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Background and aim:
Neuromuscular diseases encompass a range of conditions affecting muscle cells, nerves, or the interaction between the two. A common pathological feature of these conditions is the pro-gressive replacement of muscle tissue with fat, which can be visualised using magnetic reso-nance imaging (MRI). MRI-based fat quantification serves as a key biomarker for disease characterisation, progression tracking, and treatment assessment. Currently, manual segmenta-tion of MRI scans for fat quantification is very time-consuming, requiring individual muscle delineation. Therefore, an artificial intelligence (AI) model is being developed to automate the segmentation. The aim of this study is to validate this AI model and assess its possibilities and limitations.
Method:
The study is ongoing. Retrospective MRI scans of patients with four different muscle diseases (anoctaminopathy, Becker muscular dystrophy, facioscapulohumeral muscular dystrophy, and hypokalemic periodic paralysis) are collected and manual delineation used for training the AI-model is being performed. The intramuscular fat fraction of individual muscles of the pelvis, thigh, and calf will be analysed using the AI model. The performance of the AI model will be compared to manual segmentation. The AI will be evaluated on metrics such as segmentation accuracy and time efficiency.
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| Label | Type | Description | Intervention Names |
|---|---|---|---|
| Becker muscular dystrophy | MRI scans |
| |
| HypoPP | MRI scans |
| |
| FSHD | MRI scans |
|
| Name | Type | Description | Arm Group Labels | Other Names |
|---|---|---|---|---|
| No intervention | Other | No intervention. |
|
| Measure | Description | Time Frame |
|---|---|---|
| Difference in fat fraction between manual and AI outlining. | The mean difference in MRI assessed intramuscular fat fraction in the lower back, thigh, and calf muscles between manual outlining and the outlining by the AI model. | Analysis of the muscle fat fraction takes 1 hour per patient. |
| Measure | Description | Time Frame |
|---|---|---|
| Correlation between Manual/AI outlining discrepancies and disease severity | Investigate if the difference between manual outlining and AI outlining increases the more advanced stage the disease is. A correlation analysis will be made between manual/AI differences and fat fraction in lower back, thigh, and calf. | The analysis of the MRI takes around an hour |
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Inclusion Criteria:
Exclusion Criteria:
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Patients will be recruited from Copenhagen Neuromuscular Centre.
| Name | Role | Phone | Extension | |
|---|---|---|---|---|
| Bjørk Teitsdóttir, Medical student | Contact | +4535456135 | bjoerk.teitsdottir@regionh.dk | |
| John Vissing, Professor | Contact |
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| ID | Term |
|---|---|
| D020388 | Muscular Dystrophy, Duchenne |
| D020391 | Muscular Dystrophy, Facioscapulohumeral |
| D020514 | Hypokalemic Periodic Paralysis |
| ID | Term |
|---|---|
| D009136 | Muscular Dystrophies |
| D020966 | Muscular Disorders, Atrophic |
| D009135 | Muscular Diseases |
| D009140 | Musculoskeletal Diseases |
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| D009468 | Neuromuscular Diseases |
| D009422 | Nervous System Diseases |
| D040181 | Genetic Diseases, X-Linked |
| D030342 | Genetic Diseases, Inborn |
| D009358 | Congenital, Hereditary, and Neonatal Diseases and Abnormalities |
| D010245 | Paralyses, Familial Periodic |
| D008664 | Metal Metabolism, Inborn Errors |
| D008661 | Metabolism, Inborn Errors |
| D008659 | Metabolic Diseases |
| D009750 | Nutritional and Metabolic Diseases |