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Domain‐specific data augmentation for segmenting MR images of fatty infiltrated human thighs with neural networks
Author(s) -
Gadermayr Michael,
Li Kexin,
Müller Madlaine,
Truhn Daniel,
Krämer Nils,
Merhof Dorit,
Gess Burkhard
Publication year - 2019
Publication title -
journal of magnetic resonance imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.563
H-Index - 160
eISSN - 1522-2586
pISSN - 1053-1807
DOI - 10.1002/jmri.26544
Subject(s) - segmentation , sørensen–dice coefficient , wilcoxon signed rank test , computer science , artificial intelligence , convolutional neural network , pattern recognition (psychology) , artificial neural network , dice , image segmentation , mathematics , statistics , mann–whitney u test
Background Fat‐fraction has been established as a relevant marker for the assessment and diagnosis of neuromuscular diseases. For computing this metric, segmentation of muscle tissue in MR images is a first crucial step. Purpose To tackle the high degree of variability in combination with the high annotation effort for training supervised segmentation models (such as fully convolutional neural networks). Study Type Prospective. Subjects In all, 41 patients consisting of 20 patients showing fatty infiltration and 21 healthy subjects. Field Strength/Sequence: The T 1 ‐weighted MR‐pulse sequences were acquired on a 1.5T scanner. Assessment To increase performance with limited training data, we propose a domain‐specific technique for simulating fatty infiltrations (i.e., texture augmentation) in nonaffected subjects' MR images in combination with shape augmentation. For simulating the fatty infiltrations, we make use of an architecture comprising several competing networks (generative adversarial networks) that facilitate a realistic artificial conversion between healthy and infiltrated MR images. Finally, we assess the segmentation accuracy (Dice similarity coefficient). Statistical Tests A Wilcoxon signed rank test was performed to assess whether differences in segmentation accuracy are significant. Results The mean Dice similarity coefficients significantly increase from 0.84–0.88 ( P < 0.01) using data augmentation if training is performed with mixed data and from 0.59–0.87 ( P < 0.001) if training is conducted with healthy subjects only. Data Conclusion Domain‐specific data adaptation is highly suitable for facilitating neural network‐based segmentation of thighs with feasible manual effort for creating training data. The results even suggest an approach completely bypassing manual annotations. Level of Evidence: 4 Technical Efficacy: Stage 3