研究目的
To determine the onsets at which neuronal activation is evoked by cognitive status in real-time analysis using a machine learning approach for the classification of cognitive event onsets (CogEOs) in hemodynamic signals during three cognitive tasks.
研究成果
The study successfully classified cognitive event onsets among onset points composed of recorded cognitive-event onset points and random non-onset points using a binary classification technique for hemodynamic signals obtained during three cognitive tasks. The best onset classification performance was achieved during the 1-back task with NonEOs randomly distributed, reaching a classification accuracy of up to 77%. This approach extends fNIRS to real-life applications by detecting the start of cognitive activation without additional triggers or threshold settings.
研究不足
The study is limited by the small sample size and the imbalance between the number of CogEOs and NonEOs, which was addressed by oversampling. The configuration of optode may not be sufficient to detect hemodynamic responses during all tasks, and the second-order band-pass filter used in preprocessing may not sufficiently remove physiological noises.