The study investigates the hypothesis that head motion parameters contain valuable information about respiratory patterns, which can help machine learning algorithms estimate respiratory variation (RV) waveforms from functional magnetic resonance imaging (fMRI) data.
The key highlights and insights are:
Acquisition of clean external respiratory data during fMRI is not always possible, so several machine learning-based approaches have been developed to estimate RV waveforms from BOLD signals.
Respiration can influence head motion in fMRI, and recent studies have shown that respiration generates real and pseudomotion of the head at the respiratory rate.
The proposed method employs three 1D-CNNs in the temporal dimension of the BOLD time series and head motion parameters to reconstruct RV waveforms.
The results show that combining head motion parameters with BOLD signals enhances RV waveform estimation compared to using only BOLD signals. The high-frequency components of head motion parameters indicate the primary breathing rate, while the low-frequency components detect deep breaths.
Beyond using the reconstructed RV series to correct physiological confounds from fMRI, it offers insights into subjects' breathing consistency across scans, assisting in fMRI data interpretation.
The proposed method enriches fMRI studies without needing respiratory data, positively influencing data quality, interpretation, retention, statistical power, costs, participant burden, and adding physiological context to existing fMRI datasets.
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by Abdoljalil A... alle arxiv.org 05-02-2024
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