BP-Neural Network based- characterization of Electrographic Magnetohydrodynamic Signals in MR

Abstract

Abstract—Electrocardiographic (ECG) signal collected during magnetic resonance (MR) imaging is affected by signal artifact because magnetic fields produce competing signals, from moving conductors in the large vessels. That is called the magnetohydrodynamic effect, which makes it difficult to recognize ST-T changes from ECG signal collected in a magnetic field (MRI). Resolving that problem is important both for accurate triggering (elimination of false triggers from tall peaked T waves) and for monitoring (identifying if or when patient develops ischemia or myocardial injury). This paper describes an algorithm based on neural network that is designed to cancel this artifact for ECG signal acquired during MR imaging. Keywords—Neural Network, ECG, magnetohydrodynamic effect, aorta model, Source separatio

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