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Search: WFRF:(Sanchez Irina) > (2021)

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1.
  • Jones, Benedict C, et al. (author)
  • To which world regions does the valence-dominance model of social perception apply?
  • 2021
  • In: Nature Human Behaviour. - : Springer Science and Business Media LLC. - 2397-3374. ; 5:1, s. 159-169
  • Journal article (peer-reviewed)abstract
    • Over the past 10 years, Oosterhof and Todorov's valence-dominance model has emerged as the most prominent account of how people evaluate faces on social dimensions. In this model, two dimensions (valence and dominance) underpin social judgements of faces. Because this model has primarily been developed and tested in Western regions, it is unclear whether these findings apply to other regions. We addressed this question by replicating Oosterhof and Todorov's methodology across 11 world regions, 41 countries and 11,570 participants. When we used Oosterhof and Todorov's original analysis strategy, the valence-dominance model generalized across regions. When we used an alternative methodology to allow for correlated dimensions, we observed much less generalization. Collectively, these results suggest that, while the valence-dominance model generalizes very well across regions when dimensions are forced to be orthogonal, regional differences are revealed when we use different extraction methods and correlate and rotate the dimension reduction solution. PROTOCOL REGISTRATION: The stage 1 protocol for this Registered Report was accepted in principle on 5 November 2018. The protocol, as accepted by the journal, can be found at https://doi.org/10.6084/m9.figshare.7611443.v1 .
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2.
  • De Luca, Alberto, et al. (author)
  • On the generalizability of diffusion MRI signal representations across acquisition parameters, sequences and tissue types : Chronicles of the MEMENTO challenge
  • 2021
  • In: NeuroImage. - : Elsevier BV. - 1053-8119 .- 1095-9572. ; 240
  • Journal article (peer-reviewed)abstract
    • Diffusion MRI (dMRI) has become an invaluable tool to assess the microstructural organization of brain tissue. Depending on the specific acquisition settings, the dMRI signal encodes specific properties of the underlying diffusion process. In the last two decades, several signal representations have been proposed to fit the dMRI signal and decode such properties. Most methods, however, are tested and developed on a limited amount of data, and their applicability to other acquisition schemes remains unknown. With this work, we aimed to shed light on the generalizability of existing dMRI signal representations to different diffusion encoding parameters and brain tissue types. To this end, we organized a community challenge - named MEMENTO, making available the same datasets for fair comparisons across algorithms and techniques. We considered two state-of-the-art diffusion datasets, including single-diffusion-encoding (SDE) spin-echo data from a human brain with over 3820 unique diffusion weightings (the MASSIVE dataset), and double (oscillating) diffusion encoding data (DDE/DODE) of a mouse brain including over 2520 unique data points. A subset of the data sampled in 5 different voxels was openly distributed, and the challenge participants were asked to predict the remaining part of the data. After one year, eight participant teams submitted a total of 80 signal fits. For each submission, we evaluated the mean squared error, the variance of the prediction error and the Bayesian information criteria. The received submissions predicted either multi-shell SDE data (37%) or DODE data (22%), followed by cartesian SDE data (19%) and DDE (18%). Most submissions predicted the signals measured with SDE remarkably well, with the exception of low and very strong diffusion weightings. The prediction of DDE and DODE data seemed more challenging, likely because none of the submissions explicitly accounted for diffusion time and frequency. Next to the choice of the model, decisions on fit procedure and hyperparameters play a major role in the prediction performance, highlighting the importance of optimizing and reporting such choices. This work is a community effort to highlight strength and limitations of the field at representing dMRI acquired with trending encoding schemes, gaining insights into how different models generalize to different tissue types and fiber configurations over a large range of diffusion encodings.
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3.
  • Liu, Shanlin, et al. (author)
  • Ancient and modem genomes unravel the evolutionary history of the rhinoceros family
  • 2021
  • In: Cell. - : Elsevier. - 0092-8674 .- 1097-4172. ; 184:19, s. 4874-4885.e16
  • Journal article (peer-reviewed)abstract
    • Only five species of the once-diverse Rhinocerotidae remain, making the reconstruction of their evolutionary history a challenge to biologists since Darwin. We sequenced genomes from five rhinoceros species (three extinct and two living), which we compared to existing data from the remaining three living species and a range of outgroups. We identify an early divergence between extant African and Eurasian lineages, resolving a key debate regarding the phylogeny of extant rhinoceroses. This early Miocene (similar to 16 million years ago [mya]) split post-dates the land bridge formation between the Afro-Arabian and Eurasian landmasses. Our analyses also show that while rhinoceros genomes in general exhibit low levels of genome-wide diversity, heterozygosity is lowest and inbreeding is highest in the modern species. These results suggest that while low genetic diversity is a long-term feature of the family, it has been particularly exacerbated recently, likely reflecting recent anthropogenic-driven population declines.
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  • Result 1-3 of 3
Type of publication
journal article (3)
Type of content
peer-reviewed (3)
Author/Editor
Hatami, Javad (1)
Aczel, Balazs (1)
Chen, Lei (1)
Cooper, Alan (1)
Afzali, Maryam (1)
Özarslan, Evren (1)
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Jones, Derek K. (1)
Pieciak, Tomasz (1)
Nilsson, Markus (1)
Palombo, Marco (1)
Garyfallidis, Elefth ... (1)
Zhang, Hui (1)
Alexander, Daniel C. (1)
Ask, Karl, 1978 (1)
Margaryan, Ashot (1)
Kosintsev, Pavel (1)
Sinding, Mikkel-Holg ... (1)
Gopalakrishnan, Shya ... (1)
Dalen, Love (1)
Gilbert, M. Thomas P ... (1)
Bruford, Michael W. (1)
Chartier, Christophe ... (1)
Christopherson, Cody ... (1)
Levitan, Carmel A. (1)
Miller, Jeremy K. (1)
Schmidt, Kathleen (1)
Stieger, Stefan (1)
Vanpaemel, Wolf (1)
Vianello, Michelange ... (1)
Voracek, Martin (1)
Olofsson, Jonas K. (1)
Liuzza, Marco Tullio (1)
Zhang, Guojie (1)
Mac Giolla, Erik, 19 ... (1)
De Cahsan, Binia (1)
Lamm, Claus (1)
van der Valk, Tom (1)
Shapiro, Beth (1)
Westbury, Michael V. (1)
Marques-Bonet, Tomas (1)
Santos, Diana (1)
Olsen, Jerome (1)
Schei, Vidar (1)
Vartanyan, Sergey (1)
Brandt, Mark J. (1)
Kirillova, Irina (1)
Wu, Qi (1)
Dalen, L (1)
Wilson, John P (1)
Hu, Chuan-Peng (1)
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University
Stockholm University (2)
University of Gothenburg (1)
Uppsala University (1)
University West (1)
Linköping University (1)
Lund University (1)
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Swedish Museum of Natural History (1)
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Language
English (3)
Research subject (UKÄ/SCB)
Natural sciences (2)
Medical and Health Sciences (1)
Social Sciences (1)
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