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Deep-Learning-Based Segmentation of Extraocular Muscles from Magnetic Resonance Images.

Amad QureshiSeongjin LimSoh Youn SuhBassam MutawakParag V ChitnisJoseph L DemerQi Wei
Published in: Bioengineering (Basel, Switzerland) (2023)
In this study, we investigated the performance of four deep learning frameworks of U-Net, U-NeXt, DeepLabV3+, and ConResNet in multi-class pixel-based segmentation of the extraocular muscles (EOMs) from coronal MRI. Performances of the four models were evaluated and compared with the standard F-measure-based metrics of intersection over union (IoU) and Dice, where the U-Net achieved the highest overall IoU and Dice scores of 0.77 and 0.85, respectively. Centroid distance offset between identified and ground truth EOM centroids was measured where U-Net and DeepLabV3+ achieved low offsets ( p > 0.05) of 0.33 mm and 0.35 mm, respectively. Our results also demonstrated that segmentation accuracy varies in spatially different image planes. This study systematically compared factors that impact the variability of segmentation and morphometric accuracy of the deep learning models when applied to segmenting EOMs from MRI.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • magnetic resonance
  • machine learning
  • contrast enhanced
  • diffusion weighted imaging
  • high resolution