White Matter Segmentation from Cranial Ultrasound Images based on Convolutional Neural Network

2019 
White matter damage (WMD) is one of the most common consequences of preterm newborns, which may cause long-term neurodevelopmental deficits, such as cerebral palsy, abnormal audio-visual function, cognitive impairment, etc. Segmentation of white matter plays an important role in WMD detection and intervention. Manual segmentation of white matter is tedious and may cause inter- or intra-observer variability. In this work, ultrasound images from 148 premature infants were segmented using three convolutional neural networks, FCN, Unet and residual-structured fully convolutional network (res-FCN). Each preterm newborn collected three cross sections images from ultrasound. By comparison, the results showed that res-FCN had the most evaluation metrics with the best performance: Precision 78.94%, AD 26.54% on the lateral ventricle anterior horn plane; Recall 80.62%, Precision 77.09%, AO 63.00%, DSC 75.95% on the coronal lateral ventricle body plane; Recall 86.00%, AO 71.10% on the occipital lobe plane.
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