4.5 Article

Impact of automated ICA-based denoising of fMRI data in acute stroke patients

期刊

NEUROIMAGE-CLINICAL
卷 16, 期 -, 页码 23-31

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.nicl.2017.06.033

关键词

Independent component analysis; fMRI; Acute stroke; Denoising; BOLD; Resting state

资金

  1. National Institute for Health Research Oxford Biomedical Research Centre Programme
  2. National Institute for Health Research Clinical Research Network
  3. Dunhill Medical Trust [OSRP1/1006]
  4. Centre of Excellence for Personalized Healthcare - Wellcome Trust
  5. Engineering and Physical Sciences Research Council [WT088877/Z/09/Z]
  6. National Institute for Health Research Oxford Biomedical Research Centre
  7. Monument Trust from Parkinson's UK

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Different strategies have been developed using Independent Component Analysis (ICA) to automatically de-noise fMRI data, either focusing on removing only certain components (e.g. motion-ICA-AROMA, Pruim et al., 2015a) or using more complex classifiers to remove multiple types of noise components (e.g. FIX, Salimi-Khorshidi et al., 2014 Griffanti et al., 2014). However, denoising data obtained in an acute setting might prove challenging: the presence of multiple noise sources may not allow focused strategies to clean the data enough and the heterogeneity in the data may be so great to critically undermine complex approaches. The purpose of this study was to explore what automated ICA based approach would better cope with these limitations when cleaning fMRI data obtained from acute stroke patients. The performance of a focused classifier (ICA-AROMA) and a complex classifier (FIX) approaches were compared using data obtained from twenty consecutive acute lacunar stroke patients using metrics determining RSN identification, RSN reproducibility, changes in the BOLD variance, differences in the estimation of functional connectivity and loss of temporal degrees of freedom. The use of generic-trained FIX resulted in misclassification of components and significant loss of signal (< 80%), and was not explored further. Both ICA-AROMA and patient-trained FIX based denoising approaches resulted in significantly improved RSN reproducibility (p < 0.001), localized reduction in BOLD variance consistent with noise removal, and significant changes in functional connectivity (p < 0.001). Patient-trained FIX resulted in higher RSN identifiability (p < 0.001) and wider changes both in the BOLD variance and in functional connectivity compared to ICA-AROMA. The success of ICA-AROMA suggests that by focusing on selected components the full automation can deliver meaningful data for analysis even in population with multiple sources of noise. However, the time invested to train FIX with appropriate patient data proved valuable, particularly in improving the signal-to-noise ratio.

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