Evaluating the effect of denoising submillimeter auditory fMRI data with NORDIC

Lonike K. Faes*, Agustin Lage-Castellanos, Giancarlo Valente, Zidan Yu, Martijn A Cloos, Luca Vizioli, Steen Moeller, Essa Yacoub, Federico De Martino

*Corresponding author for this work

Research output: Working paper / PreprintPreprint

Abstract

Functional magnetic resonance imaging (fMRI) has emerged as an essential tool for exploring human brain function. Submillimeter fMRI, in particular, has emerged as a tool to study mesoscopic computations. The inherently low signal-to-noise ratio (SNR) at submillimeter resolutions warrants the use of denoising approaches tailored at reducing thermal noise - the dominant contributing noise component in high resolution fMRI. NORDIC PCA is one of such approaches, and has been benchmarked against other approaches in several applications. Here, we investigate the effects that two versions of NORDIC denoising have on auditory submillimeter data. As investigating auditory functional responses poses unique challenges, we anticipated that the benefit of this technique would be especially pronounced. Our results show that NORDIC denoising improves the detection sensitivity and the reliability of estimates in submillimeter auditory fMRI data. These effects can be explained by the reduction of the noise-induced signal variability. However, we also observed a reduction in the average response amplitude (percent signal), which may suggest that a small amount of signal was also removed. We conclude that, while evaluating the effects of the signal reduction induced by NORDIC may be necessary for each application, using NORDIC in high resolution auditory fMRI studies may be advantageous because of the large reduction in variability of the estimated responses.
Original languageEnglish
PublisherCold Spring Harbor Laboratory - bioRxiv
DOIs
Publication statusPublished - 25 Jan 2024

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