Pan Yang, Junhong Wang, Ting Wang, Lihua Li, Dongjuan Xu, Xugang Xi
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引用次数: 0
Abstract
Motion artifact removal is a critical issue in functional near-infrared spectroscopy (fNIRS) analysis tasks, with traditional methods relying heavily on expert-based knowledge and optimal selection of model parameters within brain regions. In this paper, we propose a deep learning denoising model based on long short-term memory (LSTM)-autoencoder (viz., LSTM-AE) to reduce motion artifacts. By training a neural network to reconstruct hemodynamic response coupled with neuronal activity, LSTM-AE achieves positive denoising results on both our synthesized noisy simulated dataset and the real dataset. The LSTM-AE processes the raw fNIRS in three phases: (1) Morphological feature extraction of the raw fNIRS is conducted through the encoder module. (2) The LSTM module captures temporal correlations between individual samples to enhance features. (3) The decoder module recovers and reconstructs the morphological feature information of fNIRS from the latent space. Finally, clean reconstructed fNIRS is generated at the output layer. We compare our proposed method with existing calibration algorithms for hemodynamic response estimation using the following metrics: mean square error (MSE), Pearson's correlation (R2), signal-to-noise ratio (SNR), and percent deviation ratio (PDR). The proposed LSTM-AE method outperforms conventional methods, demonstrating an improvement in all these metrics. Additionally, the proposed LSTM-AE method shows statistically significant differences from other motion artifact algorithms in terms of effectiveness (p < 0.01, significance level α = 0.05). This study demonstrates the potential of deep network architectures to remove motion artifacts in fNIRS data.
期刊介绍:
EJN is the journal of FENS and supports the international neuroscientific community by publishing original high quality research articles and reviews in all fields of neuroscience. In addition, to engage with issues that are of interest to the science community, we also publish Editorials, Meetings Reports and Neuro-Opinions on topics that are of current interest in the fields of neuroscience research and training in science. We have recently established a series of ‘Profiles of Women in Neuroscience’. Our goal is to provide a vehicle for publications that further the understanding of the structure and function of the nervous system in both health and disease and to provide a vehicle to engage the neuroscience community. As the official journal of FENS, profits from the journal are re-invested in the neuroscientific community through the activities of FENS.