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Published in: Brain Structure and Function 3/2020

01-04-2020 | Original Article

ALE meta-analysis, its role in node identification and the effects on estimates of local network organization

Authors: Dimitri Falco, Asadur Chowdury, David R. Rosenberg, Steven L. Bressler, Vaibhav A. Diwadkar

Published in: Brain Structure and Function | Issue 3/2020

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Abstract

Functional connectivity analyses for task-based fMRI data are generally preceded by methods for identification of network nodes. As there is no general canonical approach to identifying network nodes, different identification techniques may exert different effects on inferences drawn regarding functional network properties. Here, we compared the impact of two different node identification techniques on estimates of local node importance (based on Degree Centrality, DC) in two working memory domains: verbal and visual. The two techniques compared were the commonly used Activation Likelihood Estimate (ALE) technique (with node locations based on data aggregation), against a hybrid technique, Experimentally Derived Estimation (EDE). In the latter, ALE was first used to isolate regions of interest; then participant-specific nodes were identified based on individual-participant local maxima. Time series were extracted at each node for each dataset and subsequently used in functional connectivity analysis to: (1) assess the impact of choice of technique on estimates of DC, and (2) assess the difference between the techniques in the ranking of nodes (based on DC) in the networks they produced. In both domains, we found a significant Technique by Node interaction, signifying that the two techniques yielded networks with different DC estimates. Moreover, for the majority of participants, node rankings were uncorrelated between the two techniques (85% for the verbal working memory task and 92% for the visual working memory task). The latter effect is direct evidence that the identification techniques produced different rankings at the level of individual participants. These results indicate that node choice in task-based fMRI data exerts downstream effects that will impact interpretation and reverse inference regarding brain function.
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Literature
go back to reference Cadini F, Zio E, Petrescu CA (2009) Using centrality measures to rank the importance of the components of a complex network infrastructure. In: Setola R, Geretshuber S (eds) Critical information infrastructure security. CRITIS 2008. Lecture notes in computer science, vol 5508. Springer, Berlin Cadini F, Zio E, Petrescu CA (2009) Using centrality measures to rank the importance of the components of a complex network infrastructure. In: Setola R, Geretshuber S (eds) Critical information infrastructure security. CRITIS 2008. Lecture notes in computer science, vol 5508. Springer, Berlin
go back to reference Laird AR, Lancaster JL, Fox PT (2005) BrainMap: the social evolution of a human brain mapping database. Neuroinformatics 3(1):65–78CrossRefPubMed Laird AR, Lancaster JL, Fox PT (2005) BrainMap: the social evolution of a human brain mapping database. Neuroinformatics 3(1):65–78CrossRefPubMed
go back to reference Maldjian JA, Laurienti PJ, Kraft RA, Burdette JH (2003) An automated method for neuroanatomic and cytoarchitectonic atlas-based interrogation of fMRI data sets. Neuroimage 19(3):1233–1239CrossRefPubMed Maldjian JA, Laurienti PJ, Kraft RA, Burdette JH (2003) An automated method for neuroanatomic and cytoarchitectonic atlas-based interrogation of fMRI data sets. Neuroimage 19(3):1233–1239CrossRefPubMed
go back to reference Mehta MA, Owen AM, Sahakian BJ, Mavaddat N, Pickard JD, Robbins TW (2000) Methylphenidate enhances working memory by modulating discrete frontal and parietal lobe regions in the human brain. J Neurosci 20(6):RC65CrossRefPubMedPubMedCentral Mehta MA, Owen AM, Sahakian BJ, Mavaddat N, Pickard JD, Robbins TW (2000) Methylphenidate enhances working memory by modulating discrete frontal and parietal lobe regions in the human brain. J Neurosci 20(6):RC65CrossRefPubMedPubMedCentral
go back to reference Papademetris X, Jackowski M, Joshi A, Scheinost D, Lacadie C, DiStasio M, Staib L (2017) BioImage Suite: An integrated medical image analysis suite, Section of Bioimaging Sciences, Dept. of Diagnostic Radiology, Yale School of Medicine (http://www.bioimagesuit.org) Papademetris X, Jackowski M, Joshi A, Scheinost D, Lacadie C, DiStasio M, Staib L (2017) BioImage Suite: An integrated medical image analysis suite, Section of Bioimaging Sciences, Dept. of Diagnostic Radiology, Yale School of Medicine (http://​www.​bioimagesuit.​org)
go back to reference Xu J, Moeller S, Strupp J, Auerbach E, Feinberg DA, Ugurbil K, Yacoub E (2012) Highly accelerated whole brain imaging using aligned-blipped-controlled-aliasing multiband EPI. Proc Int Soc Mag Reson Med 20:2306 Xu J, Moeller S, Strupp J, Auerbach E, Feinberg DA, Ugurbil K, Yacoub E (2012) Highly accelerated whole brain imaging using aligned-blipped-controlled-aliasing multiband EPI. Proc Int Soc Mag Reson Med 20:2306
Metadata
Title
ALE meta-analysis, its role in node identification and the effects on estimates of local network organization
Authors
Dimitri Falco
Asadur Chowdury
David R. Rosenberg
Steven L. Bressler
Vaibhav A. Diwadkar
Publication date
01-04-2020
Publisher
Springer Berlin Heidelberg
Published in
Brain Structure and Function / Issue 3/2020
Print ISSN: 1863-2653
Electronic ISSN: 1863-2661
DOI
https://doi.org/10.1007/s00429-020-02061-2

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