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Deep convolutional neural networks with multiplane consensus labeling for lung function quantification using UTE proton MRI.
- Source :
-
Journal of magnetic resonance imaging : JMRI [J Magn Reson Imaging] 2019 Oct; Vol. 50 (4), pp. 1169-1181. Date of Electronic Publication: 2019 Apr 04. - Publication Year :
- 2019
-
Abstract
- Background: Ultrashort echo time (UTE) proton MRI has gained popularity for assessing lung structure and function in pulmonary imaging; however, the development of rapid biomarker extraction and regional quantification has lagged behind due to labor-intensive lung segmentation.<br />Purpose: To evaluate a deep learning (DL) approach for automated lung segmentation to extract image-based biomarkers from functional lung imaging using 3D radial UTE oxygen-enhanced (OE) MRI.<br />Study Type: Retrospective study aimed to evaluate a technical development.<br />Population: Forty-five human subjects, including 16 healthy volunteers, 5 asthma, and 24 patients with cystic fibrosis.<br />Field Strength/sequence: 1.5T MRI, 3D radial UTE (TE = 0.08 msec) sequence.<br />Assessment: Two 3D radial UTE volumes were acquired sequentially under normoxic (21% O <subscript>2</subscript> ) and hyperoxic (100% O <subscript>2</subscript> ) conditions. Automated segmentation of the lungs using 2D convolutional encoder-decoder based DL method, and the subsequent functional quantification via adaptive K-means were compared with the results obtained from the reference method, supervised region growing.<br />Statistical Tests: Relative to the reference method, the performance of DL on volumetric quantification was assessed using Dice coefficient with 95% confidence interval (CI) for accuracy, two-sided Wilcoxon signed-rank test for computation time, and Bland-Altman analysis on the functional measure derived from the OE images.<br />Results: The DL method produced strong agreement with supervised region growing for the right (Dice: 0.97; 95% CI = [0.96, 0.97]; P < 0.001) and left lungs (Dice: 0.96; 95% CI = [0.96, 0.97]; P < 0.001). The DL method averaged 46 seconds to generate the automatic segmentations in contrast to 1.93 hours using the reference method (P < 0.001). Bland-Altman analysis showed nonsignificant intermethod differences of volumetric (P ≥ 0.12) and functional measurements (P ≥ 0.34) in the left and right lungs.<br />Data Conclusion: DL provides rapid, automated, and robust lung segmentation for quantification of regional lung function using UTE proton MRI.<br />Level of Evidence: 2 Technical Efficacy: Stage 1 J. Magn. Reson. Imaging 2019;50:1169-1181.<br /> (© 2019 International Society for Magnetic Resonance in Medicine.)
- Subjects :
- Adult
Asthma physiopathology
Cystic Fibrosis physiopathology
Female
Humans
Imaging, Three-Dimensional methods
Male
Neural Networks, Computer
Protons
Retrospective Studies
Asthma diagnostic imaging
Cystic Fibrosis diagnostic imaging
Image Interpretation, Computer-Assisted methods
Lung diagnostic imaging
Lung physiopathology
Magnetic Resonance Imaging methods
Subjects
Details
- Language :
- English
- ISSN :
- 1522-2586
- Volume :
- 50
- Issue :
- 4
- Database :
- MEDLINE
- Journal :
- Journal of magnetic resonance imaging : JMRI
- Publication Type :
- Academic Journal
- Accession number :
- 30945385
- Full Text :
- https://doi.org/10.1002/jmri.26734