A machine learning perspective on fNIRS signal quality control approaches
Despite a rise in the use of functional Near Infra-Red Spectroscopy (fNIRS) to study neural systems, fNIRS signal processing is not standardized and is highly affected by empirical and manual procedures. At the beginning of any signal processing procedure, Signal Quality Control (SQC) is critical to...
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sg-ntu-dr.10356-1630472023-03-05T15:34:07Z A machine learning perspective on fNIRS signal quality control approaches Bizzego, Andrea Neoh, Michelle Gabrieli, Giulio Esposito, Gianluca School of Social Sciences Division of Psychology Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Social sciences::Psychology Deep Learning fNIRS Machine Learning Signal Quality Control Despite a rise in the use of functional Near Infra-Red Spectroscopy (fNIRS) to study neural systems, fNIRS signal processing is not standardized and is highly affected by empirical and manual procedures. At the beginning of any signal processing procedure, Signal Quality Control (SQC) is critical to prevent errors and unreliable results. In fNIRS analysis, SQC currently relies on applying empirical thresholds to handcrafted Signal Quality Indicators (SQIs). In this study, we use a dataset of fNIRS signals (N = 1,340) recorded from 67 subjects, and manually label the signal quality of a subset of segments (N = 548) to investigate the pitfalls of current practices while exploring the opportunities provided by Deep Learning approaches. We show that SQIs statistically discriminate signals with bad quality, but the identification by means of empirical thresholds lacks sensitivity. Alternatively to manual thresholding, conventional machine learning models based on the SQIs have been proven more accurate, with end-to-end approaches, based on Convolutional Neural Networks, capable of further improving the performance. The proposed approach, based on machine learning, represents a more objective SQC for fNIRS and moves towards the use of fully automated and standardized procedures. Published version This work was supported in part by the Italian Ministry of University and Research through the Excellence Department Grant Awarded to the Department of Psychology and Cognitive Science, University of Trento, Italy, and in part by the European Union–FSE-REACT-EU, PON Research and Innovation 2014–2020 under Grant DM1062/2021. 2022-11-22T08:06:55Z 2022-11-22T08:06:55Z 2022 Journal Article Bizzego, A., Neoh, M., Gabrieli, G. & Esposito, G. (2022). A machine learning perspective on fNIRS signal quality control approaches. IEEE Transactions On Neural Systems and Rehabilitation Engineering, 30, 2292-2300. https://dx.doi.org/10.1109/TNSRE.2022.3198110 1534-4320 https://hdl.handle.net/10356/163047 10.1109/TNSRE.2022.3198110 30 2292 2300 en IEEE Transactions on Neural Systems and Rehabilitation Engineering © The authors. This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/. application/pdf |
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Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Social sciences::Psychology Deep Learning fNIRS Machine Learning Signal Quality Control Bizzego, Andrea Neoh, Michelle Gabrieli, Giulio Esposito, Gianluca A machine learning perspective on fNIRS signal quality control approaches |
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Despite a rise in the use of functional Near Infra-Red Spectroscopy (fNIRS) to study neural systems, fNIRS signal processing is not standardized and is highly affected by empirical and manual procedures. At the beginning of any signal processing procedure, Signal Quality Control (SQC) is critical to prevent errors and unreliable results. In fNIRS analysis, SQC currently relies on applying empirical thresholds to handcrafted Signal Quality Indicators (SQIs). In this study, we use a dataset of fNIRS signals (N = 1,340) recorded from 67 subjects, and manually label the signal quality of a subset of segments (N = 548) to investigate the pitfalls of current practices while exploring the opportunities provided by Deep Learning approaches. We show that SQIs statistically discriminate signals with bad quality, but the identification by means of empirical thresholds lacks sensitivity. Alternatively to manual thresholding, conventional machine learning models based on the SQIs have been proven more accurate, with end-to-end approaches, based on Convolutional Neural Networks, capable of further improving the performance. The proposed approach, based on machine learning, represents a more objective SQC for fNIRS and moves towards the use of fully automated and standardized procedures. |
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School of Social Sciences |
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School of Social Sciences Bizzego, Andrea Neoh, Michelle Gabrieli, Giulio Esposito, Gianluca |
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Article |
author |
Bizzego, Andrea Neoh, Michelle Gabrieli, Giulio Esposito, Gianluca |
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Bizzego, Andrea |
title |
A machine learning perspective on fNIRS signal quality control approaches |
title_short |
A machine learning perspective on fNIRS signal quality control approaches |
title_full |
A machine learning perspective on fNIRS signal quality control approaches |
title_fullStr |
A machine learning perspective on fNIRS signal quality control approaches |
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A machine learning perspective on fNIRS signal quality control approaches |
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machine learning perspective on fnirs signal quality control approaches |
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2022 |
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https://hdl.handle.net/10356/163047 |
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1759857022541496320 |