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Learning based motion artifacts processing in fNIRS: a mini review

Zhao, Yunyi; Luo, Haiming; Chen, Jianan; Loureiro, Rui; Yang, Shufan; Zhao, Hubin

Authors

Yunyi Zhao

Haiming Luo

Jianan Chen

Rui Loureiro

Shufan Yang

Hubin Zhao



Abstract

This paper provides a concise review of learning-based motion artifacts (MA) processing methods in functional near-infrared spectroscopy (fNIRS), highlighting the challenges of maintaining optimal contact during subject movement, which can lead to MA and compromise data integrity. Traditional strategies often result in reduced reliability of the hemodynamic response and statistical power. Recognizing the limited number of studies focusing on learning-based MA removal, we examine 315 studies, identifying seven pertinent to our focus area. We discuss the current landscape of learning-based MA correction methods and highlight research gaps. Noting the absence of standard evaluation metrics for quality assessment of MA correction, we suggest a novel framework, integrating signal and model quality considerations and employing metrics like ΔSignal-to-Noise Ratio (ΔSNR), confusion matrix, and Mean Squared Error. This work aims to facilitate the application of learning-based methodologies to fNIRS and improve the accuracy and reliability of neurovascular studies.

Citation

Zhao, Y., Luo, H., Chen, J., Loureiro, R., Yang, S., & Zhao, H. (2023). Learning based motion artifacts processing in fNIRS: a mini review. Frontiers in Neuroscience, 17, Article 1280590. https://doi.org/10.3389/fnins.2023.1280590

Journal Article Type Article
Acceptance Date Oct 11, 2023
Online Publication Date Nov 8, 2023
Publication Date 2023
Deposit Date Jan 10, 2024
Publicly Available Date Jan 10, 2024
Journal Frontiers in Neuroscience
Print ISSN 1662-4548
Publisher Frontiers Media
Peer Reviewed Peer Reviewed
Volume 17
Article Number 1280590
DOI https://doi.org/10.3389/fnins.2023.1280590
Keywords fNIRS, evaluation matrix, machine learning, motion artifacts, deep learning, brain-computer interfaces
Public URL http://researchrepository.napier.ac.uk/Output/3402054

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