Optimizing wavelets for the analysis of fMRI data

被引:5
|
作者
Feilner, M [1 ]
Blu, T [1 ]
Unser, M [1 ]
机构
[1] Swiss Fed Inst Technol, IOA, DMT, Biomed Imaging Grp, CH-1015 Lausanne, Switzerland
来源
WAVELET APPLICATIONS IN SIGNAL AND IMAGE PROCESSING VIII PTS 1 AND 2 | 2000年 / 4119卷
关键词
functional imaging; fMRI; statistical analysis; medical imaging; wavelets; fractional splines;
D O I
10.1117/12.408652
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Ruttimann et al. have proposed to use the wavelet transform for the detection and localization of activation patterns in functional magnetic resonance imaging (fMRI). Their main idea was to apply a statistical test in the wavelet domain to detect the coefficients that are significantly different from zero. Here, we improve the original method in the case of non-stationary Gaussian noise by replacing the original z-test by a t-test that takes into account the variability of each wavelet coefficient separately. The application of a threshold that is proportional to the residual noise level, after the reconstruction by an inverse wavelet transform, further improves the localization of the activation pattern in the spatial domain. A key issue is to find out which wavelet and which type of decomposition is best suited for the detection of a given activation pattern. In particular, we want to investigate the applicability of alternative wavelet bases that are not necessarily orthogonal. For this purpose, we consider the various brands of fractional spline wavelets (orthonormal, B-spline, and dual) which are indexed by a continuously-varying order parameter alpha. We perform an extensive series of tests using simulated data and compare the various transforms based on their false detection rate (type I + type II errors). In each case, we observe that there is a strongly optimal value of alpha and a best number of scales that minimizes the error. We also find that splines generally outperform Daubechies wavelets and that they are quite competitive with SPM (the standard analysis method used in the held), although it uses much simpler statistics. An interesting practical finding is that performance is strongly correlated with the number of coefficients detected in the wavelet domain, at least in the orthonormal and B-spline cases. This suggest that it is possible to optimize the structural wavelet parameters simply by maximizing the number of wavelet counts, without any prior knowledge of the activation pattern. Some examples of analysis of real data are also presented.
引用
收藏
页码:626 / 637
页数:12
相关论文
共 50 条
  • [31] Bootstrapping fMRI Data: Dealing with Misspecification
    Roels, Sanne P.
    Moerkerke, Beatrijs
    Loeys, Tom
    NEUROINFORMATICS, 2015, 13 (03) : 337 - 352
  • [32] A Graphical Network Layer for Lagged Analysis of FMRI Data
    Bedel, Hasan Atakan
    Sivgin, Irmak
    Cukur, Tolga
    2022 30TH SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE, SIU, 2022,
  • [33] Learning Representation for fMRI Data Analysis using Autoencoder
    Kamonsantiroj, Suwatchai
    Charoenvorakiat, Parinya
    Pipanmaekaporn, Luepol
    PROCEEDINGS 2016 5TH IIAI INTERNATIONAL CONGRESS ON ADVANCED APPLIED INFORMATICS IIAI-AAI 2016, 2016, : 560 - 565
  • [34] INDEPENDENT SUBSPACE ANALYSIS WITH PRIOR INFORMATION FOR FMRI DATA
    Ma, Sai
    Li, Xi-Lin
    Correa, Nicolle M.
    Adali, Tuelay
    Calhoun, Vince D.
    2010 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2010, : 1922 - 1925
  • [35] Evaluation of Markov Blanket Algorithms for fMRI Data Analysis
    Agrawal, S. A.
    Joshi, M. S.
    Nagori, M. B.
    Mane, T. N.
    INFORMATION AND NETWORK TECHNOLOGY, 2011, 4 : 217 - 222
  • [36] Data-analytical stability of cluster-wise and peak-wise inference in fMRI data analysis
    Roels, S. P.
    Bossier, H.
    Loeys, T.
    Moerkerke, B.
    JOURNAL OF NEUROSCIENCE METHODS, 2015, 240 : 37 - 47
  • [37] Group information guided ICA for fMRI data analysis
    Du, Yuhui
    Fan, Yong
    NEUROIMAGE, 2013, 69 : 157 - 197
  • [38] PHYSIOLOGICAL MODELS COMPARISON FOR THE ANALYSIS OF ASL FMRI DATA
    Frau-Pascual, Aina
    Forbes, Florence
    Ciuciu, Philippe
    2015 IEEE 12th International Symposium on Biomedical Imaging (ISBI), 2015, : 1348 - 1351
  • [39] Role of Voxel Selection and ROI in fMRI Data Analysis
    Zafar, Raheel
    Malik, Aamir Saeed
    Kamel, Nidal
    Dass, Sarat C.
    2016 IEEE INTERNATIONAL SYMPOSIUM ON MEDICAL MEASUREMENTS AND APPLICATIONS (MEMEA), 2016, : 233 - 238
  • [40] Cluster analysis of fMRI data using dendrogram sharpening
    Stanberry, L
    Nandy, R
    Cordes, D
    HUMAN BRAIN MAPPING, 2003, 20 (04) : 201 - 219