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Published in: BMC Neurology 1/2021

Open Access 01-12-2021 | Magnetic Resonance Imaging | Research article

A deep learning model for diagnosing dystrophinopathies on thigh muscle MRI images

Authors: Mei Yang, Yiming Zheng, Zhiying Xie, Zhaoxia Wang, Jiangxi Xiao, Jue Zhang, Yun Yuan

Published in: BMC Neurology | Issue 1/2021

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Abstract

Background

Dystrophinopathies are the most common type of inherited muscular diseases. Muscle biopsy and genetic tests are effective to diagnose the disease but cost much more than primary hospitals can reach. The more available muscle MRI is promising but its diagnostic results highly depends on doctors’ experiences. This study intends to explore a way of deploying a deep learning model for muscle MRI images to diagnose dystrophinopathies.

Methods

This study collected 2536 T1WI images from 432 cases who had been diagnosed by genetic analysis and/or muscle biopsy, including 148 cases with dystrophinopathies and 284 cases with other diseases. The data was randomly divided into three sets: the data from 233 cases were used to train the CNN model, the data from 97 cases for the validation experiments, and the data from 102 cases for the test experiments. We also validated our models expertise at diagnosing by comparing the model’s results on the 102 cases with those of three skilled radiologists.

Results

The proposed model achieved 91% (95% CI: 0.88, 0.93) accuracy on the test set, higher than the best accuracy of 84% in radiologists. It also performed better than the skilled radiologists in sensitivity : sensitivities of the models and the doctors were 0.89 (95% CI: 0.85 0.93) versus 0.79 (95% CI:0.73, 0.84; p = 0.190).

Conclusions

The deep model achieved excellent accuracy and sensitivity in identifying cases with dystrophinopathies. The comparable performance of the model and skilled radiologists demonstrates the potential application of the model in diagnosing dystrophinopathies through MRI images.
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Metadata
Title
A deep learning model for diagnosing dystrophinopathies on thigh muscle MRI images
Authors
Mei Yang
Yiming Zheng
Zhiying Xie
Zhaoxia Wang
Jiangxi Xiao
Jue Zhang
Yun Yuan
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Neurology / Issue 1/2021
Electronic ISSN: 1471-2377
DOI
https://doi.org/10.1186/s12883-020-02036-0

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