Physiologic noise regression, motion regression, and TOAST dynamic field correction in complex-valued fMRI time series

被引:8
|
作者
Hahn, Andrew D. [2 ]
Rowe, Daniel B. [1 ,2 ]
机构
[1] Marquette Univ, Dept Math Stat & Comp Sci, Milwaukee, WI 53233 USA
[2] Med Coll Wisconsin, Dept Biophys, Milwaukee, WI 53222 USA
关键词
fMRI; Physiologic noise; Magnetic field correction; Complex-valued regression; NEURONAL-ACTIVITY; FUNCTIONAL MRI; PHASE; BOLD; MAGNITUDE;
D O I
10.1016/j.neuroimage.2011.09.082
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
As more evidence is presented suggesting that the phase, as well as the magnitude, of functional M RI (fMRI) time series may contain important information and that there are theoretical drawbacks to modeling functional response in the magnitude alone, removing noise in the phase is becoming more important. Previous studies have shown that retrospective correction of noise from physiologic sources can remove significant phase variance and that dynamic main magnetic field correction and regression of estimated motion parameters also remove significant phase fluctuations. In this work, we investigate the performance of physiologic noise regression in a framework along with correction for dynamic main field fluctuations and motion regression. Our findings suggest that including physiologic regressors provides some benefit in terms of reduction in phase noise power, but it is small compared to the benefit of dynamic field corrections and use of estimated motion parameters as nuisance regressors. Additionally, we show that the use of all three techniques reduces phase variance substantially, removes undesirable spatial phase correlations and improves detection of the functional response in magnitude and phase. (C) 2011 Elsevier Inc. All rights reserved.
引用
收藏
页码:2231 / 2240
页数:10
相关论文
共 9 条
  • [1] Complex-valued gaussian process regression for time series analysis
    Ambrogioni, Luca
    Maris, Eric
    SIGNAL PROCESSING, 2019, 160 : 215 - 228
  • [2] Integration of motion correction and physiological noise regression in fMRI
    Jones, Tyler B.
    Bandettini, Peter A.
    Birn, Rasmus M.
    NEUROIMAGE, 2008, 42 (02) : 582 - 590
  • [3] Autocovariance prediction of complex-valued polar motion time series
    Kosek, W
    NEW TRENDS IN SPACE GEODESY, 2002, 30 (02): : 375 - 380
  • [4] COMPLEX-VALUED TIME SERIES MODELING FOR IMPROVED ACTIVATION DETECTION IN FMRI STUDIES
    Adrian, Daniel W.
    Maitra, Ranjan
    Rowe, Daniel B.
    ANNALS OF APPLIED STATISTICS, 2018, 12 (03): : 1451 - 1478
  • [5] Complex-valued time-series correlation increases sensitivity in FMRI analysis
    Kociuba, Mary C.
    Rowe, Daniel B.
    MAGNETIC RESONANCE IMAGING, 2016, 34 (06) : 765 - 770
  • [6] Phase stability in fMRI time series: Effect of noise regression, off-resonance correction and spatial filtering techniques
    Hagberg, Gisela E.
    Bianciardi, Marta
    Brainovich, Valentina
    Cassara, Antonino Mario
    Maraviglia, Bruno
    NEUROIMAGE, 2012, 59 (04) : 3748 - 3761
  • [7] Online support vector quantile regression for the dynamic time series with heavy-tailed noise
    Ye, Yafen
    Shao, Yuanhai
    Li, Chunna
    Hua, Xiangyu
    Guo, Yanru
    APPLIED SOFT COMPUTING, 2021, 110
  • [8] Enhancing the utility of complex-valued functional magnetic resonance imaging detection of neurobiological processes through postacquisition estimation and correction of dynamic B0 errors and motion
    Hahn, Andrew D.
    Nencka, Andrew S.
    Rowe, Daniel B.
    HUMAN BRAIN MAPPING, 2012, 33 (02) : 288 - 306
  • [9] Correction: Usefulness of dynamic regression time series models for studying the relationship between antimicrobial consumption and bacterial antimicrobial resistance in hospitals: a systematic review
    Paul Laffont-Lozes
    Romaric Larcher
    Florian Salipante
    Geraldine Leguelinel-Blache
    Catherine Dunyach-Remy
    Jean-Philippe Lavigne
    Albert Sotto
    Paul Loubet
    Antimicrobial Resistance & Infection Control, 13