Tensor clustering on outer-product of coefficient and component matrices of independent component analysis for reliable functional magnetic resonance imaging data decomposition
Hu, G., Zhang, Q., Waters, A. B., Li, H., Zhang, C., Wu, J., Cong, F., & Nickerson, L. D. (2019). Tensor clustering on outer-product of coefficient and component matrices of independent component analysis for reliable functional magnetic resonance imaging data decomposition. Journal of Neuroscience Methods, 325, Article 108359. https://doi.org/10.1016/j.jneumeth.2019.108359
Julkaistu sarjassa
Journal of Neuroscience MethodsTekijät
Päivämäärä
2019Tekijänoikeudet
© 2019 The Authors.
Background. Stability of spatial components is frequently used as a post-hoc selection criteria for choosing the dimensionality of an independent component analysis (ICA) of functional magnetic resonance imaging (fMRI) data. Although the stability of the ICA temporal courses differs from that of spatial components, temporal stability has not been considered during dimensionality decisions.
New method. The current study aims to (1) develop an algorithm to incorporate temporal course stability into dimensionality selection and (2) test the impact of temporal course on the stability of the ICA decomposition of fMRI data via tensor clustering. Resting state fMRI data were analyzed with two popular ICA algorithms, InfomaxICA and FastICA, using our new method and results were compared with model order selection based on spatial or temporal criteria alone.
Results. Hierarchical clustering indicated that the stability of the ICA decomposition incorporating spatiotemporal tensor information performed similarly when compared to current best practice. However, we found that component spatiotemporal stability and convergence of the model varied significantly with model order. Considering both may lead to methodological improvements for determining ICA model order. Selected components were also significantly associated with relevant behavioral variables.
Comparison with Existing Method: The Kullback–Leibler information criterion algorithm suggests the optimal model order for group ICA is 40, compared to the proposed method with an optimal model order of 20.
Conclusion. The current study sheds new light on the importance of temporal course variability in ICA of fMRI data.
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Julkaisija
Elsevier BVISSN Hae Julkaisufoorumista
0165-0270Asiasanat
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https://converis.jyu.fi/converis/portal/detail/Publication/32130395
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This work was supported by National Natural Science Foundation of China (Grant No. 81471742 & Grant No. 81371526) and the Fundamental Research Funds for the Central Universities [DUT16JJ(G)03] in Dalian University of Technology inChina.This work was also supported by China Scholarship Council(CSC).LDN was supported by the National Institutes of Health (PI:LDN,DA037265, AA024565). ...Lisenssi
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