Automatic Classification of Neuromuscular Diseases in Children Using
Photoacoustic Imaging
- URL: http://arxiv.org/abs/2201.11630v1
- Date: Thu, 27 Jan 2022 16:37:19 GMT
- Title: Automatic Classification of Neuromuscular Diseases in Children Using
Photoacoustic Imaging
- Authors: Maja Schlereth, Daniel Stromer, Katharina Breininger, Alexandra
Wagner, Lina Tan, Andreas Maier, Ferdinand Knieling
- Abstract summary: Neuromuscular diseases (NMDs) cause a significant burden for both healthcare systems and society.
They can lead to severe progressive muscle weakness, muscle degeneration, contracture, deformity and progressive disability.
- Score: 77.32032399775152
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Neuromuscular diseases (NMDs) cause a significant burden for both healthcare
systems and society. They can lead to severe progressive muscle weakness,
muscle degeneration, contracture, deformity and progressive disability. The
NMDs evaluated in this study often manifest in early childhood. As subtypes of
disease, e.g. Duchenne Muscular Dystropy (DMD) and Spinal Muscular Atrophy
(SMA), are difficult to differentiate at the beginning and worsen quickly, fast
and reliable differential diagnosis is crucial. Photoacoustic and ultrasound
imaging has shown great potential to visualize and quantify the extent of
different diseases. The addition of automatic classification of such image data
could further improve standard diagnostic procedures. We compare deep
learning-based 2-class and 3-class classifiers based on VGG16 for
differentiating healthy from diseased muscular tissue. This work shows
promising results with high accuracies above 0.86 for the 3-class problem and
can be used as a proof of concept for future approaches for earlier diagnosis
and therapeutic monitoring of NMDs.
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