• Title of article

    Comparison of two exploratory data analysis methods for fMRI: fuzzy clustering vs. principal component analysis

  • Author/Authors

    Baumgartner، نويسنده , , R and Ryner، نويسنده , , L and Richter، نويسنده , , W and Summers، نويسنده , , R and Jarmasz، نويسنده , , M and Somorjai، نويسنده , , R، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2000
  • Pages
    6
  • From page
    89
  • To page
    94
  • Abstract
    Exploratory data-driven methods such as Fuzzy clustering analysis (FCA) and Principal component analysis (PCA) may be considered as hypothesis-generating procedures that are complementary to the hypothesis-led statistical inferential methods in functional magnetic resonance imaging (fMRI). Here, a comparison between FCA and PCA is presented in a systematic fMRI study, with MR data acquired under the null condition, i.e., no activation, with different noise contributions and simulated, varying “activation.” The contrast-to-noise (CNR) ratio ranged between 1–10. We found that if fMRI data are corrupted by scanner noise only, FCA and PCA show comparable performance. In the presence of other sources of signal variation (e.g., physiological noise), FCA outperforms PCA in the entire CNR range of interest in fMRI, particularly for low CNR values. The comparison method that we introduced may be used to assess other exploratory approaches such as independent component analysis or neural network-based techniques.
  • Keywords
    Functional MR imaging , Principal component analysis , Fuzzy clustering analysis
  • Journal title
    Magnetic Resonance Imaging
  • Serial Year
    2000
  • Journal title
    Magnetic Resonance Imaging
  • Record number

    1830474