The optimisation of deep neural networks for segmenting multiple knee joint tissues from MRIs

•A conditional Generative Adversarial Network (cGAN) is optimised for automated segmentation of multiple knee joint tissues.•This work quantitatively compares the cGAN with the widely used U-Net approach for semantic image segmentation.•Transfer learning for improved segmentation performance of an i...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Computerized medical imaging and graphics 2020-12, Vol.86, p.101793-101793, Article 101793
Hauptverfasser: Kessler, Dimitri A., MacKay, James W., Crowe, Victoria A., Henson, Frances M.D., Graves, Martin J., Gilbert, Fiona J., Kaggie, Joshua D.
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:•A conditional Generative Adversarial Network (cGAN) is optimised for automated segmentation of multiple knee joint tissues.•This work quantitatively compares the cGAN with the widely used U-Net approach for semantic image segmentation.•Transfer learning for improved segmentation performance of an in-house dataset is explored.•Pretraining on the SKI10 / OAI ZIB datasets increased segmentation accuracy and preserved segmentation capabilities of the previous training. Automated semantic segmentation of multiple knee joint tissues is desirable to allow faster and more reliable analysis of large datasets and to enable further downstream processing e.g. automated diagnosis. In this work, we evaluate the use of conditional Generative Adversarial Networks (cGANs) as a robust and potentially improved method for semantic segmentation compared to other extensively used convolutional neural network, such as the U-Net. As cGANs have not yet been widely explored for semantic medical image segmentation, we analysed the effect of training with different objective functions and discriminator receptive field sizes on the segmentation performance of the cGAN. Additionally, we evaluated the possibility of using transfer learning to improve the segmentation accuracy. The networks were trained on i) the SKI10 dataset which comes from the MICCAI grand challenge “Segmentation of Knee Images 2010″, ii) the OAI ZIB dataset containing femoral and tibial bone and cartilage segmentations of the Osteoarthritis Initiative cohort and iii) a small locally acquired dataset (Advanced MRI of Osteoarthritis (AMROA) study) consisting of 3D fat-saturated spoiled gradient recalled-echo knee MRIs with manual segmentations of the femoral, tibial and patellar bone and cartilage, as well as the cruciate ligaments and selected peri-articular muscles. The Sørensen–Dice Similarity Coefficient (DSC), volumetric overlap error (VOE) and average surface distance (ASD) were calculated for segmentation performance evaluation. DSC ≥ 0.95 were achieved for all segmented bone structures, DSC ≥ 0.83 for cartilage and muscle tissues and DSC of ≈0.66 were achieved for cruciate ligament segmentations with both cGAN and U-Net on the in-house AMROA dataset. Reducing the receptive field size of the cGAN discriminator network improved the networks segmentation performance and resulted in segmentation accuracies equivalent to those of the U-Net. Pretraining not only increased segmentation accuracy of a few knee joint t
ISSN:0895-6111
1879-0771
DOI:10.1016/j.compmedimag.2020.101793