Literature DB >> 33285328

Ground-truth "resting-state" signal provides data-driven estimation and correction for scanner distortion of fMRI time-series dynamics.

Rajat Kumar1, Liang Tan2, Alan Kriegstein2, Andrew Lithen1, Jonathan R Polimeni3, Lilianne R Mujica-Parodi4, Helmut H Strey5.   

Abstract

The fMRI community has made great strides in decoupling neuronal activity from other physiologically induced T2* changes, using sensors that provide a ground-truth with respect to cardiac, respiratory, and head movement dynamics. However, blood oxygenation level-dependent (BOLD) time-series dynamics are also confounded by scanner artifacts, in complex ways that can vary not only between scanners but even, for the same scanner, between sessions. Unfortunately, the lack of an equivalent ground truth for BOLD time-series has thus far stymied the development of reliable methods for identification and removal of scanner-induced noise, a problem that we have previously shown to severely impact detection sensitivity of resting-state brain networks. To address this problem, we first designed and built a phantom capable of providing dynamic signals equivalent to that of the resting-state brain. Using the dynamic phantom, we then compared the ground-truth time-series with its measured fMRI data. Using these, we introduce data-quality metrics: Standardized Signal-to-Noise Ratio (ST-SNR) and Dynamic Fidelity that, unlike currently used measures such as temporal SNR (tSNR), can be directly compared across scanners. Dynamic phantom data acquired from four "best-case" scenarios: high-performance scanners with MR-physicist-optimized acquisition protocols, still showed scanner instability/multiplicative noise contributions of about 6-18% of the total noise. We further measured strong non-linearity in the fMRI response for all scanners, ranging between 8-19% of total voxels. To correct scanner distortion of fMRI time-series dynamics at a single-subject level, we trained a convolutional neural network (CNN) on paired sets of measured vs. ground-truth data. The CNN learned the unique features of each session's noise, providing a customized temporal filter. Tests on dynamic phantom time-series showed a 4- to 7-fold increase in ST-SNR and about 40-70% increase in Dynamic Fidelity after denoising, with CNN denoising outperforming both the temporal bandpass filtering and denoising using Marchenko-Pastur principal component analysis. Critically, we observed that the CNN temporal denoising pushes ST-SNR to a regime where signal power is higher than that of noise (ST-SNR > 1). Denoising human-data with ground-truth-trained CNN, in turn, showed markedly increased detection sensitivity of resting-state networks. These were visible even at the level of the single-subject, as required for clinical applications of fMRI.
Copyright © 2020 The Author(s). Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Dynamic fidelity; Dynamic phantom; Marchenko-Pastur distribution; Multi-site; Scanner instability

Mesh:

Year:  2020        PMID: 33285328     DOI: 10.1016/j.neuroimage.2020.117584

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  3 in total

1.  Metabolism modulates network synchrony in the aging brain.

Authors:  Corey Weistuch; Lilianne R Mujica-Parodi; Rostam M Razban; Botond Antal; Helena van Nieuwenhuizen; Anar Amgalan; Ken A Dill
Journal:  Proc Natl Acad Sci U S A       Date:  2021-10-05       Impact factor: 11.205

2.  Custom 3D fMRI Registration Template Construction Method Based on Time-Series Fusion.

Authors:  Zhongyang Wang; Junchang Xin; Huixian Shen; Qi Chen; Zhiqiong Wang; Xinlei Wang
Journal:  Diagnostics (Basel)       Date:  2022-08-20

3.  Development of an MRI-Compatible Nasal Drug Delivery Method for Probing Nicotine Addiction Dynamics.

Authors:  Rajat Kumar; Lilianne R Mujica-Parodi; Michael Wenke; Anar Amgalan; Andrew Lithen; Sindhuja T Govindarajan; Rany Makaryus; Helene Benveniste; Helmut H Strey
Journal:  Pharmaceutics       Date:  2021-12-03       Impact factor: 6.321

  3 in total

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