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Alexander Leemans

Researcher at Utrecht University

Publications -  306
Citations -  21500

Alexander Leemans is an academic researcher from Utrecht University. The author has contributed to research in topics: Diffusion MRI & Fractional anisotropy. The author has an hindex of 64, co-authored 289 publications receiving 17932 citations. Previous affiliations of Alexander Leemans include Australian Catholic University & Cardiff University.

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Comparative characteristics of anthropometric indicators, level of physical and technical readiness of young players of 12 and 15 years of different playing fields

TL;DR: In this paper, the authors developed model characteristics of physical and technical fitness of players of 12 and 15 years of different playing roles and found that field players at speed capabilities are significantly superior to goalkeepers, on the contrary, having lower running speeds.

Seasonal changes in neuronal connectivity in the songbird brain discerned by repeated in vivo DTI

TL;DR: These increased FA values in spring correlate perfectly with literature findings showing that the HVC-RA connection is thus far the only connection which is known to display an increase in axonal projections (from HVC to RA) in spring.
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Proceedings of the 13th International Newborn Brain Conference: Neuro-imaging studies.

Ramy Abramsky, +98 more
TL;DR: In this article , the authors investigated the relationship between morphine exposure in the fi rst week of life and brain injury on term-equivalent age magnetic resonance imaging (MRI) in very preterm infants.
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Corrigendum: Topology of diffusion changes in corpus callosum in Alzheimer's disease: An exploratory case-control study

TL;DR: In this article , the authors proposed a method to solve the FNEUR problem, which was later extended to the problem of FNEU-based FNEUs, and showed promising results.
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Neuroanatomical markers of psychotic experiences in adolescents: A machine-learning approach in a longitudinal population-based sample

TL;DR: This paper used machine learning to investigate neuroanatomical markers of subclinical psychotic experiences (PEs) in early and later stages of adolescence using T1-weighted and diffusion MRI data.