Functional and effective connectivity methods are essential to study the complex information flow in brain networks underlying human cognition. Only recently have connectivity methods begun to emerge that make use of the full multidimensional information contained in patterns of brain activation, rather than unidimensional summary measures of these patterns. To date, these methods have mostly been applied to fMRI data, and no method allows vertex-to-vertex transformations with the temporal specificity of EEG/MEG data. Here, we introduce time-lagged multidimensional pattern connectivity (TL-MDPC) as a novel bivariate functional connectivity metric for EEG/MEG research. TL-MDPC estimates the vertex-to-vertex transformations among multiple brain regions and across different latency ranges. It determines how well patterns in ROI X at time point t can linearly predict patterns of ROI Y at time point t. In the present study, we use simulations to demonstrate TL-MDPC's increased sensitivity to multidimensional effects compared to a unidimensional approach across realistic choices of number of trials and signal-to-noise ratios. We applied TL-MDPC, as well as its unidimensional counterpart, to an existing dataset varying the depth of semantic processing of visually presented words by contrasting a semantic decision and a lexical decision task. TL-MDPC detected significant effects beginning very early on, and showed stronger task modulations than the unidimensional approach, suggesting that it is capable of capturing more information. With TL-MDPC only, we observed rich connectivity between core semantic representation (left and right anterior temporal lobes) and semantic control (inferior frontal gyrus and posterior temporal cortex) areas with greater semantic demands. TL-MDPC is a promising approach to identify multidimensional connectivity patterns, typically missed by unidimensional approaches.
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http://dx.doi.org/10.1016/j.neuroimage.2023.119958 | DOI Listing |
Soc Sci Med
December 2024
The Institute for Occupational Health, Yonsei University College of Medicine, Seoul, Republic of Korea; Department of Preventive Medicine, Yonsei University College of Medicine, Seoul, Republic of Korea. Electronic address:
Background: Precarious employment (PE) represents an important social determinant of health. This study examined the association between PE and the emergence of food insecurity among Korean adults.
Methods: This study included a nationwide sample of 10,481 adults (49,907 observations).
QRB Discov
January 2023
Laboratoire International Associé Centre National de la Recherche Scientifique et University of Illinois at Urbana-Champaign, Unité Mixte de Recherche n°7019, Université de Lorraine, 54506 Vandœuvre-lès-Nancy, France.
The convergence of free-energy calculations based on importance sampling depends heavily on the choice of collective variables (CVs), which in principle, should include the slow degrees of freedom of the biological processes to be investigated. Autoencoders (AEs), as emerging data-driven dimension reduction tools, have been utilised for discovering CVs. AEs, however, are often treated as black boxes, and what AEs actually encode during training, and whether the latent variables from encoders are suitable as CVs for further free-energy calculations remains unknown.
View Article and Find Full Text PDFJ Occup Health Psychol
August 2023
Faculty of Psychology and Neuroscience, Department of Work and Social Psychology, Maastricht University.
Although previous research suggests that off-job activities are generally important for recovery from work stress, a profound understanding of which aspects of recovery activities benefit the recovery process and why is still lacking. In the present work, we introduce a dimensional approach toward studying recovery activities and present a taxonomy of key recovery activity dimensions (physical, mental, social, spiritual, creative, virtual, and outdoor). Across four studies (total = 908) using cross-sectional, time-lagged, and a diary design, we develop and validate the Recovery Activity Characteristics (RAC) questionnaire, a multidimensional measure of RAC.
View Article and Find Full Text PDFNeuroimage
April 2023
MRC Cognition and Brain Sciences Unit, University of Cambridge, 15 Chaucer Road, Cambridge CB2 7EF United Kingdom.
Functional and effective connectivity methods are essential to study the complex information flow in brain networks underlying human cognition. Only recently have connectivity methods begun to emerge that make use of the full multidimensional information contained in patterns of brain activation, rather than unidimensional summary measures of these patterns. To date, these methods have mostly been applied to fMRI data, and no method allows vertex-to-vertex transformations with the temporal specificity of EEG/MEG data.
View Article and Find Full Text PDFBiology (Basel)
November 2022
Vanke School of Public Health, Tsinghua University, Beijing 100084, China.
Climate change affects ecosystems and human health in multiple dimensions. With the acceleration of climate change, climate-sensitive vector-borne diseases (VBDs) pose an increasing threat to public health. This paper summaries 10 publications on the impacts of climate change on ecosystems and human health; then it synthesizes the other existing literature to more broadly explain how climate change drives the transmission and spread of VBDs through an ecological perspective.
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