4.6 Article

Sparse Representation-Based Heartbeat Classification Using Independent Component Analysis

Journal

JOURNAL OF MEDICAL SYSTEMS
Volume 36, Issue 3, Pages 1235-1247

Publisher

SPRINGER
DOI: 10.1007/s10916-010-9585-x

Keywords

Electrocardiogram (ECG); Heartbeat classification; Sparse representation; l(1)-minimization; Independent component analysis (ICA)

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The classification of heartbeats is crucial to identify an arrhythmia. This paper proposes a new method that combines independent component analysis (ICA) with sparse representation-based classification (SRC) to distinguish eight types of heartbeats. We use ICA to extract useful features from heartbeats. A feature vector consists of 100 ICA features along with a RR interval. We use SRC to compute a sparse representation of a test feature vector with respect to all training feature vectors. The type of a test feature vector is determined using the concentration degree of sparse coefficients on each heartbeat type. For experimental purposes, 9800 heartbeats are extracted from the MIT-BIH electrocardiogram (ECG) database. The results show that our proposed method performs better than conventional methods, with 98.35% accuracy and 94.49%-100% sensitivities to several heartbeat types.

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