Machine-Learning-Based Prediction of Photobiomodulation Effects on Older Adults With Cognitive Decline Using Functional Near-Infrared Spectroscopy

被引:1
作者
Lee, Kyeonggu [1 ]
Chun, Minyoung [1 ]
Jung, Bori [2 ]
Kim, Yunsu [3 ]
Yang, Chaeyoun [3 ]
Choi, Jongkwan [4 ]
Cha, Jihyun [4 ]
Lee, Seung-Hwan [3 ]
Im, Chang-Hwan [5 ]
机构
[1] Hanyang Univ, Dept Elect Engn, Seoul 04763, South Korea
[2] Inje Univ, Ilsan Paik Hosp, Clin Emot & Cognit Res Lab, Goyang 10380, South Korea
[3] Inje Univ, Ilsan Paik Hosp, Dept Psychiat, Goyang 10380, South Korea
[4] OBELAB Inc, Seoul 06211, South Korea
[5] Hanyang Univ, Dept Biomed Engn, Seoul 04763, South Korea
关键词
Functional near-infrared spectroscopy; Measurement; Hospitals; Older adults; Hemodynamics; Photodetectors; Machine learning; Sensitivity; Reviews; Psychiatry; Cognitive decline; older adults; functional near-infrared spectroscopy; photobiomodulation; machine learning; TRANSCRANIAL PHOTOBIOMODULATION; CONNECTIVITY;
D O I
10.1109/TNSRE.2024.3469284
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Transcranial photobiomodulation (tPBM) has been widely studied for its potential to enhance cognitive functions of the elderly. However, its efficacy varies, with some individuals exhibiting no significant response to the treatment. Considering these inconsistencies, we introduce a machine learning approach aimed at distinguishing between individuals that respond and do not respond to tPBM treatment based on functional near-infrared spectroscopy (fNIRS) acquired before the treatment. We measured nine cognitive scores and recorded fNIRS data from 62 older adults with cognitive decline (43 experimental and 19 control subjects). The experimental group underwent tPBM intervention over a span of 12 weeks. Based on the comparison of the global cognitive score (GCS), merging the nine cognitive scores into a single representation, acquired before and after tPBM treatment, we classified all participants as responders or non-responders to tPBM with a threshold for the GCS change. The fNIRS data were recorded during the resting state, recognition memory task (RMT), Stroop task, and verbal fluency task. A regularized support vector machine was utilized to classify the responders and non-responders to tPBM. The most promising performance of our machine learning model was observed when using the fNIRS data collected during the RMT, which yielded an accuracy of 0.8537, an F1-score of 0.8421, sensitivity of 0.7619, and specificity of 0.95. To the best of our knowledge, this is the first study to demonstrate the feasibility of predicting the tPBM efficacy. Our approach is expected to contribute to more efficient treatment planning by excluding ineffective treatment options.
引用
收藏
页码:3710 / 3718
页数:9
相关论文
共 50 条
  • [21] Prediction of pellet quality through machine learning techniques and near-infrared spectroscopy
    Mancini, Manuela
    Mircoli, Alex
    Potena, Domenico
    Diamantini, Claudia
    Duca, Daniele
    Toscano, Giuseppe
    COMPUTERS & INDUSTRIAL ENGINEERING, 2020, 147
  • [22] Application of Near-Infrared Spectroscopy for Rice Characterization Using Machine Learning
    Rizwana S.
    Hazarika M.K.
    Journal of The Institution of Engineers (India): Series A, 2020, 101 (04) : 579 - 587
  • [23] Diagnostic machine learning applications on clinical populations using functional near infrared spectroscopy: a review
    Eken, Aykut
    Nassehi, Farhad
    Erogul, Osman
    REVIEWS IN THE NEUROSCIENCES, 2024, 35 (04) : 421 - 449
  • [24] Effects of Acupuncture Therapy on MCI Patients Using Functional Near-Infrared Spectroscopy
    Ghafoor, Usman
    Lee, Jun-Hwan
    Hong, Keum-Shik
    Park, Sang-Soo
    Kim, Jieun
    Yoo, Ho-Ryong
    FRONTIERS IN AGING NEUROSCIENCE, 2019, 11
  • [25] Neuroplasticity of Speech-in-Noise Processing in Older Adults Assessed by Functional Near-Infrared Spectroscopy (fNIRS)
    Mai, Guangting
    Jiang, Zhizhao
    Wang, Xinran
    Tachtsidis, Ilias
    Howell, Peter
    BRAIN TOPOGRAPHY, 2024, 37 (06) : 1139 - 1157
  • [26] Functional Near-Infrared Spectroscopy Evidence of Prefrontal Regulation of Cognitive Flexibility in Adults With ADHD
    Li, Yaojin
    Chen, Jianwen
    Zheng, Xintong
    Liu, Jianxiu
    Peng, Cong
    Liao, Youguo
    JOURNAL OF ATTENTION DISORDERS, 2023, : 1196 - 1206
  • [27] Novel Feature Generation for Classification of Motor Activity from Functional Near-Infrared Spectroscopy Signals Using Machine Learning
    Akila, V.
    Christaline, J. Anita
    Edward, A. Shirly
    DIAGNOSTICS, 2024, 14 (10)
  • [28] Utilizing functional near-infrared spectroscopy for prediction of cognitive workload in noisy work environments
    Gabbard, Ryan
    Fendley, Mary
    Dar, Irfaan A.
    Warren, Rik
    Kashou, Nasser H.
    NEUROPHOTONICS, 2017, 4 (04)
  • [29] Acute Effects of Physical Exercise on Prefrontal Cortex Activity in Older Adults: A Functional Near-Infrared Spectroscopy Study
    Tsujii, Takeo
    Komatsu, Kazutoshi
    Sakatani, Kaoru
    OXYGEN TRANSPORT TO TISSUE XXXIV, 2013, 765 : 293 - 298
  • [30] Brain-machine interfaces using functional near-infrared spectroscopy: a review
    Hong, Keum-Shik
    Ghafoor, Usman
    Khan, M. Jawad
    ARTIFICIAL LIFE AND ROBOTICS, 2020, 25 (02) : 204 - 218