Author:
Moser Florentin,Muller Sébastien,Lie Torgrim,Langø Thomas,Hoff Mari
Abstract
AbstractMachine learning and deep learning are novel methods which are revolutionizing medical imaging. In our study we trained an algorithm with a U-Net shaped network to recognize ultrasound images of the median nerve in the complete distal half of the forearm and to measure the cross-sectional area at the inlet of the carpal tunnel. Images of 25 patient hands with carpal tunnel syndrome (CTS) and 26 healthy controls were recorded on a video loop covering 15 cm of the distal forearm and 2355 images were manually segmented. We found an average Dice score of 0.76 between manual and automated segmentation of the median nerve in its complete course, while the measurement of the cross-sectional area at the carpal tunnel inlet resulted in a 10.9% difference between manually and automated measurements. We regard this technology as a suitable device for verifying the diagnosis of CTS.
Funder
Joint research Committee
The Norwegian Medical Association
Grethe Harbitz Legate
NTNU Norwegian University of Science and Technology
Publisher
Springer Science and Business Media LLC