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Methods for decoding cortical gradients of functional connectivity

Julio A. Peraza, Taylor Salo, Michael C. Riedel, Katherine L. Bottenhorn, Jean‐Baptiste Poline, Jérôme Dockès, James D. Kent, Jessica E. Bartley, Jessica S. Flannery, Lauren D. Hill-Bowen, Rosario Pintos Lobo, Ranjita Poudel, Kimberly L. Ray, Jennifer L. Robinson, Robert W. Laird, Matthew T. Sutherland, Alejandro de la Vega, Angela R. Laird

2024Imaging Neuroscience10 citationsDOIOpen Access PDF

Abstract

Macroscale gradients have emerged as a central principle for understanding functional brain organization. Previous studies have demonstrated that a principal gradient of connectivity in the human brain exists, with unimodal primary sensorimotor regions situated at one end and transmodal regions associated with the default mode network and representative of abstract functioning at the other. The functional significance and interpretation of macroscale gradients remains a central topic of discussion in the neuroimaging community, with some studies demonstrating that gradients may be described using meta-analytic functional decoding techniques. However, additional methodological development is necessary to fully leverage available meta-analytic methods and resources and quantitatively evaluate their relative performance. Here, we conducted a comprehensive series of analyses to investigate and improve the framework of data-driven, meta-analytic methods, thereby establishing a principled approach for gradient segmentation and functional decoding. We found that a two-segment solution determined by a k-means segmentation approach and an LDA-based meta-analysis combined with the NeuroQuery database was the optimal combination of methods for decoding functional connectivity gradients. Finally, we proposed a method for decoding additional components of the gradient decomposition. The current work aims to provide recommendations on best practices and flexible methods for gradient-based functional decoding of fMRI data.

Topics & Concepts

Decoding methodsComputer scienceLeverage (statistics)Functional connectivityArtificial intelligenceSegmentationPattern recognition (psychology)PsychologyNeuroscienceAlgorithmFunctional Brain Connectivity StudiesAdvanced Neuroimaging Techniques and ApplicationsAdvanced MRI Techniques and Applications
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