Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (5/5 displayed)

  • 2024Brain structure and connectivity mediate the association between lifestyle and cognition2citations
  • 2024Effect of Magnetic Resonance Image Quality on Structural and Functional Brain Connectivity3citations
  • 2017The role of hyperglycemia, insulin resistance, and blood pressure in diabetes63citations
  • 2017Insulin resistance and cognitive performance in type 2 diabetes - The Maastricht study20citations
  • 2016Carotid stiffness is associated with impairment of cognitive performance in individuals with and without type 2 diabetes. The Maastricht Study46citations

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Chart of shared publication
Eussen, Simone
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Köhler, Sebastian
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Jansen, Jacobus F. A.
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Van Boxtel, Martin
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Van Greevenbroek, Marleen
1 / 1 shared
Koster, Annemarie
2 / 2 shared
De Galan, Bastiaan
1 / 1 shared
Backes, Walter H.
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Stehouwer, Coen
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Dejong, Nathan R.
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Vergoossen, Laura
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Wildberger, Joachim
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Linden, David
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Sep, Simone
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Biessels, Geert Jan
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Verhey, Frans
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Dagnelie, Pieter C.
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Kroon, Abraham
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Kallen, Carla J. H. Van Der
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Schaper, Nicolaas
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Reesink, Koen
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Van Sloten, Thomas
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2024
2017
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Co-Authors (by relevance)

  • Eussen, Simone
  • Köhler, Sebastian
  • Jansen, Jacobus F. A.
  • Van Boxtel, Martin
  • Van Greevenbroek, Marleen
  • Koster, Annemarie
  • De Galan, Bastiaan
  • Backes, Walter H.
  • Stehouwer, Coen
  • Dejong, Nathan R.
  • Vergoossen, Laura
  • Wildberger, Joachim
  • De Jong, Joost
  • Linden, David
  • Henry, Ronald
  • Sep, Simone
  • Schalkwijk, Casper G.
  • Biessels, Geert Jan
  • Claessens, Danny
  • Geijselaers, Stefan L. C.
  • Verhey, Frans
  • Dagnelie, Pieter C.
  • Kroon, Abraham
  • Kallen, Carla J. H. Van Der
  • Schaper, Nicolaas
  • Reesink, Koen
  • Van Sloten, Thomas
OrganizationsLocationPeople

article

Brain structure and connectivity mediate the association between lifestyle and cognition

  • Eussen, Simone
  • Köhler, Sebastian
  • Schram, Miranda
  • Jansen, Jacobus F. A.
  • Van Boxtel, Martin
  • Van Greevenbroek, Marleen
  • Koster, Annemarie
  • De Galan, Bastiaan
  • Backes, Walter H.
  • Stehouwer, Coen
  • Dejong, Nathan R.
Abstract

Life-course exposure to risk and protective factors impacts brain macro- and micro-structure, which in turn affects cognition. The concept of brain-age gap assesses brain health by comparing an individual's neuroimaging-based predicted age with their calendar age. A higher BAG implies accelerated brain ageing and is expected to be associated with worse cognition. In this study, we comprehensively modelled mutual associations between brain health and lifestyle factors, brain age and cognition in a large, middle-aged population. For this study, cognitive test scores, lifestyle and 3T MRI data for= 4881 participants [mean age (± SD) = 59.2 (±8.6), 50.1% male] were available from The Maastricht Study, a population-based cohort study with extensive phenotyping. Whole-brain volumes (grey matter, cerebrospinal fluid and white matter hyperintensity), cerebral microbleeds and structural white matter connectivity were calculated. Lifestyle factors were combined into an adapted LIfestyle for BRAin health weighted sum score, with higher score indicating greater dementia risk. Cognition was calculated by averaging-scores across three cognitive domains (memory, information processing speed and executive function and attention). Brain-age gap was calculated by comparing calendar age to predictions from a neuroimaging-based multivariable regression model. Paths between LIfestyle for BRAin health tertiles, brain-age gap and cognitive function were tested using linear regression and structural equation modelling, adjusting for sociodemographic and clinical confounders. The results show that cerebrospinal fluid, grey matter, white matter hyperintensity and cerebral microbleeds best predicted brain-age gap (= 0.455, root mean squared error = 6.44). In regression analysis, higher LIfestyle for BRAin health scores (greater dementia risk) were associated with higher brain-age gap (standardized regression coefficient= 0.126,< 0.001) and worse cognition (= -0.046,= 0.013), while higher brain-age gap was associated with worse cognition ( =-0.163,< 0.001). In mediation analysis, 24.7% of the total difference in cognition between the highest and lowest LIfestyle for BRAin health tertile was mediated by brain-age gap (= -0.049,< 0.001;= -0.198,< 0.001) and an additional 3.8% was mediated via connectivity (= -0.006,< 0.001;= -0.150,< 0.001). Findings suggest that associations between health- and lifestyle-based risk/protective factors (LIfestyle for BRAin health) and cognition can be partially explained by structural brain health markers (brain-age gap) and white matter connectivity markers. Lifestyle interventions targeted at high-risk individuals in mid-to-late life may be effective in promoting and preserving cognitive function in the general public.

Topics
  • impedance spectroscopy
  • aging