Single-Input Multi-Output U-Net for Automated 2D Foetal Brain Segmentation of MR Images.
Andrik RampunDeborah JarvisPaul D GriffithsReyer ZwiggelaarBryan W ScotneyPaul A ArmitagePublished in: Journal of imaging (2021)
In this work, we develop the Single-Input Multi-Output U-Net (SIMOU-Net), a hybrid network for foetal brain segmentation inspired by the original U-Net fused with the holistically nested edge detection (HED) network. The SIMOU-Net is similar to the original U-Net but it has a deeper architecture and takes account of the features extracted from each side output. It acts similar to an ensemble neural network, however, instead of averaging the outputs from several independently trained models, which is computationally expensive, our approach combines outputs from a single network to reduce the variance of predications and generalization errors. Experimental results using 200 normal foetal brains consisting of over 11,500 2D images produced Dice and Jaccard coefficients of 94.2 ± 5.9% and 88.7 ± 6.9%, respectively. We further tested the proposed network on 54 abnormal cases (over 3500 images) and achieved Dice and Jaccard coefficients of 91.2 ± 6.8% and 85.7 ± 6.6%, respectively.
Keyphrases
- deep learning
- convolutional neural network
- neural network
- optical coherence tomography
- resting state
- machine learning
- magnetic resonance
- gestational age
- functional connectivity
- high throughput
- computed tomography
- body composition
- patient safety
- brain injury
- blood brain barrier
- label free
- high intensity
- loop mediated isothermal amplification
- sensitive detection
- real time pcr
- case control