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Manifold learning for fMRI time-varying functional connectivity

Whole-brain functional connectivity (FC) measured with functional MRI (fMRI) evolves over time in meaningful ways at temporal scales going from years (e.g., development) to seconds [e.g., within-scan time-varying FC (tvFC)]. Yet, our ability to explore tvFC is severely constrained by its large dimen...

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Autores principales: Gonzalez-Castillo, Javier, Fernandez, Isabel S., Lam, Ka Chun, Handwerker, Daniel A., Pereira, Francisco, Bandettini, Peter A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10366614/
https://www.ncbi.nlm.nih.gov/pubmed/37497043
http://dx.doi.org/10.3389/fnhum.2023.1134012
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author Gonzalez-Castillo, Javier
Fernandez, Isabel S.
Lam, Ka Chun
Handwerker, Daniel A.
Pereira, Francisco
Bandettini, Peter A.
author_facet Gonzalez-Castillo, Javier
Fernandez, Isabel S.
Lam, Ka Chun
Handwerker, Daniel A.
Pereira, Francisco
Bandettini, Peter A.
author_sort Gonzalez-Castillo, Javier
collection PubMed
description Whole-brain functional connectivity (FC) measured with functional MRI (fMRI) evolves over time in meaningful ways at temporal scales going from years (e.g., development) to seconds [e.g., within-scan time-varying FC (tvFC)]. Yet, our ability to explore tvFC is severely constrained by its large dimensionality (several thousands). To overcome this difficulty, researchers often seek to generate low dimensional representations (e.g., 2D and 3D scatter plots) hoping those will retain important aspects of the data (e.g., relationships to behavior and disease progression). Limited prior empirical work suggests that manifold learning techniques (MLTs)—namely those seeking to infer a low dimensional non-linear surface (i.e., the manifold) where most of the data lies—are good candidates for accomplishing this task. Here we explore this possibility in detail. First, we discuss why one should expect tvFC data to lie on a low dimensional manifold. Second, we estimate what is the intrinsic dimension (ID; i.e., minimum number of latent dimensions) of tvFC data manifolds. Third, we describe the inner workings of three state-of-the-art MLTs: Laplacian Eigenmaps (LEs), T-distributed Stochastic Neighbor Embedding (T-SNE), and Uniform Manifold Approximation and Projection (UMAP). For each method, we empirically evaluate its ability to generate neuro-biologically meaningful representations of tvFC data, as well as their robustness against hyper-parameter selection. Our results show that tvFC data has an ID that ranges between 4 and 26, and that ID varies significantly between rest and task states. We also show how all three methods can effectively capture subject identity and task being performed: UMAP and T-SNE can capture these two levels of detail concurrently, but LE could only capture one at a time. We observed substantial variability in embedding quality across MLTs, and within-MLT as a function of hyper-parameter selection. To help alleviate this issue, we provide heuristics that can inform future studies. Finally, we also demonstrate the importance of feature normalization when combining data across subjects and the role that temporal autocorrelation plays in the application of MLTs to tvFC data. Overall, we conclude that while MLTs can be useful to generate summary views of labeled tvFC data, their application to unlabeled data such as resting-state remains challenging.
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spelling pubmed-103666142023-07-26 Manifold learning for fMRI time-varying functional connectivity Gonzalez-Castillo, Javier Fernandez, Isabel S. Lam, Ka Chun Handwerker, Daniel A. Pereira, Francisco Bandettini, Peter A. Front Hum Neurosci Neuroscience Whole-brain functional connectivity (FC) measured with functional MRI (fMRI) evolves over time in meaningful ways at temporal scales going from years (e.g., development) to seconds [e.g., within-scan time-varying FC (tvFC)]. Yet, our ability to explore tvFC is severely constrained by its large dimensionality (several thousands). To overcome this difficulty, researchers often seek to generate low dimensional representations (e.g., 2D and 3D scatter plots) hoping those will retain important aspects of the data (e.g., relationships to behavior and disease progression). Limited prior empirical work suggests that manifold learning techniques (MLTs)—namely those seeking to infer a low dimensional non-linear surface (i.e., the manifold) where most of the data lies—are good candidates for accomplishing this task. Here we explore this possibility in detail. First, we discuss why one should expect tvFC data to lie on a low dimensional manifold. Second, we estimate what is the intrinsic dimension (ID; i.e., minimum number of latent dimensions) of tvFC data manifolds. Third, we describe the inner workings of three state-of-the-art MLTs: Laplacian Eigenmaps (LEs), T-distributed Stochastic Neighbor Embedding (T-SNE), and Uniform Manifold Approximation and Projection (UMAP). For each method, we empirically evaluate its ability to generate neuro-biologically meaningful representations of tvFC data, as well as their robustness against hyper-parameter selection. Our results show that tvFC data has an ID that ranges between 4 and 26, and that ID varies significantly between rest and task states. We also show how all three methods can effectively capture subject identity and task being performed: UMAP and T-SNE can capture these two levels of detail concurrently, but LE could only capture one at a time. We observed substantial variability in embedding quality across MLTs, and within-MLT as a function of hyper-parameter selection. To help alleviate this issue, we provide heuristics that can inform future studies. Finally, we also demonstrate the importance of feature normalization when combining data across subjects and the role that temporal autocorrelation plays in the application of MLTs to tvFC data. Overall, we conclude that while MLTs can be useful to generate summary views of labeled tvFC data, their application to unlabeled data such as resting-state remains challenging. Frontiers Media S.A. 2023-07-11 /pmc/articles/PMC10366614/ /pubmed/37497043 http://dx.doi.org/10.3389/fnhum.2023.1134012 Text en Copyright © 2023 Gonzalez-Castillo, Fernandez, Lam, Handwerker, Pereira and Bandettini. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Gonzalez-Castillo, Javier
Fernandez, Isabel S.
Lam, Ka Chun
Handwerker, Daniel A.
Pereira, Francisco
Bandettini, Peter A.
Manifold learning for fMRI time-varying functional connectivity
title Manifold learning for fMRI time-varying functional connectivity
title_full Manifold learning for fMRI time-varying functional connectivity
title_fullStr Manifold learning for fMRI time-varying functional connectivity
title_full_unstemmed Manifold learning for fMRI time-varying functional connectivity
title_short Manifold learning for fMRI time-varying functional connectivity
title_sort manifold learning for fmri time-varying functional connectivity
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10366614/
https://www.ncbi.nlm.nih.gov/pubmed/37497043
http://dx.doi.org/10.3389/fnhum.2023.1134012
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