normalisation des données oury monchi, ph.d. centre de recherche, institut universitaire de...

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Normalisation des données Normalisation des données Oury Monchi, Ph.D. Oury Monchi, Ph.D. Centre de Recherche, Institut Centre de Recherche, Institut Universitaire de Gériatrie de Montréal & Universitaire de Gériatrie de Montréal & Université de Montréal Université de Montréal

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Normalisation des donnéesNormalisation des données

Oury Monchi, Ph.D.Oury Monchi, Ph.D.

Centre de Recherche, Institut Universitaire de Gériatrie Centre de Recherche, Institut Universitaire de Gériatrie de Montréal & Université de Montréalde Montréal & Université de Montréal

Stereotaxic Space

• based on anatomical landmarks (anterior and posterior commissures)

• originally used to guide blind stereotaxic neurosurgical procedures (thalamotomy, pallidotomy)

• now used by NeuroScientific community for interpretation and comparison of results

J. Talairach and P. Tournoux, Co-planar stereotactic atlas of the human brain: 3-Dimensional proportional system: an approach to cerebral imaging, Stuttgart, Georg Thieme Verlag, 1988

AC-PC line

anterior commissure

AC-PC line

posterior commissure

VAC

Stereotaxic Space

J Talairach & P Tournoux, Co-planar stereotaxic atlas of the human brain, Georg Thieme, 1988

Stereotaxic Space

Anatomical variability remains

Talairach & Tournoux Atlas, 1988

variability of central sulcus from 20 subjects

Not Registered Data

Images courtesy A. Zijdenbos, MNI

Registered Data

Registration to Stereotaxic Space• facilitates comparisons across

– time points– subjects– groups– sites

• permits averaging between subjects to S/N• Allows the use of spatial masks for post-processing

(anatomically driven hypothesis testing)• allows the use of spatial priors (classification)• allows the use of anatomical models (segmentation)• provides a framework for statistical analysis with well-

established random field models• Allows the rapid re-analysis using different criteria

Advantages for anatomical/structural imaging:

Registration to Stereotaxic SpaceRegistration to Stereotaxic Space

• Provides a conceptual framework for the completely automated, 3D analysis across subjects.

• Facilitate intra/inter-subject comparisons across– time points, subjects, groups, sites

• Extrapolate findings to the population as a whole• Increase activation signal above that obtained from single

subject• Increase number of possible degrees of freedom allowed in

statistical model• Enable reporting of activations as co-ordinates within a

known standard space– e.g. the space described by Talairach & Tournoux

Advantages for functional imaging:

Talairach Atlas

• is derived from an unrepresentative single 60-yr old female cadaver brain (when most functional activation studies are done on young living subjects!)

• ignores left-right hemispheric differences• has variable slice separation, up to 4mm• while it contains transverse, coronal and

sagittal slices, it is not contiguous in 3D

Drawbacks for functional imaging:

Stereotaxic Space

• Provides a conceptual framework for the completely automated, 3D analysis across subjects.

• Collins, L., Evans A., et al. have created a replacement target volume for stereotaxic mapping to address weaknesses of the Talairach atlas

However, the space and the stereotaxic concept are still worthwhile:

Image Registration• Registration - i.e. Optimise the parameters that

describe a spatial transformation between the source and reference (template) images

mritotal: créer la matrice de transformation .xfm

• Transformation - i.e. Re-sample according to the determined transformation parameters

p.ex: mincresample ou resample_tal: appliquer la transformation aux données

Idée de Neurolens

Pourquoi normaliser des données fonctionnelles sur un ‘template’

anatomique. Création d’un template T2*

Visualisation du processus d’optimisation!

Slides Aknowledgements

Louis Collins, Montreal Neurological Institute

Andrew Janke, Montreal Neurological Institute

FSL & FreeSurfer Course, fMRIb, Oxford