Motor evoked potentials (MEPs) are electrophysiological signals of crucial diagnostic and monitoring importance in neurology, neurosurgery, and rehabilitation medicine. Traditionally, feature extraction from MEP data has been based on manual control and measurements performed by trained clinicians according to established rules, a process that is inherently subjective, time-consuming, and subject to significant differences between observers. This article provides a comprehensive rationale for using convolutional neural network (CNN)-based approaches to extract MEP features. CNNs provide superior performance in key parameters, including accuracy, reproducibility, processing speed, and the ability to detect hidden morphological patterns that may escape human visual perception, compared to traditional manual methods. In addition, automated CNN-based analysis eliminates the variability between patients, allowing for real-time intraoperative monitoring. Performance estimates based on computer modeling and a structured comparative analysis of the two methods strongly confirm this statement. The introduction of CNNs represents a revolutionary step towards objective, scalable, and clinically reliable analysis that can standardize the interpretation of MEP in a variety of clinical settings and potentially improve patient outcomes through more consistent neurological assessment.
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Demigha Yousra
Email: demigha.yousra@mail.ru
ORCID |
National Research University of Technology "MISIS"
Moscow, Russian Federation
Lyapuntsova Elena Vyacheslavovna
Doctor of Engineering Sciences, Professor
Email: lev86@bmstu.ru
ORCID |
Bauman Moscow State Technical University
Moscow, Russian Federation