Author
Listed:
- Seung Hyeun Lee
- Sanghyuck Lee
- Jaesung Lee
- Jeong Kyu Lee
- Nam Ju Moon
Abstract
Purpose: To propose a neural network (NN) that can effectively segment orbital tissue in computed tomography (CT) images of Graves’ orbitopathy (GO) patients. Methods: We analyzed orbital CT scans from 701 GO patients diagnosed between 2010 and 2019 and devised an effective NN specializing in semantic orbital tissue segmentation in GO patients’ CT images. After four conventional (Attention U-Net, DeepLab V3+, SegNet, and HarDNet-MSEG) and the proposed NN train the various manual orbital tissue segmentations, we calculated the Dice coefficient and Intersection over Union for comparison. Results: CT images of the eyeball, four rectus muscles, the optic nerve, and the lacrimal gland tissues from all 701 patients were analyzed in this study. In the axial image with the largest eyeball area, the proposed NN achieved the best performance, with Dice coefficients of 98.2% for the eyeball, 94.1% for the optic nerve, 93.0% for the medial rectus muscle, and 91.1% for the lateral rectus muscle. The proposed NN also gave the best performance for the coronal image. Our qualitative analysis demonstrated that the proposed NN outputs provided more sophisticated orbital tissue segmentations for GO patients than the conventional NNs. Conclusion: We concluded that our proposed NN exhibited an improved CT image segmentation for GO patients over conventional NNs designed for semantic segmentation tasks.
Suggested Citation
Seung Hyeun Lee & Sanghyuck Lee & Jaesung Lee & Jeong Kyu Lee & Nam Ju Moon, 2023.
"Effective encoder-decoder neural network for segmentation of orbital tissue in computed tomography images of Graves’ orbitopathy patients,"
PLOS ONE, Public Library of Science, vol. 18(5), pages 1-13, May.
Handle:
RePEc:plo:pone00:0285488
DOI: 10.1371/journal.pone.0285488
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