieuwdorp, Holleboom, Nederveen and Gurney-Champion. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Physiology
Troelstra, Marian A.
Van Dijk, Anne-Marieke
Witjes, Julia J.
Mak, Anne Linde
Zwirs, Diona
Runge, Jurgen H.
Verheij, Joanne
Beuers, Ulrich H.
Nieuwdorp, Max
Holleboom, Adriaan G.
Nederveen, Aart J.
Gurney-Champion, Oliver J.
Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title_full Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title_fullStr Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title_full_unstemmed Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title_short Self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
title_sort self-supervised neural network improves tri-exponential intravoxel incoherent motion model fitting compared to least-squares fitting in non-alcoholic fatty liver disease
topic Physiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9485997/
https://www.ncbi.nlm.nih.gov/pubmed/36148303
http://dx.doi.org/10.3389/fphys.2022.942495
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