Abstract

Biomedical signals are measurable time series that describe a physiological state of a biological system. Entropy algorithms have been previously used to quantify the complexity of biomedical signals, but there is a need to understand the relationship of entropy to signal processing concepts. In this study, ten synthetic signals that represent widely encountered signal structures in the field of signal processing were created to interpret permutation, modified permutation, sample, quadratic sample and fuzzy entropies. Subsequently, the entropy algorithms were applied to two different databases containing electroencephalogram (EEG) signals from epilepsy studies. Transitions from randomness to periodicity were successfully detected in the synthetic signals, while significant differences in EEG signals were observed based on different regions and states of the brain. In addition, using results from one entropy algorithm as features and the k-nearest neighbours algorithm, maximum classification accuracies in the first EEG database ranged from 63% to 73.5%, while these values increased by approximately 20% when using two different entropies as features. For the second database, maximum classification accuracy reached 62.5% using one entropy algorithm, while using two algorithms as features further increased that by 10%. Embedding entropies (sample, quadratic sample and fuzzy entropies) are found to outperform the rest of the algorithms in terms of sensitivity and show greater potential by considering the fine-tuning possibilities they offer. On the other hand, permutation and modified permutation entropies are more consistent across different input parameter values and considerably faster to calculate.

Highlights

  • In a biomedical context, a signal describes a physiological state of a biological system that is part of a biological organism under investigation

  • Permutation and modified permutation entropies are more consistent across different input parameter values and considerably faster to calculate

  • Permutation entropy (PEn) is linearly affected by the change in the frequency of a pure sinusoid, yet this effect is unchanged if amplitude modulation is added to it

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Summary

Introduction

A signal describes a physiological state of a biological system that is part of a biological organism under investigation The interpretation of those signals is not always trivial, due to either their nature, or the underlying physiological system that generates the signal. For this reason, feature extracting methods have been developed in order to uniquely identify different signal characteristics [1]. A third category can be the combination of these two; in this way the advantages of both are combined or limitations are cancelled out. An example in this category is the wavelet transform (WT)

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