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- Automated_Machine_Learning_for_the_Classification_of_Normal_and_Abnormal_Electromyography_Data
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Automated machine learning for the classification of normal and abnormal electromyography data
muscle diseases (myopathies) differ from the signal in healthy controls. A major drawback of this examination is that it relies on visual inspection and as such, it is highly subjective and prone to errors. Based on EMG time series of 65 individuals (40 with ALS/IBM and 25 healthy), we aim to develop an automated machine-learning pipeline for the classification of EMG recordings of muscles in either disease or healthy (muscle-
level). The automated pipeline consists of feature extraction, feature selection, modelling algorithm, and optimization, in which the most significant features are automatically selected from the feature space and the hyperparameters of the model...Show moreNeedle electromyography (EMG) is a common technique used in clinical neurophysiology to record the electrical activity of muscles at different levels of activation. It can be used to diagnose various neurological/muscular disorders, as the EMG signals of patients with both nerve diseases (neuropathies) and
muscle diseases (myopathies) differ from the signal in healthy controls. A major drawback of this examination is that it relies on visual inspection and as such, it is highly subjective and prone to errors. Based on EMG time series of 65 individuals (40 with ALS/IBM and 25 healthy), we aim to develop an automated machine-learning pipeline for the classification of EMG recordings of muscles in either disease or healthy (muscle-
level). The automated pipeline consists of feature extraction, feature selection, modelling algorithm, and optimization, in which the most significant features are automatically selected from the feature space and the hyperparameters of the model are optimized by a Bayesian technique as part of the automated
approach. Aside from the muscle-level approach, we also explore a patient-level approach, which uses the output of the muscle-level automated pipeline in a post-processing manner to classify patients in being either disease or healthy, based on their muscle recordings. The resulting two approaches yield an AUC score
of 81.7% (muscle-level) and 81.5% (patient-level), indicating that such approaches can assist clinicians in diagnosing if a patient has a neuropathy/myopathy or is healthy.
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- All authors
- Kefalas, M.; Koch, M.; Geraedts, V.J.; Wang, H.; Tannemaat, M.; Bäck, T.H.W.
- Date
- 2020
- Title of host publication
- 2020 IEEE International Conference on Big Data (Big Data)
- Pages
- 1176 - 1185
- ISBN (print)
- 9781728162522
- ISBN (electronic)
- 9781728162515
Conference
- Conference
- 2020 IEEE International Conference on Big Data (IEEE BigData 2020)
- Date
- 2020-12-10 - 2020-12-13
- Location
- Atlanta, United States of America