TY - JOUR
T1 - Liver PDFF estimation using a multi-decoder water-fat separation neural network with a reduced number of echoes
AU - Meneses, Juan Pablo
AU - Arrieta, Cristobal
AU - della Maggiora, Gabriel
AU - Besa, Cecilia
AU - Urbina, Jesús
AU - Arrese, Marco
AU - Gana, Juan Cristóbal
AU - Galgani, Jose E.
AU - Tejos, Cristian
AU - Uribe, Sergio
N1 - Funding Information:
This work was funded by ANID – Millennium Science Initiative Program – ICN2021_004, and also received the Chilean government through the Fondo Nacional de Desarrollo Científico y Tecnológico (FONDECYT 1191145 to MA). J.P.M. was funded by the National Agency for Research and Development (ANID) / Scholarship Program / DOCTORADO BECAS CHILE/2020 – 21210665. C.A. was partially funded by ANID FONDECYT Postdoctorado 2019 #3190763. C.T. was funded by Fondecyt 1231535, Anillo PIA ACT192064. S.U. was funded by Fondecyt 1181057.
Funding Information:
Open Access funding enabled and organized by CAUL and its Member Institutions This work was funded by ANID – Millennium Science Initiative Program – ICN2021_004, and also received the Chilean government through the Fondo Nacional de Desarrollo Científico y Tecnológico (FONDECYT 1191145 to MA).
Publisher Copyright:
© 2023, The Author(s).
PY - 2023/9
Y1 - 2023/9
N2 - Objective: To accurately estimate liver PDFF from chemical shift-encoded (CSE) MRI using a deep learning (DL)-based Multi-Decoder Water-Fat separation Network (MDWF-Net), that operates over complex-valued CSE-MR images with only 3 echoes. Methods: The proposed MDWF-Net and a U-Net model were independently trained using the first 3 echoes of MRI data from 134 subjects, acquired with conventional 6-echoes abdomen protocol at 1.5 T. Resulting models were then evaluated using unseen CSE-MR images obtained from 14 subjects that were acquired with a 3-echoes CSE-MR pulse sequence with a shorter duration compared to the standard protocol. Resulting PDFF maps were qualitatively assessed by two radiologists, and quantitatively assessed at two corresponding liver ROIs, using Bland Altman and regression analysis for mean values, and ANOVA testing for standard deviation (STD) (significance level:.05). A 6-echo graph cut was considered ground truth. Results: Assessment of radiologists demonstrated that, unlike U-Net, MDWF-Net had a similar quality to the ground truth, despite it considered half of the information. Regarding PDFF mean values at ROIs, MDWF-Net showed a better agreement with ground truth (regression slope = 0.94, R2 = 0.97) than U-Net (regression slope = 0.86, R2 = 0.93). Moreover, ANOVA post hoc analysis of STDs showed a statistical difference between graph cuts and U-Net (p <.05), unlike MDWF-Net (p =.53). Conclusion: MDWF-Net showed a liver PDFF accuracy comparable to the reference graph cut method, using only 3 echoes and thus allowing a reduction in the acquisition times. Clinical relevance statement: We have prospectively validated that the use of a multi-decoder convolutional neural network to estimate liver proton density fat fraction allows a significant reduction in MR scan time by reducing the number of echoes required by 50%. Key Points: • Novel water-fat separation neural network allows for liver PDFF estimation by using multi-echo MR images with a reduced number of echoes. • Prospective single-center validation demonstrated that echo reduction leads to a significant shortening of the scan time, compared to standard 6-echo acquisition. • Qualitative and quantitative performance of the proposed method showed no significant differences in PDFF estimation with respect to the reference technique.
AB - Objective: To accurately estimate liver PDFF from chemical shift-encoded (CSE) MRI using a deep learning (DL)-based Multi-Decoder Water-Fat separation Network (MDWF-Net), that operates over complex-valued CSE-MR images with only 3 echoes. Methods: The proposed MDWF-Net and a U-Net model were independently trained using the first 3 echoes of MRI data from 134 subjects, acquired with conventional 6-echoes abdomen protocol at 1.5 T. Resulting models were then evaluated using unseen CSE-MR images obtained from 14 subjects that were acquired with a 3-echoes CSE-MR pulse sequence with a shorter duration compared to the standard protocol. Resulting PDFF maps were qualitatively assessed by two radiologists, and quantitatively assessed at two corresponding liver ROIs, using Bland Altman and regression analysis for mean values, and ANOVA testing for standard deviation (STD) (significance level:.05). A 6-echo graph cut was considered ground truth. Results: Assessment of radiologists demonstrated that, unlike U-Net, MDWF-Net had a similar quality to the ground truth, despite it considered half of the information. Regarding PDFF mean values at ROIs, MDWF-Net showed a better agreement with ground truth (regression slope = 0.94, R2 = 0.97) than U-Net (regression slope = 0.86, R2 = 0.93). Moreover, ANOVA post hoc analysis of STDs showed a statistical difference between graph cuts and U-Net (p <.05), unlike MDWF-Net (p =.53). Conclusion: MDWF-Net showed a liver PDFF accuracy comparable to the reference graph cut method, using only 3 echoes and thus allowing a reduction in the acquisition times. Clinical relevance statement: We have prospectively validated that the use of a multi-decoder convolutional neural network to estimate liver proton density fat fraction allows a significant reduction in MR scan time by reducing the number of echoes required by 50%. Key Points: • Novel water-fat separation neural network allows for liver PDFF estimation by using multi-echo MR images with a reduced number of echoes. • Prospective single-center validation demonstrated that echo reduction leads to a significant shortening of the scan time, compared to standard 6-echo acquisition. • Qualitative and quantitative performance of the proposed method showed no significant differences in PDFF estimation with respect to the reference technique.
KW - Biomarkers
KW - Deep leaning
KW - Liver
KW - Magnetic resonance imaging
KW - Non-alcoholic fatty Liver disease
UR - http://www.scopus.com/inward/record.url?scp=85151501971&partnerID=8YFLogxK
U2 - 10.1007/s00330-023-09576-2
DO - 10.1007/s00330-023-09576-2
M3 - Article
C2 - 37014405
AN - SCOPUS:85151501971
SN - 0938-7994
VL - 33
SP - 6557
EP - 6568
JO - European Radiology
JF - European Radiology
IS - 9
ER -