Authors
MR Tannemaat, M Kefalas, VJ Geraedts, L Remijn-Nelissen, AJM Verschuuren, M Koch, AV Kononova, H Wang, THW Bäck
Publication date
2023/2/1
Journal
Clinical Neurophysiology
Volume
146
Pages
49-54
Publisher
Elsevier
Description
Objective
Distinguishing normal, neuropathic and myopathic electromyography (EMG) traces can be challenging. We aimed to create an automated time series classification algorithm.
Methods
EMGs of healthy controls (HC, n = 25), patients with amyotrophic lateral sclerosis (ALS, n = 20) and inclusion body myositis (IBM, n = 20), were retrospectively selected based on longitudinal clinical follow-up data (ALS and HC) or muscle biopsy (IBM). A machine learning pipeline was applied based on 5-second EMG fragments of each muscle. Diagnostic yield expressed as area under the curve (AUC) of a receiver-operator characteristics curve, accuracy, sensitivity, and specificity were determined per muscle (muscle-level) and per patient (patient-level).
Results
Diagnostic yield of the classification ALS vs. HC was: AUC 0.834 ± 0.014 at muscle-level and 0.856 ± 0.009 at patient-level. For the classification HC vs. IBM, AUC …
Total citations
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