Methods for cleaning the BOLD fMRI signal

被引:357
作者
Caballero-Gaudes, Cesar [1 ]
Reynolds, Richard C. [2 ]
机构
[1] Basque Ctr Cognit Brain & Language, Paseo Mikeletegi 69,2nd Floor, San Sebastian 20009, Spain
[2] NIMH, Sci & Stat Comp Core, NIH, Dept Hlth & Human Serv, Bethesda, MD 20892 USA
关键词
BOLD fMRI; Denoising methods; Motion artifacts; Physiological noise; Multi-echo; Phase-based methods; RESTING-STATE FMRI; INDEPENDENT COMPONENT ANALYSIS; HEART-RATE-VARIABILITY; FUNCTIONAL CONNECTIVITY MRI; RETROSPECTIVE MOTION CORRECTION; PHYSIOLOGICAL NOISE REGRESSION; STIMULUS-CORRELATED MOTION; TEST-RETEST RELIABILITY; TASK-RELATED MOTION; BY-SLICE MOTION;
D O I
10.1016/j.neuroimage.2016.12.018
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Blood oxygen-level-dependent functional magnetic resonance imaging (BOLD fMRI) has rapidly become a popular technique for the investigation of brain function in healthy individuals, patients as well as in animal studies. However, the BOLD signal arises from a complex mixture of neuronal, metabolic and vascular processes, being therefore an indirect measure of neuronal activity, which is further severely corrupted by multiple non-neuronal fluctuations of instrumental, physiological or subject-specific origin. This review aims to provide a comprehensive summary of existing methods for cleaning the BOLD fMRI signal. The description is given from a methodological point of view, focusing on the operation of the different techniques in addition to pointing out the advantages and limitations in their application. Since motion-related and physiological noise fluctuations are two of the main noise components of the signal, techniques targeting their removal are primarily addressed, including both data-driven approaches and using external recordings. Data-driven approaches, which are less specific in the assumed model and can simultaneously reduce multiple noise fluctuations, are mainly based on data decomposition techniques such as principal and independent component analysis. Importantly, the usefulness of strategies that benefit from the information available in the phase component of the signal, or in multiple signal echoes is also highlighted. The use of global signal regression for denoising is also addressed. Finally, practical recommendations regarding the optimization of the preprocessing pipeline for the purpose of denoising and future venues of research are indicated. Through the review, we summarize the importance of signal denoising as an essential step in the analysis pipeline of task-based and resting state fMRI studies.
引用
收藏
页码:128 / 149
页数:22
相关论文
共 336 条
  • [11] [Anonymous], 2016, NEUROIMAGE
  • [12] Changes in fMRI magnitude data and phase data observed in block-design and event-related tasks
    Arja, Sunil Kumar
    Feng, Zhaomei
    Chen, Zikuan
    Caprihan, Arvind
    Kiehl, Kent A.
    Adali, Tulay
    Calhoun, Vince D.
    [J]. NEUROIMAGE, 2010, 49 (04) : 3149 - 3160
  • [13] Detection of physiological noise in resting state fMRI using machine learning
    Ash, Tom
    Suckling, John
    Walter, Martin
    Ooi, Cinly
    Tempelmann, Claus
    Carpenter, Adrian
    Williams, Guy
    [J]. HUMAN BRAIN MAPPING, 2013, 34 (04) : 985 - 998
  • [14] Bailon R., 2006, Advanced Methods and Tools for ECG Data Analysis, P215
  • [15] Functional quantitative susceptibility mapping (fQSM)
    Balla, David Z.
    Sanchez-Panchuelo, Rosa M.
    Wharton, Samuel J.
    Hagberg, Gisela E.
    Scheffler, Klaus
    Francis, Susan T.
    Bowtell, Richard
    [J]. NEUROIMAGE, 2014, 100 : 112 - 124
  • [16] Integrating temporal information with a non-rigid method of motion correction for functional magnetic resonance images
    Bannister, Peter R.
    Brady, J. Michael
    Jenkinson, Mark
    [J]. IMAGE AND VISION COMPUTING, 2007, 25 (03) : 311 - 320
  • [17] Bannister PR, 2004, LECT NOTES COMPUT SC, V3117, P292
  • [18] Overt verbal responding during fMRI scanning: Empirical investigations of problems and potential solutions
    Barch, DM
    Sabb, FW
    Carter, CS
    Braver, TS
    Noll, DC
    Cohen, JD
    [J]. NEUROIMAGE, 1999, 10 (06) : 642 - 657
  • [19] Enhanced Phase Regression With Savitzky-Golay Filtering for High-Resolution BOLD fMRI
    Barry, Robert L.
    Gore, John C.
    [J]. HUMAN BRAIN MAPPING, 2014, 35 (08) : 3832 - 3840
  • [20] Complex and magnitude-only preprocessing of 2D and 3D BOLD fMRI data at 7 T
    Barry, Robert L.
    Strother, Stephen C.
    Gore, John C.
    [J]. MAGNETIC RESONANCE IN MEDICINE, 2012, 67 (03) : 867 - 871