Abstract
Abstract
Objective
In this study we address the automatic segmentation of selected muscles of the thigh and leg through a supervised deep learning approach.
Material and methods
The application of quantitative imaging in neuromuscular diseases requires the availability of regions of interest (ROI) drawn on muscles to extract quantitative parameters. Up to now, manual drawing of ROIs has been considered the gold standard in clinical studies, with no clear and universally accepted standardized procedure for segmentation. Several automatic methods, based mainly on machine learning and deep learning algorithms, have recently been proposed to discriminate between skeletal muscle, bone, subcutaneous and intermuscular adipose tissue. We develop a supervised deep learning approach based on a unified framework for ROI segmentation.
Results
The proposed network generates segmentation maps with high accuracy, consisting in Dice Scores ranging from 0.89 to 0.95, with respect to “ground truth” manually segmented labelled images, also showing high average performance in both mild and severe cases of disease involvement (i.e. entity of fatty replacement).
Discussion
The presented results are promising and potentially translatable to different skeletal muscle groups and other MRI sequences with different contrast and resolution.
Funder
italian ministry of health
Università degli Studi di Pavia
Publisher
Springer Science and Business Media LLC
Subject
Radiology Nuclear Medicine and imaging,Radiological and Ultrasound Technology,Biophysics
Cited by
19 articles.
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