Electroencephalography (EEG) is a medical engineering technique aimed at recording the electric activity of the human brain. Brain signals derived from an EEG device can be processed and analyzed through computers by using digital signal processing, computational statistics, and machine learning techniques, that can lead to scientifically-relevant results and outcomes about how the brain works. In the last decades, the spread of EEG devices and the higher availability of EEG data, of computational resources, and of software packages for electroencephalography analysis has made EEG signal processing easier and faster to perform for any researcher worldwide. This increased ease to carry out computational analyses of EEG data, however, has made it easier to make mistakes, as well. And these mistakes, if unnoticed or treated wrongly, can in turn lead to wrong results or misleading outcomes, with worrisome consequences for patients and for the advancements of the knowledge about human brain. To tackle this problem, we present here our ten quick tips to perform electroencephalography signal processing analyses avoiding common mistakes: a short list of guidelines designed for beginners on what to do, how to do it, and what not to do when analyzing EEG data with a computer. We believe that following our quick recommendations can lead to better, more reliable and more robust results and outcome in clinical neuroscientific research.

Cisotto, G., Chicco, D. (2024). Ten quick tips for clinical electroencephalographic (EEG) data acquisition and signal processing. PEERJ. COMPUTER SCIENCE., 10, 1-25 [10.7717/PEERJ-CS.2256].

Ten quick tips for clinical electroencephalographic (EEG) data acquisition and signal processing

Cisotto G.;Chicco D.
2024

Abstract

Electroencephalography (EEG) is a medical engineering technique aimed at recording the electric activity of the human brain. Brain signals derived from an EEG device can be processed and analyzed through computers by using digital signal processing, computational statistics, and machine learning techniques, that can lead to scientifically-relevant results and outcomes about how the brain works. In the last decades, the spread of EEG devices and the higher availability of EEG data, of computational resources, and of software packages for electroencephalography analysis has made EEG signal processing easier and faster to perform for any researcher worldwide. This increased ease to carry out computational analyses of EEG data, however, has made it easier to make mistakes, as well. And these mistakes, if unnoticed or treated wrongly, can in turn lead to wrong results or misleading outcomes, with worrisome consequences for patients and for the advancements of the knowledge about human brain. To tackle this problem, we present here our ten quick tips to perform electroencephalography signal processing analyses avoiding common mistakes: a short list of guidelines designed for beginners on what to do, how to do it, and what not to do when analyzing EEG data with a computer. We believe that following our quick recommendations can lead to better, more reliable and more robust results and outcome in clinical neuroscientific research.
Articolo in rivista - Articolo scientifico
EEG; Electroencephalography; Medical signal processing; Quick tips; Signal processing;
English
3-set-2024
2024
10
1
25
open
Cisotto, G., Chicco, D. (2024). Ten quick tips for clinical electroencephalographic (EEG) data acquisition and signal processing. PEERJ. COMPUTER SCIENCE., 10, 1-25 [10.7717/PEERJ-CS.2256].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/515982
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