Henson, William (2023) Automatic muscle segmentation from MR images using deformable registration and deep learning approaches. PhD thesis, University of Sheffield.
Abstract
One in four people in the UK currently have one or more musculoskeletal disorder, impacting both work and social lives of individuals with them and incurring a burden on the national health service. Musculoskeletal disorders can affect one or both of the skeletal or the muscular system and where there is a substantial understanding of the mechanisms underpinning skeletal disorders, far less is currently understood regarding disorders affecting the muscular system. The challenge hindering our understanding of the mechanisms underpinning muscle disorders lies in the difficulty in measuring the physiological status of muscle tissue.
Muscle disorders vary widely in many ways, such as the causes, muscles affected, rate of progression, and even the treatment strategies for these disorders. Not only do muscle disorders differ in these areas when comparing each one to the others, but also, people with specific muscle disorders respond to them in different ways. For these reasons, subject-specific, quantitative characterisation of the muscles within subject measured in vivo could enhance the current diagnosis and treatment strategies for muscle disorders. Moreover, quantitative tools to measure the response of the muscle tissue to new treatments for muscle disorders within clinical trials would grant a more informed analysis of the efficacy of treatments. Quantitative analysis of muscle tissue has not yet been adopted into clinical practice but could impact both our understanding and ability to treat people with muscle disorders.
The aim of this thesis was to build, test, and analyse methods to automatically characterise the muscles from medical imaging data. Four methods have been detailed and explored to address the limitations associated with the current gold standard approach used to characterise the muscles from medical images. The outcome of the thesis is a general and complete overview of existing and novel methods to characterise muscles from medical images.
Future work should analyse the methods presented in this thesis and adopt that which is best suited to their study. The motivation and ambition behind the thesis are that the studies presented facilitate future research seeking to understand muscle disorders in a quantitative manner. In the long-term, the work presented in this thesis could promote clinical adoption of computational tools for characterising muscle disorders, leading to enhanced diagnosis and monitoring of such disorders.
Metadata
Supervisors: | Mazzà, Claudia and Dall'Ara, Enrico and Xinshan, Li |
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Related URLs: | |
Keywords: | Medical image processing, Deep learning, Image registration, Automatic segmentation, Muscle, Musculoskeletal. |
Awarding institution: | University of Sheffield |
Academic Units: | The University of Sheffield > Faculty of Engineering (Sheffield) > Mechanical Engineering (Sheffield) |
Depositing User: | Dr William Henson |
Date Deposited: | 27 Jun 2023 08:13 |
Last Modified: | 16 Jun 2024 00:05 |
Open Archives Initiative ID (OAI ID): | oai:etheses.whiterose.ac.uk:33034 |
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