On Statistical Analysis of Brain Variability.

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ID Serval
serval:BIB_91CE28099425
Type
Autre: (aucun autre type ne convient)
Collection
Publications
Institution
Titre
On Statistical Analysis of Brain Variability.
Auteur⸱e⸱s
Chén Oliver Y, Phan Huy, Nagels Guy, de Vos Maarten
Langue
anglais
Résumé
We discuss what we believe could be an improvement in future discussions of the ever-changing brain. We do so by distinguishing different types of brain variability and outlining methods suitable to analyse them. We argue that, when studying brain and behaviour data, classical methods such as regression analysis and more advanced approaches both aim to decompose the total variance into sensible variance components. In parallel, we argue that a distinction needs to be made between innate and acquired brain variability. For varying high-dimensional brain data, we present methods useful to extract their low-dimensional representations. Finally, to trace potential causes and predict plausible consequences of brain variability, we discuss how to combine statistical principles and neurobiological insights to make associative, explanatory, predictive, and causal enquires; but cautions are needed to raise association- or prediction-based neurobiological findings to causal claims.
Mots-clé
Analysis of variance, variance-decomposition, the Bayesian brain, high-dimensional data, association, explanation, prediction, causation, the neural law of large numbers
Création de la notice
11/01/2024 18:05
Dernière modification de la notice
19/01/2024 7:12
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