| Literature DB >> 32394453 |
Ekaterina Brui1, Aleksandr Y Efimtcev1,2, Vladimir A Fokin1,2, Remi Fernandez3, Anatoliy G Levchuk2, Augustin C Ogier4, Alexey A Samsonov5, Jean P Mattei4,6, Irina V Melchakova1, David Bendahan4, Anna Andreychenko1,7.
Abstract
The study objective was to investigate the performance of a dedicated convolutional neural network (CNN) optimized for wrist cartilage segmentation from 2D MR images. CNN utilized a planar architecture and patch-based (PB) training approach that ensured optimal performance in the presence of a limited amount of training data. The CNN was trained and validated in 20 multi-slice MRI datasets acquired with two different coils in 11 subjects (healthy volunteers and patients). The validation included a comparison with the alternative state-of-the-art CNN methods for the segmentation of joints from MR images and the ground-truth manual segmentation. When trained on the limited training data, the CNN outperformed significantly image-based and PB-U-Net networks. Our PB-CNN also demonstrated a good agreement with manual segmentation (Sørensen-Dice similarity coefficient [DSC] = 0.81) in the representative (central coronal) slices with a large amount of cartilage tissue. Reduced performance of the network for slices with a very limited amount of cartilage tissue suggests the need for fully 3D convolutional networks to provide uniform performance across the joint. The study also assessed inter- and intra-observer variability of the manual wrist cartilage segmentation (DSC = 0.78-0.88 and 0.9, respectively). The proposed deep learning-based segmentation of the wrist cartilage from MRI could facilitate research of novel imaging markers of wrist osteoarthritis to characterize its progression and response to therapy.Entities:
Keywords: applications, cartilage, human study, methods and engineering, musculoskeletal, postacquisition processing, quantitation
Year: 2020 PMID: 32394453 PMCID: PMC7784718 DOI: 10.1002/nbm.4320
Source DB: PubMed Journal: NMR Biomed ISSN: 0952-3480 Impact factor: 4.044