Hi Anderson,

Thanks, that reference is particularly helpful.

Re: the usage of the white versus pial area question - I believe that the
default area calculation in freesurfer is the white surface area, so unless
one specifies the pial in calculations, the standard surface area output
for surface area by parcellation will be white. This suggests the use of
the global measurement of white surface area as a covariate would be an
appropriate, whereas if one was specifically using pial surface area in the
aparc calculations, it may make more sense to use the global measure of
pial surface area as a covariate, correct? As for which one to use in
analysis, I'm not sure - conceptually it might be that the pial surface
area is more sensitive to atrophy but I don't know if that is born out in
the data...

Laura.


On Sat, Mar 9, 2013 at 11:49 AM, Anderson M. Winkler <wink...@fmrib.ox.ac.uk
> wrote:

> Hi Laura,
>
>
>
>>    1. Is there a paper that I could cite that recommends using mean
>>    cortical thickness rather than ICV?
>>
>>
> If it helps, we used cortical thickness and area as covariate for the
> respective analysis of regional thickness and area. Brain volume, which is
> more closely related to ICV, correlates well with area, but not with
> thickness. We computed a global thickness average by weighting the
> thickness of each region by their respective areas. The paper is this:
> http://surfer.nmr.mgh.harvard.edu/ftp/articles/Winkler2010_Neuroimage.pdf
>
>
>>
>>    1. Would the same logic be applied to surface area analyses? i.e.
>>    would it make more sense to use mean surface area as a covariate in 
>> surface
>>    area analyses? If so, which mean surface area calculation should be used?
>>    mri_anatomical_stats can produce both pial and white matter mean surface
>>    area stats.
>>
>>
> Yes, I think so. It seems more logical to have a global measurement of
> area in the model than a measurement of brain volume. On the other hand,
> area and thickness are not correlated one to another (as shown in the paper
> above and also in Panizzon et al, 2009, in Cereb Cortex). I don't think
> there is a clear answer on which, pial or white, should be used. I'd
> probably go with the white, as I think it may be more robust to image
> quality, but I admit this is a rather weak justification and if the images
> are good, perhaps the pial could be just as good, despite the fact that it
> somewhat depends on the white for its construction.
>
>
>
>>
>>    1. Is there a way to run mri_anatomical_stats on multiple subjects at
>>    once and write to a tablefile (similar to asegstats2table output)?
>>
>>
> I think you can use aparcstats2table, then add up all regions in a
> spreadsheet (or even with awk/gawk). Alternatively, you can use "grep" to
> pick the WhiteSurfArea for each hemisphere from the ?h.aparc.stats file for
> each subject.
>
> Hope this helps!
>
> All the best,
>
> Anderson
>
>


-- 
--
Laura M. Tully, MA
Social Neuroscience & Psychopathology, Harvard University
Center for the Assessment and Prevention of Prodromal States, UCLA Semel
Institute of Neuroscience
ltu...@mednet.ucla.edu
ltu...@fas.harvard.edu
310-267-0170
--
My musings as a young clinical scientist:
http://theclinicalbrain.blogspot.com/
Follow me on Twitter: @tully_laura
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