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.. Les-atlas-de-talairach, atlas de Talairach ; (b) définition du repère de Talairach basé sur la localisation des commissures antérieure et postérieure (CA et CP) visibles dans le plan inter-hémisphérique ; (c-d) principe du quadrillage proportionnel de Talairach : douze sous-volumes, six par hémisphère, p.61

.. De-talairach, Variabilité de la localisation de la trace externe de quelques grandes structures dans le repère proportionnel, p.62

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