| Literature DB >> 33931286 |
Raymond T Festen1, Verena J M M Schrier2, Peter C Amadio3.
Abstract
Nerve area and motion in carpal tunnel syndrome (CTS) are currently under investigation in terms of prognostic potential. Therefore, there is increasing interest in non-invasive measurement of the nerve using ultrasound. Manual segmentation is time consuming and subject to inter-rater variation, providing an opportunity for automation. Dynamic ultrasound images (n = 5560) of carpal tunnels from 99 clinically diagnosed CTS patients were used to train a U-Net-shaped neural network. The best results from the U-Net were achieved with a location primer as initial region of interest for the segmentations during finger flexion (Dice coefficient = 0.88). This is comparable to the manual Dice measure of 0.92 and higher than the resulting automated Dice measure of wrist flexion (0.81). Although there is a dependency on image quality, a trained U-Net can reliably be used in the assessment of ultrasound-acquired median nerve size and mobility, considerably decreasing manual effort.Entities:
Keywords: Carpal tunnel; Median nerve; Segmentation; U-Net; Ultrasound
Mesh:
Year: 2021 PMID: 33931286 PMCID: PMC8169596 DOI: 10.1016/j.ultrasmedbio.2021.03.018
Source DB: PubMed Journal: Ultrasound Med Biol ISSN: 0301-5629 Impact factor: 3.694