A wavelet method for modeling and despiking motion artifacts from resting-state fMRI time series

被引:272
|
作者
Patel, Ameera X. [1 ]
Kundu, Prantik [1 ,2 ]
Rubinov, Mikail [1 ,3 ]
Jones, P. Simon [1 ]
Vertes, Petra E. [1 ]
Ersche, Karen D. [1 ]
Suckling, John [1 ]
Bullmore, Edward T. [1 ]
机构
[1] Univ Cambridge, Dept Psychiat, Behav & Clin Neurosci Inst, Cambridge CB2 3EB, England
[2] NIH, Bethesda, MD 20892 USA
[3] Univ Cambridge, Churchill Coll, Cambridge CB2 3EB, England
基金
英国惠康基金; 英国医学研究理事会;
关键词
fMRI; Resting-state; Connectivity; Motion; Artifact; Spike; Wavelet; Despike; Non-stationary; FUNCTIONAL CONNECTIVITY MRI; STIMULUS-CORRELATED MOTION; BOLD SIGNALS; HEAD MOTION; NETWORKS; IMPACT;
D O I
10.1016/j.neuroimage.2014.03.012
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
The impact of in-scanner head movement on functional magnetic resonance imaging (fMRI) signals has long been established as undesirable. These effects have been traditionally corrected by methods such as linear regression of head movement parameters. However, a number of recent independent studies have demonstrated that these techniques are insufficient to remove motion confounds, and that even small movements can spuriously bias estimates of functional connectivity. Here we propose a new data-driven, spatially-adaptive, wavelet-based method for identifying, modeling, and removing non-stationary events in fMRI time series, caused by head movement, without the need for data scrubbing. This method involves the addition of just one extra step, the Wavelet Despike, in standard pre-processing pipelines. With this method, we demonstrate robust removal of a range of different motion artifacts and motion-related biases including distance-dependent connectivity artifacts, at a group and single-subject level, using a range of previously published and new diagnostic measures. The Wavelet Despike is able to accommodate the substantial spatial and temporal heterogeneity of motion artifacts and can consequently remove a range of high and low frequency artifacts from fMRI time series, that may be linearly or non-linearly related to physical movements. Our methods are demonstrated by the analysis of three cohorts of resting-state fMRI data, including two high-motion datasets: a previously published dataset on children (N = 22) and a new dataset on adults with stimulant drug dependence (N = 40). We conclude that there is a real risk of motion-related bias in connectivity analysis of fMRI data, but that this risk is generally manageable, by effective time series denoising strategies designed to attenuate synchronized signal transients induced by abrupt head movements. (C) 2014 Published by Elsevier Inc.
引用
收藏
页码:287 / 304
页数:18
相关论文
共 50 条
  • [31] A deep learning based approach identifies regions more relevant than resting-state networks to the prediction of general intelligence from resting-state fMRI
    Vieira, Bruno Hebling
    Dubois, Julien
    Calhoun, Vince D.
    Salmon, Carlos Ernesto Garrido
    HUMAN BRAIN MAPPING, 2021, 42 (18) : 5873 - 5887
  • [32] Classification of Obsessive-Compulsive Disorder from Resting-State fMRI
    Sen, Bhaskar
    Bernstein, Gail A.
    Xu, Tingting
    Mueller, Bryon A.
    Schreiner, Mindy W.
    Cullen, Kathryn R.
    Parhi, Keshab K.
    2016 38TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2016, : 3606 - 3609
  • [33] Modeling motor task activation from resting-state fMRI using machine learning in individual subjects
    Chen Niu
    Alexander D. Cohen
    Xin Wen
    Ziyi Chen
    Pan Lin
    Xin Liu
    Bjoern H. Menze
    Benedikt Wiestler
    Yang Wang
    Ming Zhang
    Brain Imaging and Behavior, 2021, 15 : 122 - 132
  • [34] Higher reliability and validity of Wavelet-ALFF of resting-state fMRI: From multicenter database and application to rTMS modulation
    Yue, Juan
    Zhao, Na
    Qiao, Yang
    Feng, Zi-Jian
    Hu, Yun-Song
    Ge, Qiu
    Zhang, Tian-Qing
    Zhang, Zhu-Qian
    Wang, Jue
    Zang, Yu-Feng
    HUMAN BRAIN MAPPING, 2023, 44 (03) : 1105 - 1117
  • [35] A wavelet-based method for measuring the oscillatory dynamics of resting-state functional connectivity in MEG
    Ghuman, Avniel Singh
    McDaniel, Jonathan R.
    Martin, Alex
    NEUROIMAGE, 2011, 56 (01) : 69 - 77
  • [36] Sparse DCM for whole-brain effective connectivity from resting-state fMRI data
    Prando, Giulia
    Zorzi, Mattia
    Bertoldo, Alessandra
    Corbetta, Maurizio
    Zorzi, Marco
    Chiuso, Alessandro
    NEUROIMAGE, 2020, 208
  • [37] Spectral dynamic causal modeling of mindfulness, mind-wandering, and resting-state in the triple network using fMRI
    Kim, Hyun-Chul
    Lee, Jong-Hwan
    NEUROREPORT, 2022, 33 (05) : 221 - 226
  • [38] Findings in resting-state fMRI by differences from K-means clustering
    Chyzhyk, Darya
    Grana, Manuel
    INNOVATION IN MEDICINE AND HEALTHCARE 2014, 2014, 207 : 300 - 310
  • [39] A Linear/Nonlinear Characterization of Resting State Brain Networks in fMRI Time Series
    Eren Gultepe
    Bin He
    Brain Topography, 2013, 26 : 39 - 49
  • [40] Getting the nod: Pediatric head motion in a transdiagnostic sample during movie- and resting-state fMRI
    Frew, Simon
    Samara, Ahmad
    Shearer, Hallee
    Eilbott, Jeffrey
    Vanderwal, Tamara
    PLOS ONE, 2022, 17 (04):