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      Deep learning in fNIRS: a review

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          Abstract.

          Significance: Optical neuroimaging has become a well-established clinical and research tool to monitor cortical activations in the human brain. It is notable that outcomes of functional near-infrared spectroscopy (fNIRS) studies depend heavily on the data processing pipeline and classification model employed. Recently, deep learning (DL) methodologies have demonstrated fast and accurate performances in data processing and classification tasks across many biomedical fields.

          Aim: We aim to review the emerging DL applications in fNIRS studies.

          Approach: We first introduce some of the commonly used DL techniques. Then, the review summarizes current DL work in some of the most active areas of this field, including brain–computer interface, neuro-impairment diagnosis, and neuroscience discovery.

          Results: Of the 63 papers considered in this review, 32 report a comparative study of DL techniques to traditional machine learning techniques where 26 have been shown outperforming the latter in terms of the classification accuracy. In addition, eight studies also utilize DL to reduce the amount of preprocessing typically done with fNIRS data or increase the amount of data via data augmentation.

          Conclusions: The application of DL techniques to fNIRS studies has shown to mitigate many of the hurdles present in fNIRS studies such as lengthy data preprocessing or small sample sizes while achieving comparable or improved classification accuracy.

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                Author and article information

                Contributors
                Journal
                Neurophotonics
                Neurophotonics
                NEUROW
                NPh
                Neurophotonics
                Society of Photo-Optical Instrumentation Engineers
                2329-423X
                2329-4248
                20 July 2022
                October 2022
                20 July 2022
                : 9
                : 4
                : 041411
                Affiliations
                [1]Center for Modeling, Simulation and Imaging for Medicine , Rensselaer Polytechnic, Department of Biomedical Engineering, Troy, New York, United States
                Author notes
                [* ]Address all correspondence to Condell Eastmond, eastmc2@ 123456rpi.edu
                [†]

                These authors contributed equally to this work.

                Author information
                https://orcid.org/0000-0001-5868-4845
                Article
                NPh-22009SSVRR 22009SSVRR
                10.1117/1.NPh.9.4.041411
                9301871
                35874933
                ba535b49-e606-41dc-a4fe-6c80f6a1b233
                © 2022 The Authors

                Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.

                History
                : 26 January 2022
                : 22 June 2022
                Page count
                Figures: 8, Tables: 3, References: 110, Pages: 36
                Funding
                Funded by: NIH/National Institute of Biomedical Imaging and Bioengineering
                Award ID: 2R01EB005807
                Award ID: 5R01EB010037
                Award ID: 1R01EB009362
                Award ID: 1R01EB014305
                Award ID: R01EB019443
                Funded by: Medical Technology Enterprise Consortium
                Award ID: 20-05-IMPROVE-004
                Funded by: US Army Combat Capabilities Development Command
                Award ID: W912CG2120001
                Categories
                Special Section on Computational Approaches for Neuroimaging
                Paper
                Custom metadata
                Eastmond et al.: Deep learning in fNIRS: a review

                functional near-infrared spectroscopy,brain–machine interface,data processing,biophotonics,real-time imaging

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